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Process Monitoring Based on Recursive Probabilistic PCA for Multi-mode Process

机译:基于递归概率PCA进行多模过程的过程监控

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A recursive probabilistic principal component analysis (PPCA) based data-driven fault identification method is proposed to handle the missing data samples and the mode transition in multi-mode process. This model is recursively obtained by using the increasing number of normal observations with partly missing data. First, based on the singular value of historic data matrix, the whole process is divided into different steady modes and mode transitions. For steady modes, the conventional PPCA is used to obtain the principal components, and to impute the missing data. When the mode is a mode transition, the proposed recursive PPCA is applied, which can actually reveal the between-mode dynamics for process monitoring and fault detection. After that, in order to identify the faults, a contribution analysis method is developed and used to identify the variables which make the major contributions to the occurrence of faults. The effectiveness of the proposed approach is demonstrated by the Tennessee Eastman chemical process. The results show that the presented approach can accurately detect abnormal events, identify the faults, and it is also robust to mode transitions.
机译:基于递归概率主成分分析(PPCA)的数据驱动故障识别方法是为了处理多模式过程中缺失的数据样本和模式转换。通过使用越来越多的正常观测与部分缺失的数据越来越多地获得该模型。首先,基于历史数据矩阵的奇异值,整个过程分为不同的稳定模式和模式转换。对于稳定模式,传统的PPCA用于获得主组件,并赋予缺失数据。当模式是模式转换时,应用了所提出的递归PPCA,实际上可以揭示用于过程监控和故障检测的模式动态。之后,为了识别故障,开发了一种贡献分析方法并用于识别对发生故障发生的主要贡献的变量。田纳西州伊斯曼化学过程证明了拟议方法的有效性。结果表明,呈现的方法可以准确地检测异常事件,识别故障,并且对模式转换也是强大的。

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