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AN ANN APPROACH ON THE OPTIMIZATION OF THE CUTTING PARAMETERS DURING CNC PLASMA-ARC CUTTING

机译:数控等离子切割过程中切削参数优化的人工神经网络方法

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The objective of the present study is to develop an Artificial Neural Network (ANN) in order to predict the bevel angle (response variable) during CNC plasma-arc cutting of St37 mild steel plates. The four (4) input parameters (plate thickness, cutting speed, arc ampere, and torch standoff distance) of the ANN was selected following the results (relative importance) of the Analysis Of Variance (ANOVA) performed based on seven (7) factors (plate thickness, cutting speed, arc ampere, arc voltage, air pressure, pierce height, and torch standoff distance) in a previous study. A multi-parameter optimization was carried out using the robust design. An L_(18) (2~1×3~7) Taguchi orthogonal array experiment was conducted and the right bevel angle was measured, aiming at the investigation of the influence of plasma-arc cut process parameters on right side bevel angle of St37 mild steel cut surface. The selection of quality characteristics, material, plate thickness and other process parameter levels and experimental limits was based on the experience and current needs of the Greek machining industry. A feed-forward backpropagation (FFBP) neural network was fitted on the experimental data.The results show that accurate predictions of the bevel angle can be achieved inside the experimental region, through the trained FFBP-ANN. The developed ANN model could be further used for the optimization of the cutting parameters during CNC plasma-arc cutting.
机译:本研究的目的是开发一个人工神经网络(ANN),以预测在St37低碳钢板的CNC等离子弧切割过程中的斜角(响应变量)。根据基于七(7)个因素执行的方差分析(ANOVA)的结果(相对重要性),选择了ANN的四(4)个输入参数(板厚,切割速度,电弧安培和割炬支座距离) (板厚,切割速度,电弧安培,电弧电压,气压,穿孔高度和割炬支座距离)。使用健壮的设计进行了多参数优化。进行了L_(18)(2〜1×3〜7)Taguchi正交阵列实验,并测量了右斜角,旨在研究等离子弧切割工艺参数对St37轻合金右侧斜角的影响。钢切割表面。根据希腊机械加工行业的经验和当前需求,选择质量特征,材料,板材厚度和其他工艺参数水平以及实验极限。将前馈反向传播(FFBP)神经网络拟合到实验数据上。 结果表明,通过训练后的FFBP-ANN,可以在实验区域内实现斜角的准确预测。所开发的人工神经网络模型可进一步用于在数控等离子弧切割过程中优化切割参数。

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