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Fault Detection and Diagnosis of Nonlinear Processes Based on Kernel ICA-KCCA

机译:基于核ICA-KCCA的非线性过程故障检测与诊断

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Fault detection and diagnosis based on multivariate statistical way is a hotspot in recent years. According to the nonlinear property of Continuous Annealing Line, this article developes a nonlinear ICA, which combined the predominance of ICA and reproducing kernel Hilbert space, to monitor process. This method has better statistical attribute than traditional ICA algorithm based on maximum negentropy, and it performs more robust and flexible to the variety of signal source. At last, the simulation results of practical production reveal that the kernel ICA-KCCA algorithm is more effective than traditional ICA method.
机译:基于多元统计方式的故障检测和诊断是近年来的热点。根据连续退火线的非线性性质,本文开发了非线性ICA,其组合了ICA的优势和再现核Hilbert空间,监测过程。该方法具有比最大未加入的传统ICA算法更好的统计属性,并且它对各种信号源执行更强大和灵活性。最后,实际生产的仿真结果表明,内核ICA-KCCA算法比传统的ICA方法更有效。

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