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Hard Turning Optimization Using Neural Network Modeling and Swarm Intelligence

机译:使用神经网络建模和群智能的硬转换优化

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In this paper, multi-objective optimization of hard turning has been reported. A neural network model was developed in order to model the surface roughness and tool wear characteristics of hard turning when CBN tools are used. Objective is to obtain optimum process parameters, which satisfies given limit, tool wear and surface roughness values and maximizes the productivity at the same time. A recently developed optimization algorithm called particle swarm optimization is used to find optimum process parameters. Accordingly, the results indicate that a system where neural network is used to model and predict process outputs and particle swarm optimization is used to obtain optimum process parameters can be successfully applied to multi-objective optimization of hard turning.
机译:本文报道,已经报道了硬转弯的多目标优化。开发了一种神经网络模型,以便在使用CBN工具时模拟硬盘的表面粗糙度和工具磨损特性。目的是获得最佳的工艺参数,该参数满足给定极限,工具磨损和表面粗糙度值,同时最大化生产率。最近开发的优化算法称为粒子群优化优化用于找到最佳过程参数。因此,结果表明,用于模拟和预测处理输出和粒子群优化的系统可以成功地应用于硬转动的多目标优化来获得用于模拟和预测过程输出和粒子群优化的系统。

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