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A high-precision data fusion method for robust measurement of highly dynamic non-Gaussian models

A technology of data fusion and Gaussian model, which is applied in measurement devices, electrical digital data processing, special data processing applications, etc., and can solve the problems of reducing the number of model sets, reducing the calculation amount of probability transition matrix, and the large amount of calculation.

Active Publication Date: 2017-12-19
SOUTHEAST UNIV
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Problems solved by technology

Traditional IMM information fusion is mostly used for tracking applications of dynamic targets. Recently, there have been discussions on applying it to integrated navigation data fusion. However, there are still many problems in directly using IMM, such as constructing a large enough model to accurately match the operating state of the system. At the same time, the accuracy of the model set is greatly affected by the prior knowledge of the algorithm designer, while the variable structure multi-mode interaction (VSIMM) algorithm can reduce the number of model sets stored in the system in advance and reduce the probability transfer. The computational load of the matrix, and the algorithm adaptively generates a new model in the limited model set to adapt to the change of the statistical characteristics of the system process noise

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  • A high-precision data fusion method for robust measurement of highly dynamic non-Gaussian models
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  • A high-precision data fusion method for robust measurement of highly dynamic non-Gaussian models

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Embodiment Construction

[0058] The present invention will be further described below in conjunction with the accompanying drawings.

[0059] A high-precision data fusion method for robust measurement of high-dynamic non-Gaussian models. The hardware sensor sampling period fluctuation in the high-dynamic system is considered as the random uncertainty of the system, and a filtering model set is established according to its fluctuation range and trend. The model set includes more than one UKF filter model and fuzzy reasoning system; the UKF filter models are executed in parallel, and the probability of each UKF filter model matching the current high dynamic system state is calculated through Bayesian theorem, and each UKF filter model is updated in real time. The matching probability of a UKF filter model and the current high dynamic system, and the updated matching probability is used as the input of the fuzzy inference system, and the adaptive estimation probability of the UKF filter model probability ...

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Abstract

A high-precision data fusion method for robust measurement of highly dynamic non-Gaussian models, considers the sampling period fluctuation of hardware sensors in a highly dynamic system as the random uncertainty of the system, and establishes a model including UKF filter and a model according to its fluctuation range and trend. The filter model set of the fuzzy inference system, calculates the probability that the UKF filter model matches the current high dynamic system state through Bayes' theorem, updates the matching probability in real time, and uses the updated matching probability as the input of the fuzzy inference system, through the fuzzy inference The system obtains the adaptive estimation probability, and finally fuses multiple state estimates based on the adaptive estimation probability to obtain the final mean and covariance estimation of the state variables of the highly dynamic system. The present invention can not only realize the combination of highly dynamic, strong nonlinear, and non-Gaussian models The data fusion of the system can reduce the number of pre-stored model sets, while improving the computational efficiency of model probability update and the measurement robustness of high dynamic systems.

Description

technical field [0001] The invention relates to a high-precision data fusion method oriented to robust measurement of a high-dynamic non-Gaussian model, and its applicable field is combined navigation and other multi-sensor information fusion fields. Background technique [0002] Global Navigation Satellite System (GNSS) is a navigation system that can provide all-weather precise positioning services, but it is susceptible to human and non-human interference, resulting in poor positioning robustness. Inertial Navigation System (INS) is a completely autonomous navigation system with good anti-interference ability, high accuracy in short-term and low navigation accuracy in long-term work. Combining the two navigation systems can learn from each other and obtain better navigation effects, so it has become a hotspot in navigation research. The data fusion algorithm of multi-sensor output is the focus of integrated navigation research. In recent years, the Kalman filter (KF) and...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06F19/00G01S19/47
Inventor 陈熙源崔冰波宋锐汤传业方琳
Owner SOUTHEAST UNIV
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