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Knowledge discovery from observational data for process control using causal Bayesian networks

机译:使用因果贝叶斯网络从观测数据中发现知识以进行过程控制

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This paper investigates learning causal relationships from the extensive datascts that are becoming increasingly available in manufacturing systems. A causal modeling approach is proposed to improve an existing causal discovery algorithm by integrating manufacturing domain knowledge with the algorithm. The approach is demonstrated by discovering the causal relationships among the product quality and process variables in a rolling process. When allied with engineering interpretations, the results can be used to facilitate rolling process control.
机译:本文研究了从制造系统中越来越多的广泛数据科学中学习因果关系。提出了一种因果建模方法,通过将制造领域知识与算法相结合来改进现有的因果发现算法。通过在轧制过程中发现产品质量与过程变量之间的因果关系来证明该方法。与工程解释一起使用时,结果可用于简化轧制过程控制。

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