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Fault Detection and Health Assessment of Equipment Based on Fuzzy DPCA Spatial Eigenvalue Similarity

机译:基于模糊DPCA空间特征值相似性的设备故障检测与健康评估

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摘要

To improve the fault recognition rate of the dynamic principal component spatial data drive method, a fault diagnosis and equipment health status assessment method based on similarity fuzzy dynamics principal component analysis was proposed. First, the data are fuzzified according to the error function, and an augmented matrix is constructed. The eigenvalues are decomposed to obtain a score matrix and residual matrix of the fuzzy principal component. Further, the similarity between fault data and normal data is calculated. Meanwhile, a health assessment of the equipment is realized. The contribution rate of the observed variables is calculated. Finally, general Tennessee Eastman data and health assessment of a hydraulic press are used to validate the algorithm. The results show that the SFDPCA has a fault recognition rate for some faults, and the recognition rate for other faults is also higher than that of DPCA-Diss, DPCA-SPE, and PCA-SPE. The SDDPCA accurately identifies abnormal phenomena. It can determine the health level of prefilling and effectively make up for the shortcomings of , PCA-SPE, DPCA-Diss, and other methods and also can be applied to data-driven fault diagnosis to improve the fault recognition rate.
机译:为了提高动态主成分空间数据驱动方法的故障识别率,基于相似度模糊动力学一个故障诊断设备和健康状态评价方法,提出了主成分分析。首先,数据被根据错误函数模糊化,并增广矩阵构造。本征值分解,以获得一个记分矩阵和模糊主成分的残余基质。此外,故障数据和正常数据之间的相似性被计算。同时,设备的健康评估实现。观测变量的贡献率进行计算。最后,液压机的一般田纳西州伊士曼数据和健康评估用于验证的算法。结果表明,该SFDPCA有一些故障的故障识别率,以及其它故障的识别率也比DPCA-迪斯,DPCA-SPE,和PCA-SPE高。所述SDDPCA准确地识别异常现象。由此可以判断预填的健康水平,有效地弥补了,PCA-SPE,DPCA-迪斯等方法的不足,也可以应用于数据驱动的故障诊断,以提高故障识别率。

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