Fault Diagnosis of Overflow Valve Based on Trispectrum

Wen-bing Wu
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引用次数: 0

Abstract

The high-order spectrum can effectively remove Gaussian noise. The three-spectrum and its slices represent random signals from a higher probability structure. It can not only qualitatively describe the linearity and nonlinearity of vibration signals closely related to mechanical failures, Gaussian and non-Gaussian Performance, and can greatly improve the accuracy of mechanical fault diagnosis. The two-dimensional slices of trispectrum in normal and fault states show different peak characteristics. 2-D wavelet multi-level decomposition can effectively compress 2-D array information. Least squares support vector machine can obtain the global optimum under limited samples, thus avoiding the local optimum problem, and has the advantage of reducing computational complexity. In this paper, 2-D wavelet multi-level decomposition is used to extract features of trispectrum 2-D slices, and input LSSVM to diagnose the fault of the pressure reducing valve, which has achieved good results.
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基于三谱的溢流阀故障诊断
高阶谱能有效地去除高斯噪声。三谱及其切片表示来自高概率结构的随机信号。它不仅可以定性地描述与机械故障密切相关的振动信号的线性和非线性、高斯和非高斯性能,而且可以大大提高机械故障诊断的准确性。正常和故障状态下的二维三光谱切片显示出不同的峰值特征。二维小波多级分解能有效压缩二维阵列信息。最小二乘支持向量机可以在有限样本下获得全局最优,从而避免了局部最优问题,并且具有降低计算复杂度的优点。本文采用二维小波多级分解提取三谱二维切片的特征,并输入LSSVM对减压阀进行故障诊断,取得了较好的效果。
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