WO2023156639A1 - Method and apparatus for channel estimation in a mimo-ocdm system - Google Patents

Method and apparatus for channel estimation in a mimo-ocdm system Download PDF

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Publication number
WO2023156639A1
WO2023156639A1 PCT/EP2023/054114 EP2023054114W WO2023156639A1 WO 2023156639 A1 WO2023156639 A1 WO 2023156639A1 EP 2023054114 W EP2023054114 W EP 2023054114W WO 2023156639 A1 WO2023156639 A1 WO 2023156639A1
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Prior art keywords
pilot symbols
chirped
mimo
channel
signals
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PCT/EP2023/054114
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French (fr)
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Xing Ouyang
Paul Townsend
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University College Cork - National University Of Ireland, Cork
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Publication of WO2023156639A1 publication Critical patent/WO2023156639A1/en

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    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L25/00Baseband systems
    • H04L25/02Details ; arrangements for supplying electrical power along data transmission lines
    • H04L25/0202Channel estimation
    • H04L25/0204Channel estimation of multiple channels
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L5/00Arrangements affording multiple use of the transmission path
    • H04L5/003Arrangements for allocating sub-channels of the transmission path
    • H04L5/0048Allocation of pilot signals, i.e. of signals known to the receiver
    • H04L5/0051Allocation of pilot signals, i.e. of signals known to the receiver of dedicated pilots, i.e. pilots destined for a single user or terminal
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04BTRANSMISSION
    • H04B1/00Details of transmission systems, not covered by a single one of groups H04B3/00 - H04B13/00; Details of transmission systems not characterised by the medium used for transmission
    • H04B1/69Spread spectrum techniques
    • H04B2001/6912Spread spectrum techniques using chirp
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04BTRANSMISSION
    • H04B7/00Radio transmission systems, i.e. using radiation field
    • H04B7/02Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas
    • H04B7/04Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas using two or more spaced independent antennas
    • H04B7/06Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas using two or more spaced independent antennas at the transmitting station
    • H04B7/0613Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas using two or more spaced independent antennas at the transmitting station using simultaneous transmission
    • H04B7/0615Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas using two or more spaced independent antennas at the transmitting station using simultaneous transmission of weighted versions of same signal
    • H04B7/0619Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas using two or more spaced independent antennas at the transmitting station using simultaneous transmission of weighted versions of same signal using feedback from receiving side
    • H04B7/0621Feedback content
    • H04B7/0626Channel coefficients, e.g. channel state information [CSI]
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L25/00Baseband systems
    • H04L25/02Details ; arrangements for supplying electrical power along data transmission lines
    • H04L25/0202Channel estimation
    • H04L25/0224Channel estimation using sounding signals
    • H04L25/0226Channel estimation using sounding signals sounding signals per se
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L25/00Baseband systems
    • H04L25/02Details ; arrangements for supplying electrical power along data transmission lines
    • H04L25/0202Channel estimation
    • H04L25/024Channel estimation channel estimation algorithms
    • H04L25/0242Channel estimation channel estimation algorithms using matrix methods
    • H04L25/0248Eigen-space methods
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L27/00Modulated-carrier systems
    • H04L27/10Frequency-modulated carrier systems, i.e. using frequency-shift keying
    • H04L27/103Chirp modulation

Definitions

  • the present application is directed towards a channel estimation method for acquiring channel state information (CSI) for multiple-input multiple-output (MIMO) systems.
  • CSI channel state information
  • MIMO multiple-input multiple-output
  • MIMO Multiple-input multiple-output
  • OFDM orthogonal frequency- division multiplexing
  • OCDM orthogonal chirp-division multiplexing
  • OCDM is in essence a chirp spread spectrum (CSS) technique that achieves the Nyquist signalling rate, just as the OFDM to frequency-division multiplexing (FDM) signal.
  • CSS chirp spread spectrum
  • FDM frequency-division multiplexing
  • the chirps in OCDM signal are mutually orthogonal, and thus attain the maximum spectral efficiency in terms of the Nyquist signalling rate.
  • OCDM shows superior resilience in combating the detrimental effects in the communication systems, and outperforms other waveform modulation techniques, such as, OFDM.
  • the MIMO-OCDM combination can offer a more appealing physical layer solution for future broadband systems, such as the beyond 5G and 6G mobile networks, and wireless local area networks (WLAN), providing higher data rate and better reliability.
  • channel estimation is of crucial importance to guarantee the reliable recovery of the high-speed MIMO signals. Therefore, the present disclosure is focused on channel estimation and, in particular, pilot-based channel estimation schemes.
  • Blind channel estimation schemes do not need pilot symbols for training. However, without the use of pilot symbols, it takes a longer time for the system to converge on an accurate estimate of channel state information (CSI). In addition, systems using blind channel estimation schemes are susceptible to channel impairments, especially in MIMO scenarios.
  • the CSI estimation algorithms proposed for the MIMO-OFDM systems can be adapted for the MIMO-OCDM systems thanks to the compatibility of OCDM and OFDM.
  • drawbacks in the traditional CSI algorithms for the MIMO-based systems are transposed to OCDM systems when traditional CSI estimation algorithms are used with OCDM systems.
  • the dimensions of pilot matrices should be no less than the number of transmit antennas to reconstruct the full rank of the transfer matrices of the MIMO system.
  • the pilots should be transmitted over multiple OFDM/OCDM symbols. As a result, there needs to be redundancy in pilot allocation, or complicated algorithms need to be used to recover the CSL
  • pilot symbols should not overlap in either the time domain or the frequency domain. This is essential so that pilot symbols from different transmit (Tx) antennas can be distinguished at the receiver.
  • Tx transmit
  • silent pilots that contain no symbol information should be transmitted by the other Tx antennas in either the time domain or the frequency domain.
  • silent pilots reduce the spectral efficiency and the estimation accuracy of the estimated CSI is limited.
  • CN1980201 discloses performing channel estimation for a MIMO-OFDM signal, in that the transmit antennas transit pilot signals in the form of linear frequency modulation (chirp) signals.
  • the chirped pilots are set on even number OFDM subcarriers in the frequency domain, and zeros are set on the odd number OFDM subcarriers, there creating a time domain shifted copy.
  • the odd number OFDM subcarriers cannot estimate any information, which means it loses half of the information of the channel when performing channel estimation.
  • the shift in time domain has to be fixed to A//2/Vr with certain limitations as number of antenna increase.
  • CN1980201 avoids the silent symbol in traditional MIMO-OFDM channel estimation algorithms, it only partially guarantees the orthogonality on the even number of frequency subcarriers in the frequency domain, and also loses half of the pilot for channel estimation, which equivalently reduces the bandwidth utilization for pilot by half.
  • a Robust Baseband transceiver design for doubly dispersive channels discloses three different concepts for robust link-level performance under doubly-dispersive wireless channels, namely, i) channel estimation, ii) cyclic prefix (CP)-free transmission, and iii) waveform design.
  • a unique word-based channel estimation is employed, where the channel related errors are decoupled into channel estimation error (CEE) and Doppler error (DE).
  • CEE channel estimation error
  • DE Doppler error
  • Zadoff-Chu sequence Zadoff-Chu sequence
  • Zadoff-Chu sequence is used, just as in conventional 4G/5G systems, and the channel estimation is done in the frequency domain.
  • Zadoff-Chu sequence does not incorporate the property and advantages of the Fresnel transform, due to that there is no pulse compression. Also, in this way, the frequency domain average problem still exist.
  • the present disclosure is directed towards methods, transmitters, receivers and computer readable storage mediums, the features of which are set out in the appended claims.
  • the present disclosure is directed towards a method of estimating channel state information (CSI) of a MIMO channel.
  • the method comprises: transmitting pilot symbols from a plurality of transmission antennas, wherein: a number of pilot symbols are transmitted using the chirped signals based on Fresnel transform for generating OCDM signals at a plurality of receiver antennas, the number of pilot symbols overlap in time-domain, and a minimum of single symbol interval is sufficient to estimate the transfer matrix of the MIMO system. Preferably no silent pilot symbols are transmitted.
  • the present application is directed towards solving the above problems through using chirped pilot symbols are used for channel acquisition in Ml MO-based systems.
  • the present disclosure is directed towards providing improved channel estimation methods and systems for MIMO-based systems which improve the spectral efficiency of channel estimation and, in addition, improve the estimation accuracy thereby providing better performance.
  • the channel estimation methods and systems of the present invention employ the orthogonal chirps based on the Fresnel transform, and choose several chirps without the limitation of the cyclic shift of A//2/Vr.
  • the cyclic shift limitation is independent of the number of TX antennas, /Vr. Rather, the channel estimation method of the present invention is extremely flexible.
  • the chirps are orthogonal in both time and frequency domain. In other words, in the frequency domain, there is no zeros setting on even or odd frequency subcarriers and no interpolation is needed. In the time domain, all the received pilot signals may be used for pilot recovery and channel estimation without discarding any useful information, which means no bandwidth utilization reduction at all.
  • the transmitter of the present invention choses the pilot signal, and stores in memory and cyclic shift.
  • the receiver of the present invention transform the received pilot by a Fresnel transform per antenna and extract the MIMO channel state information, thereby facilitating simpler pilot generation, pilot recovery and channel estimation in contrast to prior art systems that requires separate IFFTs at the transmitter and receivers.
  • the chirped signals used to transmit the number of pilot symbols are linear frequency modulated signals that are orthogonal to each other based on the Fresnel transform.
  • the method optionally also comprises selecting a pilot symbol of each transmission antenna of the plurality of transmission antennas, whereby the pilot symbols are distinguishable upon reception with pulse compressed operation, and wherein the pilot symbols when are overlapped in both time and frequency domains.
  • each chirped signal used to transmit a pilot symbol is a cyclic shift of another chirped signal used to transmit another pilot symbol. More preferably, the method also comprises performing a cyclic shift on a chirped signal, wherein performing a cyclic shift comprises performing either a discrete Fresnel transform (DFnT) or an inverse discrete Fresnel transform (IDFnT).
  • DDFnT discrete Fresnel transform
  • IDFnT inverse discrete Fresnel transform
  • the number of pilot symbols are transmitted simultaneously from all the plurality transmit antennas in a single time interval over the full bandwidth of the channel.
  • the present application also discloses a method of estimating channel state information (CSI) of a MIMO channel comprising receiving a number of pilot symbols that were transmitted using chirped signals from the plurality of transmission antennas, wherein the number of pilot symbols overlap in time- domain, and no silent pilot symbols are received.
  • CSI channel state information
  • the method also comprises performing an inverse cyclic shift on the received chirped signals. More preferably, the inverse cyclic shift is performed using either a discrete Fresnel transform (DFnT) or an inverse discrete Fresnel transform (IDFnT).
  • DDFnT discrete Fresnel transform
  • IDFnT inverse discrete Fresnel transform
  • the present application is also directed towards a transmitter for estimating channel state information (CSI) of a MIMO channel comprising: a plurality of transmission antennas configured to transmitting pilot symbols, wherein: the transmitter is configured to encode the pilot symbols into chirped signals; and the transmitter is configured to transmit pilot symbols such that they overlap in time- domain, and no silent pilot symbols are transmitted.
  • CSI channel state information
  • the transmitter is configured to perform a cyclic shift on a chirped signal, wherein performing a cyclic shift comprises choosing suitable vectors from either a discrete Fresnel transform (DFnT) or an inverse discrete Fresnel transform (IDFnT) matrix.
  • DDFnT discrete Fresnel transform
  • IDFnT inverse discrete Fresnel transform
  • a receiver is also provided.
  • the receiver is for estimating channel state information (CSI) of a MIMO channel and comprises: a plurality of receivers configured to receive a number of pilot symbols that were transmitted using chirped signals from a plurality of transmission antennas, wherein the number of pilot symbols overlap in time-domain, and no silent pilot symbols are received.
  • CSI channel state information
  • the receiver is configured to perform a pulse compression on a plurality of overlapped chirped signals, which includes performing either a discrete Fresnel transform (DFnT) or an inverse discrete Fresnel transform (IDFnT).
  • DFnT discrete Fresnel transform
  • IDFnT inverse discrete Fresnel transform
  • a computer readable storage medium comprises instructions which, when executed by a processor operatively couple to a plurality of antenna, cause the processor to perform at least one of the methods from this summary of the invention described above.
  • a mobile computing device comprising either one of the transmitters describe above, one of the receivers described above, or both.
  • FIG. 1 is a block diagram of a preferred spatial multiplexing (SM) MIMO system
  • Figure 2 illustrates a set of chirped pilots
  • Figure 3a shows a one-shot observation of received pilot signals
  • FIG. 3b shows recovered CFR functions of the MIMO system
  • Figure 4 shows the theoretical MSE Vs SNR performance for different numbers of TX antennas
  • Figure 5 is a pair of 2D plot diagrams illustrating the performance of a channel estimator
  • Figure 6 illustrates the performance of the proposed estimator against the window width
  • Figure 7 shows a performance comparison of an estimator in accordance with the present disclosure and a prior art SAW estimator
  • Figure 8 shows MSE performance as a function of the received SNR for both the estimator of the present disclosure and an LS estimator with SAW algorithm.
  • the present application is directed towards solving the above problems through using chirped pilot symbols based on Fresnel transform for channel acquisition in Ml MO-based systems.
  • linear-frequency modulated signals that are orthogonal to each other are used to transmit the pilot symbols.
  • the method exploits the time-frequency properties of the chirped symbols.
  • the orthogonal chirped pilot symbols are transmitted simultaneously from the transmit antennas (preferably all the transmit antennas) in a single time interval.
  • the chirped pilot symbols from different transmit antennas overlap in both time and frequency domains. In other words, all the chirped pilot symbols occupy a single time interval over the entire bandwidth.
  • the pilot symbols are distinguishable at the receiver.
  • the transfer matrix of the MIMO channel can be estimated accordingly.
  • the CSI of a MIMO channel is acquired within a single symbol interval.
  • the spectral efficiency of the system is significantly improved.
  • the CSI estimation accuracy is also improved due to the unique time-frequency property of the chirped pilots.
  • a set of chirped pilot symbols is chosen from the Fresnel basis and assigned to the transmit antennas for channel estimation, without inserting any silent symbols.
  • the received pilot symbols from various transmit antennas superpose in time and occupy the entire bandwidth, they are distinguishable thanks to the orthogonality of the chirps and the convolution preservation property of the Fresnel transform.
  • the transfer matrices of the MIMO system can be easily estimated and used for signal recovery after pulse compression.
  • This CSI estimation technique avoids the problems related to the bandwidth wastage caused by silent symbols through providing better spectral efficiency (SE).
  • SE spectral efficiency
  • this CSI estimation technique also improves the estimation accuracy by providing a CSI estimation better tailored than other techniques to the unique features of the chirped pilots.
  • Section I the system model of the MIMO-OCDM system is disclosed.
  • a channel estimation algorithm according to the present disclosure is introduced in Section II, and the performance of the algorithm is analyzed in comparison with the least-square (LS) algorithm in Section III.
  • Section IV provides the simulation results to study the performance of the proposed algorithm and validate its advantage.
  • Figure 1 shows a preferred spatial multiplexing (SM) MIMO system 1000 with M T transmit (TX) antennas 1 101 and M R receive (RX) antennas 1201 , where M R ⁇ M T > 1 .
  • TX transmit
  • RX receive
  • STBC space-time block code
  • the bit stream is serial-to-parallel (S/P) converted, grouped in blocks, and mapped to symbols for modulation.
  • the symbols are then processed by the MIMO encoder 1 102 and divided into M T streams 1 103 for OCDM waveform modulation.
  • OCDM modulation generates the signal instead using a discrete Fresnel transform (DFnT).
  • DFT discrete Fourier transform
  • DFnT discrete Fresnel transform
  • This transform can be efficiently realized using fast Fresnel transform (FFnT) algorithms.
  • FFnT algorithms essentially have the same arithmetic complexity as the fast Fourier transform (FFT).
  • Guard intervals are inserted between each OCDM symbol to avoid inter- symbol interference (IS I) from adjacent symbols caused by the spread of differing delays which are typical of multipath systems such as MIMO.
  • IS I inter- symbol interference
  • the Gl should be in the form of a cyclic prefix (CP) to maintain circular-convolution.
  • CP cyclic prefix
  • the length of the CP should be sufficiently larger than the maximum delay spread (i.e. the difference in propagation times between the fastest propagation path and the slowest propagation path) of the channel.
  • P/S parallel-to-serial
  • the transmitted signals will go through the wireless MIMO channel with attenuation, reflection, and scattering, and arrive at the receiver 1200.
  • the MIMO channel is quasistatic, i.e., the state of the channel remains unchanged within one frame and varies from frame to frame.
  • ADCs analog-to-digital converters
  • the OCDM signals are S/P converted with the GIs removed, and grouped into blocks.
  • the single-tap frequency-domain equalization can be adapted to efficiently recover the MIMO-OCDM signals.
  • the received signal on the p-th RX antenna is transformed by a DFT to the frequency domain, as and is the channel frequency response (CFR) function from the q-th TX antenna to the p-th RX antenna, w ⁇ ( P )(n) is the frequency domain additive noise on the p- th RX antenna, and T*(m) is a phase coefficient, which is in fact the eigenvalue of DFnT with respect to (w.r.t.) DFT.
  • CFR channel frequency response
  • the third equation in (3) is arrived by using the Eigen-decomposition identity of the DFnT, i.e., where ⁇ * (m) is the m-th eigenvalue of IDFnT w.r.t DFT.
  • the system in matrix form Stacking the received signal in (3) w.r.t. p, the received signal vector in the m-th frequency bin is Where is the received frequency-domain signal vector, and j s the DFT of transmitted symbol vector in the m-th frequency bin with its q-th element defined as is the channel transfer matrix, and j s the frequency-domain noise vector.
  • the effect of the channel imposed on the received signal can be compensated.
  • the transmitted symbols on each layer can be readily recovered with another IDFT.
  • the symbols on the q-th TX antenna for decision are: where is the q-th entry of the equalized noise vector in the frequency domain. It should be noted that although the ZF equalizer can completely compensate the channel, the noise in the vicinity of frequency nulls will be severely enhanced.
  • the MMSE equalization can effectively alleviate the noise enhancement problem as the MMSE coefficients approach to the matched filter in low SNR regime and the ZF equalizer for high SNR.
  • the pilots can be simultaneously transmitted over the M T TX antennas within a single OCDM symbol period.
  • the receiver is able to recover the CSI of the MIMO system from the received pilot signals by utilizing the pulse- compression property of
  • the transmitted pilot signals are
  • Equation (14) Substituting equation (14) into equation (2) yields the received pilot signals, and performing DFnT on the received pilot signal on the p-th RX antenna, we have The second equation is obtained by exploiting the convolution-preservation property of the DFnT that the Fresnel transform of a convolution of two signals equals the Fresnel transform of either one convolving with the other.
  • the received pilot on the p-th RX antenna is the superposition of the CIR from all the TX antennas to the pth RX antenna shifted by ⁇ D q ⁇ .
  • the domain of the sequences and functions, , and h p , q (n), etc. is a cyclic group of order N. That is, when imposing the sequence domain n with shift operation, one has
  • the CIR functions can be recovered without any inter-antenna interference.
  • the CIR function from the q-th TX antenna to the p-th RX antenna can be estimated using merely shift operations, as by properly confining n.
  • ⁇ D q ⁇ are in order, i.e., 0 ⁇ D1 ⁇ ... ⁇ D MT ⁇ N, without loss of generality.
  • ⁇ D q ⁇ are not in order, we can always find a mapping f Q : q ⁇ q’, so that ⁇ D q ⁇ are in order.
  • the P x Q CIR functions can be formulated based on equation (18) to characterize the state of the MIMO channel for signal recovery. For the choice of the chirped pilots, the most intuitive way is to uniformly choose the chirped pilots with
  • the chirped pilots 200a, 200b, 200c are cyclic shift of each another.
  • the received pilot signals will be the superposition of the transmitted pilots as indicated in (2).
  • Pulse compression are achieved by performing a DFnT on the received pilot, given in (15).
  • Fig. 3a provides a one- shot observation of the received pilot signals. It can be seen that the received pilots after pulse compression are the superposition of the CIR functions from different TX antennas without interfering each other. Thus, the CIR functions can be readily retrieved based on (17) for signal recovery and channel equalization.
  • the CFR functions can be obtained by DFTs, as where w ⁇ ⁇ ( p , q ) (m) is the frequency-domain noise defined as for n ⁇ D p .
  • the transfer matrix on the m-th frequency bin is formed with its (p,q )-th element to be in (21 ).
  • the performance of a channel estimation algorithm in accordance with the present disclosure is compared with the least-square (LS) channel estimator of traditional MIMO-OFDM systems.
  • LS least-square
  • MIMO-OCDM systems A discussion about the practical implementation for MIMO-OCDM systems is also provided. Further, an effective noise suppression algorithm is introduced.
  • the MIMO channel is linear.
  • the MIMO channel is also assumed to be quasi-static. More preferably the MIMO channel is also assumed to be stochastic.
  • the additive noises are independent and identically distributed circularly symmetric Gaussian with zero means and variance No.
  • the MSE of the proposed estimation is given by where js the noise matrix with its (p,q )-th element to be w ⁇ ⁇ (m ) as defined in equation (22).
  • the detailed derivation is provided in Appendix A.
  • the chirped pilots can be transmitted over multiple symbols to improve the estimation accuracy.
  • the same overhead as the LS estimator in Section IV-A, i.e., using M LS symbols.
  • the performance of the proposed estimator can be further improved by a factor of M S , as
  • the MSE of the proposed estimator is times that of the LS estimator. That is, with the same overhead, the performance of the proposed estimator is improved by a factor of Mr to the LS estimator.
  • sliding average window is an effective algorithm adopted in the 4G/5G systems to improve the estimation accuracy [39].
  • CFRs are estimated through the pilots, as shown in equation (25), adjacent pilots are averaged in the frequency domain to suppress the noise.
  • the window width should be carefully designed. In the 4G/5G systems, as the SAW algorithm will generally introduce distortion on the estimated CSL In practice the average window width should be chosen no greater than 19 as a balance between the noise suppression and the estimation deviation.
  • a more efficient and unbiased smoothing algorithm dedicated for the proposed estimator is provided.
  • This improvement is achieved by exploiting the pulse-compression property of chirped waveforms based on the Fresnel transform.
  • the new smoothing algorithm is based on the realisation that the received pilot signal after pulse compression is equivalent to the sum of the pilots from different TX antennas, as shown in equation (15).
  • the noise exceeding the length of CIR can be removed in addition to the pilots from unwanted TX antennas.
  • FIR finite impulse response
  • a more accurate estimation can be obtained by filtering out the excessive noise.
  • a window function ⁇ G (n) is defined. This function can be a rectangular function of width L G .
  • Other types of window function can also be adopted to remove the excessive noise, such as e.g. a raised cosine function.
  • the windowed CIR functions are accordingly obtained as
  • the MSE’s of both estimators consist of two sub-terms; one is the PDP term and the other is noise term.
  • the noise term is instead proportional to Lg, and smaller the window width smaller the noise. This is because the proposed algorithm rejects the excessive noise beyond the window.
  • NRW noise- rejection window
  • the PDP term is the sum of the tail of the PDP function outside the window. Considering the FIR feature of real- world channels, that
  • 2 0 for n ⁇ L CIR , the estimation of the NRW is unbiased.
  • the SAW algorithm suppresses the noise by smoothing the CFR function, and the estimation deviates from the actual system. As a result, there is always a trade-off between the noise and deviation yielding a sub-optimal performance.
  • the NRW algorithm removes excessive noise directly removed the estimation after pulse compression.
  • the estimation is unbiased if the window is wider than the maximum delay spread of the channel, i.e., , and can optimally converge to the system under estimation. Even if the window width is reasonably smaller than L CIR , there won’t be severe distortion because the tails of the CIR functions are usually much smaller than its main path. For example, for a channel with exponential PDP, which is applicable for most practical channels, the tail beyond 3 times of the root mean square (rms) delay spread is less than 5 percent of the total energy.
  • the length of Gl is 256.
  • the analysis is based on a multipath fading MIMO channel with an exponential PDP. This is a typical channel model in practical systems.
  • the PDP function for such channels is defined as where TO is the rms delay spread of the channel.
  • the analytical MSE can be further given by as derived in (34) in Appendix B.
  • the optimal window width and the minimum MSE are given in equations (36) and (37), respectively.
  • Figure 5 is a pair of 2D plot diagrams illustrating the performance of a channel estimator using NRW algorithm.
  • the channel is part of a MIMO-OCDM system with three TX antennas and 4 RX antennas.
  • the MSE is a monotonic function, and it decreases along with the SNR axis.
  • the MSE is a convex function with respect to the window width, Lg. For a fixed SNR, there exists an optimal Lg for providing the minimum MSE.
  • the optimal window width is given as a function of SNR (see equation (36) in Appendix B). For a given SNR, a larger Lg allows more noise passing through but has much less deviation. When the window width is much larger than the delay spread of the system, , the remainder noise passing through the window determines the MSE performance. The MSE goes larger as Lg increases because the noise term is linearly proportional to the window width.
  • the MSE of the proposed estimator is the interplay of the noise and estimation deviation.
  • the widow width is relatively smaller than the delay spread, the deviation of the estimation will dominate the performance degradation.
  • the MSE degrades dramatically as Lg decreases. Similar trend can be observed in Fig. 5a and 5b. The difference between them is that a larger delay spread results in worse performance, and the optimal window width is scaled by a factor of ⁇ ⁇ 0 .
  • Figure 6 illustrates the performance of the proposed estimator against the window width.
  • figure 6 shows the CIR and noise terms are depicted in the dashed and the dotted lines, respectively.
  • the noise term is inversely proportional to the window width, Lg, as indicated in equation (29).
  • Lg window width
  • the MSE curve is well fitted with the corresponding noise curve for Lg > 128 (16ro), and increases with .
  • the deviation of the CIR term in this case is less than -58 dB for , which is negligible.
  • the MSE degrades dramatically, for values of Lg ⁇ 64 (8ro).
  • the slope of the CIR curves is much steeper curve of the noise term discussed with reference to Figure 5. This is because the deviation increases exponentially as becomes narrower. It also implies that an unbiased estimator is usually preferred in practice.
  • Figure 7 shows a performance comparison of an estimator in accordance with the present disclosure and a prior art SAW estimator.
  • figure 7 shows that MSEs of both the proposed and the SAW algorithms. Both algorithms effectively suppress the noise term as shown by the overlap of the dotted lines overlap for both algorithms.
  • the MSE performances of the estimators is significantly different due to the deviations of their estimations.
  • the averaging operation is performed in the frequency domain, and the CIR function is equivalent to being weighted by a Dirichlet sine function.
  • the SAW estimation always deviates from the MIMO system under estimation, i.e., L S > 1 , as indicated by the dashed lines in Fig. 7.
  • L S > 1 the SAW estimation
  • the SAW algorithm is also unbiased. However, in practice this condition cannot realistically be satisfied in real wireless systems.
  • the proposed estimator In contrast, in the proposed estimator, there is negligible deviation until the window size is comparable to delay spread of the channel. Strictly speaking, the proposed estimator is unbiased as long as
  • Figure 8 shows MSE performance as a function of the received SNR for both the estimator of the present disclosure and an LS estimator with SAW algorithm. Both systems equipped 3 TX antennas and 4 RX antennas. The MSE of both estimators without any smooth/average algorithms (circled lines) has no error floor, and the estimator of the present disclosure exhibits better sensitivity to the distortion than the SAW algorithm.
  • the system of the present disclosure requires 5 dB less SNR to achieve the same MSE than the LS estimator if there are no smoothing algorithms applied.
  • the MSE performance is improved when the NRW algorithm is applied.
  • the MSE reduces as the noise-rejection window width becomes smaller in the low SNR region.
  • the MSE of the estimation decreases, especially in the low SNR region.
  • the embodiments in the invention described with reference to the drawings comprise a computer apparatus and/or processes performed in a computer apparatus.
  • the invention also extends to computer programs, particularly computer programs stored on or in a carrier adapted to bring the invention into practice.
  • the program may be in the form of source code, object code, or a code intermediate source and object code, such as in partially compiled form or in any other form suitable for use in the implementation of the method according to the invention.
  • the carrier may comprise a storage medium such as ROM, e.g. a memory stick or hard disk.
  • the carrier may be an electrical or optical signal which may be transmitted via an electrical or an optical cable or by radio or other means.

Abstract

A method of estimating channel state information (CSI) of a Multiple Input Multiple Output (MIMO) channel includes transmitting pilot symbols from a plurality of transmission antennas, wherein a number of pilot symbols are transmitted using chirped signals based on the Fresnel transform for generating Orthogonal chirp-division multiplexing (OCDM) signals, the number of pilot symbols overlap in time-domain, a single symbol interval is utilized to estimate a transfer matrix of the MIMO channel, and no silent pilot symbols are transmitted.

Description

Title
Method and Apparatus for Channel Estimation in a MIMO-OCDM System
Field
The present application is directed towards a channel estimation method for acquiring channel state information (CSI) for multiple-input multiple-output (MIMO) systems.
Background
Multiple-input multiple-output (MIMO) is an antenna technology which multiplies the capacity of a wireless system by elegantly exploiting the multipath transmission of a radio link. MIMO has been already proved as the one of the most successful techniques in broadband communications, such as, WiFi, 5G and beyond. In MIMO system, channel estimation is the most crucial functional block required to track the multi-antenna transmission channel to ensure the reliable recovery of the high-speed signals. By incorporating other advanced techniques with MIMO, high-speed communications can be realized for not only wireless systems but also other types of systems, such as power-line and fiber- optic systems. For example, the combination of MIMO and orthogonal frequency- division multiplexing (OFDM) has been proven the most successful solution in the 4G and recent 5G mobile networks as the air interface to support high-speed, low-latency wireless access to broadband services.
Recently, orthogonal chirp-division multiplexing (OCDM) has been proposed as an advanced modulation technique, and been both theoretically and experimentally demonstrated as a promising solution for high-speed communications. In contrast to the OFDM that modulates a stream of high-speed data onto a large number of narrowband subcarriers parallel in frequency, OCDM instead multiplexes a large group of linearly frequency-modulated (LFM) waveforms, termed as chirps, for high-speed data modulation.
OCDM is in essence a chirp spread spectrum (CSS) technique that achieves the Nyquist signalling rate, just as the OFDM to frequency-division multiplexing (FDM) signal. Compared to the traditional CSS techniques, which are notorious for their poor spectral efficiency because of the non-orthogonal chirped waveforms, the chirps in OCDM signal are mutually orthogonal, and thus attain the maximum spectral efficiency in terms of the Nyquist signalling rate. On the other hand, by virtue of the spread-spectrum feature inheriting from CSS, OCDM shows superior resilience in combating the detrimental effects in the communication systems, and outperforms other waveform modulation techniques, such as, OFDM. As a result, one can expect that the MIMO-OCDM combination can offer a more appealing physical layer solution for future broadband systems, such as the beyond 5G and 6G mobile networks, and wireless local area networks (WLAN), providing higher data rate and better reliability.
In MIMO-based systems, channel estimation is of crucial importance to guarantee the reliable recovery of the high-speed MIMO signals. Therefore, the present disclosure is focused on channel estimation and, in particular, pilot-based channel estimation schemes.
Blind channel estimation schemes do not need pilot symbols for training. However, without the use of pilot symbols, it takes a longer time for the system to converge on an accurate estimate of channel state information (CSI). In addition, systems using blind channel estimation schemes are susceptible to channel impairments, especially in MIMO scenarios.
The CSI estimation algorithms proposed for the MIMO-OFDM systems, can be adapted for the MIMO-OCDM systems thanks to the compatibility of OCDM and OFDM. However, there exist some drawbacks in the traditional CSI algorithms for the MIMO-based systems. These drawbacks are transposed to OCDM systems when traditional CSI estimation algorithms are used with OCDM systems. For example, the dimensions of pilot matrices should be no less than the number of transmit antennas to reconstruct the full rank of the transfer matrices of the MIMO system. The pilots should be transmitted over multiple OFDM/OCDM symbols. As a result, there needs to be redundancy in pilot allocation, or complicated algorithms need to be used to recover the CSL
To put it differently, pilot symbols should not overlap in either the time domain or the frequency domain. This is essential so that pilot symbols from different transmit (Tx) antennas can be distinguished at the receiver. In other words, when one Tx antenna is transmitting a pilot symbol, silent pilots that contain no symbol information should be transmitted by the other Tx antennas in either the time domain or the frequency domain. However, silent pilots reduce the spectral efficiency and the estimation accuracy of the estimated CSI is limited.
CN1980201 discloses performing channel estimation for a MIMO-OFDM signal, in that the transmit antennas transit pilot signals in the form of linear frequency modulation (chirp) signals. Herein, the chirped pilots are set on even number OFDM subcarriers in the frequency domain, and zeros are set on the odd number OFDM subcarriers, there creating a time domain shifted copy. However, as a result, in the frequency domain, the odd number OFDM subcarriers cannot estimate any information, which means it loses half of the information of the channel when performing channel estimation. In addition, in the time domain, as a result of the zeros on the odd number OFDM subcarriers, the shift in time domain has to be fixed to A//2/Vr with certain limitations as number of antenna increase. Equivalently, the loss of half of the information in the frequency domain, means half of the time-domain information is lost. This makes the pilot recovering and channel estimation at the receiver becomes quite different and complicated. Although, CN1980201 avoids the silent symbol in traditional MIMO-OFDM channel estimation algorithms, it only partially guarantees the orthogonality on the even number of frequency subcarriers in the frequency domain, and also loses half of the pilot for channel estimation, which equivalently reduces the bandwidth utilization for pilot by half.
The document titled “Channel estimation for MIMO space time coded OTFS under doubly selective channels” by Bomfin Roberto et al. discloses a MIMO transmission scheme in which data is transmitted using OTFS, but each data frame is bracketed by a “unique word”. The unique word may be regarded as a chirped pilot signal. However, for the complexity involving matrix operation, said method is not practical in real system. Also, the channel estimation disclosed in said document is only for CDD systems, which is equivalent to a single-input multiple output systems rather than Ml MO-based systems.
Another document titled as “A Robust Baseband transceiver design for doubly dispersive channels” by Bomfin Roberto et al. discloses three different concepts for robust link-level performance under doubly-dispersive wireless channels, namely, i) channel estimation, ii) cyclic prefix (CP)-free transmission, and iii) waveform design. A unique word-based channel estimation is employed, where the channel related errors are decoupled into channel estimation error (CEE) and Doppler error (DE). A polyphase sequence, called Zadoff-Chu sequence, is used, just as in conventional 4G/5G systems, and the channel estimation is done in the frequency domain. However, the Zadoff-Chu sequence does not incorporate the property and advantages of the Fresnel transform, due to that there is no pulse compression. Also, in this way, the frequency domain average problem still exist.
It is an object therefore to provide an improved channel estimation method for acquiring CSI at the receiver for MIMO systems to overcome at least one of the above-mentioned problems.
Summary
The present disclosure is directed towards methods, transmitters, receivers and computer readable storage mediums, the features of which are set out in the appended claims. In particular, the present disclosure is directed towards a method of estimating channel state information (CSI) of a MIMO channel. The method comprises: transmitting pilot symbols from a plurality of transmission antennas, wherein: a number of pilot symbols are transmitted using the chirped signals based on Fresnel transform for generating OCDM signals at a plurality of receiver antennas, the number of pilot symbols overlap in time-domain, and a minimum of single symbol interval is sufficient to estimate the transfer matrix of the MIMO system. Preferably no silent pilot symbols are transmitted. The present application is directed towards solving the above problems through using chirped pilot symbols are used for channel acquisition in Ml MO-based systems. In particular, the present disclosure is directed towards providing improved channel estimation methods and systems for MIMO-based systems which improve the spectral efficiency of channel estimation and, in addition, improve the estimation accuracy thereby providing better performance.
The channel estimation methods and systems of the present invention employ the orthogonal chirps based on the Fresnel transform, and choose several chirps without the limitation of the cyclic shift of A//2/Vr. The cyclic shift limitation is independent of the number of TX antennas, /Vr. Rather, the channel estimation method of the present invention is extremely flexible. Moreover, the chirps are orthogonal in both time and frequency domain. In other words, in the frequency domain, there is no zeros setting on even or odd frequency subcarriers and no interpolation is needed. In the time domain, all the received pilot signals may be used for pilot recovery and channel estimation without discarding any useful information, which means no bandwidth utilization reduction at all. The transmitter of the present invention choses the pilot signal, and stores in memory and cyclic shift. The receiver of the present invention transform the received pilot by a Fresnel transform per antenna and extract the MIMO channel state information, thereby facilitating simpler pilot generation, pilot recovery and channel estimation in contrast to prior art systems that requires separate IFFTs at the transmitter and receivers.
Preferably, the chirped signals used to transmit the number of pilot symbols are linear frequency modulated signals that are orthogonal to each other based on the Fresnel transform.
The method optionally also comprises selecting a pilot symbol of each transmission antenna of the plurality of transmission antennas, whereby the pilot symbols are distinguishable upon reception with pulse compressed operation, and wherein the pilot symbols when are overlapped in both time and frequency domains.
Preferably, each chirped signal used to transmit a pilot symbol is a cyclic shift of another chirped signal used to transmit another pilot symbol. More preferably, the method also comprises performing a cyclic shift on a chirped signal, wherein performing a cyclic shift comprises performing either a discrete Fresnel transform (DFnT) or an inverse discrete Fresnel transform (IDFnT).
Preferably, the number of pilot symbols are transmitted simultaneously from all the plurality transmit antennas in a single time interval over the full bandwidth of the channel.
The present application also discloses a method of estimating channel state information (CSI) of a MIMO channel comprising receiving a number of pilot symbols that were transmitted using chirped signals from the plurality of transmission antennas, wherein the number of pilot symbols overlap in time- domain, and no silent pilot symbols are received.
Preferably, the method also comprises performing an inverse cyclic shift on the received chirped signals. More preferably, the inverse cyclic shift is performed using either a discrete Fresnel transform (DFnT) or an inverse discrete Fresnel transform (IDFnT).
The present application is also directed towards a transmitter for estimating channel state information (CSI) of a MIMO channel comprising: a plurality of transmission antennas configured to transmitting pilot symbols, wherein: the transmitter is configured to encode the pilot symbols into chirped signals; and the transmitter is configured to transmit pilot symbols such that they overlap in time- domain, and no silent pilot symbols are transmitted.
Preferably, the transmitter is configured to perform a cyclic shift on a chirped signal, wherein performing a cyclic shift comprises choosing suitable vectors from either a discrete Fresnel transform (DFnT) or an inverse discrete Fresnel transform (IDFnT) matrix.
A receiver is also provided. The receiver is for estimating channel state information (CSI) of a MIMO channel and comprises: a plurality of receivers configured to receive a number of pilot symbols that were transmitted using chirped signals from a plurality of transmission antennas, wherein the number of pilot symbols overlap in time-domain, and no silent pilot symbols are received.
Preferably, the receiver is configured to perform a pulse compression on a plurality of overlapped chirped signals, which includes performing either a discrete Fresnel transform (DFnT) or an inverse discrete Fresnel transform (IDFnT).
A computer readable storage medium is also provided. The computer readable storage medium comprises instructions which, when executed by a processor operatively couple to a plurality of antenna, cause the processor to perform at least one of the methods from this summary of the invention described above.
Further, a mobile computing device comprising either one of the transmitters describe above, one of the receivers described above, or both.
Brief Description of the Drawings
The invention will be more clearly understood from the following description of an embodiment thereof, given by way of example only, with reference to the accompanying drawings, in which:-
Figure 1 is a block diagram of a preferred spatial multiplexing (SM) MIMO system;
Figure 2 illustrates a set of chirped pilots;
Figure 3a shows a one-shot observation of received pilot signals;
Figure 3b shows recovered CFR functions of the MIMO system;
Figure 4 shows the theoretical MSE Vs SNR performance for different numbers of TX antennas; Figure 5 is a pair of 2D plot diagrams illustrating the performance of a channel estimator;
Figure 6 illustrates the performance of the proposed estimator against the window width;
Figure 7 shows a performance comparison of an estimator in accordance with the present disclosure and a prior art SAW estimator; and
Figure 8 shows MSE performance as a function of the received SNR for both the estimator of the present disclosure and an LS estimator with SAW algorithm.
Detailed Description of the Drawings
As noted above, the present application is directed towards solving the above problems through using chirped pilot symbols based on Fresnel transform for channel acquisition in Ml MO-based systems. Preferably, linear-frequency modulated signals that are orthogonal to each other are used to transmit the pilot symbols. The method exploits the time-frequency properties of the chirped symbols. According to the present disclosure, the orthogonal chirped pilot symbols are transmitted simultaneously from the transmit antennas (preferably all the transmit antennas) in a single time interval. Thus, the chirped pilot symbols from different transmit antennas overlap in both time and frequency domains. In other words, all the chirped pilot symbols occupy a single time interval over the entire bandwidth. By carefully choosing and assigning the orthogonal chirped pilot symbols for different transmit antennas, the pilot symbols are distinguishable at the receiver. Thus, the transfer matrix of the MIMO channel can be estimated accordingly. As a result, according to the present disclosure the CSI of a MIMO channel is acquired within a single symbol interval. Thus, the spectral efficiency of the system is significantly improved. Furthermore, the CSI estimation accuracy is also improved due to the unique time-frequency property of the chirped pilots.
According to the present disclosure, a set of chirped pilot symbols is chosen from the Fresnel basis and assigned to the transmit antennas for channel estimation, without inserting any silent symbols. At the receiver, although the received pilot symbols from various transmit antennas superpose in time and occupy the entire bandwidth, they are distinguishable thanks to the orthogonality of the chirps and the convolution preservation property of the Fresnel transform.
As a result, the transfer matrices of the MIMO system can be easily estimated and used for signal recovery after pulse compression. This CSI estimation technique avoids the problems related to the bandwidth wastage caused by silent symbols through providing better spectral efficiency (SE). In addition, this CSI estimation technique also improves the estimation accuracy by providing a CSI estimation better tailored than other techniques to the unique features of the chirped pilots.
The rest of this disclosure is organized as follows: in Section I, the system model of the MIMO-OCDM system is disclosed. A channel estimation algorithm according to the present disclosure is introduced in Section II, and the performance of the algorithm is analyzed in comparison with the least-square (LS) algorithm in Section III. Section IV provides the simulation results to study the performance of the proposed algorithm and validate its advantage.
For the avoidance of doubt, normal italic letters are used to denote variables, and boldface lowercase and boldface capital letters for vectors and matrices, respectively. The superscript, (·)*, is complex conjugate operator, and (·)T, (·)H, and denotes respectively: the transpose, Hermitian transpose, and pseudo- inverse of a matrix. Tr{·} and
Figure imgf000011_0001
are respectively the trace and Frobenius norm of a matrix.
Figure imgf000011_0004
is the circular convolution. 8 {·} is the expectation or ensemble average operator.
Figure imgf000011_0002
is the discrete Fourier transform (DFT), and the
Figure imgf000011_0003
discrete Fresnel transform (DFnT).
I. SYSTEM MODEL OF MIMO-OCDM
Figure 1 shows a preferred spatial multiplexing (SM) MIMO system 1000 with MT transmit (TX) antennas 1 101 and MR receive (RX) antennas 1201 , where MR ≥ MT > 1 . Those skilled in the art will of course recognise that, the channel estimation method and systems of the present application can be readily adapted for other types of MIMO systems. For example, space-time block code (STBC) MIMO, for which MR < MT, could also be used.
At the transmitter 1 100, the bit stream is serial-to-parallel (S/P) converted, grouped in blocks, and mapped to symbols for modulation. The symbols are then processed by the MIMO encoder 1 102 and divided into MT streams 1 103 for OCDM waveform modulation. In comparison to OFDM that generates the time- domain signal by the discrete Fourier transform (DFT), OCDM modulation generates the signal instead using a discrete Fresnel transform (DFnT). This transform can be efficiently realized using fast Fresnel transform (FFnT) algorithms. FFnT algorithms essentially have the same arithmetic complexity as the fast Fourier transform (FFT). Given that each OCDM symbol consists of N chirps, the discrete-time signal on the q-th TX antenna, sq(n) for q=1,...,MT, and n = 0,1 - 1 , is generated by an inverse DFnT (IDFnT), as
Figure imgf000012_0002
where is the DFnT operator,
Figure imgf000012_0001
is the inverse DFnT operator (IDFnT), and xq(k) is the symbol modulating the -th chirp on the q-th TX antenna, for k = 0,...,N -1.
Guard intervals (GIs) are inserted between each OCDM symbol to avoid inter- symbol interference ( IS I) from adjacent symbols caused by the spread of differing delays which are typical of multipath systems such as MIMO. Based on the property of DFnT, the Gl should be in the form of a cyclic prefix (CP) to maintain circular-convolution. In practice, the length of the CP should be sufficiently larger than the maximum delay spread (i.e. the difference in propagation times between the fastest propagation path and the slowest propagation path) of the channel. The baseband signals are then parallel-to-serial (P/S) converted and up- converted for transmission.
The transmitted signals will go through the wireless MIMO channel with attenuation, reflection, and scattering, and arrive at the receiver 1200. In order to simplify the design of the system, it is assumed that the MIMO channel is quasistatic, i.e., the state of the channel remains unchanged within one frame and varies from frame to frame. At the output of the MIMO system, the received signals are down-converted back to the baseband and sampled to digital domain by analog-to-digital converters (ADCs). After synchronization, the OCDM signals are S/P converted with the GIs removed, and grouped into blocks. The received signal on the p-th RX antenna, for p = 1 ,...,MR, is the superposition of the transmitted signals,
Figure imgf000013_0001
where hp,q(n) is the channel impulse response (CIR) function of the path from the q-th TX antenna to the p-th RX antenna, vp(n) is the additive noise on the p-th RX antenna, and © is the circular convolution operator. It should be noted in this equation that the circular convolution results from the effect of CP, which converts the linear convolution to circular convolution.
The single-tap frequency-domain equalization (FDE) can be adapted to efficiently recover the MIMO-OCDM signals. The received signal on the p-th RX antenna is transformed by a DFT to the frequency domain, as
Figure imgf000014_0001
and is the channel frequency response (CFR) function from the q-th TX antenna to the p-th RX antenna, wΩ(P)(n) is the frequency domain additive noise on the p- th RX antenna, and T*(m) is a phase coefficient, which is in fact the eigenvalue of DFnT with respect to (w.r.t.) DFT.
The third equation in (3) is arrived by using the Eigen-decomposition identity of the DFnT, i.e.,
Figure imgf000014_0002
where Γ* (m) is the m-th eigenvalue of IDFnT w.r.t DFT.
To facilitate the representation, we formulate the system in matrix form. Stacking the received signal in (3) w.r.t. p, the received signal vector in the m-th frequency bin is
Figure imgf000014_0003
Where
Figure imgf000015_0001
is the received frequency-domain signal vector, and
Figure imgf000015_0004
js the DFT of transmitted symbol vector in the m-th frequency bin with its q-th element defined as
Figure imgf000015_0002
Figure imgf000015_0008
is the channel transfer matrix,
Figure imgf000015_0003
and js the frequency-domain noise vector.
Figure imgf000015_0005
Based on Eq. (5), once the CFR matrix, A(m), is estimated by some channel estimation method, the effect of the channel imposed on the received signal can be compensated. The phase Γ* (m) can be easily rotated back as it is a known scalar. For example, if a linear equalizer is adopted, the equalized signal is
Figure imgf000015_0006
where =(m) is the MT xMR equalization matrix on the m-th frequency bin. If zero- forcing (ZF) criterion is adopted,
Figure imgf000015_0007
and if MMSE criterion is adopted,
Figure imgf000016_0001
where i.e. p is the signal-to-noise ratio (SNR).
Figure imgf000016_0002
After channel equalization, the transmitted symbols on each layer can be readily recovered with another IDFT. Taking the ZF equalizer for example, the symbols on the q-th TX antenna for decision are:
Figure imgf000016_0003
where
Figure imgf000016_0004
is the q-th entry of the equalized noise vector in the frequency domain. It should be noted that although the ZF equalizer can completely compensate the channel, the noise in the vicinity of frequency nulls will be severely enhanced. The MMSE equalization can effectively alleviate the noise enhancement problem as the MMSE coefficients approach to the matched filter in low SNR regime and the ZF equalizer for high SNR.
II. CHANNEL ESTIMATION ALGORITHM BASED ON ORTHOGONAL CHIRPED PILOTS
In this section, to introduce the proposed channel estimation algorithm, we define a family of orthogonal chirps as where
Figure imgf000016_0006
are in fact
Figure imgf000016_0007
the column vectors of an N xN IDFnT matrix. The n-th element of
Figure imgf000016_0005
is defined as
Figure imgf000017_0001
for k = 0, and the rest are the cyclic shift of , as
Figure imgf000017_0005
Ψk (n) = Ψ0(n - k) (13)
If we carefully choose a subset of A Ψ of size-MT as the pilot signals for channel estimation, the pilots can be simultaneously transmitted over the MTTX antennas within a single OCDM symbol period. The receiver is able to recover the CSI of the MIMO system from the received pilot signals by utilizing the pulse- compression property of
Figure imgf000017_0006
Suppose that the pilot signal assigned to the q-th TX antenna is
Figure imgf000017_0002
where 0 < Dq≤ N - 1 is the index of the chirp on the q-th TX antenna, the transmitted pilot signals are
Figure imgf000017_0003
Substituting equation (14) into equation (2) yields the received pilot signals, and performing DFnT on the received pilot signal on the p-th RX antenna, we have
Figure imgf000017_0004
The second equation is obtained by exploiting the convolution-preservation property of the DFnT that the Fresnel transform of a convolution of two signals equals the Fresnel transform of either one convolving with the other.
Inspecting equation (15), the received pilot on the p-th RX antenna is the superposition of the CIR from all the TX antennas to the pth RX antenna shifted by {Dq}. In the above equations, as well as following discussion, considering the cyclic convolution, the domain of the sequences and functions,
Figure imgf000018_0003
, and hp,q(n), etc., is a cyclic group of order N. That is, when imposing the sequence domain n with shift operation, one has
(n + Dq) = (n + Dq mod N.
As the spread of real-world channels is time-limited, the CIR functions hp,q may still be recoverable if {Dq} are carefully designed. Given that the maximum delay spread of the channel is LCIR, which is in practice smaller than the length of CP, i.e., LCIR < LCP. One can easily prove that for any Dq1,Dq2, where 1 ≤ q1,q2 ≤ MT and , if
Figure imgf000018_0002
|Dq1 - Dq2| > LCI (16) the CIR functions can be recovered without any inter-antenna interference. With the condition in (16), the CIR function from the q-th TX antenna to the p-th RX antenna can be estimated using merely shift operations, as
Figure imgf000018_0001
by properly confining n. For simplicity, we consider that {Dq} are in order, i.e., 0 < D1 < ... < DMT≤ N, without loss of generality. Even if {Dq} are not in order, we can always find a mapping fQ : q→ q’, so that {Dq} are in order. Thereby, the estimated
CIR functions are
Figure imgf000019_0001
where Dqis the domain of hp,q defined as
Figure imgf000019_0003
The P x Q CIR functions can be formulated based on equation (18) to characterize the state of the MIMO channel for signal recovery. For the choice of the chirped pilots, the most intuitive way is to uniformly choose the chirped pilots with
Figure imgf000019_0002
Here a 4 x 3 MIMO system is taken as an example. Figure 2 illustrates a set of chirped pilots 200a, 200b, 200c respectively for the (a) 1 st, (b) 2nd, and (c) 3rd TX antennas in a MIMO-OCDM systems with MT= 3 TX antennas. It can be seen that the chirped pilots 200a, 200b, 200c are cyclic shift of each another. After MIMO transmission, the received pilot signals will be the superposition of the transmitted pilots as indicated in (2). Pulse compression are achieved by performing a DFnT on the received pilot, given in (15). Fig. 3a provides a one- shot observation of the received pilot signals. It can be seen that the received pilots after pulse compression are the superposition of the CIR functions from different TX antennas without interfering each other. Thus, the CIR functions can be readily retrieved based on (17) for signal recovery and channel equalization.
When FDE is adopted, the CFR functions can be obtained by DFTs, as
Figure imgf000020_0002
where wΩ´(p,q) (m) is the frequency-domain noise defined as
Figure imgf000020_0001
for n ∈ Dp. Thus, the transfer matrix on the m-th frequency bin
Figure imgf000020_0004
is formed with its (p,q )-th element to be in (21 ).
Figure imgf000020_0003
In Fig. 3b, the CFR functions of the MIMO system are recovered for illustration.
III. ANALYSIS
In this section, the performance of a channel estimation algorithm in accordance with the present disclosure is compared with the least-square (LS) channel estimator of traditional MIMO-OFDM systems. A discussion about the practical implementation for MIMO-OCDM systems is also provided. Further, an effective noise suppression algorithm is introduced. In order to simplify signal processing, it is assumed that the MIMO channel is linear. Preferably the MIMO channel is also assumed to be quasi-static. More preferably the MIMO channel is also assumed to be stochastic. The additive noises are independent and identically distributed circularly symmetric Gaussian with zero means and variance No.
A. Performance Analysis of an Estimator in accordance with the present disclosure
In this subsection, we first consider the case that the chirped pilots are transmitted using one OCDM symbol. Based on (21 ), the MSE of the proposed estimation is given by
Figure imgf000021_0001
where js the noise matrix with its (p,q )-th element to be
Figure imgf000021_0002
wΩ´(m ) as defined in equation (22). The detailed derivation is provided in Appendix A. Moreover, the chirped pilots can be transmitted over multiple symbols to improve the estimation accuracy. For a fair comparison, we assume the same overhead as the LS estimator in Section IV-A, i.e., using MLS symbols. The performance of the proposed estimator can be further improved by a factor of M S, as
Figure imgf000021_0003
Thus, we can see that the MSE of the proposed estimator is
Figure imgf000021_0004
times that of the LS estimator. That is, with the same overhead, the performance of the proposed estimator is improved by a factor of Mr to the LS estimator.
Figure 4 shows the theoretical MSE Vs SNR performance for different numbers of TX antennas, MT for both an estimator in accordance with the present disclosure and an LS estimator. Both have the same overhead using MLS = 4 pilot symbols. It can be seen that the MSE of both estimators are proportional to the received noise power. However, in terms of the number of TX antennas, MT, the MSE of the estimator of the present disclosure is linearly proportional to MT, while that of the LS estimator is proportional to , as indicated in equations (26) and
Figure imgf000022_0001
(28), respectively. In other words, the estimator of the present disclosure degrades slower than an LS estimator. Further, figure 4 also shows that the estimator of the present application performs better than the LS estimator as the number of TX antennas increases.
B. Discussions on Practical Implementation
To further improve estimation accuracy, smoothing/averaging algorithms are usually applied to suppress the noise. For example, sliding average window (SAW) is an effective algorithm adopted in the 4G/5G systems to improve the estimation accuracy [39]. Once the CFRs are estimated through the pilots, as shown in equation (25), adjacent pilots are averaged in the frequency domain to suppress the noise. However, the window width should be carefully designed. In the 4G/5G systems, as the SAW algorithm will generally introduce distortion on the estimated CSL In practice the average window width should be chosen no greater than 19 as a balance between the noise suppression and the estimation deviation.
In a further improvement over the prior art a more efficient and unbiased smoothing algorithm dedicated for the proposed estimator is provided. This improvement is achieved by exploiting the pulse-compression property of chirped waveforms based on the Fresnel transform. The new smoothing algorithm is based on the realisation that the received pilot signal after pulse compression is equivalent to the sum of the pilots from different TX antennas, as shown in equation (15). Thus, the noise exceeding the length of CIR can be removed in addition to the pilots from unwanted TX antennas. Utilizing the finite impulse response (FIR) of the channel, a more accurate estimation can be obtained by filtering out the excessive noise. To achieve this, a window function П G (n) is defined. This function can be a rectangular function of width LG. Other types of window function can also be adopted to remove the excessive noise, such as e.g. a raised cosine function. The windowed CIR functions are accordingly obtained as
Figure imgf000023_0001
If we take the rectangular function as the window for example, i.e., П G (n) = 1 for and 0 otherwise, the MSE of the proposed algorithm is
Figure imgf000023_0003
Figure imgf000023_0002
The detailed derivation is in Appendix B.
Comparing equations (29) and (27), the MSE’s of both estimators consist of two sub-terms; one is the PDP term and the other is noise term. However, in the proposed algorithm, the noise term is instead proportional to Lg, and smaller the window width
Figure imgf000023_0004
smaller the noise. This is because the proposed algorithm rejects the excessive noise beyond the window. Thus, we term it as noise- rejection window (NRW). In the NRW algorithm, the PDP term is the sum of the tail of the PDP function outside the window. Considering the FIR feature of real- world channels, that |σ (n)|2 = 0 for n ≥ LCIR, the estimation of the NRW is unbiased. The PDP term in equation (27) vanishes as long as the window is wider than the maximum delay spread of the channel.
Although both algorithms can effectively suppress the noise effects, they behave differently. The SAW algorithm suppresses the noise by smoothing the CFR function, and the estimation deviates from the actual system. As a result, there is always a trade-off between the noise and deviation yielding a sub-optimal performance.
In contrast, the NRW algorithm removes excessive noise directly removed the estimation after pulse compression. The estimation is unbiased if the window is wider than the maximum delay spread of the channel, i.e.,
Figure imgf000024_0003
, and can optimally converge to the system under estimation. Even if the window width
Figure imgf000024_0004
is reasonably smaller than LCIR, there won’t be severe distortion because the tails of the CIR functions are usually much smaller than its main path. For example, for a channel with exponential PDP, which is applicable for most practical channels, the tail beyond 3 times of the root mean square (rms) delay spread is less than 5 percent of the total energy.
IV. RESULTS
In this section, numerical results are provided to evaluate the performance of a channel estimation technique in accordance with the present disclosure. The OCDM system has a bandwidth of 20 MHz with N = 2048 chirps for modulation. The length of Gl is 256. The analysis is based on a multipath fading MIMO channel with an exponential PDP. This is a typical channel model in practical systems. The PDP function for such channels is defined as
Figure imgf000024_0002
where TO is the rms delay spread of the channel. Substituting equation (28) into equation (27), the analytical MSE can be further given by
Figure imgf000024_0001
as derived in (34) in Appendix B. The optimal window width and the minimum MSE are given in equations (36) and (37), respectively.
Figure 5 is a pair of 2D plot diagrams illustrating the performance of a channel estimator using NRW algorithm. For the purposes of illustration, the channel is part of a MIMO-OCDM system with three TX antennas and 4 RX antennas. In figure 5, MSE is shown as a function of the received SNR and the width of noise rejection window, with ro = (a) 0.4 μs and (b) 0.8 μs, respectively. Along the SNR axis, the MSE is a monotonic function, and it decreases along with the SNR axis. The MSE is a convex function with respect to the window width, Lg. For a fixed SNR, there exists an optimal Lg for providing the minimum MSE. The optimal window width is given as a function of SNR (see equation (36) in Appendix B). For a given SNR, a larger Lg allows more noise passing through but has much less deviation. When the window width is much larger than the delay spread of the system,
Figure imgf000025_0001
, the remainder noise passing through the window determines the MSE performance. The MSE goes larger as Lg increases because the noise term is linearly proportional to the window width.
When the window width is comparable to the delay spread, the MSE of the proposed estimator is the interplay of the noise and estimation deviation. However, when the widow width is relatively smaller than the delay spread, the deviation of the estimation will dominate the performance degradation. Especially, the MSE degrades dramatically as Lg decreases. Similar trend can be observed in Fig. 5a and 5b. The difference between them is that a larger delay spread results in worse performance, and the optimal window width is scaled by a factor of ~ τ0.
Figure 6 illustrates the performance of the proposed estimator against the window width. In particular, figure 6 shows the CIR and noise terms are depicted in the dashed and the dotted lines, respectively. As can be seen, the noise term is inversely proportional to the window width, Lg, as indicated in equation (29). For example, in the case of τ0 = 0.4 s, the MSE curve is well fitted with the corresponding noise curve for Lg > 128 (16ro), and increases with
Figure imgf000026_0003
. The deviation of the CIR term in this case is less than -58 dB for
Figure imgf000026_0002
, which is negligible. As the window becomes narrower, the MSE degrades dramatically, for values of Lg < 64 (8ro). In this case, the deviation is greater than -24 dB, and dominates the degradation on MSE. Similar trend can be observed in the cases of τ0 = 0.2 and 0.8 μs. The slope of the CIR curves is much steeper curve of the noise term discussed with reference to Figure 5. This is because the deviation increases exponentially as becomes narrower. It also implies that an unbiased
Figure imgf000026_0001
estimator is usually preferred in practice.
Figure 7 shows a performance comparison of an estimator in accordance with the present disclosure and a prior art SAW estimator. In particular, figure 7 shows that MSEs of both the proposed and the SAW algorithms. Both algorithms effectively suppress the noise term as shown by the overlap of the dotted lines overlap for both algorithms. However, the MSE performances of the estimators is significantly different due to the deviations of their estimations.
In the SAW algorithm, the averaging operation is performed in the frequency domain, and the CIR function is equivalent to being weighted by a Dirichlet sine function. The SAW estimation always deviates from the MIMO system under estimation, i.e., LS > 1 , as indicated by the dashed lines in Fig. 7. In fact, if there is no delay spread, namely in the condition of hp,q (n) = δ(n), the SAW algorithm is also unbiased. However, in practice this condition cannot realistically be satisfied in real wireless systems.
In contrast, in the proposed estimator, there is negligible deviation until the window size is comparable to delay spread of the channel. Strictly speaking, the proposed estimator is unbiased as long as
Figure imgf000026_0004
Figure 8 shows MSE performance as a function of the received SNR for both the estimator of the present disclosure and an LS estimator with SAW algorithm. Both systems equipped 3 TX antennas and 4 RX antennas. The MSE of both estimators without any smooth/average algorithms (circled lines) has no error floor, and the estimator of the present disclosure exhibits better sensitivity to the distortion than the SAW algorithm. Figure 8a shows MSE performance as a function of the received SNR for τ0 = 0.4 μs and figure 8b shows MSE performance as a function of the received SNR for τ0 = 0.8 μs.
With reference to figure 8a, the system of the present disclosure requires 5 dB less SNR to achieve the same MSE than the LS estimator if there are no smoothing algorithms applied. For the estimator of the present disclosure, the MSE performance is improved when the NRW algorithm is applied. The MSE reduces as the noise-rejection window width becomes smaller in the low SNR region. However, in the high SNR region although there is no obvious degradation for Lg = 96, error floor occurs for Lg ≤ 64. This is because in the low SNR region, noise dominates the performance and smaller the window width, less the noise effect. As the SNR increases, the noise becomes small, and the distortion due to deviation after NRW begins to dominate for a small window width, e.g.,
Figure imgf000027_0001
for τ0 = 0.4 μs.
For the LS estimator with SAW algorithm, as the averaging window increases, the MSE of the estimation decreases, especially in the low SNR region. However, error floors occur as long as SAW is applied. For example, in the case of Ls = 5, slight degradation can be observed for SNR > 35. In the case of Ls = 9, obvious degradation can be observed for SNR > 25, and an error floor at MSE = 1 x10-3 exists. In contrast, even if the NRW algorithm has an error floor for a small Lg, the error floor is much lower than the SAW algorithm.
With reference to figure 8b, similar trends as those shown in figure 8a can be observed, but the overall performance is worse as a result of a larger delay spread. The error floor of LS estimator becomes much obvious for a larger τ0. For example, the proposed algorithm with has no degradation, and the
Figure imgf000027_0002
performance improves linearly along with the SNR. On the other hand, a slight degradation can be observed in the SAW algorithm even for a small LS = 3. As Ls increases to 7, although the performance outperforms the proposed estimator with for SNR < 15 dB, the performance degrades with an error floor at
Figure imgf000027_0003
MSE = 5 x 103. In particular, error floor occurs in the proposed estimator only for with a BER = 3 x 10-4.
Figure imgf000028_0001
The embodiments in the invention described with reference to the drawings comprise a computer apparatus and/or processes performed in a computer apparatus. However, the invention also extends to computer programs, particularly computer programs stored on or in a carrier adapted to bring the invention into practice. The program may be in the form of source code, object code, or a code intermediate source and object code, such as in partially compiled form or in any other form suitable for use in the implementation of the method according to the invention. The carrier may comprise a storage medium such as ROM, e.g. a memory stick or hard disk. The carrier may be an electrical or optical signal which may be transmitted via an electrical or an optical cable or by radio or other means.
In the specification the terms "comprise, comprises, comprised and comprising" or any variation thereof and the terms include, includes, included and including" or any variation thereof are considered to be totally interchangeable and they should all be afforded the widest possible interpretation and vice versa.
The invention is not limited to the embodiments hereinbefore described but may be varied in both construction and detail.
APPENDIX A - PROOF OF THE MSE OF THE PROPOSED ESTIMATOR
From the third equation in (23), the noise term is
Figure imgf000029_0001
where
Figure imgf000029_0002
for n = 0,1 ,...,Dq+1. Substituting back into equation (23), the MSE can be given as
Figure imgf000029_0003
It is possible to show that the noise terms are independent over different transmit antennas.
APPENDIX B - MSE OF THE WINDOWING ALGORITHM
Except to the noise term, there is another term due to the deviation of the channel estimation.
Figure imgf000030_0003
If we consider a channel with exponential decaying channel model, Eq. (33) can be further given as
Figure imgf000030_0004
In addition, we can derive the minimum MSE with respect to the gate size as
Figure imgf000030_0001
to get the optimum window width
Figure imgf000030_0002
and the minimum MSE
Figure imgf000031_0001

Claims

Claims:
1. A method of estimating channel state information (CSI) of a Multiple Input Multiple Output (MIMO) channel comprising: transmitting pilot symbols from a plurality of transmission antennas, wherein: a number of pilot symbols are transmitted using chirped signals based on the Fresnel transform, for generating Orthogonal chirp-division multiplexing (OCDM) signals at a plurality of receiver antennas, the number of pilot symbols overlap in time-domain, a single symbol interval is utilized to estimate a transfer matrix of the MIMO channel, and no silent pilot symbols are transmitted.
2. The method of any preceding claim, wherein the chirped signals used to transmit the number of pilot symbols are linear frequency modulated signals that are orthogonal to each other based on the Fresnel transform.
3. The method of any preceding claim comprising selecting a pilot symbol of each transmission antenna of the plurality of transmission antennas, whereby the pilot symbols are distinguishable upon reception with pulse compressed operation, and wherein the pilot symbols are overlapped in both time and frequency domains.
4. The method of any preceding claim, wherein each chirped signal used to transmit a pilot symbol is a cyclic shift of another chirped signal used to transmit another pilot symbol.
5. The method of any preceding claim, comprising performing a cyclic shift on a chirped signal, wherein performing a cyclic shift comprises performing either a discrete Fresnel transform (DFnT) or an inverse discrete Fresnel transform (IDFnT).
6. The method of any preceding claim, wherein the number of pilot symbols are transmitted simultaneously from all the plurality transmit antennas in a single time interval over the full bandwidth of the channel.
7. A method of estimating channel state information (CSI) of a MIMO channel comprising: receiving a number of pilot symbols that were transmitted using chirped signals from the plurality of transmission antennas, wherein the number of pilot symbols overlap in time-domain; and no silent pilot symbols are received.
8. The method of claim 7, comprising: performing an inverse cyclic shift on the received chirped signals.
9. The method of claim 8, wherein the inverse cyclic shift is performed using either a discrete Fresnel transform (DFnT) or an inverse discrete Fresnel transform (IDFnT).
10. A transmitter for estimating channel state information (CSI) of a MIMO channel comprising: a plurality of transmission antennas configured to transmitting pilot symbols, wherein: the transmitter is configured to encode the pilot symbols into chirped signals, the transmitter is configured to transmit pilot symbols such that they overlap in time-domain, and no silent pilot symbols are transmitted.
11. The transmitter of claim 10, wherein the transmitter is configured to perform a cyclic shift on a chirped signal, wherein performing a cyclic shift comprises performing either a discrete Fresnel transform (DFnT) or an inverse discrete Fresnel transform (IDFnT).
12. A receiver for estimating channel state information (CSI) of a MIMO channel comprising: a plurality of receivers configured to receive a number of pilot symbols that were transmitted using chirped signals from a plurality of transmission antennas, wherein the number of pilot symbols overlap in time-domain, and no silent pilot symbols are received.
13. The receiver of claim 12, wherein each receiver is configured to perform a pulse compression on a plurality of overlapped chirped signals, which includes performing either a discrete Fresnel transform (DFnT) or an inverse discrete Fresnel transform (IDFnT).
14. A computer readable storage medium comprising instructions which, when executed by a processor operatively couple to a plurality of antenna, cause the processor to perform a method according to any one of claims 1 to 9.
15. A mobile computing device comprising either: a transmitter according to claims 10 - 1 1 ; or a receiver according to claims 12 - 13; or a transmitter according to claims 10 - 1 1 and a receiver according to claims
12 - 13.
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