Many production processes are characterized by numerous and complex cause-and-effect relationships. Since they are only partially known they pose a challenge to effective process control. In this work we present how Structural Equation Models can be used for deriving cause-and-effect relationships from the combination of prior knowledge and process data in the manufacturing domain. Compared to existing applications, we do not assume linear relationships leading to more informative results.
翻译:许多生产工艺的特征是多种复杂的因果关系,由于它们仅被部分人所知,因此对有效的工艺控制构成挑战。在这项工作中,我们介绍了如何利用结构等式模型从制造领域的先前知识和工艺数据的结合中产生因果关系。与现有的应用相比,我们不承担导致更多信息结果的线性关系。