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Multiscale fault classification framework using kernel principal component analysis and k-nearest neighbors for chemical process system

机译:多尺度故障分类框架使用内核主成分分析和k最近邻居进行化学过程系统

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Process monitoring techniques in chemical process systems help to improve product quality and plant safety. Multiscale classification plays a crucial role in the monitoring of chemical processes. However, there is a problem in coping with high-dimensional correlated data produced by complex, nonlinear processes. Therefore, an improved multiscale fault classification framework has been proposed to enhance the fault classification ability in nonlinear chemical process systems. This framework combines wavelet transform (WT), kernel principal component analysis (KPCA), and K nearest neighbors (KNN) classifier. Initially, a moving window-based WT is used to extract multiscale information from process data in time and frequency simultaneously at different scales. The resulting wavelet coefficients are reconstructed and fed into the KPCA to produce feature vectors. In the final step, these vectors have been used as inputs for the KNN classifier. The performance of the proposed multi-scale KPCA-KNN framework is analyzed and compared using a continuous stirred tank reactor (CSTR) system as a case study. The results show that the proposed multiscale KPCA-KNN framework has a high success rate over PCA-KNN and KPCA-KNN methods.
机译:化学过程系统中的过程监测技术有助于提高产品质量和植物安全性。多尺度分类在化学过程的监测中起着至关重要的作用。然而,在应对由复杂的非线性过程产生的高维相关数据时存在问题。因此,已经提出了改进的多尺度故障分类框架,以提高非线性化学过程系统中的故障分类能力。该框架结合了小波变换(WT),内核主成分分析(KPCA)和K最近邻居(KNN)分类器。最初,基于移动的窗口的WT用于从不同尺度同时地从过程数据中提取多尺度信息和频率。将得到的小波系数重建并馈入KPCA以产生特征向量。在最后一步中,这些向量已被用作KNN分类器的输入。通过作为案例研究,分析并比较了所提出的多尺度KPCA-KNN框架的性能,并使用连续的搅拌釜反应器(CSTR)系统进行比较。结果表明,拟议的MultiScale KPCA-KNN框架在PCA-KNN和KPCA-KNN方法上具有高成功率。

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