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ENTROPY OPTIMIZATION FILTERING FOR FAULT ISOLATION OF NON-GAUSSIAN SYSTEMS

机译:非高斯系统故障隔离的熵优化过滤

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摘要

In this paper, the fault isolation (FI) problem is investigated for nonlinear non-Gaussian dynamic systems with multiple faults (or abrupt changes of system parameters) in the presence of noises. By constructing a filter to estimate the states, the FI problem can be reduced to an entropy optimization problem subjected to the non-Gaussian estimation error systems. The design objective for the FI purpose is that the entropy of the estimator error is maximized in the presence of the diagnosed fault and is minimized in the presence of the nuisance faults or noises. It is shown that the error dynamics is represented by a nonlinear non-Gaussian stochastic system, for which new relationships are applied to formulate the PDFs of the stochastic error in terms of PDFs of the noises and faults. The Renyi's entropy has been used to simplify the computations in the filtering for the recursive design algorithms. It is noted that the output can be supposed to be immeasurable (but with known stochastic distributions), which is different from the existing results where the output is always measurable for feedback.
机译:在本文中,研究了存在噪声时具有多个故障(或系统参数的突然变化)的非线性非高斯动态系统的故障隔离(FI)问题。通过构造用于估计状态的滤波器,可以将FI问题简化为经受非高斯估计误差系统的熵优化问题。 FI目的的设计目标是,在存在已诊断故障的情况下使估计误差的熵最大,而在存在讨厌故障或噪声的情况下使估计误差的熵最小。结果表明,误差动态是由非线性非高斯随机系统表示的,对于该系统,可以应用新的关系来根据噪声和故障的PDF来表达随机误差的PDF。 Renyi的熵已用于简化递归设计算法的滤波中的计算。注意,可以假定输出是不可测量的(但是具有已知的随机分布),这与现有结果不同,在现有结果中,始终可以测量输出的反馈。

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