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Improved kernel PCA-based monitoring approach for nonlinear processes

机译:改进的基于PCA内核的非线性过程监控方法

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摘要

Conventional kernel principal component analysis (KPCA) may not function well for nonlinear processes, since the Gaussian assumption of the method may be violated through nonlinear and kernel transformation of the original process data. To overcome this deficiency, a statistical local approach is incorporated into KPCA. Through this method, a new score variable which was called improved residual in the statistical local approach is constructed. The new variable approximately follows Gaussian distribution, in spite of which distribution the original data follows. Two new statistics are constructed for process monitoring, with their corresponding confidence limits determined by a χ~2 distribution. Besides of the improvement made on KPCA, the new joint local approach-KPCA method also shows superiority on detection sensitivity, especially for small faults slow changes of the process. The new method is exemplified using a numerical study and also tested in the complicated Tennessee Eastman (TE) benchmark process.
机译:常规的核主成分分析(KPCA)可能不适用于非线性过程,因为该方法的高斯假设可能会通过原始过程数据的非线性和核变换而违反。为了克服此不足,将统计局部方法合并到KPCA中。通过这种方法,可以构造一个新的得分变量,该变量在统计局部方法中被称为改进残差。新变量大致遵循高斯分布,尽管原始数据遵循该分布。构建了两个新的统计数据用于过程监控,它们的相应置信度限制由χ〜2分布确定。除了对KPCA所做的改进之外,新的联合局部方法KPCA方法还显示出了检测灵敏度方面的优势,尤其是对于小故障,过程缓慢变化的情况。该新方法以数值研究为例,并在复杂的田纳西·伊士曼(TE)基准测试过程中进行了测试。

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