An Optimal-Pruned Extreme Learning Machine based modelling of surface roughness

Tiagrajah V. Janahiraman, Nooraziah Ahmad
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引用次数: 4

Abstract

A computer based modelling and prediction method is vital in the field of Computer Numerical Control based cutting operation. The final quality of finished surface is mainly influenced by the interaction between the work piece, cutting tool and machining system. Therefore, many researchers attempted to develop an efficient prediction systems for surface roughness before machining. In this paper, Optimal Pruned Extreme Learning Machine (OPELM) is proposed for modelling and predicting surface roughness with respect to its cutting parameters in turning based machining process. The surface roughness models obtained from other methods such as Response Surface Method, Neural Network and Extreme Learning Machine were compared with the experimental results. Our experimental study consist of 15 workpieces that were used for cutting using turning operation. The correlation between the input parameters such as feed rate, cutting speed and depth of cut with surface roughness was modelled using OPELM. Based on our study, OPELM performed the best in modelling and predicting based on unknown set of input.
基于最优修剪极限学习机的表面粗糙度建模
在基于计算机数控的切削加工领域中,基于计算机的建模和预测方法至关重要。工件、刀具和加工系统三者之间的相互作用,是影响最终加工表面质量的主要因素。因此,许多研究者试图开发一种有效的加工前表面粗糙度预测系统。在车削加工过程中,提出了基于切削参数的最优剪枝极限学习机(OPELM)来建模和预测表面粗糙度。将响应面法、神经网络和极限学习机等方法得到的表面粗糙度模型与实验结果进行了比较。我们的实验研究包括15个用车削操作进行切削的工件。利用OPELM建立了进给速度、切削速度和切削深度等输入参数与表面粗糙度的关系模型。根据我们的研究,OPELM在基于未知输入集的建模和预测方面表现最好。
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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