首页> 外文会议>International Symposium on Neural Networks(ISNN 2006) pt.3; 20060528-0601; Chengdu(CN) >On-Line Batch Process Monitoring Using Multiway Kernel Independent Component Analysis
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On-Line Batch Process Monitoring Using Multiway Kernel Independent Component Analysis

机译:在线批处理过程监控,使用多核独立成分分析

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For on-line batch process monitoring, multiway principal component analysis (MPCA) is a useful tool. But the MPCA-based methods suffer two disadvantages: (ⅰ) it restricts itself to a linear setting, where high-order statistical information is discarded; (ⅱ) all the measurement variables must follow Gaussian distribution and the objective of MPCA is only to decorrelate variables, but not to make them independent. To improve the ability of batch process monitoring, this paper proposes a monitoring method named multiway kernel independent component analysis (MKICA). By using kernel trick, the new monitoring indices are investigated, which have been mapped into high-dimensional feature space. On the benchmark simulator of fed-batch penicillin production, the presented method has been validated.
机译:对于在线批处理过程监控,多路主成分分析(MPCA)是有用的工具。但是基于MPCA的方法有两个缺点:(ⅰ)它将自身限制为线性设置,在线性设置中会丢弃高阶统计信息; (ⅱ)所有测量变量必须遵循高斯分布,MPCA的目的只是去相关变量,而不是使其独立。为了提高批处理过程的监视能力,本文提出了一种称为多路核独立成分分析(MKICA)的监视方法。通过使用内核技巧,研究了新的监视索引,这些索引已映射到高维特征空间中。在补料分批生产青霉素的基准模拟器上,对所提出的方法进行了验证。

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