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Recursive Autoregressive Dynamic Latent Variable Model for Fault Detection of Dynamic Process with Missing Values

机译:缺失值的动态过程故障检测的递归自回归动态潜变模模型

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For the dynamic processes, both the auto-correlations and the cross-correlations need to be extracted. In the previous work, the autoregressive dynamic latent variable (ARDLV) model is able to achieve this goal since an AR process is used for high-order dynamic process modelling. However, the training data set usually contains the missing values, which leads to the normal ARDLV invalid. In this paper, a novel recursive ARDLV model is proposed for fault detection of the dynamic process with missing values. In the proposed model, the missing value and the model parameters are estimated alternatively in the probabilistic framework. Finally, a case study is illustrated to reveal the performance of proposed method, in which an incomplete data set is used for fault detection purpose.
机译:对于动态过程,需要提取自相关和互相关性。在上一项工作中,自回归动态潜变量(ARDLV)模型能够实现此目标,因为AR过程用于高阶动态过程建模。但是,训练数据集通常包含缺失的值,这导致正常的ARDLV无效。在本文中,提出了一种新型递归ARDLV模型,用于缺失值的动态过程的故障检测。在所提出的模型中,缺失值和模型参数算法在概率框架中估计。最后,示出了案例研究以揭示所提出的方法的性能,其中不完整的数据集用于故障检测目的。

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