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Artificial Neural Network and Genetic Algorithm-Based Models for Predicting Cutting Force in Turning of Hardened H13 Steel

机译:基于人工神经网络和基于遗传算法的基于遗传算法,用于预测硬化H13钢转向切割力的模型

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The manufacturing sector in the modern era is striving hard to reduce the cost of production by employing innovative techniques. One such technique is hard turning where the workpiece is heat treated to the requisite hardness, and the final size and shape of the component are obtained directly through hard turning process. Hard turning is generally carried out with a huge amount of cutting fluid to enhance the output performance. Since petroleum-based emulsions are easily available in the market at reasonable price, they are widely used in industries. Petroleum-based cutting fluids create a number of environmental and health issues. In this perspective, pure dry turning is a logical substitute as it does not possess the harmful effects connected with the cutting fluids. The feasible tool life and surface quality are often disturbed while carrying out the machining operation under pure dry condition. Under such circumstances, the concept called minimal cutting fluid application (MCFA) performs itself as a possible solution. This paper investigates the effect of applying cutting fluid using MCFA technique at the critical contact zones while hard turning of H13 steel. An artificial neural network (ANN) model was developed for the prediction of the main cutting force, and its ability to predict cutting force (F_z) was analyzed. An effort is made to optimize the cutting parameters to accomplish minimum cutting force using genetic algorithm.
机译:现代时代的制造业正在努力通过采用创新技术来降低生产成本。一种这样的技术是硬盘,其中工件热处理到所需的硬度,并且通过硬转动过程直接获得组件的最终尺寸和形状。硬转动通常用大量切削液进行,以增强输出性能。由于石油基乳液以合理的价格在市场上轻松获得,因此它们被广泛用于行业。基于石油的切割液会产生许多环境和健康问题。在这种观点中,纯干转弯是一种逻辑替代品,因为它不具有与切削液连接的有害影响。可行的工具寿命和表面质量经常受到干扰,同时在纯干燥条件下进行加工操作。在这种情况下,称为最小切削液应用(MCFA)的概念作为可能的解决方案。本文研究了使用MCFA技术在临界接触区应用了切削液的效果,同时H13钢的硬转动。开发了一种人工神经网络(ANN)模型,用于预测主要切削力,分析其预测切割力(F_Z)的能力。努力优化切割参数以实现使用遗传算法实现最小的切削力。

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