机器学习在电火花加工设备产品运行管理中的预测建模

I. Ghosh, M. Sanyal, R. K. Jana, P. Dan
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引用次数: 5

摘要

为了在竞争激烈的全球市场中保持领先地位,组织往往依靠高生产率和世界一流的质量。本研究旨在了解电火花加工(EDM)设备产品的制造过程并建立模型,以提高生产效率。电火花加工的加工效果受各种工艺参数的影响很大。本文提出了一种基于机器学习算法的框架,分析输入工艺参数与电火花加工响应之间的关系,建立电火花加工操作的预测模型。物理实验以放电电流、脉冲持续时间、占空比和放电电压为自变量,以材料去除率为目标变量。四种不同的机器学习算法即随机森林,支持向量回归,弹性网和Bagging被用作应用的预测建模工具。结果证明使用机器学习方法来处理研究问题是合理的。并进行了统计分析,进行了性能对比分析。进一步应用基于相关的监督特征选择方法来识别关键预测因子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning for predictive modeling in management of operations of EDM equipment product
To sustain and excel in competitive global market, organizations often bank on high productivity and world class quality. Endeavor of this research is to comprehend and model the manufacturing process of Electrical Discharge Machining (EDM) equipment product in order to increase productivity. Outcome of EDM operation is strongly influenced by various process parameters. The paper presents a framework based on machine learning algorithms to analyze the relationship between input process parameters and EDM response to build a predictive model of EDM operations. Physical experimentations have conducted considering Discharge Current, Pulse Duration, Duty Cycle and Discharge Voltage as independent variables while Material Removal Rate has been used as target variable. Four different machine learning algorithms namely Random Forest, Support Vector Regression, Elastic Net and Bagging have been adopted as applied predictive modeling tools. Results justify the usage of machine learning methods to deal with the research problem. Statistical analysis has been conducted as well for comparative performance analysis. Further correlation based supervised feature selection methodology has been applied to identify the key predictors.
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