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首页> 外文期刊>Journal of Chemometrics >Higher-order correlation-based multivariate statistical process monitoring
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Higher-order correlation-based multivariate statistical process monitoring

机译:基于高阶相关的多变量统计过程监控

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摘要

As shallow architecture is inefficient in terms of computational elements, some incipient fault features can be characterized through the composition of many nonlinearities, ie, with deep network. In this paper, a novel approach is developed for multivariate statistical process monitoring based on higher-order correlations. First, the correlations among monitoring variables can be learned by a multilayer learning framework hierarchically: The higher the number of layers to be stacked, the more nonlinear and abstract features can be characterized. Second, 3 monitoring statistics, SRE, M-2, and C, are presented to monitor whether the process is remaining in control, and they are instructive for the identification of fault types. Moreover, only normal data are used in training phase; this can avoid the unbalance problem of different types of fault data. These capabilities of the proposed approach are illustrated with two industrial benchmarks, Tennessee Eastman process and Metal Etch process.
机译:由于浅架构在计算元件方面效率低下,可以通过许多非线性的组成,即具有深度网络的组成来表征一些初始故障特征。在本文中,基于高阶相关性的多变量统计过程监测开发了一种新方法。首先,可以层次的多层学习框架学习监控变量之间的相关性:要堆叠的层数越高,可以表征更多的非线性和抽象特征。第二,3监测统计数据,SRE,M-2和C,以监视该过程是否仍然在控制中,并且它们是对故障类型的识别的指导性。此外,仅在训练阶段仅使用正常数据;这可以避免不同类型的故障数据的不平衡问题。所提出的方法的这些能力用两个工业基准,田纳西州伊斯坦德工艺和金属蚀刻过程说明。

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