差异(会计)
喷嘴
硬化(计算)
过程(计算)
芯(光纤)
材料科学
计算机科学
机械工程
工程类
复合材料
会计
操作系统
业务
图层(电子)
作者
Y. Lingelbach,T. Waldenmaier,L. Hagymási,Ralf Mikut,Volker Schulze
标识
DOI:10.1002/mawe.202100249
摘要
Abstract To explain the variance in core hardness of 18CrNi8 nozzle bodies after industrial heat treatment, several data sources, including steel melt composition, sensor process data, and measurement errors, of five years are aggregated. In order to predict hardness variations caused by alloy composition, traditional physical models by Maynier are compared with data‐driven machine learning models, which show no advantage due to low data variability. Neither method can fully explain the visible drifts, which are better tracked by an alternative (i. e., filter model) that uses past measurements. Machine learning on features from heat treatment is not successful in predicting hardness change, presumably because the process is too stable. Finally, a large part of the variance is caused by the HV 1 measurement error.
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