Feedback structure based entropy approach for multiple-model estimation |
| |
Authors: | Shen-tu Han Xue Anke Guo Yunfei |
| |
Affiliation: | Shen-tu Han;Xue Anke;Guo Yunfei;State Key Laboratory of Industrial Control Technology, Institute of Cyber-System and Control, Zhejiang University;Institution of Information and Control,Hangzhou Dianzi University;Institution of Information and Control, Hangzhou Dianzi University; |
| |
Abstract: | The variable-structure multiple-model (VSMM) approach, one of the multiple-model (MM) methods, is a popular and effective approach in handling problems with mode uncertainties. The model sequence set adaptation (MSA) is the key to design a better VSMM. However, MSA methods in the literature have big room to improve both theoretically and practically. To this end, we propose a feedback structure based entropy approach that could find the model sequence sets with the smallest size under certain conditions. The filtered data are fed back in real time and can be used by the minimum entropy (ME) based VSMM algorithms, i.e., MEVSMM. Firstly, the full Markov chains are used to achieve optimal solutions. Secondly, the myopic method together with particle filter (PF) and the challenge match algorithm are also used to achieve sub-optimal solutions, a trade-off between practicability and optimality. The numerical results show that the proposed algorithm provides not only refined model sets but also a good robustness margin and very high accuracy. |
| |
Keywords: | Feed back Maneuvering tracking Minimum entropy Model sequence set adaptation Multiple-model estimation |
本文献已被 CNKI 维普 ScienceDirect 等数据库收录! |
|