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A comparative study of the RSM and ANN models for predicting surface roughness in roller burnishing

机译:RSM和ANN模型预测滚子抛光表面粗糙度的比较研究

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In this paper the comparison of the surface roughness prediction models based on response surface methodology (RSM) and artificial neural networks (ANN) is described. The models were developed based on five-level design of experiments conducted on Aluminum alloy 6061 work material with spindle speed, interference, feed, and number of tool pass as the roller burnishing process parameters. The ANN predictive models of surface roughness was developed using a multilayer feed forward neural network and trained with the help of an error back propagation learning algorithm based on the generalized delta rule. Mathematical models of second order RSM and developed ANN models were compared for surface roughness. The comparison evidently indicates that the prediction capabilities of ANN models are far better as compared to the RSM models. The minutiae of experimentation, development of model, testing, and performance comparison are presented in the paper.
机译:本文描述了基于响应面方法(RSM)和人工神经网络(ANN)的表面粗糙度预测模型的比较。该模型是基于在铝合金6061工作材料上进行的五级实验设计,具有主轴速度,干扰,进料和工具通行量作为滚筒抛光工艺参数。使用多层馈送前向神经网络开发了表面粗糙度的ANN预测模型,并通过基于广义增量规则的误差反向传播学习算法训练。比较了二阶RSM的数学模型和开发的ANN模型,以实现表面粗糙度。比较显然表明,与RSM型号相比,ANN模型的预测能力远远良好。本文提出了实验,模型,试验和性能比较的微生能。

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