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Modeling and optimization of surface roughness in keyway milling using ANN, genetic algorithm, and particle swarm optimization

机译:ANN,遗传算法和粒子群优化键槽碾磨中表面粗糙度的建模与优化

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This paper emphasizes on the development of a combined study of surface roughness for modeling and optimization of cutting parameters for keyway milling operation of C40 steel under wet condition. Spindle speed, feed, and depth of cut are considered as input parameters and surface roughness (R-a) is selected as output parameter. Surface roughness model is developed by both artificial neural networks (ANN) and response surface methodology (RSM). ANOVA analysis is performed to determine the effect of process parameters on the response. Back-propagation algorithm based on Levenberg-Marquardt (LM) and gradient descent (GDX) methods is used separately to train the neural network and results obtained from the two methods are compared. It is found that network trained by the LM algorithm gives better result. ANN model (trained by the LM algorithm) is coupled with genetic algorithm (GA) and RS model is further interfaced with the GA and particle swarm optimization (PSO) to optimize the cutting conditions that lead to minimum surface roughness. It is found that RSM coupled with PSO gives better result and the result is validated by confirmation test. Good agreement is observed between the predicted R-a value and experimental R-a value for RSM-PSO technique.
机译:本文强调开发表面粗糙度综合研究,用于在潮湿条件下C40钢键槽碾磨过程中的切削参数的建模和优化。剪切速度,进料和深度被认为是输入参数,并且选择表面粗糙度(R-A)作为输出参数。表面粗糙度模型由人工神经网络(ANN)和响应面方法(RSM)开发。进行ANOVA分析以确定过程参数对响应的影响。基于Levenberg-Marquardt(LM)和梯度下降(GDX)方法的后传播算法分别用于训练神经网络,并比较了从两种方法获得的结果。发现由LM算法训练的网络提供了更好的结果。 ANN模型(由LM算法训练)与遗传算法(GA)和RS模型与GA和粒子群优化(PSO)进一步接地,以优化导致最小表面粗糙度的切割条件。发现RSM与PSO耦合给出更好的结果,结果通过确认测试验证。在RSM-PSO技术的预测R-A值和实验R值之间观察到良好的一致性。

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