基于非规则过程扰动持续效应建模的质量预测方法

Q. Xiu, M. Tanaka, M. Sakata
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引用次数: 1

摘要

在制造领域,越来越需要利用现场收集的各种数据进行质量控制。机器故障、设备部件更换和其他过程干扰现在由各种传感器收集。对这些数据的分析可以帮助现场管理人员发现产品质量偏差,并快速、正确地处理它们。然而,过程扰动的不规则性和稀疏性导致了预测精度问题和建模时间问题。在本研究中,我们提出了一种利用随机过程对不规则扰动进行建模的产品质量预测方法,并基于从随机过程中采样的持续效应的密集规则矩阵进行预测,以减少建模时间。将所提出的质量预测方法应用于实际制造数据,MSE(均方误差)降低了84.6%,建模时间缩短到每天更新3小时以内。因此,可以估计,我们的质量预测方法可以帮助现场管理人员在早期发现质量漂移,更好地控制产品质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quality Prediction Method by Modeling the Sustained Effects of Irregular Process Disturbances
In manufacturing domain, there are increasing needs for quality control by utilizing various data collected from on-site. Machine failure, equipment component replacement, and other process disturbances are now collected by various sensors. The analysis of these data can help on-site managers to detect product quality drifts and to cope with them quickly and properly. However, the irregular and sparse nature of process disturbances causes prediction accuracy issue and modeling time issue. In this research, we propose a product quality prediction method using a stochastic process to model the irregular disturbances, and make prediction based on dense, regular matrix of sustained effects sampled from the stochastic process for modeling time reduction. As the result of applying the proposed quality prediction method to actual manufacturing data, the MSE (mean squared error) is reduced by 84.6% and the modeling time can be shortened to within 3 hours for daily update. Therefore, it can be estimated that our quality prediction method can help on-site managers to detect quality drifts at early stage and have a better control of product quality.
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