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Function Based Fault Detection for Uncertain Multivariate Nonlinear Non-Gaussian Stochastic Systems Using Entropy Optimization Principle

机译:基于函数优化的不确定多元非线性非高斯随机系统基于函数的故障检测

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In this paper, the fault detection in uncertain multivariate nonlinear non-Gaussian stochastic systems is further investigated. Entropy is introduced to characterize the stochastic behavior of the detection errors, and the entropy optimization principle is established for the fault detection problem. The principle is to maximize the entropies of the stochastic detection errors in the presence of faults and to minimize the entropies of the detection errors in the presence of disturbances. In order to calculate the entropies, the formulations of the joint probability density functions (JPDFs) of the stochastic errors are presented in terms of the known JPDFs of both the disturbances and the faults. By using the novel performance indexes and the formulations for the entropies of the detection errors, new fault detection design methods are provided for the considered multivariate nonlinear non-Gaussian plants. Finally, a simulation example is given to illustrate the efficiency of the proposed fault detection algorithm.
机译:本文对不确定的多元非线性非高斯随机系统的故障检测进行了进一步的研究。引入熵来表征检测错误的随机行为,并建立了故障检测问题的熵优化原理。原理是在存在故障的情况下最大化随机检测误差的熵,并在存在干扰的情况下最小化检测误差的熵。为了计算熵,根据已知的扰动和故障JPDF给出了随机误差的联合概率密度函数(JPDF)的公式。通过使用新颖的性能指标和检测误差的熵公式,为考虑的多元非线性非高斯植物提供了新的故障检测设计方法。最后,给出了一个仿真实例来说明所提出的故障检测算法的有效性。

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