A Bayesian Regularization Approach to Predict the Quality of Injection-Moulded Components by statistical SVM for Online Monitoring system

Dinesh Kumar Anguraj
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引用次数: 2

Abstract

To evaluate the quality of injection-molded components, conventional approaches are costly, time-consuming, or based on statistical process control characteristics that are not always accurate. Machine learning might be used to categorise components based on their quality. In order to accurately estimate the quality of injection moulded components, this study uses a SVM classifier. In addition, the form of the spare components after the working method product in simulation is classified as "qualified" or "unqualified". The quality indicators have an excellent association with data recordings from the original database of various sensors such as pressure and temperature used in the proposed network model for online prediction. The outliers are removed from the input original data to minimize the deviation of precision or prediction accuracy of the model performance metrics. Data points in the "to-be-confirmed" region (which is in the fit line area) may be misjudged by this statistical SVM model since it is placed between the "qualified" and "unqualified" areas. This statistical procedure in the proposed SVM model also uses Bayesian regularisation to classify final components into distinct quality levels.
基于统计支持向量机的注塑件质量预测贝叶斯正则化方法
为了评估注塑成型部件的质量,传统的方法是昂贵的,耗时的,或者基于统计过程控制特性,并不总是准确的。机器学习可以用于根据质量对组件进行分类。为了准确地估计注塑件的质量,本研究使用了支持向量机分类器。此外,将模拟工作方法产品后的备件形式划分为“合格”或“不合格”。质量指标与用于在线预测的网络模型中使用的各种传感器(如压力和温度)的原始数据库中的数据记录具有良好的关联。从输入原始数据中去除异常值,以尽量减少模型性能指标的精度或预测精度的偏差。“待确认”区域(拟合线区域)的数据点由于位于“合格”和“不合格”区域之间,可能会被统计SVM模型误判。所提出的支持向量机模型中的统计过程也使用贝叶斯正则化将最终组件分类为不同的质量水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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