Prediction of surface roughness using a novel approach

M. Kaladhar, Vss Sameer Chakravarthy, P. S. Chowdary
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引用次数: 1

Abstract

Surface quality is a technical prerequisite in the field of manufacturing industries and can be treated as a quality index for machined parts. Attainment of appropriate surface finish plays a key role during functional performance of machined part. The machining parameters typically influence it. Consequently, a highly focused task is to enumerate the good relation between surface roughness (Ra) and machining parameters. In the current work, response surface methodology (RSM) based regression models and flower pollination algorithm (FPA) based sparse data model were developed to predict the minimum value of surface roughness. The model is developed for hard turning of AISI 4340 steel (35 HRC) using a single nanolayer of TiSiN-TiAlN PVD-coated cutting insert. The results obtained from this approach had good harmony with experimental results, as the standard deviation of the estimated values was simply 0.0804 (for whole) and 0.0289 (for below 1 μm Ra). Compared with RSM models, the proposed FPA based model showed a minuscule percentage of mean absolute error. The model obtained asubstantial correlation coefficient value of 99.75% among the other model’s values. The behavior of machining parameters and its interaction against surface roughness in the developed models were discussed with Pareto chart. It was observed that the feed rate was highly significant parameter in swaying machining surface roughness. In inference, the FPA sparse data model is better than the RSMbased regression models for prognosis of surface roughness in hard turning of AISI 4340 steel (35 HRC). The model developed using FPA based sparse data for surface roughness during hard turning operation in the current work is not reported to the best of author’s knowledge. This model disclosed a more dependable estimation over the multiple regression models.
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用一种新方法预测表面粗糙度
表面质量是制造业领域的技术前提,可以看作是加工零件的质量指标。获得适当的表面光洁度对加工零件的功能性能起着关键作用。加工参数对其影响较大。因此,一个高度关注的任务是列举表面粗糙度(Ra)和加工参数之间的良好关系。基于响应面法(RSM)的回归模型和基于传粉算法(FPA)的稀疏数据模型预测了地表粗糙度的最小值。针对AISI 4340钢(35 HRC),采用单纳米层TiSiN-TiAlN pvd涂层切削齿,建立了硬车削模型。所得结果与实验结果吻合较好,其标准差仅为0.0804(整体)和0.0289(小于1 μm Ra)。与RSM模型相比,所提出的基于FPA的模型的平均绝对误差百分比很小。该模型与其他模型的相关系数为99.75%。利用帕累托图讨论了所建立模型中加工参数的变化规律及其与表面粗糙度的相互作用。结果表明,进给速度是影响摇摆加工表面粗糙度的重要参数。在推理中,FPA稀疏数据模型比基于rsm的回归模型更能预测AISI 4340钢(35 HRC)硬车削时的表面粗糙度。据作者所知,目前的工作中尚未报道使用基于FPA的稀疏数据建立的硬车削过程表面粗糙度模型。该模型比多元回归模型具有更可靠的估计。
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来源期刊
International Journal of Industrial Engineering and Production Research
International Journal of Industrial Engineering and Production Research Engineering-Industrial and Manufacturing Engineering
CiteScore
1.60
自引率
0.00%
发文量
0
审稿时长
10 weeks
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