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Optimization of Machining Parameters for Improving Energy Efficiency using Integrated Response Surface Methodology and Genetic Algorithm Approach

机译:集成响应曲面法和遗传算法优化提高能效的加工参数

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摘要

Machine tools consume enormous amount of energy during machining, build-up to machining, post machining and idling condition to drive motors and auxiliary equipments in the manufacturing system. Reduction of energy consumption during the machining phase is extremely important to improve the environmental performance over the entire life cycle. This paper presents a predictive and optimization model based on integrated response surface methodology and genetic algorithm approach to predict the energy consumption and the corresponding machining parameters during the turning of AISI 1045 steel with a tungsten carbide tool. Experiments using Taguchi design are performed to develop the predictive model. The developed predictive model is used to formulate the objective function for genetic algorithm. The confirmation experiments are performed to validate the developed model and the results are found within 4% error. The statistical significance of the developed model has been tested by the analysis of variance test. This research will be beneficial for a number of manufacturing industries for selection of machine tools on the basis of energy consumption. The reduction of peak load through optimization will results in lowering the energy consumption of the machine tools during non-cutting time.
机译:机床在加工过程中,加工积累,后加工以及空转条件下消耗大量能量,以驱动制造系统中的电动机和辅助设备。减少加工阶段的能耗对于提高整个生命周期的环境绩效至关重要。本文提出了一种基于综合响应面方法和遗传算法的预测和优化模型,以预测使用碳化钨工具对AISI 1045钢进行车削时的能耗和相应的加工参数。使用Taguchi设计进行实验以开发预测模型。所开发的预测模型用于制定遗传算法的目标函数。进行确认实验以验证开发的模型,结果发现误差在4%以内。通过方差分析对已开发模型的统计意义进行了检验。这项研究对于基于能源消耗选择机床的许多制造业将是有益的。通过优化降低峰值负载将降低非切削时间内机床的能耗。

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