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On applicability of the interacting multiple-model approach to state estimation for systems with sojourn-time-dependent Markov model switching

机译:依赖于停留时间的马尔可夫模型切换的交互多模型方法在状态估计中的适用性

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摘要

In this paper the attempt at the interacting multiple-model (IMM) method extension to the state estimation problem with semi-Markov [sojourn-time-dependent Markov (STDM)] system model switching is analyzed. It is demonstrated that such an STDM-IMM approach does not properly take into account the specific character of the STDM switching in the system, and it becomes a reason for the reduction of estimation accuracy. For this problem it is shown that a hypotheses merging should be restricted in such a way that not only the current system model, but also the sojourn time in the model, should be given in hypotheses to be tested. Some other aspects of Bayesian estimation in a switching environment are also discussed.
机译:本文分析了将交互多模型(IMM)方法扩展到使用半马尔可夫[依赖于停留时间的马尔可夫(STDM)]系统模型切换的状态估计问题的尝试。证明了这样的STDM-IMM方法没有适当地考虑系统中STDM切换的特定特性,并且这成为降低估计精度的原因。对于这个问题,表明应该以一种方式限制假设合并,使得不仅要在当前系统模型中,而且在模型中的停留时间都应在要测试的假设中给出。还讨论了切换环境中的贝叶斯估计的其他方面。

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