王普, 贾之阳, 高学金, 齐咏生. 基于MICA-PCA的间歇过程故障监测[J]. 北京工业大学学报, 2014, 40(11): 1637-1642.
    引用本文: 王普, 贾之阳, 高学金, 齐咏生. 基于MICA-PCA的间歇过程故障监测[J]. 北京工业大学学报, 2014, 40(11): 1637-1642.
    WANG Pu, JIA Zhi-yang, GAO Xue-jin, QI Yong-sheng. Fault Detection of Batch Process Based on MICA-PCA[J]. Journal of Beijing University of Technology, 2014, 40(11): 1637-1642.
    Citation: WANG Pu, JIA Zhi-yang, GAO Xue-jin, QI Yong-sheng. Fault Detection of Batch Process Based on MICA-PCA[J]. Journal of Beijing University of Technology, 2014, 40(11): 1637-1642.

    基于MICA-PCA的间歇过程故障监测

    Fault Detection of Batch Process Based on MICA-PCA

    • 摘要: 针对具有数据非高斯分布或混合分布的间歇过程, 研究一种新的改进MICA-PCA监控方法.首先利用MICA方法提取非高斯分布过程信息, 通过设定负熵阈值实现独立成分个数的自动选择, 以此克服传统ICA方法中需提前确定独立成分个数的缺点, 再使用核密度估计方法确定相应统计量的置信限, 然后对服从多元高斯分布的残差过程信息, 进一步进行PCA分析和处理.将该方法应用于北京某生化制药厂重组大肠杆菌制备白介素-2发酵过程监控.结果表明:该法在过程变量不服从高斯分布的情况下能有效降低传统方法的漏报和误报率, 准确地对过程进行监控.

       

      Abstract: Aiming at the batch process that has the non-Gaussian distribution or mixed distribution, a new monitoring method based on modified MICA-PCA is researched. Process information of non-Gaussian is first extracted using the MICA method. Setting threshold value of negative entropy is used to automatically select the independent components, which can overcome the shortcoming of predefining the number of independent components in traditional method of ICA. The confidence limits of the corresponding monitoring statistics are determined using kernel density estimation; then the process residual information, which is multivariate Gaussian distribution, is further analyzed and processed using PCA. The method is applied to the fermentation process monitoring of obtaining interleukin by recombinant Escherichia coli, in a biochemical pharmaceutical factory in Beijing.Resultsshow that when process variables are not Gaussian distribution, the method can accurately monitor the process and effectively reduce the alarm failure and false alarm of traditional method.

       

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