Improving Manufacturing Applications of Machine Learning by Understanding Defect Classification and the Critical Error Threshold

被引:0
|
作者
David Blondheim
机构
[1] Colorado State University,
[2] Mercury Marine—Mercury Castings,undefined
[3] A Division of Brunswick,undefined
[4] Inc.,undefined
来源
International Journal of Metalcasting | 2022年 / 16卷
关键词
supervised machine learning; machine learning; classification issues; misclassification; bias error; inherent error; critical error threshold; porosity; artificial intelligence (AI); casting defects; defect classification; high-pressure die casting (HPDC); manufacturing; unsupervised machine learning;
D O I
暂无
中图分类号
学科分类号
摘要
Machine learning (ML) is unlocking patterns and insight into data to provide financial value and knowledge for organizations. Use of machine learning in manufacturing environments is increasing, yet sometimes these applications fail to produce meaningful results. A critical review of how defects are classified is needed to appropriately apply machine learning in a production foundry and other manufacturing processes. Four elements associated with defect classification are proposed: Binary Acceptance Specifications, Stochastic Formation of Defects, Secondary Process Variation, and Visual Defect Inspection. These four elements create data space overlap, which influences the bias associated with training supervised machine learning algorithms. If this influence is significant enough, the predicted error of the model exceeds a critical error threshold (CET). There is no financial motivation to implement the ML model in the manufacturing environment if its error is greater than the CET. The goal is to bring awareness to these four elements, define the critical error threshold, and offer guidance and future study recommendations on data collection and machine learning that will increase the success of ML within manufacturing.
引用
收藏
页码:502 / 520
页数:18
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