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Fault detection of batch processes using multiway kernel principal component analysis

机译:使用多路核主成分分析的批处理故障检测

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Batch processes are very important in most industries and are used to produce high-quality materials, which causes their monitoring and control to emerge as essential techniques. Several multivariate statistical analyses, including multiway principal component analysis (MPCA), have been developed for the monitoring and fault detection of batch process. In this paper, a new batch monitoring method using multiway kernel principal component analysis (MKPCA) is proposed. Three-way batch data of normal batch process are unfolded batch-wise, and then KPCA is used to capture the nonlinear characteristics within normal batch processes. The proposed monitoring method was applied to fault detection in the simulation benchmark of fed-batch penicillin production. In both off-line analysis and on-line batch monitoring, the proposed approach can effectively capture the nonlinear relationships among process variables. In on-line monitoring, MKPCA can detect significant deviation which may cause a lower quality of final products. MPCA, however, has a limit to detect faults.
机译:批处理在大多数行业中都非常重要,并且用于生产高质量的材料,这使得它们的监视和控制成为必不可少的技术。已经开发了多种多元统计分析,包括多路主成分分析(MPCA),用于批处理的监视和故障检测。本文提出了一种新的基于多路核主成分分析的批量监控方法。将常规批处理的三向批处理数据逐批展开,然后使用KPCA捕获常规批处理过程中的非线性特征。提出的监测方法在补料分批青霉素生产模拟基准中用于故障检测。在离线分析和在线批量监控中,该方法都能有效地捕获过程变量之间的非线性关系。在在线监控中,MKPCA可以检测到明显的偏差,这可能会导致最终产品的质量降低。但是,MPCA具有检测故障的限制。

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