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Fault Detection of Batch Process Based on MSICA-OCSVM

机译:基于MSICA-OCSVM的批处理故障检测

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When we use the traditional multi-scale independent component analysis method to extract independent component ICA on each scale, and then, using the ICA decomposition on the reconstructed data to construct monitoring statistics, however, data of the reconstruction on the nature was already independent component, it is meaningless to extract them by ICA. Focusing on the shortcoming, this paper proposes a MSICA-OCSVM method that was combined with Multi-scale Independent Component Analysis (MSICA) and One-class Support Vector Machine (OCSVM) to monitor the process. First, we can use the wavelet transform decomposition to monitor data at different scales. And then, the data was processing by threshold denoising, and was monitored on each scale extraction by using ICA independent principal component. Subsequently, we can use the wavelet transform coefficients for each scale would scale back on the reconstruction of the new signal matrix X. Finally, new OCSVM model was constructed by the reconstructed matrix X. We can make the use of determined hyper-plane to construct a nonlinear statistic, and the appropriate control limits was determined by using kernel density estimation. What is more, this method is applied to penicillin fermentation process simulation platform, the experimental results show that this method can effectively utilize the structure information data compared to traditional MSICA fault monitoring method, the failure rate of false positives, false negative rate was significantly reduced.
机译:当我们使用传统的多尺度独立组件分析方法在每个刻度上提取独立的组件ICA时,然后使用重建数据的ICA分解构造监测统计数据,但是,对自然重建的数据已经是独立的组件,通过ICA提取它们是毫无意义的。本文重点介绍缺点,提出了一种与多尺度独立分量分析(MSICA)和单级支持向量机(OCSVM)相结合的MSICA-OCSVM方法来监控该过程。首先,我们可以使用小波变换分解来监视不同尺度的数据。然后,数据通过阈值去噪处理,并通过使用ICA独立主组分在每个比例提取上监测。随后,我们可以使用每个比例的小波变换系数将缩减新信号矩阵X的重建。最后,通过重建矩阵X构建新的OCSVM模型。我们可以使用确定的超平面构造通过使用核密度估计来确定非线性统计和适当的控制限制。更重要的是,该方法应用于青霉素发酵过程仿真平台,实验结果表明,该方法可以有效地利用结构信息数据与传统的MSICA故障监测方法相比,误报的故障率,假负率显着降低。

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