钢管连铸与层压因果建模的工业实例研究

D. Silva, T. T. Salis, A.P. Braga
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引用次数: 1

摘要

在给定某些其他变量的值的情况下,黑箱模型在预测工业过程中涉及的某些变量的未来值方面显示出高度的灵活性和准确性。然而,这些模型往往过于复杂,无法由人类操作员解释,并且经常无法为有关给定系统干预的查询提供足够的答案,或者回答反事实的查询。然而,因果模型通常可以。在这项工作中,我们探索了无缝钢管生产中两个阶段的因果建模,提取有向无环图,然后可用于规则提取,以及预测,干预和反事实查询。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Industrial case study of causal modeling of continuous casting and lamination of steel tubes
Black-box models have shown high flexibility and accuracy in prediciting what values certain variables involved in industrial processes will assume in the future, given the values of certain other variables. These models, however, are frequently too complex to be interpreted by a human operator, and are frequently unable to furnish adequate answers to queries regarding interventions in a given system, or to answer counterfactual queries. Causal models, however, frequently can. In this work we explore the causal modeling of two stages in the production of seamless steel tubes, extracting directed acyclic graphs, which can then be used for rule extraction, as well as for predictive, intervention and counterfactual queries.
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