EP2460277A2 - Sensor-based wireless communication systems using compressive sampling - Google Patents
Sensor-based wireless communication systems using compressive samplingInfo
- Publication number
- EP2460277A2 EP2460277A2 EP10751729A EP10751729A EP2460277A2 EP 2460277 A2 EP2460277 A2 EP 2460277A2 EP 10751729 A EP10751729 A EP 10751729A EP 10751729 A EP10751729 A EP 10751729A EP 2460277 A2 EP2460277 A2 EP 2460277A2
- Authority
- EP
- European Patent Office
- Prior art keywords
- user equipment
- base station
- sampler
- signal
- sensor
- Prior art date
- Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
- Withdrawn
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Classifications
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- H—ELECTRICITY
- H03—ELECTRONIC CIRCUITRY
- H03M—CODING; DECODING; CODE CONVERSION IN GENERAL
- H03M7/00—Conversion of a code where information is represented by a given sequence or number of digits to a code where the same, similar or subset of information is represented by a different sequence or number of digits
- H03M7/30—Compression; Expansion; Suppression of unnecessary data, e.g. redundancy reduction
Definitions
- This disclosure generally relates to wireless communication systems and
- communications systems consist of multiple-access communication networks that allow users to share common network resources. Examples of these networks are time
- TDMA time division multiple access
- CDMA code division multiple access
- SC-FDMA single carrier frequency division multiple access
- OFDMA orthogonal frequency division multiple access
- E-UTRA evolved universal terrestrial radio access
- Wi-Fi worldwide
- WiMAX microwave access
- UMB ultra mobile broadband
- 3GPP 3rd Generation Partnership Project
- Such advanced network equipment may also be referred to as long-term evolution
- LTE long-term evolution advanced
- LTE-A long-term evolution advanced
- HSPA high-speed packet access
- LTE accomplishes this higher performance with the use of broader spectrum bandwidth, OFDMA and SC-FDMA air interfaces, and advanced antenna methods.
- SISO single-input, single-output systems
- SIMO single antennas are used at the receiver and only one antenna is used at the transmitter
- MIMO multiple- input, multiple-output systems
- multiple antennas are used at the receiver and transmitter.
- SIMO may provide increased coverage while MlMO systems may provide increased spectral efficiency and higher data throughput if the multiple transmit antennas, multiple receive antennas or both are utilized.
- compressive sampling provides a new framework for signal sensing and compression where a special property of the input signal, sparseness, is exploited to reduce the number of values needed to reliably
- FIG. 1 illustrates one embodiment of a sensor-based wireless communication system using compressive sampling in accordance with various aspects set forth herein.
- FIG. 2 illustrates another embodiment of a sensor-based wireless
- FIG. 3 illustrates another embodiment of a sensor-based wireless
- FIG. 4 illustrates one embodiment of a compressive sampling system in
- FIG. 5 is a flow chart of one embodiment of a compressive sampling method in accordance with various aspects set forth herein.
- FIG. 6 illustrates another embodiment of a sensor-based wireless
- FIG. 7 illustrates one embodiment of an access method in a sensor-based wireless communication system using compressive sampling in accordance with various aspects set forth herein.
- FIG. 8 illustrates another embodiment of a sensor-based wireless
- FIG. 9 illustrates one embodiment of a quantizing method of a detector in a sensor-based wireless communication system using compressive sampling in accordance with various aspects set forth herein.
- FIG. 10 is a chart illustrating an example of the type of sparse representation matrix and sensing matrix used in a sensor-based wireless communication system using compressive sampling in accordance with various aspects set forth herein.
- FIG. 1 1 illustrates one embodiment of a wireless device, which can be used in a sensor-based wireless communication system using compressive sampling in
- FIG. 12 illustrates one embodiment of a sensor, which can be used in a
- FIG. 13 illustrates one embodiment of a base station, which can be used in a sensor-based wireless communication system using compressive sampling in accordance with various aspects set forth herein.
- FIG. 14 illustrates simulated results of one embodiment of detecting a
- FIG. 15 illustrates simulated results of the performance of one embodiment of a sensor-based wireless communication system using compressive sampling in
- FIG. 16 illustrates simulated results of the performance of one embodiment of a sensor-based wireless communication system using compressive sampling in
- FIG. 17 illustrates simulated results of the performance of one embodiment of a sensor-based wireless communication system using compressive sampling in
- FIG- 18 illustrates simulated results of the performance of one embodiment of a sensor-based wireless communication system using compressive sampling in
- FIG. 19 illustrates simulated results of the performance of one embodiment of a sensor-based wireless communication system using compressive sampling in
- FIG. 20 is an example of deterministic matrices used in one embodiment of a sensor-based wireless communication system using compressive sampling in accordance with various aspects set forth herein.
- FIG. 21 is an example of random matrices used in one embodiment of a
- FIG. 22 illustrates an example of an incoherent sampling system in a noise- free environment.
- FIG. 23 illustrates another embodiment of a sensor-based wireless
- FIG. 24 illustrates an example of a prior art lossless sampling system.
- FIG. 25 illustrates another embodiment of a sensor-based wireless
- FIG. 26 illustrates another embodiment of an access method in a sensor- based wireless communication system using compressive sampling in accordance with various aspects set forth herein.
- FIG. 27 illustrates another embodiment of a sensor-based wireless
- FIG. 28 illustrates another embodiment of a sensor-based wireless
- FIG. 29 illustrates another embodiment of a sensor-based wireless
- FIG. 30 illustrates a proposed target operating region of a sensor-based
- FlG. 31 illustrates another embodiment of a sensor-based wireless
- FIG. 32 illustrates embodiments of frequency domain sampling of a sensor- based wireless communication system using compressive sampling in accordance with various aspects set forth herein.
- FIG. 33 is a block diagram of a remote sampler of a sensor-based wireless communication system using compressive sampling in accordance with various aspects set forth herein.
- the wireless communication system may be comprised of a plurality of user equipment and an infrastructure.
- the infrastructure includes the part of the wireless communication system that is not the user equipment, such as sensors, base stations, core network, downlink transmitter, other elements and combination of elements.
- the core network can have access to other networks.
- the core network also referred to as a central brain or remote central processor, may include a high-powered infrastructure U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT component, which can perform computationally intensive functions at a high rate with acceptable financial cost.
- the core network may include infrastructure elements, which can communicate with base stations so that, for instance, physical layer functions may also be performed by the core network.
- the base station may communicate control information to a downlink transmitter to overcome, for instance, communication
- Channel fading includes
- the core network and the base station may, for instance, be the same the same infrastructure element, share a portion of the same infrastructure element or be different infrastructure elements.
- a base station may be referred to as a node-B ("NodeB”), a base transceiver station (“BTS”), an access point (“AP”), a satellite, a router, or some other equivalent terminology.
- NodeB node-B
- BTS base transceiver station
- AP access point
- satellite satellite
- router or some other equivalent terminology.
- a base station may contain a RF transmitter, RF receiver or both coupled to a antenna to allow for communication with a user equipment.
- a sensor may be referred to as a remote sampler, remote conversion device, remote sensor or other similar terms.
- a sensor may include, for instance, an antenna, a receiving element, a sampler, a controller, a memory and a transmitter.
- a sensor may be interfaced to, for instance, a base station. Further, sensors may be deployed in a wireless communication system that includes a core network, which may have access to another network.
- a user equipment used in a wireless communication system may be referred to as a mobile station ("MS”), a terminal, a cellular phone, a cellular handset, a personal digital assistant ("PDA”), a smartphone, a handheld computer, a desktop computer, a laptop computer, a tablet computer, a netbook, a printer, a set-top box, a television, a wireless appliance, or some other equivalent terminology.
- MS mobile station
- PDA personal digital assistant
- a user equipment may be referred to as a mobile station (“MS”), a terminal, a cellular phone, a cellular handset, a personal digital assistant ("PDA”), a smartphone, a handheld computer, a desktop computer, a laptop computer, a tablet computer, a netbook, a printer, a set-top box, a television, a wireless appliance, or some other equivalent terminology.
- MS mobile station
- PDA personal digital assistant
- a user equipment may be referred to as a mobile station (“MS”), a terminal, a
- a user equipment may be fixed or mobile and may have the ability to move through a wireless communication system.
- uplink
- Downlink communication refers to communication from a user equipment to a base station, sensor or both.
- Downlink communication refers to communication from a base station, U.S. Non-Provisional Application RFM Reference No. 35479-1 -US-PAT downlink transmitter or both to a user equipment.
- FIG. 1 illustrates one embodiment of sensor-based wireless communication system 100 using compressive sampling with various aspects described herein.
- system 100 can provide robust, high bandwidth, real-time wireless
- System 100 can include user
- User equipment 106 may be, for instance, a low cost, low power device.
- Base station 102 can communicate with user equipment 106 using, for instance, a
- system 100 contains sensors 1 10 to 1 13 coupled to base station
- Base station 102 for receiving communication from user equipment 106.
- Base station 102 can be coupled to core network 103, which may have access to other network 104.
- core network 103 which may have access to other network 104.
- sensors 110 to 1 13 may be separated by, for instance, approximately ten meters to a few hundred meters. In another embodiment, a single sensor 1 10 to 1 13 may be used.
- a person of ordinary skill in the art will appreciate in deploying a sensor-based wireless communication system that there are tradeoffs between the power consumption of sensors, deployment cost, system capacity, other factors and combination factors. For instance, as sensors 110 to 1 13 become more proximally spaced, the power consumption of sensors 110 to 1 13 may decrease while the deployment cost and system capacity may increase. Further, user equipment 106 may operate using a different RF band than used with the underlying wireless network when in close proximity to sensors 1 10 to 1 13.
- sensors UO to 113 can be coupled to base station 102 using communication links 1 14 to 1 17, respectively, which can support, for
- a fiber- optic cable connection may be a fiber- optic cable connection, a coaxial cable connection, other connections or any combination thereof.
- a plurality of base stations 102 may communicate sensor-based information between each other to support various functions.
- Sensors 1 10 to 1 13 may be designed to be low cost with, for example, an antenna, an RF front-end, baseband circuitry, interface circuitry, a controller, memory, other elements, or
- a plurality of sensors 110 to 1 13 may be used to support, for instance, antenna array operation, SIMO operation, MIMO operation, beamforming U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT operation, other operations or combination of operations.
- a person of ordinary skill in the art will recognize that the aforementioned operations may allow user equipment 106 to transmit at a lower power level resulting in, for instance, lower power consumption.
- the network protocol can be, for example, a cellular network protocol, Bluetooth protocol, wireless local area loop (“WLAN”)
- a cellular network protocol can be anyone of many
- the portion of the network protocol executed by sensors 110 to 113 may include, for instance, a portion of the physical layer functions.
- 1 10 to 1 13 may result in lower cost, smaller size, reduced power consumption, other advantages or combination of advantages.
- Sensors 110 to 1 13 can be powered by, for instance, a battery power source, an alternating current (“AC”) electric power source or other power sources or
- Communication including real-time communication among sensors 1 10 to 1 13, user equipment 106, base station 102, core network 103, other network 104 or any combination thereof may be supported using, for instance, an automatic repeat request ("ARQ") protocol.
- ARQ automatic repeat request
- sensors 110 to 113 can compress a received
- Sensors 1 10 to 1 13 can provide the sensed signal ("/') to base station 102 using
- Base station 102 can then process the sensed signal ('V'). Base station 102 may communicate instructions to sensors 1 10 to
- instructions can relate to, for instance, data conversion, oscillator
- MAC medium access control
- ARQ protocol other similar protocols or combination of protocols.
- 104 or any combination thereof may communicate using, for instance, presence
- signaling codes which may operate without the need for cooperation from sensors 1 10 to 1 13; space-time codes which may require channel knowledge; fountain codes which may be used for registration and real-time transmission; other communication codes or combination of communication codes.
- base station 102 may perform functions such as transmitting
- sensors 1 10 to 1 13 two-way, real-time communication with user equipment 106; other functions or combination of functions.
- sensors 1 10 to 1 13 may be substantially less expensive than base station
- Sampling is performed by measuring the value of a continuous-time signal at a periodic rate, aperiodic rate, or both to form a discrete-time signal.
- the effective sampling rate of sensors 1 10 to 113 can be less than the actual sampling rate used by sensors 1 10 to 1 13.
- the actual sampling rate is the sampling rate of, for instance, an analog- to-digital converter ("ADC").
- ADC analog- to-digital converter
- the effective sampling rate is measured at the output of sensors 1 10 to 1 13, which corresponds to the bandwidth of sensed signal ("/') ⁇
- sensors 1 10 to 113 can consume less power than other sensors operating at the actual sampling rate without any compression. Redundancy can be designed into the deployment of a system so that the loss of a sensor would minimally affect the performance of the system. For many types of signals, reconstruction of such signals can be performed by base station 102, core network 103, other network 104, or any combination thereof.
- sensors 1 10 to 113 may each contain a direct sequence de-spreading element, a fast Fourier transform (“FFT”) element, other
- Base station 102 can send to sensor 1 10 to 1 13 U.S. Non-Provisional Application RlM Reference No. 35479-1 -US-PAT instructions, for instance, to select direct sequence codes or sub-chip timing for a de- spreading element, to select the number of frequency bins or the spectral band for an
- FFT element other instructions or combination of instructions. These instructions may be communicated at, for example, one-millisecond intervals, with each instruction being performed by sensor 110 to 113 within one tenth of a millisecond after being received.
- user equipment 106 may transmit and receive information in the form of slots, packets, frames or other similar structures, which may have a duration of, for instance, one to five milliseconds. Slots, packets, frames and other similar structures may include a collection of time-domain samples successively captured or may describe a collection of successive real or complex values.
- system 100 can include the communication of system overhead information between user equipment 106, base station 102, core network 103, other network 104, sensors 110 to 113 or any combination thereof.
- the system overhead can include the communication of system overhead information between user equipment 106, base station 102, core network 103, other network 104, sensors 110 to 113 or any combination thereof.
- information may include, for instance, guiding and synchronizing information, wireless wide area network information, WLAN information, other information or combination of information.
- guiding and synchronizing information may include, for instance, guiding and synchronizing information, wireless wide area network information, WLAN information, other information or combination of information.
- user equipment 106 may transmit uplink signals at a low
- Base station 102 may perform, for instance, layer 1 functions such as demodulation and decoding; layer 2 functions such as packet numbering and ARQ; and higher-layer functions such as
- Base station 102 may have substantial computational power to perform computationally intensive functions in real time, near- real time or both.
- base station 102 may apply link adaptation
- adaptation strategies may require processing at periodic intervals, for instance, one- millisecond intervals. Such strategies may allow for operating, for instance, at the
- DPC dirty paper coding
- extraneous uplink signals from user equipment 106 may provide the uplink signals ('/') to base station 102 associated with user equipment 106.
- base station 102 associated with user equipment 106.
- a person of ordinary skill in the art will recognize that a plurality of user equipment 106 can communicate with base • station 102.
- FIG. 2 illustrates another embodiment of a sensor-based wireless
- system 200 using compressive sampling in accordance with various aspects set forth herein.
- system 200 can provide robust, high
- System 200 includes user equipment 206, sensors 210 to 213, base station 202, core network 203 and other network 204.
- sensors 210 to 213 may
- base station 202 may send instructions to sensors 210 to 213 using communication link 214 to 217, respectively. Such instructions may be, for example, to compress using a specific multiple access code such as a direct sequence code or an OFDM code. Further, base station 202 may send instructions to sensors 210 to 213 to perform, for instance, sampling at twice the sampling rate, which may be at a specific phase.
- Base station 202 may perform computationally intensive functions to, for instance, detect the presence of user equipment 206 in the sensed signals ("/') received from sensors 210 to 213. Once the presence of user equipment 206 is detected, base station 202 may configure sensors 210 to 213 to improve the reception of uplink signals U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT
- Cf Cf from user equipment 206.
- Such improvements may be associated with timing, frequency, coding, other characteristics or combination of characteristics.
- user equipment 206 may transmit uplink signals ("f) using, for instance, a fountain code.
- user equipment 206 may use a fountain code to transmit uplink signals
- the packet transmission rate for such uplink signals may be, for instance, in the range of 200 Hz to 1 kHz.
- Sensors 210 to 213 may have limited decision-making capability with substantial control by base station 202.
- sensors 210 to 213 may be densely deployed, for instance, one sensor 210 to 213 in approximately every one hundred meters separation distance, one sensor 210 to 213 in approximately every ten meters separation distance, other
- Sensors 210 to 213 may contain or be co-located with a downlink transmitter, which is used to support the transmission of downlink signals received from base station 202. Further, base station 202 may use a communication link to provide downlink signals to a remote downlink transmitter such as, a traditional cellular tower with antenna sectorization, a cellular transmitter mounted on a building or light pole, a low power unit in an office, other elements or combination of elements.
- a remote downlink transmitter such as, a traditional cellular tower with antenna sectorization, a cellular transmitter mounted on a building or light pole, a low power unit in an office, other elements or combination of elements.
- the deployment of such remote downlink transmitters may be to support, for example, building deployment, street light deployment, other deployments or
- FIG. 3 illustrates another embodiment of a sensor-based wireless
- system 300 represents a multiple access system.
- System 300 includes user equipment 306, sensor 310, base station 302 and
- 310 can include a receiving element for downconverting uplink signals.
- a receiving element for downconverting uplink signals.
- a person of ordinary skill in the art will appreciate the design and implementation requirements for such a receiving element.
- base station 302 can be coupled to downlink transmitter 308, U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT wherein downlink transmitter 308 can be co-located, for instance, with a cellular tower.
- Base station 302 may contain, for instance, a collector for collecting sensed signals from sensor 310, a detector for detecting information signals contained in the sensed signals, a controller for controlling sensor 310, other elements or combination of elements.
- Base station 302 and downlink transmitter 308 may be co-located. Further, downlink
- transmitter 308 can be coupled to base station 302 using communication link 309, which can support, for instance, a fiber-optic cable connection, a microwave link, a coaxial cable connection, other connections or any combination thereof.
- communication link 309 can support, for instance, a fiber-optic cable connection, a microwave link, a coaxial cable connection, other connections or any combination thereof.
- the configuration of system 300 may be similar to a conventional cellular system such as, a GSM system, a
- UMTS system
- LTE long term evolution
- CDMA Code Division Multiple Access
- user equipment 308 and base station 302 can communicate using a network protocol to perform functions such as random access;
- timing including timing, pilot system identification, channels allowed for access; handover messaging; training or pilot signaling; other functions or combination of functions.
- user equipment 308 and base station 302 may communicate voice information, packet data information, circuit-switched data information, other information or
- FIG. 4 illustrates one embodiment of a compressive sampling system in
- System 400 includes compressive
- compressive sampler 431 can compressively sample an input signal ("/') using sensing waveforms ("qy ") of sensing matrix (" ⁇ ") to generate a sensed signal Cy”), where ⁇ j refers to the jth waveform of sensing matrix
- the input signal (“/') can be of length N
- the sensing matrix (“ ⁇ ") can have M sensing waveforms (" ⁇ ,- ") of length N
- the sensed signal (“/') can be of length Af, where ⁇ /can be less than N.
- An information signal (“x") can be recovered if the input signal ('/') is sufficiently sparse.
- a person of ordinary skill in the art will recognize the U.S. Non-Provisional Application RJM Reference No. 35479-1 -US-PAT characteristics of a sparse signal.
- a signal of length N with S non-zero values is referred to as 5-sparse and includes N minus S ("N-S”) zero values.
- compressive sampler 431 can compressiveiy
- brackets ⁇ -- denote the inner product, correlation function or other similar functions.
- detector 452 can solve the sensed signal ("/') to find the information signal ("x") using, for instance, Equation (2).
- One method, for instance, which can be applied for ' i minimization is the simplex method.
- Other methods to solve the sensed signal ("y") to find the information signal ( 1 V) include using, for instance, the J ⁇ norm algorithm, other methods or combination of methods.
- Incoherent sampling is a form of compressive sampling that relies on sensing waveforms (" ⁇ ,- ”) of the sensing matrix (" ⁇ ") being sufficiently unrelated to the sparse representation matrix (“ ⁇ "), which is used to make the input signal ("/') sparse.
- the coherence (“ ⁇ ") between the sparse representation waveforms (" ⁇ . • ") of the sparse representation matrix (“ ⁇ ") and the sensing waveforms (" ⁇ p ,- ”) of sensing matrix (“ ⁇ ") should represent that these waveforms are sufficiently unrelated, corresponding to a
- B L "•'» is the ' i norm, which is the sum of the absolute values of the elements of its argument and the brackets ( ) denote the inner product, correlation U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT function or other similar functions.
- FIG. 5 is a flow chart of an embodiment of a compressive sampling method 500 in accordance with various aspects set forth herein, which can be used, for instance, to design a compressive sampling system.
- method 500 can start at block 570, where method 500 can model an input signal ("/') and discover a sparse representation matrix (" ⁇ ") in which the input signal ( l y") is S-sparse.
- method 500 can choose a sensing matrix (" ⁇ "), which is sufficiently incoherent with the sparse
- method 500 can randomly, deterministically or both select M sensing waveforms (" ⁇ ,- ”) of sensing matrix (" ⁇ "), where M may be greater than or equal to S.
- method 500 can sample input signal Cy") using the selected M sensing waveforms (" ⁇ p . • ”) to produce a sensed signal ("y").
- method 500 can pass the sparse representation matrix (" ⁇ ") > the sensing matrix
- FIG. 6 illustrates another embodiment of a sensor-based wireless
- system 600 can provide robust, high bandwidth, real-time wireless communication with support for high-user density.
- System 600 can provide robust, high bandwidth, real-time wireless communication with support for high-user density.
- system 600 can allow user equipment 606 to communicate with, for instance, the underlying cellular system even if sensor 610, for instance, fails to operate.
- System 600 may allow sensors 610 to be widely distributed consistent with, for instance, office-building environments.
- System 600 may allow for base station 602 to not be limited by, for instance,
- 600 may allow for downlink signals to be provided by, for instance, a conventional
- System 600 may allow user equipment 606 to minimize power
- System 600 may allow for sensor 610 to be coupled to base station 602 using communication link 614, wherein communication link 614 can
- System 600 may allow for sensor 610 to be U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT operated by power sources such as a battery, a photovoltaic power source, an alternating current (“AC”) electric power source, other power sources or combination of power sources.
- power sources such as a battery, a photovoltaic power source, an alternating current (“AC”) electric power source, other power sources or combination of power sources.
- system 600 may allow for sensor 610 to be substantially less ex pensive than base station 602. Further, system 600 may allow for sensor 610 to operate using battery power for an extended period such as approximately one to two years. To achieve this, a person of ordinary skill in the art will recognize that certain functions such as signal detection, demodulation and decoding may have to be performed by, for instance, base station 602.
- sensor 610 can have a receiving element such as an antenna
- uplink signal (/') can also be referred to as uplink signal ("g").
- Uplink signal (“g") includes channel propagation effects and environmental effects on uplink signal ('/')• F° r instance
- channel gain (“a") 621 of channel 620 can represent, for instance, channel propagation effects while channel noise (“v") 622 of channel 620 can represent, for instance, environment noise effects.
- sensor 610 can support a communication link to send, for instance, sensed signals ("y”) to base station 602.
- Sensor 610 may not have the computational capability to, for instance, recognize when user equipment 606 is transmitting an uplink signal ("/'). Sensor 610 may receive
- base station 602 associated with, for instance, RF downconversion, compressive sampling, other functions or combination of functions.
- One type of access method is, for instance, the Aloha random access method, which is performed when an unrecognized user equipment attempts to access the network.
- Two-way communication with a base station may take place, for instance, after the user equipment has been given permission to use the system and any uplink and downlink channels have been assigned.
- FIG. 7 illustrates one embodiment of an access method 700 in a sensor-based wireless communication system using compressive sampling in accordance with various aspects set forth herein.
- Various illustrative structures are shown in the lower portion of U.S. Non-Provisional Application RlM Reference No. 35479-1 -US-PAT
- FIG. 7 to facilitate understanding of method 700.
- FIG. 7 illustrates base station 702 twice but should be interpreted as one and the same base station 702.
- method 700 includes communication amongst base station 702, user equipment 706, sensor 710 or any combination thereof.
- User equipment 706 can have, for instance, a power-on event 770 and begin observing overhead messages 771 sent from base station 702.
- a base station can have, for instance, a power-on event 770 and begin observing overhead messages 771 sent from base station 702.
- point-to-multipoint communication point-to-point communication or other
- messages 771 may contain system parameters including, for instance, the length of
- base station 702 may send, for instance, an overhead message to configure user equipment 706 to use sparseness 5 * / and sparse representation matrix
- User equipment 706 may then send, for instance, presence
- Presence signals can include any signal sent by user equipment 706 to base station 702 that can be compressively
- user equipment 706 may send presence signals using Sj, as shown at 780, when it determines that it is approaching base station 702. In this situation, user equipment 706 may determine that it is approaching base station 702 via, for instance, overhead messages 771 sent by base station 702, another base station or both.
- base station 702 may also send, for instance, an overhead message containing system information such as framing, timing, system identification, other
- base station 702 may instruct sensor 710 to use, for instance, M] sensing waveforms (" ⁇ ,- ”) of sensing matrix (" ⁇ "), as represented by 791. Sensor 710 may then continuously
- base station 702 may send, for instance, an overhead message to configure user equipment 706 to use sparseness S2 and sparse representation matrix
- ⁇ As represented by 774.
- User equipment 706 may then send, for instance, presence signals using sparseness S2, as shown by 781.
- base station 702 may instruct sensor 710 to use, for instance, M2 sensing waveforms Cy" of sensing matrix (" ⁇ "), as represented by 792.
- Sensor 710 may then continuously process received uplink signals ("/') and send to base station 702 sensed signals ('V) using ⁇ /2 sensing waveforms (" ⁇ p j ") of sensing matrix (“ ⁇ ”), as shown at 793.
- User equipment 706 may continue to send presence signals using S2, as shown by 781, until, for instance, base station 702 detects the presence signals using S2, as shown at 794.
- base station 702 may send to user equipment 706 a recognition message including, for instance, a request to send a portion of its electronic serial number ("ESN") and to use sparseness S3 and a sparse representation matrix (" ⁇ "), as represented by 775. Further, base station 702 may send to sensor 710 an instruction to use, for instance, a new value of A/J and a new
- Sensor 710 may then continuously process
- user equipment 706 may send to base station 702 an uplink
- base station 702 may send to user
- base station 702 After base station 702 receives this uplink message, base station
- Base station 702 may verify the full ESN of user equipment 706 to determine its eligibility to be on the system and to assign it any resources, as represented by 798. Base station 702 may then send to user equipment 706 a downlink message to assign it resources, as shown at 777.
- Sensor 710 may continuously receive uplink signals ( * y") of a frequency U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT bandwidth ("5") centered at a center frequency ("fc l- Sensor 710 can downconvert the uplink signal ( * /') using a receiving element and then perform compressive sampling.
- Compressive sampling is performed, for instance, by sampling the received uplink signal Cy") and then computing the product of a sensing matrix (" ⁇ ") and the samples to
- Sampling may be performed, for instance, at the
- the received uplink signal ('/') can be sampled, for instance, periodically, aperiodically or both.
- the sampling process can result in N samples, while computing the product of a sensing matrix (" ⁇ ") and the N samples can result in M values of sensed signal
- the sensing matrix may have dimensions of N by M. These resulting M values of sensed signal Cy" can be sent over a communication link to base station 702.
- Compressive sampling can reduce the number of samples sent to base station 702 from
- N samples for a conventional approach to M samples, wherein M can be less than N. If sensor 710 does not have sufficient system timing, sampling may be performed at a
- sensor 710 may compute the product of a sensing matrix (" ⁇ ") and the 2N samples of uplink signal ("/') resulting in 2/V/ samples of sensed signal ("/').
- the compressive sampler may reduce the number of samples sent to base station 702 from IN samples for a
- the sensing matrix may have dimensions of 2Nby 2M.
- the compressive sampler may compute sensed signal ("/') by correlating the sampled received uplink signal ("/') with, for instance, independently selected sensing waveforms (" ⁇ . ") of the sensing matrix (“ ⁇ "). Selection of the sensing waveforms (" ⁇ ,-
- the selection of M may rely, for instance, on an estimate of the
- waveforms (" ⁇ , ") of the sensing matrix (“ ⁇ ") may be independent of the sparse
- the sparseness 5 of received uplink signal ('/') U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT may be controlled, for instance, by base station 702 sending to user equipment 706 a downlink message recognizing user equipment 706 and configuring user equipment 706 to use sparseness S3 and a new sparse representation matrix (" ⁇ ") 775.
- M may be greater than or equal to the sparseness S.
- the lack of knowledge of sparseness S may be overcome, for instance, by base station 702 estimating sparseness S and adjusting thereafter.
- base station 702 may initialize M to, for instance, the value of N, which may correspond to no compression benefit.
- base station 702 estimates the activity level of the frequency band B received at sensor 710, base station
- base station 702 may, for instance, adjust the value of M. By doing so, base station 702 can affect the power consumption of sensor 710 by, for instance, adjusting the number of M
- sensing waveforms (" ⁇ ,- "); thus, adjusting the bandwidth of the sensed signals Cy" sent to base station 702 over the communication link.
- base station 702 may send an instruction to sensor 710 to, for
- base station 702 may send to sensor 710 an instruction as to the method of selecting sensing waveforms (" ⁇ ,-
- sensor 710 may need to
- Each presence signal may be an informative signal generated by, for
- sparse representation waveforms (“ ⁇ , • ") of sparse representation matrix (“ ⁇ ").
- the selection of sparse representation waveforms (" ⁇ y ") of sparse representation matrix (“ ⁇ ") may be configured, for instance, by an overhead message sent by base station 702.
- base station 702 may broadcast an
- Base station 702 may also broadcast a downlink overhead message for U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT unrecognized user equipment 706 to use a specific sparse representation waveform (" ⁇ .- ”) of sparse representation matrix (“ ⁇ ”), which can be referred to as a pilot signal (" ⁇ J/ Q
- Sensor 710 can continuously receive uplink signals Cf'), compressively sample
- uplink signals (“/') to generate sensed signal (“/'), and send sensed signals (“y") to base station 702.
- Base station 702 can then detect the pilot signal (“ ⁇ ") m tne sensed signal Cy'). Once the pilot signal (“ ⁇ o") is. detected, base station 702 may estimate the
- channel gain ( ⁇ 5 ) between user equipment 706 and sensor 710 and may instruct any user equipment 706, which had sent the pilot signal (“ ⁇ o ") > to send, for instance, a
- collision resolution methods such as the Aloha algorithm may be used to separate subsequent uplink transmission attempts by different user equipment
- J0094J Sensor 710 may also operate irrespective of the communication between base station 702 and user equipment 706.
- Base station 702 may instruct sensor 710 to use, for instance, A/ sparse representation waveform (" ⁇ , • ") of sparse representation matrix
- base station 702 may vary the value of M based on anticipating, for
- DFT discrete Fourier transform
- FIG. 8 illustrates another embodiment of a sensor-based wireless
- system 800 using compressive sampling in accordance with various aspects set forth herein.
- system 800 can provide robust, high
- system 800 includes user equipment 806, sensor 810 and base station 802.
- Base station 802 can receive sensed signals('y) from sensor 810 as input to detector 851 of base station 802 to generate an estimate of information signal ('V), also referred to as
- Base station 802 can then quantize this estimate to generate, for instance, a quantized U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT estimate of the information signal Cx"), also referred to as ⁇ *.
- V information signal
- V may be determined using, for instance, the simplex algorithm, ! i norm algorithm, U norm algorithm, other algorithms or combination of algorithms.
- all of the elements of the estimate of the information signal (V) may have non-zero values. Therefore, a hard decision of the estimate of the information signal (V) may be performed to determine the information signal ( 1 V), which consists of, for instance, S non-zero values and N minus S (“N-S”) zero values.
- FIG. 9 illustrates one embodiment of a quantizing method 900 of a detector in a sensor-based wireless communication system using compressive sampling in
- FIG. 9 refers to steps within base
- Method 900 starts at sensor 910, which can send sensed signal C)'") to base station 902. At block 952,
- method 900 can solve sensed signal Cy") to determine an estimate of the information signal (V), also referred to as * .
- method 900 can order the elements of the estimate of the information signal ('V), for instance, from the largest value to the smallest value.
- the information signal (V) is applied to quantizer 953.
- method 900 can determine the sparseness S using, for instance, the sensed signal
- base station 902 may fix the value of S for a user equipment, by sending a downlink message to the user
- Base station 902 may also periodically scan for appropriate values of S by sending different values of S to the sensor and determining the sparseness S of uplink signal ("/') during some period of time, for instance, one to two seconds. Because user equipment may make multiple access attempts, base station 902 may have the
- method 900 can use the sparseness S determined at block 971 to retain indices of the largest S elements of the estimate of the information signal ("x").
- method 900 can use the S indices determined at block 972 to set the
- method 900 can then set the remaining N-S elements of the estimate of the information signal ('V) to second value 976.
- the output of quantizer 953 can be a
- First value 974 may be, for instance, a logical one.
- second value 976 may be, for instance, a logical zero.
- FIG. 10 is chart 1000 illustrating an example of the type of sparse
- a sensor-based wireless communication system 100, 200, 300, 400, 600 and 800 using compressive sampling in accordance with various aspects set forth herein.
- a sensor-based wireless communication system 100, 200, 300, 400, 600 and 800 using compressive sampling in accordance with various aspects set forth herein.
- a sensor-based wireless communication system 100, 200, 300, 400, 600 and 800 using compressive sampling in accordance with various aspects set forth herein.
- the communication system using compressive sampling may use random matrices for the sparse representation matrix (“ ⁇ ") and the sensing matrix (“ ⁇ ").
- the random matrices are composed of, for instance, independently and identically distributed (“Hd”) Gaussian values.
- a sensor-based wireless communication system using compressive sampling may use deterministic matrices for the sparse representation
- the deterministic matrices are composed of, for instance, an identity matrix for the sparse representation matrix (“ ⁇ ”) and a cosine matrix for the sensing matrix (“ ⁇ ").
- FIG. 1 1 illustrates one embodiment of user equipment 1100, which can be used in sensor-based wireless communication system 100, 200, 300, 400, 600 and 800 using compressive sampling in accordance with various aspects set forth herein.
- sensor-based wireless communication system 100 200, 300, 400, 600 and 800 using compressive sampling in accordance with various aspects set forth herein.
- FIG. 1 1 illustrates one embodiment of user equipment 1100, which can be used in sensor-based wireless communication system 100, 200, 300, 400, 600 and 800 using compressive sampling in accordance with various aspects set forth herein.
- user equipment 1 100 can include modulator 1 140 for modulating an uplink message to form an information signal ('V).
- Generator 1 141 can receive the information signal (V) and can apply a sparse representation matrix ( 1 T") 1 143 to the information signal U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT
- v to generate an uplink signal ('/'), which is transmitted by uplink transmitter 1 142 using, for instance, antenna 1364.
- User equipment 1 100 can also include a downlink receiver 1148 for downconverting a downlink signal received by antenna 1 164. The received downlink signal can then be processed by demodulator 1 149 to generate a
- user equipment 1 100 can include oscillator 1 162 for clocking user equipment 1 100 and maintaining system timing, power supply 1 163 such as battery 1361 for powering user equipment 1 100, input/output devices 1367 such as a keypad and display, memory 1360 coupled to controller 1147 for controlling the
- sensor 1200 illustrates one embodiment of a sensor 1200, which can be used in sensor-based wireless communication system 100, 200, 300, 400, 600 and 800 using compressive sampling in accordance with various aspects set forth herein.
- sensor 1200 can include receiving element 1230 for downconverting an uplink signal
- Compressive sampler 1231 can apply a sensing matrix (" ⁇ ") 1233 to the uplink signal Cf") to generate a sensed signal ("/'), which can be sent using sensor transmitter 1232.
- sensor 1200 can include oscillator 1262 for clocking sensor 1200 and maintaining system timing, power supply 1263 such as battery 1261 for powering user equipment 1100, memory 1260 coupled to controller or state machine
- Controller 1237 for controlling the operation of sensor 1200, other elements or combination of elements. Controller 1237 may be implemented in hardware, software, firmware or any combination thereof. Further, controller 1237 may include a microprocessor, digital signal processor, memory, state machine or any combination thereof.
- FIG. 13 illustrates one embodiment of base station 1300, which can be used in sensor-based wireless communication system 100, 200, 300, 400, 600 and 800 using compressive sampling in accordance with various aspects set forth herein.
- base station 1300 in the uplink direction, can include collector 1350 for collecting sensed U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT signal ("v").
- Detector 1351 can receive the collected sensed signal ("> ⁇ ") and can use a sensing matrix (“ ⁇ ") 1233 and a sparse representation matrix (“ ⁇ ") 1 143 to estimate and detect information signal ( 1 V) from the collected sensed signal (">'”).
- Controller 1357 may evaluate the detected information signal (“* ") to determine the uplink message.
- base station 1300 in the downlink direction, can include a modulator 1359 for modulating a downlink message and downlink transmitter interface 1358 for sending the modulated downlink signals.
- base station 1300 can include oscillator 1362 for
- sensor-based wireless communication system 100, 200, 300, 400, 600 and 800 may use a plurality of sensors 1 10 to 1 13, 210 to 213, 310, 610, 710, 810, 1200 and 1310 to process uplink signal ('/') to allow for the joint detection of a presence signal at base station 102, 202, 302, 602, 702, 802 and 1302 by using antenna array signal processing techniques, MIMO signal processing techniques, beamforming techniques, other techniques or combination of techniques.
- the use of a plurality of sensors 1 10 to 1 13, 210 to 213, 310, 610, 710, 810, 1200 and 1310 may allow the value of ⁇ / to be lower at each sensor 1 10 to 1 13, 210 to 213, 310, 610, 710, 810, 1200 and
- 610, 710, 810, 1200 and 1310 may be reduced by placing the plurality of sensors 1 10 to 1 13, 210 to 213, 310, 610, 710, 810, 1200 and 1310, for instance, in a more dense
- sensor-based wireless communication system 100, 200, 300, 400, 600 and 800 may deploy sensors 1 10 to 1 13, 210 to 213, 310, 610, 710, 810, 1200 and 1310 to allow typically two sensors 1 10 to 1 13, 210 to 213, 310, 610,
- Such a deployment may be in an indoor environment where sensors 1 10 to 1 13, U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT
- 210 to 213, 310, 610, 710, 810, 1200 and 1310 may be deployed by, for instance, a thirty meters separation distance with a path loss exponent between two or three.
- Sensors 1 10 to 1 13, 210 to 213, 310, 610, 710, 810, 1200 and 1310 may each be deployed to cover a larger area; however, the path loss exponent may be smaller.
- the probability of detecting a single presence signal may be above ten percent.
- sensor-based wireless communication system 100, 200, 300, 400, 600 and 800 may deploy sensor 1 10 to 113, 210 to 213, 310, 610, 710,
- 210 to 213, 310, 610, 710, 810, 1200 and 1310 may be deployed in microcelis to
- channel 620 and 820 may be static with channel gain (" ⁇ ") 621 and 821 and channel noise (V) 622 and 821 may be additive white Gaussian noise (“AWGN”).
- AWGN additive white Gaussian noise
- the source of the channel noise may be, for instance, thermal noise at a receive antenna, co-channel interference, adjacent channel interference, other noise
- base station 102, 202, 302, 602, 702, 802 and 1302; or any combination thereof may be sufficiently synchronized in timing, frequency, phase, other conditions or combination of conditions thereof.
- the compressive sampling scheme may use a sparse representation matrix
- ⁇ ⁇
- ⁇ ⁇
- ⁇ ⁇
- ⁇ sensing matrix
- sensor 1 10 to 1 13, 210 to 213, 310, 610, 710, 810, 1200 and 1310, U.S. Non-Provisional Application RlM Reference No. 35479-1 -US-PAT user equipment 106, 206, 306, 606, 706, 806 and 1 100, or any combination thereof may be provided with, for instance, the sparse representation matrix (" ⁇ ") > the sensing matrix (" ⁇ ") or both, information such as a seed value to generate the sparse representation matrix (" ⁇ "), the sensing matrix (" ⁇ ") or both, or any combination thereof.
- Base station 102, 202, 302, 602, 702, 802 and 1302 may know which sparse representation matrix
- Base station 102 Base station 102, 202, 302, 602, 702,
- 802 and 1302 may instruct sensor 110 to 113, 210 to 213, 310, 610, 710, 810, 1200 and 1310 to use a specific set of M sensing waveforms (" ⁇ py ") of sensing matrix (“ ⁇ ").
- base station 102, 202, 302, 602, 702, 802 and 1302 may instruct user equipment 106, 206, 306, 606, 706, 806 and 1 100 and sensor 1 10 to 1 13, 210 to 213, 310, 610, 710, 810, 1200 and 1310 that the uplink signal consists, for instance, of N intervals or chips.
- the aforementioned random matrices, deterministic matrices or both may be generated only once or may not change if generated again. Further, these matrices may be regenerated after some time, for instance, a few seconds. Also, these matrices may be regenerated each time they are to be used. In any case, the detector, which includes the solver, of base station 102, 202, 302, 602, 702, 802 and 1302 may know the sparse
- representation matrix used by user equipment 706 as well as the sensing matrix
- ⁇ used by the sampler.
- a person of ordinary skill in the art would recognize that this does not mean that the base station must provide the matrices.
- 102, 202, 302, 602, 702, 802 and 1302 may change the sparse representation matrix
- ⁇ ⁇
- pn pseudo-noise
- base station 102, 202, 302, 602, 702, 802 and 1302 may change the sensing matrix (" ⁇ ") according to, for instance, a pseudo-noise ("pn”) function of the system time.
- ⁇ sensing matrix
- pn pseudo-noise
- FIG. 14 illustrates simulated results of one embodiment of detecting a user equipment in a sensor-based wireless communication system using compressive
- Graph 1404 shows the probability of detecting one nonzero entry in a quantized estimate of the information signal ( 4 V), where S is two.
- FIG. 15 illustrates simulated results of the performance of one embodiment of a sensor-based wireless communication system using compressive sampling in
- the logarithmic magnitude of the SNR ratio is shown on abscissa 1501 and is plotted in the range from 0 dB to 25 dB.
- the probabiiity of detection (“Pr (detect)" is shown on ordinate 1502 and is plotted in the range from zero, corresponding to zero probability, to one, corresponding to one
- Graphs 1503, 1504, 1505, 1506 and 1507 represent
- Graph 1503 shows the probability of detecting one nonzero entry in a quantized estimate of the information signal (".x"), where S is one.
- Graph 1504 shows the probability of correctly detecting two non-zero entries in a quantized estimate of the information signal (V), where S is two.
- Graph 1505 shows the
- Graph 1506 shows the probability of correctly U.S. Non-Provisional Application RIM Reference No. 35479-1-US-PAT detecting no non-zero entries in a quantized estimate of the information signal ( 4 V), where S is two.
- Graph 1507 shows the probability of correctly detecting one non-zero entry in a quantized estimate of the information signal ('V), where S is two.
- FIG. 16 illustrates simulated results of the performance of one embodiment of a sensor-based wireless communication system using compressive sampling in
- the probability of detection (“Pr (detect)" is shown on ordinate 1602 and is plotted in the range from zero, corresponding to zero probability, to one, corresponding to one hundred percent probability.
- Graphs 1603, 1604, 1605, 1606 and 1607 represent
- Graph 1603 shows the probability of correctly detecting one non-zero entry in a quantized estimate of the information signal ('V), where S is one.
- Graph 1606 shows the probability of correctly detecting no non-zero entries in a quantized estimate of the information signal ('V), where S is two.
- Graph 1607 shows the probability of correctly detecting one non-zero entry in a quantized estimate of the information signal ( 4 V). where S is two.
- FIG. 17 illustrates simulated results of the performance of one embodiment of a sensor-based wireless communication system using compressive sampling in
- graphical illustration in its entirety is referred to by 1700.
- the logarithmic magnitude of the S ⁇ R ratio is shown on abscissa 1701 and is plotted in the range from 0 dB to 45 dB.
- the probability of detection (“Pr (detect)" is shown on ordinate 1702 and is plotted in U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT the range from zero, corresponding to zero probability, to one, corresponding to one hundred percent probability.
- Graphs 1703, 1704, 1705 and 170.6 represent simulation results for system 800, where N is ten, M is three and S is one.
- Graph 1703 shows the probability of correctly detecting one non-zero entry in a quantized estimate of the
- JC information signal
- Graph 1704 shows the probability of correctly detecting one non-zero entry in a quantized estimate of the
- Graph 1705 shows the probability of correctly detecting no non-zero entries in a quantized estimate of the information signal ('V), where Ud Gaussian random matrices are used.
- FIG. 18 illustrates simulated results of the performance of one embodiment of a sensor-based wireless communication system using compressive sampling in
- Graphs 1803, 1804, 1805 and 1806 represent simulation results for system
- Graph 1803 shows the probability of detecting two non- zero entries in a quantized estimate of the information signal ('V).
- Graph 1804 shows the probability of detecting two non-zero entries in a quantized
- graph 1804 and graph 1805 also represent the effect of
- Graph 1806 shows the probability of detecting one non-zero entry in a quantized estimate of the information signal (V).
- FIG. 19 illustrates simulated results of the performance of one embodiment of a sensor-based wireless communication system using compressive sampling in
- the sparse representation matrix (“ ⁇ ”) and the sensing matrix (“ ⁇ ”) were varied prior to each transmission of the information signal Cx").
- the graphical illustration in its entirety is referred to by 1900.
- the logarithmic magnitude of the SNR ratio is shown on abscissa 1901 and is plotted in the range from 0 dB to 50 dB.
- the probability of detection (“Pr (detect)" is shown on ordinate 1902 and is plotted in the range from zero, corresponding to zero probability, to one, corresponding to one hundred percent
- Graphs 1903, 1904, 1905, 1906 and 1907 represent simulation results for system 800, where N is ten, M is three, S is one, random Ud Gaussian matrices are used for the sparse representation matrix (" ⁇ ") and the sensing matrix (" ⁇ ") and the random matrices are regenerated prior to each transmission.
- Graph 1903 shows the probability of detecting one non-zero entry in a quantized estimate of the information signal ('V), where any two sensing waveforms (" ⁇ : ”) of sensing matrix (" ⁇ ”) are substantially incoherent and two hundred trials are performed. Specifically, graph 1903 also
- sensing matrix represents the effect of rejecting any two sensing waveforms (" ⁇ .- ”) of sensing matrix
- Graph 1905 shows the probability of correctly detecting one non-zero entry in a quantized estimate of the
- V information signal
- Graph 1906 shows the probability of correctly detecting one non-zero entry in a quantized estimate of the U.S. Non-Provisional Application RJM Reference No. 35479-1 -US-PAT information signal ('V), where one thousand trials are performed.
- Graph 1907 shows the probability of correctly detecting one non-zero entry in a quantized estimate of the information signal ('V), where two thousand trials are performed.
- FIG. 20 is an example of deterministic matrices used in one embodiment of a sensor-based wireless communication system using compressive sampling in accordance with various aspects set forth herein.
- the example of the deterministic matrices is
- Matrices 2001 and 2002 are representative of the
- Matrix 2001 can represent the transform of the sensing matrix (" ⁇ ").
- Matrix 2002 can represent the sparse representation matrix (“ ⁇ ").
- FlG. 21 is an example of random matrices used in one embodiment of a
- Matrices 2101 and 2102 are representative of the
- Matrix 2101 can represent the transform of the sensing matrix
- Matrix 2102 can represent the sparse representation matrix (" ⁇ ").
- the sampler in Figure 22 is a set of sensing waveforms, ⁇ .
- the signal, x can be recovered without error if f is sparse.
- Step 1 Sensing.
- Equations (1) and (2) are from [CW08, equations 4 and 5].
- An embodiment of the invention shown in Figure 23 includes a low power receiver.
- the RF portions of the low power receiver can be implemented as taught in
- the figure represents a multiple access system 2300.
- Access Schemes that can be used in the system, include FDMA, TDMA, DS-CDMA,
- the system includes a user equipment or UE 2206 and an
- the UE 2206 includes a mobile station, cellular-radio equipped
- the infrastructure 2210 includes the parts of the
- the remote samplers 2212 includes a device U.S. Non-Provisional Application RIM Reference No. 35479- 1 -US-PAT consisting of an antenna, a down-conversion RF section, a correlating section, a
- Each base station 2216 will be fed by more than one remote sampler 2212, in general.
- Remote samplers 2212 may be
- Conversion includes representing an input waveform is some other form
- the central brain is a high-powered infrastructure component which can
- Radio control via the base station and the DL tower is not so slow as to be
- the Central Brain and the Base Station may physically be the same
- the base station transmitter is located at the DL (downlink) Tower 2222 which includes a conventional cellular tower, cellular
- the downlink, DL 2220 is the flow of information-bearing RF energy from the infrastructure to the User Equipment or UE. This includes radio signals transmitted by the DL tower 2222 and received by a UE 2206.
- Fading includes descriptions of how a radio signal can be bounced off many reflectors and the properties of the resulting sum of reflections. Please see [BB99, Ch.
- Environmental parameters includes the range from the UE to the remote
- Channels include permitted waveforms parameterized by time, frequency, code and/or space limitations. An example would by a particular TDMA slot in a
- Base Station is used generically to include description of an
- entity which receives the fiber-bome signals from remote samplers hosts the 11 solver and Quantizer and operates intelligently (that is, runs computer software) to recognize the messages detected by the Quantizer to carry out protocol exchanges with LTEs
- a "Solver” includes a device which uses the U distance measure. This distance is measured as the sum of the absolute values of the differences in each dimension. For example, the distance between (1.0, 1.5, 0.75) and (0, 2.0, 0.5) is ! 1 - 0
- 1.75.
- Quadratizer includes a device which accepts an estimate as input and produces one of a finite set of information symbols or words as output.
- the base station receiver, solver, quantizer, and a controller are at the point called "base station” 2216 in the figure.
- Uplink 2224 is the flow of information-bearing RF energy from the UE 2206 to the infrastructure 2210. This includes radio signals transmitted by the UE 2206 and received by one or more remote samplers 2212.
- Cellular systems provide multiple access to many mobile users for real time two way communication. Examples of these systems are GSM, IS-95, UMTS, and
- a mixed macro/micro cellular network includes large cells for vehicles and small cells for pedestrians [CasO4, pg. 45].
- the GSM or WCDMA systems are suitable reference systems. That is, they
- UEs mobile stations
- base stations base stations
- base station controllers base station controllers
- various signaling regimes are used depending on the phase of communication between the UE and the infrastructure such as random access, paging, resource allocation (channel assignment), overhead signaling (timing, pilot system id, channels allowed for access), handover messaging, training or pilot signals on the uplink and downlink and steady state communication (voice or data, packet or circuit).
- N chip waveform which includes a frame defined at N discrete, sequential points in time, this would mean N samples per chip-level codeword.
- the frame might be a frame ready for conversion to passband for transmission, or it might simply be a frame of boolean, real, or complex values inside of a computing device or memory.
- N chip waveforms are sensed with M values, where M ⁇ N.
- “Frame” includes a collection of time samples captured in sequence. It may also describe a collection of boolean (or real or complex) values generated in sequence.
- Noise includes an additive signal, which distorts the receiver's view of the information it seeks.
- the source may be thermal noise at receive antenna, or it may be co channel radio signals from undesired or other desired sources, or it may arise from U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT other sources.
- the basic theory of detection of signals in noise is treated in [BB99, Ch.
- "Performance" includes how well a radio system is doing according to a designer's intended operation. For instance, the designer may wish that when a UE
- the performance of the base station detection of this signal includes the
- System parameters includes the length of message frames, the number of sensing
- the Uplink is the flow of information-bearing RF energy from the UE to the infrastructure.
- This includes radio signals transmitted by the UE and received by one or more remote samplers.
- Incoherent sampling includes a kind of compressive sampling which relies on sensing waveforms (columns of ⁇ ) which are unrelated to the basis, ⁇ , in which the input signal is sparse. This report discloses simple sampling and low rate data transmission to conserve battery power at the remote sampler, please see Figure 25.
- Compressive sampling includes a technique where a special property of the input signal, sparseness, is exploited to reduce the number of values needed to reliably (in a statistical sense) represent a signal without loss of desired information.
- sparseness a special property of the input signal
- Compressive sampling includes a technique where a special property of the input signal, sparseness, is exploited to reduce the number of values needed to reliably (in a statistical sense) represent a signal without loss of desired information.
- the remote samplers are widely distributed with a spacing of 30 to 300 m in building/city environments.
- the base station is not limited in its computing power.
- the cellular system downlink is provided by a conventional cell tower, with no unusual RF power limitation.
- the target payload data transmission power level is 10 to 100 ⁇ Watts.
- the remote sampler should operate on battery power. Using line power (1 10 V, 60 Hz in US) is another possibility.
- the remote sampler will have an RF down conversion chain and some scheme for sending digital samples to the base station.
- the remote sampler will not have the computer intelligence to recognize when a UE is signaling.
- the remote sampler can receive instructions from the base station related to down conversion and sampling.
- modulation schemes are QAM and PSK and differential
- Rule D Make the sampler robust to evolutionary physical layer changes without relying on a cpu download.
- the sampler operates locked to a system clock provided by the base station.
- FIG. 26 is one example situation which illustrates the UE 2206 sending Presence signals 2314.
- Presence Signal includes any signal which is sent by the UE 2206 to the base station which can be incoherently sampled by sense waveforms.
- waveforms includes a column from the sensing matrix, ⁇ , which is correlated with a frame of the input to obtain a correlation value.
- the correlation value is called
- the UE 2206 may use
- Presence Alert signals 2314 whenever it determines, through overhead information
- Sense parameters are the parameters which characterize the variables in the expression. Overhead 2312 is sent continuously. The Presence Alert signal 2314 is sent with the expectation that it will be acknowledged. The UE and base station exchange messages in this way: UL is UE 2206 to remote sampler 2212. The remote sampler
- the 2212 continuously senses, without detecting, and sends sense measurements y to the base station 2216 over a fiber optic.
- the DL is the base station tower 2222 to UE 2206, for instance the message 2318 instructing UEs to use sparsity 5* when sending a
- a sparse signal includes an N-chip waveform which can be
- An indication is a way of messaging to a UE or instructing a remote sampler as the
- the UE also has access to the system clock via overhead transmissions from the base station on the downlink (DL).
- the remote sampler observes a bandwidth of radio energy, B, centered at some frequency fc. Generally, it does not treat B as the only information it has, so it does provide samples at rate 2B over the fiber to the base station.
- the sampler obtains N samples of the N chip waveform, and computes M
- the resulting M values are sent over the fiber to the base station. If the sampler does not have chip timing lock, it can acquire 2N samples at half-chip timing and compute 2M correlations. The reduction in samples sent to the base station is from
- the sampler is able to compute sensing measurements, y, by correlating with independently selected columns of the ⁇ matrix.
- Sensing parameters are the parameters which characterize the variables in the correlation of the received signal g with columns of the ⁇ matrix. These parameters include the number of elements in y, i.e. M, the
- a necessary condition for successful detection of x at the base station is that the value of M used by the remote sampler must be chosen greater than S.
- the lack of knowledge of S can be overcome by guessing at the base station, and adjusting
- M may start out with a maximum value of N, and as the base station learns the activity level of the band B, M can be gear shifted to a lower, but still sufficiently high, value. In this way, power consumption at the remote sampler, both in computing correlations, y, and in transmissions to the base station on the fiber, can be kept low.
- the base station might periodically boost M (via instruction to the remote sampler) to thoroughly evaluate the sparsity of signals in the band B.
- the base station can direct the sampler as to which columns it should use, or the sampler may select the columns according to a schedule, or the sampler may select the columns randomly and U.S. Non-Provisional Application RJM Reference No. 35479-1 -US-PAT inform the base station as to its selections.
- Detection includes operating on an estimated value to obtain a nearest point in a constellation of finite size.
- a constellation includes a set of points. For example, if each point in the constellation is uniquely associated with a vector containing N entries, and each entry can only take on the values 0 or 1 (in general, the vector entries may be booleans, or reals, or complex) then the constellation has 2N or fewer points in it.
- the UE sends a Presence Alert signal 2314.
- the Presence Alert signal is an informative signal constructed by selecting columns out of the ⁇ matrix and summing them. The selection of columns can be influenced by the base station overhead signal. For instance, the base station may specify a subset of ⁇ columns which are to be selected from.
- the base station can require, via a DL overhead message 2312, that a UE which has not yet been recognized, to transmit one particular column, say ⁇ O. This
- the remote sampler 2212 would operate, according to Incoherent Sampling, and send samples y to the base station 2216.
- the base station 2216 would then process this signal and detect the presence of ⁇ O, estimate the complex fading
- channel gain, ⁇ between the previously-unrecognized UE and the remote sampler, and then instruct any UEs which had been sending ⁇ O to commence sending the last two bits of their ESN (Electronic Serial Number, a globally unique mobile station identifier), for example.
- ESN Electronic Serial Number, a globally unique mobile station identifier
- uplink UL
- standard Aloha random back-off techniques may be used to separate subsequent UL attempts.
- the remote sampler 2212 is unaware of this protocol progress, and simply keeps sensing with columns from ⁇ and sending the samples y to the base station 2216.
- the base station 2216 may instruct the remote sampler 2212 to use a particular quantity, M, of sensing columns. This quantity may vary as the base station anticipates more or U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT less information flow from the UEs. If the base station anticipates that S, which has a maximum of N, is increasing, it will instruct the remote sampler to increase M (the
- Message can include a new value of S, $s , to be used by the UE, and at the same time the base station can configure the remote sampler to use a higher value of M, called W 1 in the figure. In the figure these events occur at times f ia , f is and ⁇ u . At tl7 the base station expects a message with sparsity $a and that that message has probably been
- the base station can tell a particular UE, with a particular partial ESN, to go ahead and transmit its full ESN and request resources if it wishes. Or the base station may assign resources, after determining that the UE is eligible to be on this
- the remote sampler / central brain system conducts information signaling in a noisy environment and with almost no intelligent activity at the remote sampler.
- the system has the benefit of feedback via a conventional DL.
- the link budget includes design of a radio system to take account of the RF energy source and all of the losses which are incurred before a receiver attempts to recover the signal. For more details, please see [CasO4, pp. 39-45, 381].
- Our initial link budget calculations show that a UE may be able to operate at a transmission power of 10 to 100 ⁇ Watts at a range of 20 to
- the remote sampler can be deployed in macro cells to support vehicular traffic and microcells to support
- the channel is static (no fading).
- the noise is AWGN.
- the Incoherent Sampling scheme uses a random pair ( ⁇ r , ⁇ r ) or a deterministic pair ( ⁇ / , ⁇ / ), in any case the solver knows everything except the
- the base station has instructed the sampler to use a specific set of M
- the base station has instructed the UE and the sampler that transmission waveforms consist of N intervals or chips.
- Figure 27 is an illustration of one embodiment of the remote sampler/ central brain cellular architecture in accordance with various aspects set forth herein.
- f 3242 is S-sparse, and the base station has estimated S as U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT discussed elsewhere.
- the input to the remote sampler 3212 is a noisy version of f,
- the remote sampler 3212 computes M
- y 3215 (Equation 1). y 3215 is passed down a fiber optic to the base station 3216.
- Estimatation is a statistical term which includes attempting to select a
- MSE mean-squared error
- V p ⁇ P (k)g * (k)
- the base station 3216 produces first an estimate of x, called x 3246, and then a hard decision called * 3248.
- the estimate 3246 is produced by forming a linear
- the algorithm explores the boundaries of a feasible region for realizations of the NxI vector - v * which produce vectors >' ⁇ .
- the search does not rely on sparsity.
- the 11 minimization works because the signal is sparse, but the minimizer acts without any attempt to exploit sparsity.
- Linear programs include a set of equations and possibly inequalities. The variables only appear in linear form. For example, if xl and x2 are variables, variables of the form v i do not appear.
- the probability that this quantization identifies one or more correct nonzero entries in x is what the simulation is designed to determine. There are many definitions of "nearest”. We determine x as follows.
- the quantizer 3230 first arithmetically-orders the elements of * and retain the indices of the first S elements (e.g., +1.5 is greater than -2.1). Secondly, the quantizer sets all the entries of * to logical zero. Thirdly, the
- quantizer sets to logical one those elements of * with indices equal to the retained
- the result is the output of the quantizer.
- the Quantizer 3230 obtains S from a variety of ways. Examples would be an all- knowing genie (for limiting performance determination) or that the base station has fixed the value of S to be used by the mobile station, using the DL or that the base
- the base station periodically "scans" for S by trying different values (via instruction to the remote sampler) and determining the sparseness of f during some macro period of time, e.g., 1 -2 seconds. Because UEs will make multiple attempts, the base station has opportunity to recognize a miss-estimate of S and instruct the remote sampler to reduce or increase the value it is using for S. With a sufficiently low duty cycle on the scanning for S, the
- the remote sampler's sensing activities track the sparsity of the signals which impinge on it.
- the remote sampler is always sampling, in general, but only with a battery drain
- the remote sampler is not sampling at the full Nyquist rate for large periods when there is no UE present at all.
- the V is notation from [CW08, page 24].
- the CD is not notation from
- Figure 27 shows the functional pieces and signals in the computer simulation.
- the deterministic matrices are generated only once, and would not change if generated again.
- the random matrices might be generated only once, or the random
- matrices may be regenerated after some time, such as a few seconds. Also the random matrices may be regenerated each time they are to be used. In any case, the solver 3228 must know what ⁇ matrix the UE 3206 uses at any time and what ⁇ matrix the sampler 3212 uses. This does not mean the solver 3228 must dictate what matrices are used. If the UE is changing ⁇ according to a pseudo-random ("pn") function of the system time (time obtained via the DL overhead), then the solver 3228 can use the same pn function generator to find out what ⁇ was. Unless stated otherwise, the probabilities given in this report are for the case where the random matrices were generated once and fixed for all SNRs and trials at those SNRs.
- pn pseudo-random
- Figures 15, 16 and 17 give detection performance for various combinations of M, N, S, SNR and nature of the matrices.
- j is the number of nonzero entries in x correctly determined by the combination of the Il minimizer and the Quantizer ( Figure 25).
- the 90% points are at about 12 and 17 dB respectively as seen in Figure 15.
- a threshold effect in noise may exist with the random configuration
- a local replica is a
- the threshold is 0.1. Studies were done with other thresholds. A threshold of 0.4 has almost no effect. What we have learned from this is that, yes, there are wide variations in the effect of the actual ⁇ matrix on the performance. Another way to put this, is that there are "bad" ⁇ matrices that we do not want to sense with.
- the probability of outage is the probability that the probability of detection will fall below a probability threshold.
- the system can be designed so that not only the average probability of detection is greater than 40%, but the probability that the probability of detection will be U.S. Non-Provisional Application RIM Reference No. 35479- 1 -US-PAT less than 10% is less than 1 %.
- One way to do this is to constrain correlation in the ⁇ matrices. Constraining the ⁇ matrices will also be beneficial, especially as S increases.
- FIG. 28 is a diagram of the cellular network that we are proposing here. It shows a series of simple sensors 2712 deployed in large numbers such that generally more than one is within the range of the mobile subscriber (MS) device 2206. These sensors may also be referred to as remote samplers or remote
- the sensors could be separated in the range often meters to a few hundreds of meters. There is a deployment tradeoff between the power required for the sensors, the ease of deploying the sensors and the amount of capacity needed in the system.
- the UE may use frequency bands much higher than typical in cellular telephony.
- the sensors are provided a fiber-optic back haul 2714 to a central base
- the backhaul could also be provided by another medium such as coaxial cable.
- the sensors have one or more antennas attached to an RF front end and base-band processing that is designed to be inexpensive. The sensors with one
- antenna can be used as an array and can be made into MIMO air interfaces.
- Beam-formed air interfaces allow the MS to transmit at a low power.
- the upper layer protocol used between the MS and the Base Station could be one from a standardized cellular network (e.g. LTE).
- Upper Layer Protocols that specialize in low power and short range e.g. Bluetooth are alternative models for communications
- the stack at the sensor will include only a fraction of layer one (physical). This is to reduce cost and battery power consumption. Possibly the sensors will be powered by AC (1 10 V power line in US). Low round-trip time U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT hybrid-ARQ retransmission techniques to handle real-time applications can be used; the
- Layer 2 element handling ARQ will not be in the sensor but rather in the BS or Central
- the Base Stations support activities which include the following:
- This memo addresses the sensor or sampler to be used in a cellular telephony U.S. Non-Provisional Application RlM Reference No. 35479-1 -US-PAT architecture.
- These sensors are cheaper than Base Stations and sample RF signals of high bandwidth, for example bandwidth B.
- the compressed signals are sent over fiber to the base station.
- the sensors often do not perform Nyquist sampling. This is done for several reasons. One is that sampling at high rates consumes much energy. We aim to provide low-power sensor technology. Redundancy is expected to be designed into the system so that loss of single sensors can be easily overcome. For many important
- a sensor may be equipped with a direct sequence de-spreader, or an FFT
- the sensors do not make demodulation decisions.
- the direct sequence code used in the de-spreader, or the sub-chip timing of the de-spreader or the number of bins used in the FFT, or the spectral band the FFT is to be applied to by the sensor are things which the Base Station tells the sensor through an instruction. In one embodiment, these instructions come at 1 ms intervals and the sensor adjusts its sampling or conversion within less than 0.1 ms of receiving the instruction.
- the format may be circuit-like or non-circuit-like.
- overhead information may include guiding and synchronizing information which cause the mobile stations to practice and copy good cooperative behavior according to game theory.
- the mobile stations transmit their messages at low power.
- the sensors in this proposal compress the samples.
- the compressed samples in the present proposal are sent over a fiber channel to the base
- the base station is responsible for many layer 1 activities (demodulation,
- the base station may use this computing power to solve equation
- the base station can use knowledge of the channel (mobile station antenna correlation U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT matrix, number of sensors in view of the mobile station) to determine link adaptation strategies on a 1 ms interval. These strategies will include operating at the optimum
- multiple base stations can be in almost instantaneous communication with each other, and optimally design transmit waveforms which will sum to yield a distortion-free waveform (dirty paper coding) at the simple mobile station.
- Other base stations which receive extraneous
- FIG. 29 shows another schematic of the proposed system.
- the sensors 2712 in this proposal are only responsible for sub-layer 1 activities, i.e., compression at the sample level.
- the Base Station 2716 in this proposal may send instructions to the sensors, such as compress using multiple access code 16
- the Base Station may send an instruction such as perform 2x sampling with phase theta.
- the sensor is a remote pulling away from an A/D path from a conventional base station, like pulling a corner of taffy and creating a thin connecting strand.
- the taffy strand is a metaphor for the fiber channel from a sensor to the base station.
- the base station uses very high available
- the base station in this proposal responds to the detected MS by instructing the sensor to use sampling and compressing techniques which will capture well the MS signal (timing, frequency, coding particulars which render the compressed data full of the MS signal, even though the sensor is unaware of the utility of the instructions).
- sampling and compressing techniques which will capture well the MS signal (timing, frequency, coding particulars which render the compressed data full of the MS signal, even though the sensor is unaware of the utility of the instructions).
- the proposal may transmit with a fountain code, at least for call establishment.
- the mobile station may transmit real time voice using a fountain code.
- the packet transmission rate should be with period on the order of 1 to 5 ms.
- the sensor is primarily not a decision-making device; it is not locally adaptive;
- the sensor control is from the Base Station.
- the sensors are deployed densely in space, that is, at least one every 100 m x 100m and possibly one every 10 m x 10 m.
- the sensors may or may not support a DL transmission.
- the DL might be carried from a traditional base station tower with sectorization.
- the density of such towers would be at least one every 1000 m x 1000 m (building deployment) and possibly one every 300 m x 300 m U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT
- FIG. 30 illustrates simulated results of the performance of one embodiment of a sensor-based wireless communication system using compressive sampling in
- the mutual information between the transmitted signal and the compressed samples is a function of the additive noise.
- deterministic matrices should be used when feasible. However, this once again will increase the signaling requirements of the system. Furthermore, choosing representation and sensing matrices that have some form of length preservation is advantageous.
- 3001 and 3007 represent the upper bound and collection of lower bounds respectively.
- An example of a target operating region is shown as Region 3002. A max operation has been performed to retain the best Monte
- various attributes may be changed or adjusted to increase system performance or maximize efficiency. For instance, all UEs of a system may be assigned the same value of S while all the Remote Samplers may be assigned the same value of M. This is not necessary, as the values of S and A/ may be different for all of the UEs and remote samplers. Additionally, for low values of SNR, the value of S may be reduced, while for high SNR, the value of S may be increased.
- M maximum value of M would be 2/V in the case of asynchronous sampling because for synchronous systems with chip lock, N samples per word are required whereas for a no chip lock system, a minimum of 2N samples must be taken.
- the controller is able to differentiate between various types of signals in a compressive sampling architecture, such as between WCDMA and GSM.
- a compressive sampling architecture such as between WCDMA and GSM.
- the controller can issue instructions to maximize the efficiency of signal transfer based on the type of signal it perceives.
- the system may also be designed so as to not require adjustment of time of flight for a UE. For example, in a GSM system, the
- the system may require a UE to adjust its transmission based on the fact that the signal is time shifted from other signals.
- these adjustments may be taken into account in designing the system by using a long chip period such that no adjustment on the part of the UE is required.
- FIG. 31 is a sketch of one embodiment of the present invention in which
- FIG 31 shows UEs 3101 , 3102 and 3103 communicating with Remote Samplers 3104, 3105 and 3106.
- Samplers 3104, 3105 and 3106 are connected via fiber optic cables 3107 to solver 3108.
- Controller 3109 sends instructions to Remote Samplers 3104, 3105 and 3106 via fiber optic cables 3107, in addition to sending instructions for Solver 3108 itself. Controller 3109 sends instructions to UEs 3101, 3102 and 3103 through Base Station Tower 3110.
- UEs 3101 , 3102 and 3103 are not restricted to any particular remote sampler. Each UE simply transmits and the multiple remote
- the downlink between the UEs and the Controller is accomplished via Base Station Tower 31 10.
- the uplink is
- a further aspect of the proposed architecture is to reduce signal complexity based on known channel coefficients. If there are multiple UEs communicating with multiple remote samplers, channel coefficients may indicate that due to some U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT obstruction, a particular UE communicates almost exclusively with a single remote
- the channel coefficient matrix associated with the multiple UEs may show that the vectors associated with a particular sensed waveform are
- remote samplers may be zero.
- the signal associated with this UE may be
- the controller may issue instructions to the solver to break the matrices into smaller matrices to reduce computational complexity.
- FIG. 32 represents a method of frequency domain sampling using frequency shifting and filter banks. These are forms of analog or continuous time correlations for the proposed system. It should be noted that correlation may be done in discrete time or continuous time.
- 3212 is a diagram of a sparse signal sampler using a filter bank. 3212 shows recovery of * 321 1 using a bank of M narrow band filters 3202. Received signal y 3201 is multiplexed and fed into a signal bank of M narrow band filters 3202. The filter bank performs the matrix operations ⁇ for the analogue signals. The output is the signal y 3203 which is passed to optimizer 3204 which recovers an estimate of* 3205.
- the number of samples, M is limited by the number of narrow band filters in
- Non-stationary or time varying signal processing is possible.
- 3213 is a diagram of a sparse signal sampler using frequency shifting. 3213 presents a method for recovering the signal -v directly from the time domain signal y for a temporally stationary signal.
- the voltage controlled oscillator 3207 and narrow band U.S. Non-Provisional Application RIM Reference No. 35479-1 -US-PAT filter 3208 perform the operations of ⁇ in the analogue domain.
- Signal y 3206 is
- the number of samples M can be dynamically changed by controlling the
- the signal must be stationary or slowly time varying.
- FIG. 33 is a block diagram of a remote sampler utilizing continuous time sampling concepts described herein.
- Antenna 3301 receives a sparse signal and passes the signal to Downconverter 3305. Due to antenna characteristics, noise 3302 will be part of Received signal 3304, and its addition is indicated by adder 3303 (although this is not an actual structure, the addition of noise 3302 is indicated by an adder to show the nature of Received signal 3304). The signal is downconverted at 3305.
- the signal is correlated using a configuration received by the remote sampler from a remote central processor (not shown). Samples 3307 are then sent to Analog-to-Digital
- the converted samples are then sent along fiber optic 3309 to the solver (not shown).
- the Presence signal is a sum of columns from the ⁇ matrix.
- Appendices C and D present computer programs designed to address these issues.
- Appendix G is the provisional application filed April 15, 2009.
- multiple user equipments communicate over the uplink (UL) with the central brain (CB) via a collection of remote samplers (RSs).
- the downlink (DL) is provided by a base station tower.
- the UE transmissions appear at the receiving antenna of any given RS as a sum of the respective individual waveforms.
- the sum present on the RS antenna is denoted "g.”
- the RSs use a sampling technique that captures M samples at each RS (M may be different at different RSs).
- N CDMA chips may be sent per transmit waveform. If the receiver has chip-lock, then N samples can be retained by the CDMA receiver before despreading.
- a narrowband transmitter such as GSM is sending symbols using 8-PSK or GMSK modulation and a GSM receiver has accurate symbol timing, then 1 sample per symbol is required to identify the transmitted symbol.
- the number of samples passed from a given RS to the CB is M, where M is less than N when the UE is expected to transmit an S-sparse combination of the columns from the ⁇ matrix in use at the UE, where S is much less than N.
- the M-vector containing these samples is denoted y.
- the weaker signal may be present in the remote sampler after A to D conversion (ADC) at a level only comparable to the receiver circuit noise level.
- ADC A to D conversion
- the weaker signal comes from UE2 and the sparse signal from UE2 is denoted x2.
- the CB may have a poor success rate in detecting x2.
- the dynamic range of the ADC is increased based on a command from the CB.
- the weaker signal is now not overwhelmed by the receiver circuit noise.
- the CB will have better success detecting x2.
- the CB can adjust M, ⁇ , DR 1 sample timing, carrier offset and any other circuit parameter of the RS by a command sent from the CB to the RS along the connecting fiber.
- the CB can determine the steady state values for M and DR (and other parameters).
- the CB then instructs the RS on what value to use for M and DR (and other parameters). If the CB calculates that detection of the received signal is limited by additive thermal noise, the CB may send a command to increase current drain in a way which reduces the NF.
- An object of the disclosed system is to minimize current drain in a given RS when
- UEs in the area are not sending data.
- UE access to the system is broken in to two phases: i) Presence Signaling and ii) Payload Transmission.
- the UE will send sparse signals.
- RSs which are not supporting one or more UEs in Payload
- the RS front end circuitry may configure some components (LNA, mixer, PLL 1 ADC) for one regime or the other as commanded by the CB according the UL traffic load that the CB estimates is offered in the vicinity of a given RS.
- RS current drain will be tailored by the CB to suit UE demand for transmission of UL data, the status of RS battery level, for those RSs not powered by 110 V line power, will vary from one RS to the next because UE demand for service is not geographically uniform.
- the CB can maintain estimates of the expected battery lifetime of each RS and plan to replenish the batteries of those RSs in need.
- the CB may adjust current drain in real time operation to gather more samples, or samples corresponding to a higher DR or lower NTF, from a sampler, "RS_high”, vvith more battery power, if an RS, "RS_low", which is closest to a cluster of active UEs has low battery power.
- the CB can use the resulting samples from both RS_high and RS low to determine the transmitted data.
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US12/760,892 US20100290395A1 (en) | 2009-04-15 | 2010-04-15 | Sensor-based wireless communication systems using compressive sampling |
PCT/US2010/043747 WO2011014678A2 (en) | 2009-07-31 | 2010-07-29 | Sensor-based wireless communication systems using compressive sampling |
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Title |
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See also references of WO2011014678A2 * |
THOMAS CAMERON ET AL: "Analog Front End for 3G Femto Base Stations Brings Wireless Connectivity Home", 1 December 2008 (2008-12-01), pages 1 - 5, XP055133299, Retrieved from the Internet <URL:http://www.analog.com/library/analogdialogue/archives/42-12/femtocell.pdf> [retrieved on 20140805] * |
XUE LIU ET AL: "Optimal real-time sampling rate assignment for wireless sensor networks", ACM TRANSACTIONS ON SENSOR NETWORKS, vol. 2, no. 2, 1 May 2006 (2006-05-01), pages 263 - 295, XP055133247, ISSN: 1550-4859, DOI: 10.1145/1149283.1149288 * |
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