US20110209544A1 - Sensor cluster navigation device and method - Google Patents

Sensor cluster navigation device and method Download PDF

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US20110209544A1
US20110209544A1 US13/127,378 US200913127378A US2011209544A1 US 20110209544 A1 US20110209544 A1 US 20110209544A1 US 200913127378 A US200913127378 A US 200913127378A US 2011209544 A1 US2011209544 A1 US 2011209544A1
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sensor
sensors
axis
micro inertial
cluster
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US13/127,378
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Dekel Tzidon
Alex Braginsky
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Elbit Systems Ltd
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    • GPHYSICS
    • G01MEASURING; TESTING
    • G01PMEASURING LINEAR OR ANGULAR SPEED, ACCELERATION, DECELERATION, OR SHOCK; INDICATING PRESENCE, ABSENCE, OR DIRECTION, OF MOVEMENT
    • G01P13/00Indicating or recording presence, absence, or direction, of movement
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01CMEASURING DISTANCES, LEVELS OR BEARINGS; SURVEYING; NAVIGATION; GYROSCOPIC INSTRUMENTS; PHOTOGRAMMETRY OR VIDEOGRAMMETRY
    • G01C19/00Gyroscopes; Turn-sensitive devices using vibrating masses; Turn-sensitive devices without moving masses; Measuring angular rate using gyroscopic effects
    • G01C19/56Turn-sensitive devices using vibrating masses, e.g. vibratory angular rate sensors based on Coriolis forces
    • G01C19/5776Signal processing not specific to any of the devices covered by groups G01C19/5607 - G01C19/5719
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01CMEASURING DISTANCES, LEVELS OR BEARINGS; SURVEYING; NAVIGATION; GYROSCOPIC INSTRUMENTS; PHOTOGRAMMETRY OR VIDEOGRAMMETRY
    • G01C21/00Navigation; Navigational instruments not provided for in groups G01C1/00 - G01C19/00
    • G01C21/10Navigation; Navigational instruments not provided for in groups G01C1/00 - G01C19/00 by using measurements of speed or acceleration
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01CMEASURING DISTANCES, LEVELS OR BEARINGS; SURVEYING; NAVIGATION; GYROSCOPIC INSTRUMENTS; PHOTOGRAMMETRY OR VIDEOGRAMMETRY
    • G01C21/00Navigation; Navigational instruments not provided for in groups G01C1/00 - G01C19/00
    • G01C21/10Navigation; Navigational instruments not provided for in groups G01C1/00 - G01C19/00 by using measurements of speed or acceleration
    • G01C21/12Navigation; Navigational instruments not provided for in groups G01C1/00 - G01C19/00 by using measurements of speed or acceleration executed aboard the object being navigated; Dead reckoning
    • G01C21/16Navigation; Navigational instruments not provided for in groups G01C1/00 - G01C19/00 by using measurements of speed or acceleration executed aboard the object being navigated; Dead reckoning by integrating acceleration or speed, i.e. inertial navigation
    • G01C21/183Compensation of inertial measurements, e.g. for temperature effects
    • G01C21/188Compensation of inertial measurements, e.g. for temperature effects for accumulated errors, e.g. by coupling inertial systems with absolute positioning systems
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01PMEASURING LINEAR OR ANGULAR SPEED, ACCELERATION, DECELERATION, OR SHOCK; INDICATING PRESENCE, ABSENCE, OR DIRECTION, OF MOVEMENT
    • G01P15/00Measuring acceleration; Measuring deceleration; Measuring shock, i.e. sudden change of acceleration
    • G01P15/02Measuring acceleration; Measuring deceleration; Measuring shock, i.e. sudden change of acceleration by making use of inertia forces using solid seismic masses
    • G01P15/08Measuring acceleration; Measuring deceleration; Measuring shock, i.e. sudden change of acceleration by making use of inertia forces using solid seismic masses with conversion into electric or magnetic values

Definitions

  • the present invention relates to navigation. More particularly, the present invention relates to clusters of sensors for use in navigation.
  • Navigation data for the purpose of this invention, is comprised of (but not limited to) a body's position, velocity and orientation. Navigation is conducted by means of devices depending on external sources, such as GPS, and by means of independent devices such as inertial measurement unit (IMU).
  • IMU inertial measurement unit
  • Accurate navigation requires physically big IMU sensors having relatively large physical dimensions, typically larger than 10 cubical centimeters as well as complex mounting techniques. In many situations, it is useful for personnel traveling on foot to carry a portable, light-weight and accurate navigation system. Such situations may include the training of military and rescue forces, and military and rescue operations.
  • Such a navigation system may include an inertial measurement unit (IMU) for determining acceleration and orientation of the measured body.
  • IMU inertial measurement unit
  • An IMU will generally include accelerometers oriented along various axes for measuring accelerations along those axes, and gyroscopes oriented along various axes for detecting changes of orientation with respect to those or other axes.
  • the axes selected are mutually orthogonal X, Y, and Z axes. Orientations are often defined in terms of roll, pitch and yaw.
  • MEMS micro-electromechanical system
  • MEMS sensors are usually characterized by lack of stability, and poor observability (the ability to infer internal states from observed quantities).
  • error models for MEMS sensors are not as well developed as for other inertial sensors, making the development of accurate correction algorithms for a MEMS-based inertial system difficult.
  • the sensor errors of a MEMS IMU may be modeled as random processes. A separate and specific model must be constructed and verified for each type of sensor, and, in fact, for each specific manufactured sensor of each type. The model may then be utilized in a Kalman Filter, or other type of estimator, in which the model is used to estimate the inertial sensor errors.
  • Kalman Filter or other type of estimator
  • Such a system may be used also as a portable navigation device.
  • an inertial measurement device for measuring movement with respect to at least one axis of a reference frame, comprising at last one cluster of plurality of micro inertial sensors which comprising summing of samples indicative of movement reading from the plurality of sensors and calculating an equivalent vector indicative of an equivalent measurement of the sensors. Further is provided the measurement device and a computing device to apply compensation to the equivalent measurement to compensate for a common error of the plurality of sensors.
  • FIG. 1 schematically illustrates an accelerations measurement set of the known art
  • FIG. 2A is a schematic illustration of axial placement of sensor clusters in a reference system in accordance with embodiments of the present invention
  • FIG. 2B schematically illustrates summation of a group of vectors according to embodiments of the present invention
  • FIG. 2C is a schematic illustration of spatial placement of sensors in accordance with embodiments of the present invention.
  • FIG. 3 is a schematic illustration of an example of sensor clusters organized into a single device.
  • FIG. 4 illustrates schematically random placement of sensors in an integrated cluster.
  • FIG. 5 is a block diagram of a navigation unit based on sensor clusters in accordance with embodiments of the present invention.
  • FIG. 6 is a block diagram of error compensation processing system in accordance with embodiments of the present invention.
  • a MEMS-based navigation system that includes an inertial measurement unit (IMU).
  • IMU inertial measurement unit
  • an IMU may include accelerometers, such Xa, Ya and Za or/and gyroscopes, such as Xg, Yg and Zg. Sensors of each type may be oriented along the axes of a reference axis system A ref , such as an orthogonal coordinate system. In this way, the total acceleration may be calculated as the vector sum of the various linear accelerations. Similarly, when gyroscopes are oriented along a system of orthogonal axes, motion with respect to the axes (often described as roll, yaw, and pitch motions) may be measured directly.
  • sensor clusters will also be arranged substantially parallel to the main axes of an axes system. Further, individual sensors may be assembled in several ways in order to make up a sensor cluster.
  • IMU is typically subject to at least one of systematic and/or random errors due to which calculated position based on such IMU has a tendency to drift over time.
  • IMU may include a number of micro-electromechanical system (MEMS) based inertial navigational sensors that may be arranged into sensor clusters.
  • MEMS micro-electromechanical system
  • Each sensor cluster may be made up of several sensors of a particular type in sufficient quantity that enables reduction of the systematic and/or random errors to an acceptable level, as will be explained in details herein after.
  • the random errors of each sensor in a cluster according to the present invention may cancel each other, while systematic errors may be easily identified.
  • the sensors that form a cluster may be accelerometers that measure acceleration along a linear axis, and/or gyroscopes that indicate changes in orientation with respect to an axis.
  • the navigation system may include a computer capable of storing data and programmed instructions. The programmed instructions, when executed by the computer, may calculate updated navigational positions based on stored data and on the output of the sensor clusters.
  • the navigation system may include other devices to aid in correcting navigational errors. The outputs of these other, auxiliary devices may also be utilized in the calculation.
  • Auxiliary devices may include a Global Positioning System (GPS) receiver for providing time, position, or pseudo-range data, cellular triangulation, RFID-related techniques, visual aids, magnetic sensors.
  • GPS Global Positioning System
  • Additional possible auxiliary device is a micro-switch or a sensor that detects or indicates points of zero-velocity to be used in a zero-velocity update correction.
  • a processed joint output of the sensor cluster may be described by an error model that is more statistically stable than that describing a single sensor. Knowing the distribution of the error sources may enable statistical error correction.
  • FIG. 2A is a schematic illustration of axial placement of sensor clusters in a reference system 5 , in accordance with embodiments of the present invention.
  • Individual accelerometers 10 and gyroscopes 12 may be arranged into clusters 20 , 30 respectively. Each cluster may be oriented substantially along one of the orthogonal X, Y and Z axes.
  • the particular readings of individual accelerometers 10 of a cluster of accelerometers 20 , and/or gyroscopes 12 of a cluster of gyroscopes 30 which are oriented along a particular axis may be combined to form a single combined reading for the respective cluster.
  • the sum of the output samples of at least some of the sensors of a cluster of each type that are oriented along a particular axis is the output of that cluster which may be treated as an output of a single virtual sensor. Since the output signals of the single sensors of a particular cluster differ from one another in a statistically mutually independent manner, the sum of the output samples is expected to be more stable than the output of any single sensor in that cluster. Furthermore, as the number of sensors increases, the sum of the value of the summed output samples is expected to become more stable.
  • FIG. 2B schematically illustrates summation of a group of vectors according to embodiments of the present invention.
  • FIG. 2B depicts plurality of vectors Vs, each represents a specific indication, or sample, of a measurement as measured by a single sensor in a group of sensors (cluster) measuring a single an measurement, such a linear acceleration or a rotational acceleration, with respect to a single axis.
  • the plurality of indications, or samples, Vs may vary in direction and/or magnitude, with respect to their respective axis or with respect to each other. For example, such variations may occur as a result of variations during a production process and/or during placement of the various sensors in the group, or cluster.
  • Vs may be summed, according to embodiments of the invention to a single vector Veq, representing the equivalent vector of the summed measurements, or samples.
  • Veq represents the equivalent vector of the summed measurements, or samples.
  • Vref represents the “truth”, with reference to which the cluster measurement is evaluated.
  • the difference Vdif between Veq and Vref represents the systematic error and the remaining random error. It should be noted that the systematic error may be eliminated using a calibration process.
  • FIG. 2C is a schematic illustration of spatial placement of sensors in accordance with embodiments of the present invention.
  • a plurality of sensors 14 may represent either accelerometers or gyroscopes. In the example shown, sensors 14 are oriented parallel to the Z-axis. Sensors 14 are placed so as to fill a three-dimensional space 210 . Spatially placed sensors 14 when placed in a three dimensional space 210 may be considered as a cluster 220 . Spatially placed sensor clusters of various types and orientations may be organized in the form of layers in a sensor cluster device.
  • FIG. 3 is a schematic illustration of an example of a plurality of sensor clusters organized into a single device 300 , according to embodiments of the present invention.
  • Accelerometer-type sensors may be organized, according to embodiments of the present invention, as layers 16 a , 16 b , 16 c , while gyroscope-type sensors may be organized as layers 18 a , 18 b , 18 c .
  • the above described arrangement of clusters of sensors in device 300 is only a single example out of a large number of possible arrangements.
  • micro inertial sensors such as MEMS sensors
  • MEMS sensors there are several possible ways of assembling micro inertial sensors, such as MEMS sensors, into a sensor cluster.
  • One possibility is to manufacture a plurality of MEMS sensors, where each MEMS sensor, either an accelerometer or a gyroscope, is manufactured separately and then assembled the plurality MEMS sensors in a cluster.
  • each cluster is assembled from a plurality of MEMS sensors of the same type, either accelerometer and/or gyroscope.
  • each MEMS sensor may be aligned to one of the axes of a reference frame of the cluster, so that the sensor axis is aligned with an axis of the reference frame and then the MEMS sensor may be assembled into the cluster.
  • Such a method of assembly may be designated as macro assembly.
  • another way of assembling a MEMS sensor cluster may be designated integrated assembly.
  • production of a sensor cluster is integrated into a process of manufacturing single MEMS sensors from silicon or other material.
  • the MEMS manufacturing process includes, as one or more of its integral steps, production from the silicon an integrated MEMS sensor cluster that includes a number of aligned MEMS sensors.
  • a micro inertial sensor may have a sensor axis.
  • a sensor axis may be defined as an imaginary or a real line referenced to a micro inertial sensor so that when the sensor is oriented to have sensor axis parallel to one axis in case of an accelerometer or coaxial with one axis in case of a gyroscope, of a reference frame and the sensor is excited by a motion in the direction of any one of the other two axes the reading of the sensor will be virtually null.
  • a sensor may be considered ‘misaligned’ with respect to an axis of a reference frame when its axis is not parallel to that axis of the reference frame and may be considered ‘misplaced’ with respect to an axis of a reference frame when its axis is not coaxial with that axis of the reference frame. Same may be applied to a single micro inertial sensor within a sensor cluster.
  • Basing IMU sensors on MEMS technology may enable assembling of a large number of sensors, from tens to tens of thousands, into a relatively light and physically small device with predefined accuracy and drifting characteristics.
  • Such a device can be installed in virtually any environment and application which is sensitive to size, weight and power consumption limitations.
  • a navigation device incorporating a MEMS IMU may be carried by one or more members of a team of personnel.
  • components of a navigation device carried by a pedestrian user may comprise a computer unit for performing calculations, for storing data and for communicating with another user or with other devices.
  • the computer unit may be worn by a user; the user may be a team member, in a pocket, pouch, etc.
  • the navigation device may further comprise a GPS receiver, for providing correction data, which may be either worn separately by a team member or may be integrated into the computer unit.
  • An IMU containing one or more MEMS accelerometer cluster and/or gyroscope clusters, may be fixed to the body of a team member.
  • the IMU may be integrated into a boot.
  • a micro-switch for applying or invoking zero-velocity update measurement may also be integrated, for example, into the boot of a team member.
  • the various components of the system may be carried by one person, or may be distributed among a plurality of team members.
  • sensors within a cluster may be positioned at a different location and orientation. Each sensor's location and orientation may directly affect each sensor's measurement. Thus compensation calculations have to be applied to each of the sensors' measurements prior to their incorporation into a single cluster.
  • Each sensor location and orientation data is obtained during the manufacture and stored in a memory (e.g. 32 in FIG. 5 ). The stored data representing the misalignment of any kind may enables calculation of compensation for the non-orthogonally or otherwise misalignment.
  • FIG. 4 illustrates schematically random placement and/or orientation of sensors in an integrated cluster 40 .
  • a series of measurements may be performed of the sensor cluster.
  • the series of measurements may result in a list of data items representing measurement of the location and orientation of one or more individual sensors 402 , 404 , 406 , etc. with respect to a reference frame 400 of the sensor cluster 40 .
  • Displacement measurement result data may be stored in the form of coordinates of the displacement of each sensor from reference frame 400 of sensor cluster 40 .
  • Orientation measurement result data may be stored in the form of a list of Euler angles (corresponding to roll, pitch, and yaw) that may describe the orientation of the axis of each individual sensor relative to reference frame 400 of cluster 40 .
  • the stored data may be used to compensate the output of each sensor for the misalignment of the sensor when calculating the combined output of the sensor cluster.
  • Navigation unit 500 may comprise power module 26 to transform electrical power from an external source, such as AC mains, battery, rechargeable battery, etc., to stabilized electrical power.
  • the stabilized electrical power may be provided to all components of navigation unit 500 .
  • Navigation unit 500 further comprises one or more sensor cluster 22 to generate signals in response to accelerations and/or changes in orientation of sensor cluster 22 .
  • the signals generated by sensor cluster 22 are typically analog signals, yet other forms of signal are possible.
  • Sensor cluster 22 may be surrounded by an isolating enclosure 24 , also referred to as a “cluster comfort” module.
  • isolating enclosure 24 The purpose of isolating enclosure 24 is to partially isolate sensor cluster 22 from the environment, to reduce temperature changes and mechanical vibrations that could adversely affect the accuracy of the sensor readings.
  • the signals may be converted by signal conversion unit 28 to the required signal type or form, such as digital signal.
  • the data from reading device 28 in the required form, may be input to processor 30 for further processing.
  • Processor 30 may communicate with modem 28 and memory unit 32 .
  • Processor 30 may further be in active communication with other units, for example I/O unit (not shown), as may be needed according to specific design and requirements of navigation unit 500 .
  • Processor 30 may receive stored misalignment data from memory unit 32 .
  • Processor 30 may process data from the sensor cluster 22 , representing momentary readings of accelerations and orientations of sensor cluster 22 with respect to a reference frame, making use of the stored misalignment data to compensate for misalignment of sensors in sensor cluster 22 .
  • Modem 28 may provide communication with external devices via one or more communications channels 34 .
  • External devices may comprise one or more control devices.
  • External control device may transmit command and control instructions, such as “reset”, “go to certain point”, etc. to the processor via communications channels 34 and modem 28 .
  • Processor 30 may serve as a navigation computer.
  • Processor 30 may receive data from external devices via communications channels 34 and modem 28 .
  • Such external devices may include a GPS receiver or a zero-velocity update device.
  • Calculation results of processor 30 relating, for example, to updates of user location may be saved in memory unit 32 for later retrieval for use in processing.
  • Processed data may be transmitted to external devices also by means of modem 28 and communications channels 34 .
  • External devices may utilize the processed data to calculate navigation information, which may in turn be communicated to the user.
  • Processor 30 may process the output from an individual sensor of sensor cluster 22 .
  • the output of an individual sensor which may be unstable, may be compensated for instability and other errors by proper calculations performed in processor 30 . Compensated and stabilized inertial measurements may be outputted to external devices.
  • FIG. 6 is a block diagram of error compensation processing process 600 in accordance with embodiments of the present invention.
  • Sensor cluster data 60 may be received from output readings of one or more sensor clusters and may consist of unstable inertial measurement outputs from individual sensors of the one or more sensor clusters. Compensation calculations may be applied to the individual outputs 60 a , 60 b , . . . 60 n to compensate for variations in the alignment and displacement of individual sensors from a reference frame of the sensor cluster.
  • the compensated individual outputs may be multiplexed to yield a more stable inertial measurement result for each sensor cluster ( 62 ).
  • An error may be estimated for each sensor cluster result, based on an error model ( 64 ).
  • a correction value may be calculated to compensate for the estimated error, and may be summed with the corresponding sensor cluster result ( 66 ).
  • the result of summing the correction value with the sensor cluster result is a corrected and stabilized inertial measurement.
  • Errors of reading of sensors in a sensor cluster that may need to be corrected may be modeled by distributions that are substantially symmetric about a mean value. Examples of such distributions are Gaussian and Student distributions. Those errors with a zero mean may be cancelled, at least partially, by means of combining outputs from a large number of sensors. Those errors with a non-zero mean may be corrected by means of calibration measurements and respective corrections. Combining the outputs of a large number of sensors may also contribute to the effectiveness of the calibration by increasing the stability of the values to which the calibration is applied. Error estimates may also be partially based on auxiliary data. For example, data from a GPS receiver may be used to estimate an error in a geographical position. Data from a measurement of the earth's magnetic field may be used to estimate an error in a geographical orientation. Data from a zero-velocity update sensor may be used to estimate the error in a velocity calculation.
  • an IMU device that incorporates one or more clusters of MEMS inertial sensors.
  • the IMU may be incorporated into a navigation device.
  • a navigation device incorporating a MEMS sensor cluster IMU may be portable and may yield stable navigation data when multiple readings of individual MEMS sensors which may be corrected and stabilized based on displacement and misalignment data and further, optionally, based on external data indicative of location and/or orientation and/or velocity.

Abstract

Device and method for providing inertial indications with high accuracy using micro inertial sensors with inherent very small size and low accuracy. The device and method of the invention disclose use of the cluster of multiple micro inertial sensors to receive from the multiple sensors an equivalent single inertial indication with high accuracy based on the multiple independent indications and mathematical manipulations for averaging the plurality of single readings and for eliminating common deviations based, for example, on measurements of the deviation of the single readings.

Description

    FIELD OF THE INVENTION
  • The present invention relates to navigation. More particularly, the present invention relates to clusters of sensors for use in navigation.
  • BACKGROUND OF THE INVENTION
  • Navigation data, for the purpose of this invention, is comprised of (but not limited to) a body's position, velocity and orientation. Navigation is conducted by means of devices depending on external sources, such as GPS, and by means of independent devices such as inertial measurement unit (IMU). Accurate navigation requires physically big IMU sensors having relatively large physical dimensions, typically larger than 10 cubical centimeters as well as complex mounting techniques. In many situations, it is useful for personnel traveling on foot to carry a portable, light-weight and accurate navigation system. Such situations may include the training of military and rescue forces, and military and rescue operations. Such a navigation system may include an inertial measurement unit (IMU) for determining acceleration and orientation of the measured body. When acceleration and orientation are known, calculation of a current position may be made on the basis of a previous position. An IMU will generally include accelerometers oriented along various axes for measuring accelerations along those axes, and gyroscopes oriented along various axes for detecting changes of orientation with respect to those or other axes. Often, the axes selected are mutually orthogonal X, Y, and Z axes. Orientations are often defined in terms of roll, pitch and yaw.
  • However, position calculation on the basis of a portable IMU is subject to systematic and random errors. Various correction methods have been developed in order to compensate for these errors. Some of the correction methods rely on the sensor Error Model, which is a set of mathematical equations which describe the behavior of the sensor outputs in terms of random variables and their associated probability distributions. Solutions that have been proposed or adopted for compensating for errors include: zero velocity update sensors that identify points of a gait or motion where velocity may be assumed to be zero, an assumption of no roll to eliminate spurious results, periodic comparison with Global Positioning System (GPS) data, and measurements of the earth's magnetic field to verify orientation. Although magnetic field augmentation is widely used to correct orientation data, the direction of the local magnetic field is vulnerable to external interference, reducing the accuracy of yaw measurements.
  • It should be noted that the description of embodiments of the present invention herein below exemplifies aspects of the invention mostly by discussing implementations using sensors of the micro-electromechanical system (MEMS) sensors type. It would be apparent however for a person skilled in the art that other types of small-sized, small-weight and/or small-energy-consumption may be used instead of MEMS sensors. Micro inertial sensors, such as MEMS inertial sensors, due to their small size, light weight, and low power consumption, are especially attractive for use in navigation systems in all applications sensitive to power, space and weight limitations. However, to a much greater extent than high-end, larger mechanical or optical inertial sensors, MEMS sensors are usually characterized by lack of stability, and poor observability (the ability to infer internal states from observed quantities). In addition, error models for MEMS sensors are not as well developed as for other inertial sensors, making the development of accurate correction algorithms for a MEMS-based inertial system difficult.
  • The sensor errors of a MEMS IMU may be modeled as random processes. A separate and specific model must be constructed and verified for each type of sensor, and, in fact, for each specific manufactured sensor of each type. The model may then be utilized in a Kalman Filter, or other type of estimator, in which the model is used to estimate the inertial sensor errors. However, the lack of stability of MEMS IMU sensor results may frustrate this effort.
  • There is therefore a need for accurate MEMS-based inertial navigation system.
  • It is an object of the present invention to provide an accurate MEMS-based inertial navigation system. Such a system may be used also as a portable navigation device.
  • SUMMARY OF THE INVENTION
  • There is thus provided, in accordance with some embodiments of the present invention, an inertial measurement device for measuring movement with respect to at least one axis of a reference frame, comprising at last one cluster of plurality of micro inertial sensors which comprising summing of samples indicative of movement reading from the plurality of sensors and calculating an equivalent vector indicative of an equivalent measurement of the sensors. Further is provided the measurement device and a computing device to apply compensation to the equivalent measurement to compensate for a common error of the plurality of sensors.
  • BRIEF DESCRIPTION OF THE DRAWINGS
  • In order to better understand the present invention, and appreciate its practical applications, the following Figures are provided and referenced hereafter. It should be noted that the Figures are given as examples only and in no way limit the scope of the invention. Like components are denoted by like reference numerals.
  • FIG. 1 schematically illustrates an accelerations measurement set of the known art;
  • FIG. 2A is a schematic illustration of axial placement of sensor clusters in a reference system in accordance with embodiments of the present invention;
  • FIG. 2B schematically illustrates summation of a group of vectors according to embodiments of the present invention;
  • FIG. 2C is a schematic illustration of spatial placement of sensors in accordance with embodiments of the present invention;
  • FIG. 3 is a schematic illustration of an example of sensor clusters organized into a single device.
  • FIG. 4 illustrates schematically random placement of sensors in an integrated cluster.
  • FIG. 5 is a block diagram of a navigation unit based on sensor clusters in accordance with embodiments of the present invention; and
  • FIG. 6 is a block diagram of error compensation processing system in accordance with embodiments of the present invention.
  • DETAILED DESCRIPTION OF EMBODIMENTS
  • In accordance with embodiments of the present invention, a MEMS-based navigation system is described that includes an inertial measurement unit (IMU).
  • Reference is made to FIG. 1, which schematically illustrates an accelerations measurement set A of the known art. In general, an IMU may include accelerometers, such Xa, Ya and Za or/and gyroscopes, such as Xg, Yg and Zg. Sensors of each type may be oriented along the axes of a reference axis system Aref, such as an orthogonal coordinate system. In this way, the total acceleration may be calculated as the vector sum of the various linear accelerations. Similarly, when gyroscopes are oriented along a system of orthogonal axes, motion with respect to the axes (often described as roll, yaw, and pitch motions) may be measured directly. In general, sensor clusters will also be arranged substantially parallel to the main axes of an axes system. Further, individual sensors may be assembled in several ways in order to make up a sensor cluster.
  • IMU is typically subject to at least one of systematic and/or random errors due to which calculated position based on such IMU has a tendency to drift over time. IMU according to embodiments of the present invention may include a number of micro-electromechanical system (MEMS) based inertial navigational sensors that may be arranged into sensor clusters. Each sensor cluster may be made up of several sensors of a particular type in sufficient quantity that enables reduction of the systematic and/or random errors to an acceptable level, as will be explained in details herein after. The random errors of each sensor in a cluster according to the present invention may cancel each other, while systematic errors may be easily identified. The sensors that form a cluster may be accelerometers that measure acceleration along a linear axis, and/or gyroscopes that indicate changes in orientation with respect to an axis. The navigation system may include a computer capable of storing data and programmed instructions. The programmed instructions, when executed by the computer, may calculate updated navigational positions based on stored data and on the output of the sensor clusters. The navigation system may include other devices to aid in correcting navigational errors. The outputs of these other, auxiliary devices may also be utilized in the calculation. Auxiliary devices may include a Global Positioning System (GPS) receiver for providing time, position, or pseudo-range data, cellular triangulation, RFID-related techniques, visual aids, magnetic sensors. Additional possible auxiliary device is a micro-switch or a sensor that detects or indicates points of zero-velocity to be used in a zero-velocity update correction. A processed joint output of the sensor cluster may be described by an error model that is more statistically stable than that describing a single sensor. Knowing the distribution of the error sources may enable statistical error correction.
  • Reference is made now to FIG. 2A, which is a schematic illustration of axial placement of sensor clusters in a reference system 5, in accordance with embodiments of the present invention. Individual accelerometers 10 and gyroscopes 12 may be arranged into clusters 20, 30 respectively. Each cluster may be oriented substantially along one of the orthogonal X, Y and Z axes. The particular readings of individual accelerometers 10 of a cluster of accelerometers 20, and/or gyroscopes 12 of a cluster of gyroscopes 30, which are oriented along a particular axis may be combined to form a single combined reading for the respective cluster. In this case, the sum of the output samples of at least some of the sensors of a cluster of each type that are oriented along a particular axis is the output of that cluster which may be treated as an output of a single virtual sensor. Since the output signals of the single sensors of a particular cluster differ from one another in a statistically mutually independent manner, the sum of the output samples is expected to be more stable than the output of any single sensor in that cluster. Furthermore, as the number of sensors increases, the sum of the value of the summed output samples is expected to become more stable.
  • Reference is made now to FIG. 2B, which schematically illustrates summation of a group of vectors according to embodiments of the present invention. FIG. 2B depicts plurality of vectors Vs, each represents a specific indication, or sample, of a measurement as measured by a single sensor in a group of sensors (cluster) measuring a single an measurement, such a linear acceleration or a rotational acceleration, with respect to a single axis. The plurality of indications, or samples, Vs may vary in direction and/or magnitude, with respect to their respective axis or with respect to each other. For example, such variations may occur as a result of variations during a production process and/or during placement of the various sensors in the group, or cluster. The various indications Vs may be summed, according to embodiments of the invention to a single vector Veq, representing the equivalent vector of the summed measurements, or samples. As the number of the sensors in a cluster increases the total random error in Veq may be decreased. Vref represents the “truth”, with reference to which the cluster measurement is evaluated. The difference Vdif between Veq and Vref represents the systematic error and the remaining random error. It should be noted that the systematic error may be eliminated using a calibration process.
  • Reference is made now to FIG. 2C which is a schematic illustration of spatial placement of sensors in accordance with embodiments of the present invention. A plurality of sensors 14 may represent either accelerometers or gyroscopes. In the example shown, sensors 14 are oriented parallel to the Z-axis. Sensors 14 are placed so as to fill a three-dimensional space 210. Spatially placed sensors 14 when placed in a three dimensional space 210 may be considered as a cluster 220. Spatially placed sensor clusters of various types and orientations may be organized in the form of layers in a sensor cluster device. Reference is made now also to FIG. 3, which is a schematic illustration of an example of a plurality of sensor clusters organized into a single device 300, according to embodiments of the present invention. Accelerometer-type sensors may be organized, according to embodiments of the present invention, as layers 16 a, 16 b, 16 c, while gyroscope-type sensors may be organized as layers 18 a, 18 b, 18 c. The above described arrangement of clusters of sensors in device 300 is only a single example out of a large number of possible arrangements.
  • There are several possible ways of assembling micro inertial sensors, such as MEMS sensors, into a sensor cluster. One possibility is to manufacture a plurality of MEMS sensors, where each MEMS sensor, either an accelerometer or a gyroscope, is manufactured separately and then assembled the plurality MEMS sensors in a cluster. Typically each cluster is assembled from a plurality of MEMS sensors of the same type, either accelerometer and/or gyroscope.
  • According to embodiments of the present invention during the assembling of a sensor cluster, each MEMS sensor may be aligned to one of the axes of a reference frame of the cluster, so that the sensor axis is aligned with an axis of the reference frame and then the MEMS sensor may be assembled into the cluster. Such a method of assembly may be designated as macro assembly.
  • According to yet other embodiments of the present invention another way of assembling a MEMS sensor cluster may be designated integrated assembly. According to this method, production of a sensor cluster is integrated into a process of manufacturing single MEMS sensors from silicon or other material. Accordingly, the MEMS manufacturing process includes, as one or more of its integral steps, production from the silicon an integrated MEMS sensor cluster that includes a number of aligned MEMS sensors. A micro inertial sensor may have a sensor axis. A sensor axis may be defined as an imaginary or a real line referenced to a micro inertial sensor so that when the sensor is oriented to have sensor axis parallel to one axis in case of an accelerometer or coaxial with one axis in case of a gyroscope, of a reference frame and the sensor is excited by a motion in the direction of any one of the other two axes the reading of the sensor will be virtually null. Accordingly, a sensor may be considered ‘misaligned’ with respect to an axis of a reference frame when its axis is not parallel to that axis of the reference frame and may be considered ‘misplaced’ with respect to an axis of a reference frame when its axis is not coaxial with that axis of the reference frame. Same may be applied to a single micro inertial sensor within a sensor cluster.
  • Basing IMU sensors on MEMS technology may enable assembling of a large number of sensors, from tens to tens of thousands, into a relatively light and physically small device with predefined accuracy and drifting characteristics. Such a device can be installed in virtually any environment and application which is sensitive to size, weight and power consumption limitations.
  • An example of possible use of an IMU based on MEMS cluster technology of the present invention is for a pedestrian user. A navigation device incorporating a MEMS IMU may be carried by one or more members of a team of personnel. For example, in accordance with embodiments of the present invention, components of a navigation device carried by a pedestrian user may comprise a computer unit for performing calculations, for storing data and for communicating with another user or with other devices. The computer unit may be worn by a user; the user may be a team member, in a pocket, pouch, etc. The navigation device may further comprise a GPS receiver, for providing correction data, which may be either worn separately by a team member or may be integrated into the computer unit. An IMU, containing one or more MEMS accelerometer cluster and/or gyroscope clusters, may be fixed to the body of a team member. For example, the IMU may be integrated into a boot. According to embodiments of the invention a micro-switch for applying or invoking zero-velocity update measurement may also be integrated, for example, into the boot of a team member. Depending on the configurations, bulks, weights and other such considerations relating to components of the system, and depending on the needs of a team of users, the various components of the system may be carried by one person, or may be distributed among a plurality of team members.
  • It is desirable to have individual MEMS sensors within a cluster aligned to a reference frame. However, due to manufacturing process limitations, sensors within a cluster may be positioned at a different location and orientation. Each sensor's location and orientation may directly affect each sensor's measurement. Thus compensation calculations have to be applied to each of the sensors' measurements prior to their incorporation into a single cluster. Each sensor location and orientation data is obtained during the manufacture and stored in a memory (e.g. 32 in FIG. 5). The stored data representing the misalignment of any kind may enables calculation of compensation for the non-orthogonally or otherwise misalignment.
  • In the case of integrated sensor cluster assembly, alignment of sensors within a cluster is governed by manufacturing process and thus location and orientation of each sensor within a cluster can be considered random. Reference is now made to FIG. 4, which illustrates schematically random placement and/or orientation of sensors in an integrated cluster 40. During the manufacturing process of an integrated sensor cluster, a series of measurements may be performed of the sensor cluster. The series of measurements may result in a list of data items representing measurement of the location and orientation of one or more individual sensors 402, 404, 406, etc. with respect to a reference frame 400 of the sensor cluster 40. Displacement measurement result data may be stored in the form of coordinates of the displacement of each sensor from reference frame 400 of sensor cluster 40. Orientation measurement result data may be stored in the form of a list of Euler angles (corresponding to roll, pitch, and yaw) that may describe the orientation of the axis of each individual sensor relative to reference frame 400 of cluster 40. The stored data may be used to compensate the output of each sensor for the misalignment of the sensor when calculating the combined output of the sensor cluster.
  • Reference is made now to FIG. 5, which is a block diagram of a navigation unit 500 based on sensor clusters, in accordance with embodiments of the present invention. Navigation unit 500 may comprise power module 26 to transform electrical power from an external source, such as AC mains, battery, rechargeable battery, etc., to stabilized electrical power. The stabilized electrical power may be provided to all components of navigation unit 500. Navigation unit 500 further comprises one or more sensor cluster 22 to generate signals in response to accelerations and/or changes in orientation of sensor cluster 22. The signals generated by sensor cluster 22 are typically analog signals, yet other forms of signal are possible. Sensor cluster 22 may be surrounded by an isolating enclosure 24, also referred to as a “cluster comfort” module. The purpose of isolating enclosure 24 is to partially isolate sensor cluster 22 from the environment, to reduce temperature changes and mechanical vibrations that could adversely affect the accuracy of the sensor readings. In case the type of signals generated by sensor cluster 22 does not suit the type of signals required for further handling in navigation unit 500 the signals may be converted by signal conversion unit 28 to the required signal type or form, such as digital signal. The data from reading device 28, in the required form, may be input to processor 30 for further processing. Processor 30 may communicate with modem 28 and memory unit 32. Processor 30 may further be in active communication with other units, for example I/O unit (not shown), as may be needed according to specific design and requirements of navigation unit 500. Processor 30 may receive stored misalignment data from memory unit 32. Processor 30 may process data from the sensor cluster 22, representing momentary readings of accelerations and orientations of sensor cluster 22 with respect to a reference frame, making use of the stored misalignment data to compensate for misalignment of sensors in sensor cluster 22. Modem 28 may provide communication with external devices via one or more communications channels 34. External devices may comprise one or more control devices. External control device may transmit command and control instructions, such as “reset”, “go to certain point”, etc. to the processor via communications channels 34 and modem 28. Processor 30 may serve as a navigation computer. Processor 30 may receive data from external devices via communications channels 34 and modem 28. Such external devices may include a GPS receiver or a zero-velocity update device. Calculation results of processor 30, relating, for example, to updates of user location may be saved in memory unit 32 for later retrieval for use in processing. Processed data may be transmitted to external devices also by means of modem 28 and communications channels 34. External devices may utilize the processed data to calculate navigation information, which may in turn be communicated to the user.
  • Processor 30 may process the output from an individual sensor of sensor cluster 22. The output of an individual sensor, which may be unstable, may be compensated for instability and other errors by proper calculations performed in processor 30. Compensated and stabilized inertial measurements may be outputted to external devices. Reference is made now to FIG. 6, which is a block diagram of error compensation processing process 600 in accordance with embodiments of the present invention. Sensor cluster data 60 may be received from output readings of one or more sensor clusters and may consist of unstable inertial measurement outputs from individual sensors of the one or more sensor clusters. Compensation calculations may be applied to the individual outputs 60 a, 60 b, . . . 60 n to compensate for variations in the alignment and displacement of individual sensors from a reference frame of the sensor cluster. The compensated individual outputs may be multiplexed to yield a more stable inertial measurement result for each sensor cluster (62). An error may be estimated for each sensor cluster result, based on an error model (64). A correction value may be calculated to compensate for the estimated error, and may be summed with the corresponding sensor cluster result (66). The result of summing the correction value with the sensor cluster result is a corrected and stabilized inertial measurement.
  • Errors of reading of sensors in a sensor cluster that may need to be corrected may be modeled by distributions that are substantially symmetric about a mean value. Examples of such distributions are Gaussian and Student distributions. Those errors with a zero mean may be cancelled, at least partially, by means of combining outputs from a large number of sensors. Those errors with a non-zero mean may be corrected by means of calibration measurements and respective corrections. Combining the outputs of a large number of sensors may also contribute to the effectiveness of the calibration by increasing the stability of the values to which the calibration is applied. Error estimates may also be partially based on auxiliary data. For example, data from a GPS receiver may be used to estimate an error in a geographical position. Data from a measurement of the earth's magnetic field may be used to estimate an error in a geographical orientation. Data from a zero-velocity update sensor may be used to estimate the error in a velocity calculation.
  • Thus, according to embodiments of the present invention, an IMU device is provided that incorporates one or more clusters of MEMS inertial sensors. The IMU may be incorporated into a navigation device. A navigation device incorporating a MEMS sensor cluster IMU may be portable and may yield stable navigation data when multiple readings of individual MEMS sensors which may be corrected and stabilized based on displacement and misalignment data and further, optionally, based on external data indicative of location and/or orientation and/or velocity.
  • It should be clear that the description of the embodiments and attached Figures set forth in this specification serves only for a better understanding of the invention, without limiting its scope.
  • It should also be clear that a person skilled in the art, after reading the present specification could make adjustments or amendments to the attached Figures and above described embodiments that would still be covered by the present invention.

Claims (18)

1. An inertial measurement device comprising;
one or more sensor clusters, each sensor cluster including a plurality of micro inertial sensors to sample movement with respect to one axis of a plurality of axes; and
a summing unit to receive samples from each of said one or more sensor clusters indicative of said movement with respect to said one axis and to sum said samples for each of said one or more sensor clusters to an equivalent vector indicative of the sampled movement.
2. The device of claim 1, wherein said one or more sensor clusters comprises two or more sensor clusters for sampling the movement, each sensor cluster to sample movement with respect to a different axis of said plurality of axes.
3. The device of as claimed in claim 1, further comprising a computing unit to receive said equivalent vector and to compensate said equivalent vector based on stored data representing pre-measured misalignment of said equivalent vector.
4. The device as claimed in claim 1, wherein said plurality of micro inertial sensors comprises micro-electromechanical sensors.
5. The device as claimed in claim 1, wherein said plurality of micro inertial sensors comprises accelerometer sensors.
6. The device as claimed in claim 1, wherein said plurality of micro inertial sensors comprises gyroscope sensors.
7. The device as claimed in claim 1, wherein at least some of said plurality of micro inertial sensors is substantially aligned with one axis of a reference frame.
8. The device as claimed in claim 1, wherein each of said one or more sensor clusters is substantially aligned with one of the axes of a three dimensional reference frame.
9. The device as claimed in claim 1, wherein said one or more sensor clusters comprise an integrated sensor cluster.
10. The device as claimed in claim 1, wherein least some sensors of said plurality of micro inertial sensors are spatially displaced from a pivot axis of each of said one or more sensor clusters by a known distance.
11. The device as claimed in claim 1, wherein the orientation of an axis of each micro inertial sensor of said plurality of micro inertial sensors is angularly oriented with respect to an axis of said one or more sensor clusters by a known amount.
12. The device as claimed in claim 2 wherein computing unit is programmed to combine separate outputs of said plurality of micro inertial sensors to yield compensated output for each of said one or more sensor clusters.
13. The device as claimed in claim 12, wherein said device communicates with at least one additional device from a list comprising Global Positioning System receiver and a zero-velocity update sensor.
14. An inertial measurement method comprising:
sampling a movement by one or more sensor clusters, each sensor cluster including a plurality of micro inertial sensors to sample the movement with respect to one axis of a plurality of axes; and
summing, using a summing unit, for each of said one or more sensor clusters samples received from each of said one or more sensor clusters indicative of said movement with respect to said one axis to an equivalent vector indicative of the sampled movement.
15. The method as claimed in claim 14, further comprising the steps of:
estimating an error in said equivalent vector, said error is estimated according to an error model associated with the sensors;
calculating a correction to compensate for the error; and
applying the correction to said equivalent vector.
16. The method as claimed in claim 15, further comprising the steps of:
reading output of at least one device from a group of devices that consists of Global Positioning System receiver and a zero-velocity update sensor;
utilizing said output of said at least one additional device in estimating said error.
17. The method as claimed in claim 14, further comprising the steps of:
providing displacement information for each micro inertial sensor of said plurality of micro inertial sensors with respect to a pivot axis of said sensor cluster; and
adjusting output of each of said plurality of micro inertial sensors in accordance with said displacement information.
18. The method as claimed in claim 14, further comprising the steps of:
providing deviation information of an axis of each micro inertial sensor of said plurality of micro inertial sensors from a common axis of the sensor cluster; and
adjusting said separate output of each of said plurality of micro inertial sensors in accordance with each of said amount of deviation.
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