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Fault detection for non-linear non-Gaussian stochastic systems using entropy optimization principle

机译:基于熵优化原理的非线性非高斯随机系统故障检测

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摘要

In this paper, a fault detection (FD) problem is studied for non-linear dynamic stochastic systems with non-Gaussian disturbances and faults (or abrupt changes of system parameters). After a filter is constructed to generate the detected error, the FD problem is reduced to an optimization problem for the error system, which is represented by a non-linear non-Gaussian stochastic system. Since generally (extended) Kalmen filtering approaches are insufficient to characterize the non-Gaussian variables, we propose the entropy optimization principle for the stochastic error system. The design objective is to maximize the entropies of the stochastic detection errors when the faults occur, and to minimize the entropies of the stochastic estimator errors resulting from the other stochastic noises. Following the formulation of the probability density functions of the stochastic error in terms of those of both the disturbances and the faults, new recursive approaches are established to calculate the entropies of the detection errors. By using the novel performance index and the formulations for the entropies, the realtime optimal FD filter design method is provided. Finally, simulations are given to demonstrate the effectiveness of the proposed FD filtering algorithms.
机译:本文研究了具有非高斯扰动和故障(或系统参数突变)的非线性动态随机系统的故障检测(FD)问题。在构造滤波器以生成检测到的误差之后,将FD问题简化为误差系统的优化问题,该误差系统由非线性非高斯随机系统表示。由于一般的(扩展的)卡尔曼滤波方法不足以表征非高斯变量,因此我们为随机误差系统提出了熵优化原理。设计目标是在发生故障时最大化随机检测误差的熵,并最小化由其他随机噪声引起的随机估计器误差的熵。根据扰动和故障的随机误差概率密度函数的公式,建立了新的递归方法来计算检测误差的熵。通过使用新的性能指标和熵公式,提供了实时最优FD滤波器设计方法。最后,通过仿真证明了所提出的FD滤波算法的有效性。

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