Credibility Assessment of Machine Learning in a Manufacturing Process Application

Author:

Banyay Gregory A.1,Worrell Clarence L.2,Sidener Scott E.3,Kaizer Joshua S.4

Affiliation:

1. Westinghouse Electric Company, 1000 Westinghouse Drive, Cranberry Township, PA 16066; Applied Research Laboratory, Pennsylvania State University, State College, PA 16804

2. Westinghouse Electric Company, 1000 Westinghouse Drive, Cranberry Township, PA 16066

3. Westinghouse Electric Company, 5801 Bluff Road, Hopkins, SC 29061

4. 2637 Smallwood Drive, Abingdon, MD 21009

Abstract

Abstract We present a framework for establishing credibility of a machine learning (ML) model used to predict a key process control variable setting to maximize product quality in a component manufacturing application. Our model coupled a purely data-based ML model with a physics-based adjustment that encoded subject matter expertise of the physical process. Establishing credibility of the resulting model provided the basis for eliminating a costly intermediate testing process that was previously used to determine the control variable setting.

Publisher

ASME International

Subject

Computational Theory and Mathematics,Computer Science Applications,Modelling and Simulation,Statistics and Probability

Reference24 articles.

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