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Predicting machining rate in non-traditional machining using decision tree inductive learning.

机译:使用决策树归纳学习预测非传统加工中的加工速率。

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摘要

Wire Electrical Discharge Machining (WEDM) is a nontraditional machining process used for machining intricate shapes in high strength and temperature resistive (HSTR) materials. WEDM provides high accuracy, repeatability, and a better surface finish; however the tradeoff is a very slow machining rate. Due to the slow machining rate in WEDM, machining tasks take many hours depending on the complexity of the job. Because of this, users of WEDM try to predict machining rate beforehand so that input parameter values can be pre-programmed to achieve automated machining. However, partial success with traditional methodologies such as thermal modeling, artificial neural networks, mathematical, statistical, and empirical models left this problem still open for further research and exploration of alternative methods. Also, earlier efforts in applying the decision tree rule induction algorithms for predicting the machining rate in WEDM had limitations such as use of coarse grained method of discretizing the target and exploration of only C4.5 as the learning algorithm.;The goal of this dissertation was to address the limitations reported in literature in using decision tree rule induction algorithms for WEDM. In this study, the three decision tree inductive algorithms C5.0, CART and CHAID have been applied for predicting material removal rate when the target was discretized into varied number of classes (two, three, four, and five classes) by three discretization methods. There were a total of 36 distinct combinations when learning algorithms, discretization methods, and number of classes in the target are combined. All of these 36 models have been developed and evaluated based on the prediction accuracy. From this research, a total of 21 models found to be suitable for WEDM that have prediction accuracy ranging from 71.43% through 100%. The models indentified in the current study not only achieved better prediction accuracy compared to previous studies, but also allows the users to have much better control over WEDM than what was previously possible. Application of inductive learning and development of suitable predictive models for WEDM by incorporating varied number of classes in the target, different learning algorithms, and different discretization methods have been the major contribution of this research.
机译:线材放电加工(WEDM)是一种非传统的加工工艺,用于加工高强度和耐高温(HSTR)材料中的复杂形状。 WEDM可提供高精度,可重复性和更好的表面光洁度;但是权衡是非常慢的加工速度。由于WEDM中的加工速度较慢,根据作业的复杂程度,加工任务需要花费数小时。因此,WEDM的用户尝试预先预测加工速度,以便可以预先编程输入参数值以实现自动化加工。但是,传统方法学(例如热建模,人工神经网络,数学,统计和经验模型)取得了部分成功,这一问题仍有待进一步研究和探索替代方法。此外,早期在决策树规则归纳算法中预测电火花线切割加工速率的工作还存在局限性,例如使用粗粒度方法离散化目标以及仅探索C4.5作为学习算法。这是为了解决文献报道的在WEDM中使用决策树规则归纳算法的局限性。在这项研究中,将三种决策树归纳算法C5.0,CART和CHAID用于通过三种离散化方法将目标离散化为不同数量的类别(二,三,四和五类)时预测材料去除率。 。将学习算法,离散化方法和目标中的类数组合在一起时,总共有36种不同的组合。所有这36个模型均基于预测准确性进行了开发和评估。根据这项研究,总共发现了21种适用于WEDM的模型,其预测精度范围为71.43%至100%。与以前的研究相比,当前研究中确定的模型不仅获得了更好的预测准确性,而且使用户对WEDM的控制比以前可能的要好得多。归纳学习的应用以及通过在目标中纳入不同类别的数据,不同的学习算法和不同的离散化方法,为WEDM开发合适的预测模型一直是这项研究的主要贡献。

著录项

  • 作者

    Konda, Ramesh.;

  • 作者单位

    Nova Southeastern University.;

  • 授予单位 Nova Southeastern University.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 309 p.
  • 总页数 309
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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