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Parameter Optimization of a CNC Turning Process using an ANN-GA Method

机译:ANN-GA方法的数控车削工艺参数优化

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摘要

Surface Roughness is one of the important parameters judging the quality of machining. Surface roughness causes friction and wear and tear between the mating parts which reduces the life of a machine component. Hence there is a need to minimize the surface roughness. This can be achieved by proper combination of cutting parameters. That is done by modeling using Artificial Neural Network (ANN) and optimization using Genetic Algorithm (GA). In the present work, the surface roughness in CNC turning operation is minimized by using an ANN-GA method. The inputs to the ANN include variables like cutting speed, feed and depth of cut. Speed is in terms of rpm, feed is in terms of mm/rev and depth of cut is in terms of mm. Then the cutting process is modeled using Artificial Neural Network in MAT LAB by taking the inputs as cutting speed, feed, depth of cut and output is taken as the surface roughness. Then the Artificial Neural Network model is trained for minimization of error using MAT LAB Software. Then the trained ANN model is exported into the Genetic Algorithm tool box of MAT LAB. Then in GA tool box surface roughness is minimized using GA. The optimum cutting parameters are noted.
机译:表面粗糙度是判断加工质量的重要参数之一。表面粗糙度导致配合零件之间的摩擦和磨损,从而缩短了机器部件的寿命。因此,需要使表面粗糙度最小。这可以通过适当组合切削参数来实现。这是通过使用人工神经网络(ANN)进行建模并使用遗传算法(GA)进行优化来完成的。在目前的工作中,通过使用ANN-GA方法可将CNC车削操作中的表面粗糙度降至最低。 ANN的输入包括变量,例如切削速度,进给和切削深度。速度以rpm为单位,进给以mm / rev为单位,切割深度以mm为单位。然后使用MAT LAB中的人工神经网络对切削过程进行建模,将输入作为切削速度,进给,切削深度,并将输出作为表面粗糙度。然后使用MAT LAB软件对人工神经网络模型进行训练,以最大程度地减少误差。然后将训练后的神经网络模型导出到MAT LAB的遗传算法工具箱中。然后在GA中,使用GA将工具箱的表面粗糙度降至最低。记录了最佳切割参数。

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