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Modeling of Surface Roughness Using RSM, FL and SA in Dry Hard Turning

机译:干硬车削中使用RSM,FL和SA进行表面粗糙度建模

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This paper presents the development of mathematical, predictive and optimization models of average surface roughness parameter () in turning hardened AISI 1060 steel using coated carbide tool in dry condition. Herein, the mathematical model is formulated by response surface methodology (RSM), predictive model by fuzzy inference system (FIS), and optimization model by simulated annealing (SA) technique. For all these models, the cutting speed, feed rate and material hardness were considered as input factors for full factorial experimental design plan. After the experimental runs, the collected data are used for model development and its subsequent validation. It was found, by statistical analysis, that the quadratic model is suggested for in RSM. The adequacy of the models was checked by error analysis and validation test. Furthermore, the constructed model was compared with an analytical model. The analysis of variance revealed that the material hardness exerts the most dominant effect, followed by the feed rate and then cutting speed. Eventually, the RSM model was found with a coefficient of determination value of 99.64%; FIS model revealed 79.82% prediction accuracy; and SA model resulted in more than 70% improved surface roughness. Therefore, these models can be used in industries to effectively control the hard turning process to achieve a good surface quality.
机译:本文介绍了在干燥条件下使用涂层硬质合金刀具对淬硬的AISI 1060钢进行平均表面粗糙度参数()的数学,预测和优化模型的开发。在此,数学模型由响应面方法(RSM),模糊推理系统(FIS)的预测模型和模拟退火(SA)技术的优化模型组成。对于所有这些模型,切削速度,进给速度和材料硬度均被视为完整因子实验设计计划的输入因素。实验运行后,收集到的数据将用于模型开发及其后续验证。通过统计分析发现,建议在RSM中使用二次模型。通过误差分析和验证测试检查了模型的充分性。此外,将构建的模型与分析模型进行了比较。方差分析表明,材料硬度起主要作用,其次是进给速度,然后是切削速度。最终,发现RSM模型的确定系数值为99.64%。 FIS模型显示了79.82%的预测准确度;和SA模型可以使表面粗糙度提高70%以上。因此,这些模型可用于工业中,以有效地控制硬车削过程,以获得良好的表面质量。

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