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Statistical process monitoring based on nonlocal and multiple neighborhoods preserving embedding model

机译:基于非局部和多个街区保留嵌入模型的统计过程监测

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摘要

A novel dimensionality reduction algorithm named nonlocal and multiple neighborhoods preserving embedding (NoMNPE) is proposed for modeling and monitoring industrial processes. The NoMNPE method implements dimensionality reduction by maximizing the variance scattered by nonlocal data points, while simultaneously preserving multiple neighborhoods relationships, which include time neighbors, distance neighbors, and angle neighbors for a given dataset. Therefore, three different manifold characteristics and one additional nonlocal relationship are taken into account in the NoMNPE model. The NoMNPE thus is expected to explore more intrinsic information in contrast to its counterparts, and could achieve enhanced monitoring performance as a result. The comparison studies on two industrial processes have also demonstrated the effectiveness and advantages of the proposed NoMNPE-based process monitoring approach. (C) 2017 Elsevier Ltd. All rights reserved.
机译:提出了一种名为NonloCal和多个邻域保存嵌入(NomNPE)的新型维数减少算法,用于建模和监控工业过程。 NomNPE方法通过最大化由非函数数据点散射的方差来实现维度减少,同时保留多个邻域关系,该关系包括用于给定数据集的时间邻居,距离邻居和角度邻居。 因此,在NomNPE模型中考虑了三种不同的歧管特征和一个额外的非识别关系。 因此,NOMNPE预计将探讨与其对应物相比的更多内在信息,并可实现增强的监测性能。 对两个工业过程的比较研究还表明了所提出的基于Nomnpe的过程监测方法的有效性和优势。 (c)2017 Elsevier Ltd.保留所有权利。

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