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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Cutting parameter optimization of Al-6063-O using numerical simulations and particle swarm optimization
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Cutting parameter optimization of Al-6063-O using numerical simulations and particle swarm optimization

机译:使用数值模拟和粒子群优化的Al-6063-O切割参数优化

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摘要

Machining process simulations are commonly used by manufacturing industries to accurately predict machining force, time, and the performance of engineering components. Determination of optimal conditions of machining parameters is fundamental as it directly affects the material properties, surface finish quality, and the cutting tool life, among other objectives. In this work, we propose a multi-objective particle swarm optimization (PSO) algorithm, in order to determine the optimal machining parameters; i.e., rake angle (alpha), velocity (V ), and cutting feed (f ) using finite element (FE) simulation of orthogonal cutting. We evaluate the optimality of the problem for three objectives: (i) minimize the cutting force, (ii) maximize the microstructure refinement, and (iii) maximize material removal rate (MRR) in machining of Aluminum 6063. Minimum cutting force, higher refinement, and higher MRR are desirable in order to achieve enhanced cutting tool life, higher strength of the material, and higher machining performance, respectively. First, we develop the input-output relationships as well as the in-process parameter correlations using response surface methodology (RSM) and artificial neural network (ANN). Next, we use the particle swarm optimization technique combined with weight aggregation method to solve the multi-objective PSO (MOPSO) problem resulting in Pareto optimal solutions. Finally, we compare three machining conditions from the Pareto front in which one of the objective functions is optimized and the results show that a trade-off point can be drawn among the low cutting force, high microstructure refinement, and high MRR. A sample condition from the Pareto front is created experimentally resulting in good agreement with the model output. The optimization models can potentially enable the achievements of the desired objectives through the integration of the MOPSO algorithm with most of the available finite element simulations of machining.
机译:制造业常用加工过程模拟以准确地预测加工力,时间和工程部件的性能。测定加工参数的最佳条件是基本的,因为它直接影响材料特性,表面光洁度质量以及其他目的。在这项工作中,我们提出了一种多目标粒子群优化(PSO)算法,以确定最佳加工参数;即,使用有限元切割的有限元(Fe)模拟,耙角(α),速度(V)和切割进料(F)。我们评估了三个目标问题的最优性:(i)最大限度地减少切割力,(ii)最大化微观结构细化,(iii)最大化材料去除率(MRR)在铝6063的加工中最大化。最小的切割力,更高的细化并且,更高的MRR是理想的,以实现增强的切削刀具寿命,更高的材料强度和更高的加工性能。首先,我们开发输入输出关系以及使用响应表面方法(RSM)和人工神经网络(ANN)的过程相关关系。接下来,我们使用粒子群优化技术结合重量聚合方法来解决帕累托最佳解决方案的多目标PSO(MOPSO)问题。最后,我们比较来自Paroto前面的三种加工条件,其中优化了一个客观函数之一,结果表明,可以在低切削力,高微结构细化和高MRR之间绘制权衡点。 Pareto Frant的样本条件是通过实验创建的,从而与模型输出吻合良好。优化模型可以通过与大多数可用的加工有限元模拟的MOPSOSO算法集成了所需目标的成就。

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