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AZ61镁合金精车的人工神经网络表面粗糙度优化:以主要加工成本实现最短加工时间

ANN Surface Roughness Optimization of AZ61 Magnesium Alloy Finish Turning: Minimum Machining Times at Prime Machining Costs.

作者信息

Abbas Adel Taha, Pimenov Danil Yurievich, Erdakov Ivan Nikolaevich, Taha Mohamed Adel, Soliman Mahmoud Sayed, El Rayes Magdy Mostafa

机构信息

Department of Mechanical Engineering, College of Engineering, King Saud University, P.O. Box 800, Riyadh 11421, Saudi Arabia.

Department of Automated Mechanical Engineering, South Ural State University, Lenin Prosp. 76, Chelyabinsk 454080, Russia.

出版信息

Materials (Basel). 2018 May 16;11(5):808. doi: 10.3390/ma11050808.

Abstract

Magnesium alloys are widely used in aerospace vehicles and modern cars, due to their rapid machinability at high cutting speeds. A novel Edgeworth⁻Pareto optimization of an artificial neural network (ANN) is presented in this paper for surface roughness () prediction of one component in computer numerical control (CNC) turning over minimal machining time () and at prime machining costs (). An ANN is built in the Matlab programming environment, based on a 4-12-3 multi-layer perceptron (MLP), to predict , , and , in relation to cutting speed, , depth of cut, , and feed per revolution, . For the first time, a profile of an AZ61 alloy workpiece after finish turning is constructed using an ANN for the range of experimental values , , and . The global minimum length of a three-dimensional estimation vector was defined with the following coordinates: = 0.087 μm, = 0.358 min/cm³, = $8.2973. Likewise, the corresponding finish-turning parameters were also estimated: cutting speed = 250 m/min, cutting depth = 1.0 mm, and feed per revolution = 0.08 mm/rev. The ANN model achieved a reliable prediction accuracy of ±1.35% for surface roughness.

摘要

镁合金因其在高切削速度下具有快速切削加工性,而被广泛应用于航空航天器和现代汽车中。本文提出了一种新颖的人工神经网络(ANN)的埃奇沃思-帕累托优化方法,用于在最小加工时间()和主要加工成本()的情况下,预测计算机数控(CNC)车削中一个部件的表面粗糙度()。基于4-12-3多层感知器(MLP)在Matlab编程环境中构建了一个ANN,以预测与切削速度()、切削深度()和每转进给量()相关的、和。首次使用ANN针对实验值、和的范围构建了AZ61合金工件精车后的轮廓。三维估计向量的全局最小长度由以下坐标定义: = 0.087μm, = 0.358min/cm³, = 8.2973美元。同样,还估计了相应的精车参数:切削速度 = 250m/min,切削深度 = 1.0mm,每转进给量 = 0.08mm/rev。ANN模型对表面粗糙度的预测精度达到了可靠的±1.35%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5a46/5978185/e46a6a6e025d/materials-11-00808-g001.jpg

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