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Batch process monitoring based on batch dynamic Kernel slow feature analysis

机译:基于批量动态内核的批处理监控慢速特征分析

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The traditional nonlinear dynamic batch process monitoring approaches are unable to extract the underlying driving forces of batch process. In this paper, a novel batch process monitoring method based on batch dynamic kernel slow feature analysis (BDKSFA) is proposed not only to capture nonlinear and dynamic characteristics but also to extract the underlying driving forces. The three-way data matrix is first unfolded and normalized and then rearranged into three-way matrix again. In order to contain stochastic variations and deviations among batches, the total average kernel matrix is computed as an average of I batch average kernel matrixes, each of which is also an average of I kernel matrixes for each batch. Based on the slow features extracted from BDKSFA model, two monitoring statistics are constructed to detect batch process fault. The simulation results obtained from the benchmark fed-batch penicillin fermentation process demonstrate the superiority of the developed method in terms of fault detection performance.
机译:传统的非线性动态批处理监测方法无法提取批处理过程的底层驱动力。在本文中,提出了一种基于批量动态内核慢特征分析(BDKSFA)的新型批处理监测方法(BDKSFA),不仅是为了捕获非线性和动态特性,而且还提取了潜在的驱动力。三向数据矩阵首先展开并标准化,然后再次重新排列为三通矩阵。为了在批量之间包含随机变体和偏差,将总平均内核矩阵计算为I批次普通内核矩阵的平均值,每个批次也是每个批次的I核矩阵的平均值。基于从BDKSFA模型中提取的慢速功能,构造了两个监视统计信息以检测批处理故障。从基准Fed-Batch Penicillin发酵过程中获得的仿真结果表明了在故障检测性能方面的显影方法的优越性。

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