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Fault Detection Based on Modified t-SNE

机译:基于改进的t-SNE的故障检测

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摘要

Dimension reduction is a general step to process high dimensional data for fault detection. Principal component analysis (PCA) divides data space into principal component space and residual space. But it is a global method without considering local geometric properties between data points. Concentrating on local structure of data, manifold learning can be introduced in dynamic and continuous process for fault detection. It can extract latent features of data, and also be viewed as nonlinear dimension reduction. In this paper, we propose a modified t-SNE algorithm for fault detection, simultaneously considering local structure and different scales of variables. Modified t-SNE converts Mahalanobis distance to the conditional probability for representing pairwise similarities instead of Euclidean distance, which satisfies the characteristics of industrial process data. A subspace can be obtained from high-dimension to low-dimension by applying modified t-SNE, which effectively preserves local structure. Simulation on Tennessee Eastman process (TEP) demonstrates the effectiveness of our proposed method.
机译:降维是处理高维数据以进行故障检测的一般步骤。主成分分析(PCA)将数据空间分为主成分空间和剩余空间。但这是一种全局方法,无需考虑数据点之间的局部几何特性。集中于数据的局部结构,可以在动态和连续过程中引入流形学习以进行故障检测。它可以提取数据的潜在特征,也可以看作是非线性降维。在本文中,我们提出了一种改进的t-SNE故障检测算法,同时考虑了局部结构和变量的不同尺度。改进的t-SNE将马氏距离转换为表示成对相似性的条件概率,而不是欧几里得距离,从而满足了工业过程数据的特征。通过应用改进的t-SNE,可以从高维到低维获得一个子空间,该子空间可以有效地保留局部结构。田纳西州伊士曼过程(TEP)的仿真证明了我们提出的方法的有效性。

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