Fault Diagnosis Method Based on High Precision CRPF under Complex Noise Environment

Jinhua Wang, Jie Cao
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引用次数: 1

Abstract

In order to solve the problem of low tracking accuracy caused by complex noise in the fault diagnosis of complex nonlinear system, a fault diagnosis method of high precision cost reference particle filter (CRPF) is proposed. By optimizing the low confidence particles to replace the resampling process, this paper improved the problem of sample impoverishment caused by the sample updating based on risk and cost of CRPF algorithm. This paper attempts to improve the accuracy of state estimation from the essential level of obtaining samples. Then, we study the correlation between the current observation value and the prior state. By adjusting the density variance of state transitions adaptively, the adaptive ability of the algorithm to the complex noises can be enhanced, which is expected to improve the accuracy of fault state tracking. Through the simulation analysis of a fuel unit fault diagnosis, the results show that the accuracy of the algorithm has been improved obviously under the background of complex noise.
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复杂噪声环境下基于高精度CRPF的故障诊断方法
为了解决复杂非线性系统故障诊断中复杂噪声导致跟踪精度低的问题,提出了一种高精度代价参考粒子滤波(CRPF)故障诊断方法。本文通过优化低置信度粒子替代重采样过程,改进了基于CRPF算法风险和代价的样本更新导致的样本贫困化问题。本文试图从样本获取的本质层面提高状态估计的精度。然后,研究当前观测值与先验状态的相关性。通过自适应调整状态转移的密度方差,增强了算法对复杂噪声的自适应能力,有望提高故障状态跟踪的精度。通过对某燃油单元故障诊断的仿真分析,结果表明,在复杂噪声背景下,该算法的诊断精度有了明显提高。
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