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Experimental Investigation for the Multi-objective Optimization of Machining Parameters on AISI D2 Steel Using Particle Swarm Optimization Coupled with Artificial Neural Network

机译:用粒子群优化耦合人工神经网络综合优化对AISI D2钢加工参数的多目标优化的实验研究

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摘要

High Carbon High Chromium (or AISI D2) Steels, owing to the fine surface finish they produce upon grinding, find lot of applications in die casting. Machining parameters affect the surface finish significantly during the grinding operation. In this context, this work puts an effort to arrive at the optimum machining parameters relating to fine surface finish with minimum cutting force. The material removal caused by the abrasive grinding wheel makes the process a very complex and nonlinear machining operation. In many situations, traditional optimization techniques fail to provide realistic optimum conditions because of the associated complexity. In order to overcome this issue, particle swarm optimization (PSO) coupled with artificial neural network (ANN) is applied in this research work for parameter optimization with the objective of achieving minimum surface roughness and cutting force. The machining parameters selected for the investigation were table speed, cross feed and depth of cut and the responses were surface roughness and cutting force. ANNs, inspired from biological neural networks, are well capable of providing patterns, which are too complex in behavior. The ANN model developed was used as the fitness function for PSO to complete the optimization. Optimization was also carried out using conventional response surface methodology-genetic algorithm (RSM-GA) approach in which regression equation developed with RSM was considered as the fitness function for GA. Confirmatory experiments were conducted and the comparison showed that PSO coupled with ANN is a reliable tool for complex optimization problems.
机译:高碳高铬(或AISI D2)钢,由于精细的表面处理,它们在研磨时产生,在压铸中找到了许多应用。加工参数在研磨操作期间显着影响表面光洁度。在这种情况下,这项工作提出了努力到达与最小切割力的精细表面光洁度相关的最佳加工参数。由磨料磨轮引起的材料去除使得工艺成为非常复杂和非线性加工操作。在许多情况下,由于相关的复杂性,传统的优化技术未能提供现实的最佳条件。为了克服这个问题,在本研究工作中应用了与人工神经网络(ANN)耦合的粒子群优化(PSO),以实现参数优化,目的是实现最小表面粗糙度和切割力。选择用于调查的加工参数是表速度,交叉进料和切割深度,响应是表面粗糙度和切割力。来自生物神经网络的灵感的Anns能够提供模式,这在行为中过于复杂。所开发的ANN模型被用作PSO的健身功能,以完成优化。还使用常规响应表面方法 - 遗传算法(RSM-GA)方法进行优化,其中使用RSM开发的回归方程被认为是GA的健身功能。进行了确认实验,并进行了比较表明,与ANN偶联的PSO是一种可靠的复杂优化问题的工具。

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