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Generalized orthogonal locality preserving projections for nonlinear fault detection and diagnosis

机译:非线性故障检测与诊断的广义正交局部保投影

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摘要

Following the intuition that process variable data usually distributes on or near a low-dimensional structure embedded in the input space due to the dependencies among numerous process variables, we propose a novel nonlinear dimensionality reduction method named Generalized Orthogonal Locality Preserving Projections (GOLPP) for nonlinear fault detection and diagnosis. GOLPP extends the recently proposed linear Orthogonal Locality Preserving Projections (OLPP) to nonlinear case using the kernel-trick. Specifically, GOLPP explicitly considers the low-dimensional structure in data and finds a nonlinear mapping from the input space to the reduced space that optimally preserves the structure and that simultaneously possesses the orthogonal property in a kernel feature space. By tailoring the definition of proximity between training samples, GOLPP can work in unsupervised or supervised setting: Unsupervised GOLPP preserves the geometry structure for compact data representation; Supervised GOLPP uses a new proximity definition to preserve the local discriminant structure as well as the geometry in each class for data discrimination. A fault detection method based on unsupervised GOLPP and a fault diagnosis method based on supervised GOLPP are developed. Simulation results on a simple nonlinear system and the benchmark Tennessee Eastman process show the superiority of the GOLPP-based fault detection and diagnosis methods over popular nonlinear methods.
机译:根据直觉,由于许多过程变量之间的依赖性,过程变量数据通常分布在嵌入在输入空间中的低维结构上或附近,因此,我们提出了一种新的非线性降维方法,称为非线性正交局部保留投影(GOLPP)故障检测与诊断。 GOLPP使用核技巧将最近提出的线性正交局部性保留投影(OLPP)扩展到非线性情况。具体而言,GOLPP明确考虑了数据中的低维结构,并找到了从输入空间到缩减空间的非线性映射,该映射最佳地保留了该结构并同时在内核特征空间中拥有正交属性。通过调整训练样本之间的接近度定义,GOLPP可以在无监督或有监督的环境中工作:无监督GOLPP保留了几何结构以用于紧凑的数据表示;受监督的GOLPP使用新的接近度定义来保留局部判别结构以及每个类别中的几何形状,以进行数据区分。提出了基于无监督GOLPP的故障检测方法和基于监督GOLPP的故障诊断方法。在简单的非线性系统和基准田纳西·伊士曼过程上的仿真结果表明,基于GOLPP的故障检测和诊断方法优于流行的非线性方法。

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