线材放电加工过程分析的数据挖掘方法

IF 0.9 Q4 ENGINEERING, INDUSTRIAL
S. Dandge, S. Chakraborty
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引用次数: 0

摘要

电火花线切割(WEDM)是一种非传统的材料去除工艺,其中使用连续行进的导电导线作为电极来侵蚀工件上的材料。为了探索其最大的加工潜力,始终需要检查其不同输入参数对响应的影响,并确定最佳参数设置。本文在已有实验数据的基础上,应用非参数决策树算法对电火花线切割过程进行了参数分析。两种基于决策树的分类方法,即分类和回归树(CART)和卡方自动交互检测(CHAID),被认为是数据挖掘工具,用于检查六个电火花线切割工艺参数对四个响应的影响,并确定最优选的参数组合,以帮助实现所需的响应值。所开发的决策树将脉冲接通时间识别为影响几乎所有响应的最具指示性的电火花线切割工艺参数。此外,对CART和CHAID算法的分类性能的比较分析表明,CART具有更高的整体分类精度和更低的预测风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Data Mining Approach for Analysis of a Wire Electrical Discharge Machining Process
Wire electrical discharge machining (WEDM) is a non-conventional material-removal process where a continuously travelling electrically conductive wire is used as an electrode to erode material from a workpiece. To explore its fullest machining potential, there is always a requirement to examine the effects of its varied input parameters on the responses and resolve the best parametric setting. This paper proposes parametric analysis of a WEDM process by applying non-parametric decision tree algorithm, based on a past experimental dataset. Two decision tree-based classification methods, i.e. classification and regression tree (CART) and Chi-squared automatic interaction detection (CHAID) are considered here as the data mining tools to examine the influences of six WEDM process parameters on four responses, and identify the most preferred parametric mix to help in achieving the desired response values. The developed decision trees recognize pulse-on time as the most indicative WEDM process parameter impacting almost all the responses. Furthermore, a comparative analysis on the classification performance of CART and CHAID algorithms demonstrates the superiority of CART with higher overall classification accuracy and lower prediction risk.
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来源期刊
CiteScore
2.80
自引率
21.40%
发文量
0
期刊介绍: Management and Production Engineering Review (MPER) is a peer-refereed, international, multidisciplinary journal covering a broad spectrum of topics in production engineering and management. Production engineering is a currently developing stream of science encompassing planning, design, implementation and management of production and logistic systems. Orientation towards human resources factor differentiates production engineering from other technical disciplines. The journal aims to advance the theoretical and applied knowledge of this rapidly evolving field, with a special focus on production management, organisation of production processes, management of production knowledge, computer integrated management of production flow, enterprise effectiveness, maintainability and sustainable manufacturing, productivity and organisation, forecasting, modelling and simulation, decision making systems, project management, innovation management and technology transfer, quality engineering and safety at work, supply chain optimization and logistics. Management and Production Engineering Review is published under the auspices of the Polish Academy of Sciences Committee on Production Engineering and Polish Association for Production Management.
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