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Prediction and optimization of process parameters in wire cut electric discharge machining for high-speed steel (HSS)

机译:高速钢线切割放电加工中工艺参数的预测和优化

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摘要

This paper investigates the effect of parameters such as discharge current, power, cutting speed, and spark gap on surface roughness for different thickness of high-speed steel plates in wire cut electric discharge machining. Experiments were performed at different levels of discharge current on different levels of plate thickness and experimental results of surface roughness, spark gap, and cutting speed were taken. Optimum process parameters were found for each thickness of plate experimentally and validated with the Artificial Neural Network (ANN) and Supporting Vector Machines (SVM) models. The ANN and SVM models were developed separately and trained with experimental data. The models were used to predict current, cutting speed and spark gap for required surface roughness and thickness of the plate. The maximum error between the experimental and predicted values was found to be less than 5% for the two models.
机译:本文研究了不同厚度的高速钢板在线切割放电加工中的放电电流,功率,切割速度和火花隙等参数对表面粗糙度的影响。在不同水平的板厚下,在不同水平的放电电流下进行了实验,并获得了表面粗糙度,火花隙和切削速度的实验结果。通过实验找到了每种板材厚度的最佳工艺参数,并通过人工神经网络(ANN)和支持向量机(SVM)模型进行了验证。人工神经网络和支持向量机模型是分别开发的,并通过实验数据进行了训练。该模型用于预测电流,切割速度和火花间隙,以达到所需的表面粗糙度和极板厚度。对于两个模型,实验值和预测值之间的最大误差小于5%。

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