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433 results about "Kalman filtering algorithm" patented technology

Combined estimation method for lithium ion battery state of charge, state of health and state of function

The invention provides a combined estimation method for lithium ion battery state of charge, state of health and state of function. The combined estimation method comprises the steps that the state of he---alth of a battery is estimated online: open circuit voltage and internal resistance are identified online by adopting a recursive least square method with a forgetting factor, the state of charge is indirectly acquired according to a pre-established OCV-SOC corresponding relation, and then the size of battery capacity is estimated according to cumulative charge and discharge electric charge between two SOC points; the state of charge of the battery is estimated online: the state of charge of the battery is estimated by adopting the Kalman filter algorithm based on a two-order RC equivalent circuit model, and the battery capacity parameter in the Kalman filter algorithm is updated according to the estimation result of battery capacity; and the state of function of the battery is estimated online: the maximum chargeable and dischargeable current is calculated based on the voltage limit and the current limit of the battery according to internal resistance obtained by online identification, and then the maximum chargeable and dischargeable function can be obtained through further calculation.
Owner:TSINGHUA UNIV

Human body attitude calculation method based on quaternion and Kalman filtering

The invention discloses a human body attitude calculation method based on quaternion and Kalman filtering. The method comprises determining a vector coordinate system and a navigation coordinate system, determining an attitude matrix, respectively acquiring accelerated speed, angular velocity and magnetic induction intensity signals through an accelerometer, a gyroscope and a magnetometer, carrying out initial alignment on a human body attitude detection system, calculating initial attitude angles such as a pitching angle, a rolling angle and a heading angle, transforming the initial attitude angles into initial quaternion, carrying out system modeling according to a quaternion differential equation, inputting the initial quaternion as a measured value, carrying out data fusion on the attitude data through a Kalman filtering algorithm, outputting an estimated value which is updated quaternion, carrying out normalization processing on the updated quaternion to obtain final posture information, updating the attitude matrix and acquiring updated attitude angles. The human body attitude estimation method effectively improves the accuracy of human posture detection, has a fast response speed, has good stability and instantaneity and has a broad application prospect.
Owner:NANJING UNIV OF SCI & TECH

Lane line predicating and early warning method suitable for city road

The invention discloses a lane line predicating and early warning method suitable for a city road. According to the method, firstly, down sampling is performed on a collected road image, a detection region of interest is set and grayed, filtering enhancement is performed on the region of interest, edge detection is performed through a Canny operator, binarization is performed on the image after edge detection, then the image is mapped on a Hough plane, and lane lines are extracted through improved Hough conversion; then, parameters of the lane line are predicated by the adoption of a classical Kalman filtering algorithm, a region of interest is established, and the lane lines in the region of interest are fitted through a least square method to obtain the optimal predication value; finally, road surface information and current position information of automobiles are combined to establish a lane line departure warning model based on transverse distance, and therefore departure warning is achieved. The recognition method for the lane lines is good in real-time performance and robustness, according to the lane line departure warning model, calculation is easy, and warning is accurate.
Owner:HUNAN UNIV

Temperature compensation method for denoising fiber-optic gyroscope on basis of time series analysis

A temperature compensation method for denoising a fiber-optic gyroscope on the basis of time series analysis comprises four steps of: step 1, designing an experimental scheme, performing fixed point low and high temperature testing experiment on the fiber-optic gyroscope, and utilizing acquisition software for data acquisition; step 2, performing time series analysis on the zero offset data of the gyroscope, and establishing the mathematical model of the random error of the fiber-optic gyroscope; step 3, adopting a kalman filtering algorithm to filter random noise in the zero offset data of the fiber-optic gyroscope; and step 4, utilizing the data which is de-noised by the kalman filtering to identify the model structure of the temperature shift error of the fiber-optic gyroscope, and calculating the parameters of the identified model. The method establishes the multinomial model of the static temperature shift error of the fiber-optic gyroscope through time series analysis, kalman filtering denoising treatment and identification of the temperature shift error model structure and parameters. The method completely meets the real-time compensation requirement on the project, and has a better practicable value and a wide application prospect in the technical field of aerospace navigation.
Owner:BEIHANG UNIV

MEC-based V2X mobility prediction and content cache unloading scheme

Mobile Edge Computing (MEC) has the advantages of high bandwidth and low latency and has attracted extensive attention in the study of next generation of mobile networks by providing service environment and computing power at the edge of mobile networks. The invention discloses a vehicle task unloading and user mobility prediction and edge cache fusion policy in a vehicle networking environment. An MEC-based unloading framework is built. Tasks can be unloaded to an MEC server for vehicle-to-infrastructure (V2I) communications or can be unloaded to an adjacent vehicle for vehicle-to-vehicle (V2V) communications. Considering task backhaul failure caused by link disconnection caused by user mobility, the Kalman filter algorithm is used to predict link connection estimation, and a user can select a stable service node during task request and task collection. Cache decisions are made before the service node first returns a task to a request vehicle. Access latency, traffic load and networkcost can be significantly reduced through content cache.
Owner:CHONGQING UNIV OF POSTS & TELECOMM

Method and device for estimating state of charge of battery

The invention provides a method and device for estimating a state of charge of a battery. The method comprises the following steps: establishing a multi-parameter fusion mathematical model of a lithium iron phosphate battery; using a fuzzy Kalman filtering algorithm based on an index input membership function to optimize and estimate the state of the charge of the battery, wherein the step of establishing the multi-parameter fusion mathematical model comprises establishing a charge-discharge multiplying power-state of charge sub module, a temperature-state of charge sub module, and a cycle index-state of charge sub module. The method for estimating the state of charge of the battery uses the fuzzy self-adaptive Kalman filtering algorithm based the index input membership function, so that the theoretical value of measurement noise in the Kalman filter is adjusted smoother in a self-adpative manner, thereby improving the matching degree of the system measurement noise, and estimating the state of the charge of the battery more accurately.
Owner:SHENZHEN POLYTECHNIC

Robot distributed type representation intelligent semantic map establishment method

The invention discloses a robot distributed type representation intelligent semantic map establishment method which comprises the steps of firstly, traversing an indoor environment by a robot, and respectively positioning the robot and an artificial landmark with a quick identification code by a visual positioning method based on an extended kalman filtering algorithm and a radio frequency identification system based on a boundary virtual label algorithm, and constructing a measuring layer; then optimizing coordinates of a sampling point by a least square method, classifying positioning results by an adaptive spectral clustering method, and constructing a topological layer; and finally, updating the semantic property of a map according to QR code semantic information quickly identified by a camera, and constructing a semantic layer. When a state of an object in the indoor environment is detected, due to the adoption of the artificial landmark with a QR code, the efficiency of semantic map establishing is greatly improved, and the establishing difficulty is reduced; meanwhile, with the adoption of a method combining the QR code and an RFID technology, the precision of robot positioning and the map establishing reliability are improved.
Owner:BEIJING UNIV OF CHEM TECH

Static surveillance video abstraction method based on video moving target detection and tracing

The invention discloses a static surveillance video abstraction method based on video moving target detection and tracing, which comprises the following steps: (1) establishing a mixed Gaussian background model detection video moving target; (2) using the kalman filtering algorithm to trace multiple moving targets and store the trace data; (3) dividing the original video into multiple segments according to the trace data; and (4)extracting the key frame of each video segment and adding the motion trail. The method is simple to realize and has better performance.
Owner:XIAN JIAOTONG LIVERPOOL UNIV

Indoor simultaneous locating and environment modeling method for unmanned aerial vehicle

The invention discloses an indoor simultaneous locating and environment modeling method for an unmanned aerial vehicle. According to the method, flying tracks of the unmanned aerial vehicle can be located, and an indoor three-dimensional environmental model can be drawn fast. An operation platform and an operation method of the unmanned aerial vehicle are constructed, an RGB-D sensor carried by the unmanned aerial vehicle is utilized for collecting data, a visual odometry is adopted for estimating the indoor flying tracks and positions of the unmanned aerial vehicle, and an extended kalman filtering algorithm is adopted for obtaining the more accurate flying tracks and the positions of the aerial vehicle. Furthermore, the data transmission functions of the unmanned aerial vehicle and a ground communication device are utilized for feeding information collected by the sensor on the aerial vehicle back to ground operating personnel in real time, and a three-dimensional data display method of a computer is utilized for calculating and processing the collected data and carrying out indoor three-dimensional environment modeling and displaying.
Owner:BEIHANG UNIV

Attitude angle calculating and positioning method and fusion sensor thereof

The invention discloses an attitude angle calculating and positioning method and a fusion sensor thereof. The fusion sensor comprises a plurality of IMU sensors, a magnetometer and a GPS. The method comprises the following steps that the magnetometer, an accelerometer and gyro are calibrated; measurement data of accelerometer and gyro are fused by a redundant information fusion algorithm correspondingly to obtain acceleration information and angular velocity information; an extended kalman filtering algorithm is used for fusing the acceleration information, angular velocity information and magnetic field information of the magnetometer to obtain a fusion attitude angle; and position information is obtained by fusion attitude angle auxiliary positioning information. Due to the fact that data measurement and data fusion calculation are conducted by using multiple redundant IMU sensors and the fusion attitude angle is obtain by using the extended kalman filtering algorithm to fuse the data, the high-accurate attitude angle can be obtained under both static and dynamic conditions. The fusion attitude angle is used for assisting the GPS to obtain corrected position information, and therefore position information is more accurate, and stability and reliability of attitude angle calculating and positioning are improved.
Owner:PEKING UNIV SHENZHEN GRADUATE SCHOOL

Dual-wavelength binocular vision seam tracking method and tracking system

The invention discloses a dual-wavelength binocular vision seam tracking method. The method comprises the steps including image acquisition, data processing, seam tracking and the like. The invention further discloses a tracking system for implementing the method. The system adopts a near-infrared and structured light dual-wavelength binocular vision sensing system, images of a molten pool and different wavelengths of seam area images with of seams are measured simultaneously and transmitted to a miniature industrial control computer, and the seam positions are measured accurately with a multi-information fusion algorithm and a seam image three-dimensional reconstruction algorithm; the miniature industrial control computer adopts the Kalman filter algorithm to perform optimal estimation on the seam tracking deviation state according to a seam position detection result, a servo driver drives a servo motor to move so as to control a 3-axis motion workbench to generate corresponding motion, a welding torch or a laser head is controlled for deviation correction, and the seams are tracked accurately. The system can eliminate hard light, splashing and electromagnetic interference on a welding site and improve the seam tracking accuracy and reliability.
Owner:GUANGDONG UNIV OF TECH +1

Combined positioning method and apparatus using GPS, gyroscope, speedometer

The invention relates to GPS and MEMS gyroscope and speedometer combination location method and device. While the GPS signal is good, it uses the GPS location signal to locate, rectifies by the MEMS gyroscope and speedometer, synthesize the signal by Kalman filtering algorithm. While the GPS is lost, or the number of the receiving satellite is less than three, it switches to MEMS gyroscope and speedometer to locate. The combination navigation can improve GPS location precision, makes up the unable location defect caused by the GPS is covered.
Owner:上海复旦科技园股份有限公司

Power-cell SOC online closed-loop estimation method based on N-2RC model

The invention discloses a power-cell SOC online closed-loop estimation method based on an N-2RC model. In the invention, an electrochemical model and an equivalent circuit model are combined and a novel power cell model is provided. The N-2RC model uses a Nernst electrochemical model to replace an electromotive force portion of a second-order RC equivalent circuit model so that one to one correspondence of a cell electromotive force and SOC can be accurately reflected. Based on the model, a recursive least-square method based on a forgetting factor is used to identify a model parameter, and then an expansion Kalman filtering algorithm is used to realize on-line closed loop estimation of the cell SOC. The electrochemical model can well describe a cell characteristic on an electrochemical aspect, but the structure is complex and the model is not suitable for individually individual usage. And the equivalent circuit model belongs to an external characteristic model and can well express a volt-ampere characteristic relationship of the cell, but can not reflect an internal characteristic of the cell. By using the method in the invention, the above problems are overcome.
Owner:NANJING UNIV OF AERONAUTICS & ASTRONAUTICS

Laser tracking inertia combined measuring system and its measuring method

The invention discloses combined laser tracking and inertial surveying system for measuring position and gesture of space object composed of inertial surveying subsystem, laser tracking measurement subsystem, and computer control and data collection and process subsystem connected to the above said two systems. The invention is also discloses a dynamic tracking measuring method. Based on requirement of Kalman filtering algorithm, the method builds system equation and observation equation for moving target between fixed connected coordinate system and global coordinate, and edits expanded Kalman filtering algorithm for optimal modifying each error information. So as to calculate out information of position and gesture of target in fixed connected coordinate system related to global coordinate. The invention raises stability and measuring precision, and enriches output information measured.
Owner:TSINGHUA UNIV +1

Small satellite attitude determination system and method thereof

The invention discloses a small satellite attitude determination system and a method thereof. The system comprises a plurality of attitude measuring units and a central processing unit; the central processing unit is used for collecting measurement data of the attitude measuring units, calculating environment model and selecting corresponding attitude determination algorithm according to the measurement data and the environment model, so as to determine the attitude. The central processing unit consists of a horizon sensor data sampling and processing unit, a solar sensor data sampling and processing unit, a gaussmeter data sampling and processing unit, an environment model calculating unit and an attitude determination selecting unit. The attitude determination selecting unit selects corresponding attitude determination algorithm according to data of the horizon sensor data sampling and processing unit, the solar sensor data sampling and processing unit, the gaussmeter data sampling and processing unit and the environment model calculating unit, so as to determine the attitude. The small satellite attitude determination system has low cost and simple structure; the small satellite attitude determination system also has various attitude determination algorithms, wherein, four fixed attitude determination algorithms and four Kalman filtering algorithms are designed; the algorithms can be effectively integrated and automatically alternated on the satellite to improve reliability of the system.
Owner:INNOVATION ACAD FOR MICROSATELLITES OF CAS

Local positioning systems and methods

A local positioning system uses at least one node to track a location of a mobile tag. The system measures flight times of signals communicated between the node and the tag to determine values indicative of the range of the tag from the node. If desired, the values may be filtered in an effort to increase the accuracy of the range estimation. As an example, a Kalman filtering algorithm may be used. Multiple antennas are used at both the node and the tag to provide more accurate range estimates and to determine when the tag is entering a dead zone where signals are blocked or attenuated by obstacles.
Owner:SYNAPSE WIRELESS

Method based on segmented expansion Kalman filtering for estimating state of charge of lithium battery

InactiveCN107741569AEmbody dynamic characteristicsImprove estimation accuracyElectrical testingModel parametersEngineering
The invention discloses a method based on segmented expansion Kalman filtering for estimating the state of charge of a lithium battery. The method mainly comprises the steps of firstly, establishing asecond-order RC equivalent circuit model according to a working mechanism of the lithium battery; secondly, according to experimental data of pulse discharge responses of the lithium battery, utilizing a recursive least square method (RLS) to identify model parameters; thirdly, establishing a state space model of lithium battery discretization, adopting a segmented EKF algorithm to estimate the SOC of the lithium battery. According to the method, the suitable expansion Kalman filtering algorithm is utilized while an intensity nonlinearization process is distinguished from the working processof the lithium battery, and the robustness in the process of adopting a traditional EKF algorithm to estimate SOC is effectively improved; the problem is solved that decrease of filtering precision and possible filtering divergence are caused by Taylor series expansion linearization.
Owner:WENZHOU UNIVERSITY

Location and environment modeling method of intelligent movable robot

The invention discloses a location and environment modeling method of an intelligent movable robot, and the method comprises the steps of firstly forming correction iteration expanded Kalman filtering algorithm and determining a number of iterations, then establishing a movement model and an observation model of the movable robot, initializing the status of the movable robot, calculating a position jacobian matrix, controlling and inputting the jacobian matrix to calculate, observing the jacobian matrix and the like; and finally solving a Kalman gain matrix, updating a status estimation equation and a covariance matrix by resolving Kalman gain matrix, and repeating partial steps. The method is centralized on the expanded Kalman filter algorithm which is widely used in the simultaneous location and environment modeling field of the movable robot, and the algorithm is improved, so that the performance of the algorithm is greatly improved, and the algorithm can better meet the application in the SLAM (simultaneous location and mapping). The method also provides powerful technical support for the autonomous navigation and completion of complicated intelligent tasks of the movable robot in an unknown environment.
Owner:CHONGQING UNIV OF POSTS & TELECOMM

SLAM (Simultaneous Localization and Mapping) method and device based on visual inertia, storage medium and equipment

The invention relates to an SLAM (Simultaneous Localization and Mapping) method and device based on visual inertia, a storage medium and equipment, and relates to the technical field of wireless locating. The method comprises the steps of: fusing image information acquired by an image acquisition unit at the first time and motion information acquired by an inertial measurement unit IMU according to an extended Kalman filtering algorithm, so that the initial posture is obtained, determining an initial local map according to the image information and the initial posture, optimizing the initial posture and the initial local map according to a pre-set nonlinear optimization algorithm, so that the optimized posture and the optimized local map are obtained, and updating the target initial posture and the target initial local map according to the optimized posture and the optimized local map. The SLAM calculation efficiency and locating precision can be increased.
Owner:CLOUDMINDS SHANGHAI ROBOTICS CO LTD

Battery SOC online estimation method based on double Kalman filtering algorithm

The invention discloses a battery SOC online estimation method based on double Kalman filtering algorithm, comprising: S1) obtaining the initial value of the battery SOC; S2) creating a battery equivalent circuit model; obtaining the state equation and the output equation of the battery; S3) using the initial value of the battery SOC as the input state amount and the voltage equation corresponding to the battery equivalent circuit model as the output equation; and utilizing the expanded Kalman filtering algorithm to perform battery SOC estimation; S4) using the battery SOC estimated by the expanded Kalman filtering algorithm as the input state amount and the amper-hour integral method as the output equation; and performing battery SOC estimation through the use of the Kalman filtering algorithm for the estimation value of the battery SOC. The battery SOC online estimation method based on double Kalman filtering algorithm can obtain the SOC estimation value more accurately. Without its excessive reliance on a battery model, the requirement of the method on the current accuracy is also reduced. The Battery SOC online estimation method based on double Kalman filtering algorithm of the invention can find wide applications in the battery identification and estimation field.
Owner:深圳市麦澜创新科技有限公司

Method for estimating SOC of battery

The invention discloses a method for estimating SOC (State Of Charge) of a battery. A battery model is established by use of an SOC equation of the battery. Compared with the prior art, the method is characterized in that temperatures, charge / discharge rates and the SOC equation model are added, and finally, the SOC of the battery is estimated by use of a self-adaptive kalman filtering algorithm. In practical estimation, the estimated value of a kalman filtering state vector is updated any time in combination with the influence of the temperatures and charge / discharge rates on the battery, and therefore, the latest SOC state value in the current state can be obtained. In this way, the estimation accuracy of the SOC of the battery is improved and the application prospect of the engineering is also expanded.
Owner:UNIV OF ELECTRONICS SCI & TECH OF CHINA

Single person positioning navigator based on multi-sensor fusion and positioning and navigating method

The invention discloses a single person positioning navigator based on multi-sensor fusion and a positioning and navigating method. The single person positioning navigator comprises a global satellite positioning system, a barometer, a three-axis gyroscope, a three-axis accelerometer and three-axis geomagnetic sensors. Attitude angle information obtained through the gyroscope, position information obtained through the accelerometer, human body course information provided by the geomagnetic sensors, height information provided by the barometer, stride frequency information worked out by the accelerometer, and position and speed information provided by the global satellite positioning system are input into a kalman filter together, multi-information fusion is carried out through a kalman filter algorithm, and thus positioning and navigating parameters are output. Even when the global satellite positioning system cannot stably receive information due to shielding, electromagnetic interference and other factors, the single person positioning navigator based on multi-sensor fusion and the positioning and navigating method can achieve effective positioning and navigating and are suitable for various environments such as inside rooms or inside tunnels. By means of the single person positioning navigator based on multi-sensor fusion and the positioning and navigating method, positioning errors accumulated along with time can be reduced, and accurate individual 3D positioning can be achieved.
Owner:CHINA ELECTRONICS TECH GRP NO 26 RES INST

Multi-sensor combined navigation system for aviation

InactiveCN101865693AImprove positioning and speed accuracyLow costInstruments for comonautical navigationAviationGyroscope
The invention relates to a multi-sensor combined navigation system for aviation, and the system comprises an MSINS unit, a GPS unit, a magnetic compass unit, a liquid crystal display unit, a data transmission interface unit, a combined navigation computer, a data storage unit and a power supply device. The MSINS unit is used for acquiring signals of an accelerometer and a gyroscope, carrying out filtration and amplification and sending the signals to a DSP for carrying out algorithm processing; a GPS module is used for outputting longitude, latitude, altitude and velocity values of X, Y and Z axes based on a geocentric coordinate system measured by the GPS; the magnetic compass unit is used for outputting three-dimensional attitude information measured by a three-axis magnetic compass; the combined navigation computer is used for receiving signals outputted by an inertial measurement unit, the GPS module and the magnetic compass, applying the federated Kalman filtering algorithm to carry out fusion treatment on data and obtaining combined navigation data; and the data storage unit is used for saving original data and result data. The system has the advantages of small volume, low cost, high reliability and high precision.
Owner:TIANJIN UNIV OF TECH & EDUCATION TEACHER DEV CENT OF CHINA VOCATIONAL TRAINING & GUIDANCE

Method for estimating lithium battery SOC based on self-adaptability fuzzy Kalman filter

The invention discloses a method for estimating lithium battery SOC based on self-adaptability fuzzy Kalman filter. For different lithium batteries, after Kalman filter discrete state model is determined, the SOC is estimated by the utilization of the method of self-adaptability fuzzy Kalman filter, wherein the residual variance matching degree and residual error mean of terminal voltage in a lithium battery equivalent model serve as input of a fuzzy control system, so that adjustment factors of a system noise variance and a measurement noise variance are obtained, and then the two variances are adjusted; the adjusted system noise variance and measurement noise variance are substituted into a Kalman filter algorithm to estimate SOC values at all moments. With the method, the power lithium battery SOC can be accurately estimated, the problems that according to an existing estimation method, the requirement for on-line estimation can not be satisfied, has large accumulated errors, diverges and is prone to being affected by noise can be solved, and the estimation accuracy is high.
Owner:HEFEI UNIV OF TECH

Power lithium battery SOC estimation method based on self-adaptive Kalman filtering method

The invention discloses a power lithium battery SOC estimation method based on the self-adaptive Kalman filtering method. The power lithium battery SOC estimation method comprises the following steps:at first, according to the dynamic characteristics of a lithium ion battery, establishing a dual-polarization equivalent circuit model of the battery; then, obtaining data through testing the performance of the composite pulse power, identifying the characteristic parameter of the model, and adopting the least squares fit to obtain a relation curve of the open-circuit voltage and SOC; based on the relation curve of the open-circuit voltage and SOC and the discrete equation of a DP model, establishing a state equation and an observation equation, and substituting the state equation and the observation equation into the EFK algorithm to obtain a system matrix; and finally, adopting the modified self-adaptive extended Kalman filtering algorithm to estimate the battery SOC. With adoption of the power lithium battery SOC estimation method, the problems that the filtering results diffuse and the operation is not stable when the traditional self-adaptive Kalman filtering method or the EFK algorithm is adopted for SOC estimation are effectively solved, and the speed that the SOC estimated value is convergent to the truth value is increased.
Owner:WUHAN UNIV OF TECH

Unite online estimation method of electromobile power battery system SOC and SOH

InactiveCN109870651AEstimation Accuracy ImpactGuaranteed high precision characteristicsElectrical testingPower batteryInternal resistance
The invention belongs to the field of electromobile power battery management, and relates to a unite online estimation method of electromobile power battery system SOC and SOH. The method mainly includes the following steps that firstly, experimental data are acquired, a battery model is established and initial valves of model parameters are recognized, and coefficient initial valves A0, B0, C0 and D0 of a space equation are acquired; secondly, two extended Kalman filtering (EKF) rings respectively estimate the battery set SOC and internal resistance R0, and estimation results of the SOC and R0 can be modified with each other; and thirdly, the estimation results of the SOC and R0 in the second step are input in to a BCRLS algorithm to output the recognized model parameters R0, R1, and C1,and space equation coefficients Ak, Bk, Ck, and Dk are updated to estimate the SOC and the SOH at the next moment. The method fuses a dual Kalman filtering algorithm and the BCRLS algorithm, the problem that an algorithm no longer has unbiasedness due to uncertain noises is solved effectively, the accuracy of a battery set model is improved, the dual Kalman filtering algorithm effectively avoids the impact of an online SOC valve on battery SOH estimation, and the estimation accuracy and robustness of the SOH are improved.
Owner:CHONGQING UNIV OF POSTS & TELECOMM

System and method for tracking moving target based on wireless sensor network

The invention provides a system and a method for tracking a moving target based on a wireless sensor network. The system comprises a sink node, a gateway, a server and a plurality of sensor node devices; and the tracking method comprises the following steps: evenly arranging the sensor node devices in a target monitoring area; starting the sensor node devices and server software, and making preparation for receiving data of the wireless sensor network; when a passive infrared sensor detects a target, starting ultrasonic ranging and operating Extended Kalman Filtering Algorithm to obtain a target position coordinate; adopting a principle of a minimum covariance matrix track to select a task node of the next time; and reading initial data from the sink node through the gateway, drawing a data curve and a target track, saving the data, and transmitting a server instruction to a node of a specified ID through the gateway by the server. The system and the method can accurately detect and report the position of the moving target in a monitoring area, adopt an effective sensor awakening mechanism and greatly save energy consumption of the nodes.
Owner:SOUTH CHINA UNIV OF TECH

Simultaneous localization and mapping method based on distributed edge unscented particle filter

The invention relates to a simultaneous localization and mapping method based on distributed edge unscented particle filter. First, a coordinate system is built and an environmental map is initialized; then subfilters are built for each landmark point with successful matching respectively; next, based on a robot motion model, a particle swarm is generated in each subfilter respectively, and the state vector and the variance of each particle are obtained; noise is introduced, particle state vectors after extension are calculated by utilization of unscented transformation, the particles after extension are updated and the particle swarms are optimized; then particle weights are calculated and normalization is carried out, and aggregated data of each subfilter are subjected to statistics and the data are sent to a master filter; next, global estimation and variance are calculated; then the effective sampling draw scale and sampling threshold of each subfiter are determined, the subfilters with severe particle degeneracy are subjected to resampling; then the state vectors and the variances of the robot are output, and stored in a map. Finally, landmark point states are updated by utilization of kalman filtering algorithm until the robot is no longer running.
Owner:BEIJING UNIV OF TECH

Pedestrian autonomous navigation calculation algorithm based on MEMS-IMU

The invention discloses a pedestrian autonomous navigation calculation algorithm based on an MEMS-IMU. Two IMU systems are simultaneously and fixedly connected with the two feet of the user of a pedestrian navigation system; the two systems respectively perform a strapdown inertial navigation calculation algorithm and a zero-speed correcting algorithm on the basis of Kalman filtering, and then the positioning information of the two feet is fused; when the calculation distance between two feet exceeds the largest step size gamma between the two feet, inequality constraint is performed on navigation results of two IMUs by adopting a state constraint Kalman filtering algorithm, so that vague human physiological property problem is converted into a rigid mathematical problem, the optimal estimation of navigation results is achieved, and pedestrian navigational positioning function with higher accuracy is achieved.
Owner:HARBIN ENG UNIV

Strap-down inertial navigation system/visual odometer integrated navigation method

The invention provides a strap-down inertial navigation system / visual odometer integrated navigation method which comprises the following steps: mounting a binocular visual odometer and a fiber-opticgyroscope inertial navigation system on a transporter and collecting data of all sensors; extracting features in an image sequence with an FAST method, completing feature matching with a feature matching method based on random sample consensus and calculating movement information of the transporter; establishing a nonlinear state equation and a measurement equation of a strap-down inertial navigation system / visual odometer integrated navigation system; and completing time update and measurement update of the strap-down inertial navigation system / visual odometer integrated navigation system with a volume Kalman filter of a nonlinear filter, and estimating the state of the system, so as to realize the navigation and location of the strap-down inertial navigation system / visual odometer integrated navigation system. According to the strap-down inertial navigation system / visual odometer integrated navigation method, a feature matching algorithm is optimized, and a nonlinear volume Kalman filter algorithm is utilized, so that the location accuracy and the robustness of the integrated navigation system are improved.
Owner:HARBIN ENG UNIV
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