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Dynamic process monitoring based on orthogonal locality preserving projections and exponentially weighted moving average

机译:基于正交局部保留投影和指数加权移动平均值的动态过程监控

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Following the intuition that the process data usually distribute on a low-dimensional structure and tend to be characterized by autocorrelation, we propose an approach integrating orthogonal locality preserving projections and exponentially weighted moving average (OLPP-EWMA) for process monitoring. The OLPP explicitly considers the low-dimensional manifold structure in the data and finds the orthogonal mapping from the input space to the reduced space. In order to capture the process dynamic behavior, the EWMA is combined with the traditional monitoring statistics to construct two new monitoring statistics. What is more, a novel contribution plots method is built based on the sensitivity analysis to identify the fault variables. The simulation results on the Tennessee Eastman benchmark process demonstrate that the proposed OLPP-EWMA method outperforms both the LPP and PCA in terms of the fault detection rate, and the built contribution plots method can effectively distinguish the fault variables from the normal variables.
机译:根据直觉,过程数据通常分布在低维结构上,并且倾向于以自相关为特征,我们提出了一种将正交局部性保留投影和指数加权移动平均值(OLPP-EWMA)集成在一起的方法,用于过程监控。 OLPP明确考虑了数据中的低维流形结构,并找到了从输入空间到缩减空间的正交映射。为了捕获过程动态行为,将EWMA与传统的监视统计信息结合起来以构造两个新的监视统计信息。此外,基于敏感性分析建立了一种新颖的贡献图方法,以识别故障变量。在田纳西州伊斯曼基准测试过程中的仿真结果表明,所提出的OLPP-EWMA方法在故障检测率方面优于LPP和PCA,并且内置的贡献图法可以有效地区分故障变量和正常变量。

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