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A Fault Detection Method for Complex Electromechanical System using Improved Integrated Approach

机译:一种使用改进的综合方法复杂机电系统的故障检测方法

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In view of certain limitations to applications of conventional multivariate statistical methods under increasingly complicated industrial process system, this paper proposes a fault detection method for complex electromechanical system using ILLE-SVDD data dimensionality reduction. The method combines traditional ILLE and SVDD. First of all, sample points in the original high-dimensional space are linearly represented with their adjacent points' Euclidean distance, using locally linear embedding (LLE). Build a local reconstruction relationship matrix and keep its reconstruction relationship unchanged as far as possible in low-dimensional space, to reduce dimensionality. Secondly, by containing most of the samples in space within the space of sphere, separate a few exceptional samples outside the sphere, to detect exceptions and classify. Finally, in the process of TE, carry out a simulation experiment. Results show that ILLE has a better manifold unfolding effect. SVDD can detect exceptions effectively and is easier to implement in application.
机译:鉴于常规多变量统计方法在越来越复杂的工业过程系统下应用的某些限制,本文提出了使用Ille-SVDD数据维度减少的复杂机电系统的故障检测方法。该方法结合了传统的ILLE和SVDD。首先,使用当地线性嵌入(LLE),原始高维空间中的采样点用相邻的点'欧几里德距离线性地表示。构建局部重建关系矩阵,并在低维空间中尽可能保持重建关系,以减少维度。其次,通过在球体的空间内包含大部分空间的样本,将一些特殊的样本分开在球体外,检测例外和分类。最后,在TE的过程中,进行模拟实验。结果表明,艾略有更好的歧管展开效果。 SVDD可以有效地检测异常,在应用中更容易实现。

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