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Data mining and clustering in chemical process databases for monitoring and knowledge discovery

机译:用于监测和知识发现的化学过程数据库中的数据挖掘和聚类

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Modern chemical plants maintain large historical databases recording past sensor measurements which advanced process monitoring techniques analyze to help plant operators and engineers interpret the meaning of live trends in databases. However, many of the best process monitoring methods require data organized into groups before training is possible. In practice, such organization rarely exists and the time required to create classified training data is an obstacle to the use of advanced process monitoring strategies. Data mining and knowledge discovery techniques drawn from computer science literature can help engineers find fault states in historical databases and group them together with little detailed knowledge of the process. This study evaluates how several data clustering and feature extraction techniques work together to reveal useful trends in industrial chemical process data. Two studies on an industrial scale separation tower and the Tennessee Eastman process simulation demonstrate data clustering and feature extraction effectively revealing significant process trends from high dimensional, multivariate data. Process knowledge and supervised clustering metrics compare the cluster results against true labels in the data to compare performance of different combinations of dimensionality reduction and data clustering approaches. (C) 2017 Elsevier Ltd. All rights reserved.
机译:现代化学厂维持大型历史数据库记录过去的传感器测量,先进的过程监控技术分析,帮助植物运营商和工程师解释数据库中的现场趋势的含义。但是,许多最佳过程监控方法需要在培训之前组织成组组织的数据。在实践中,这种组织很少存在,并且创建分类培训数据所需的时间是使用高级过程监控策略的障碍。从计算机科学文献中汲取的数据挖掘和知识发现技术可以帮助工程师在历史数据库中找到故障状态,并与此过程的详细知识一起组合在一起。本研究评估了几种数据聚类和特征提取技术如何共同努力,以揭示工业化学过程数据的有用趋势。两项关于工业规模分离塔的研究和田纳西州伊斯特曼流程仿真展示了数据聚类和特征提取,有效地揭示了高维,多元数据的重大过程趋势。流程知识和监督群集度量测量将群集结果与数据中的真标进行比较,以比较不同组合的维度减少和数据聚类方法的性能。 (c)2017 Elsevier Ltd.保留所有权利。

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