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Modeling and optimization of cutting parameters during machining of ZrO2 filled MMC

机译:ZrO2填充过程中切割参数的建模与优化MMC

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In the era of composites and ceramics,reinforced metal matrix composites have paved its way to many engineering fields due to its superior mechanical and thermal properties.Zirconia(ZrO2)is one such most researched ceramics,which leads to excellent bond strength,grain refinement,and improved tribological aspects of the composite.To simplify the post mold machining of such new composites,the present work emphasizes on the prediction of cutting force for different composition of ZrO2 in an Aluminum metal matrix composite reinforced with SiCp and Graphite.The purpose is to streamline the complex analysis of induced cutting force during turning with quantifiable machining parameters for the developed composite.The influence of two machining parameters such as depth of cut and feed rate are analyzed with an increase in ZrO2%.For the better prediction of the cutting force,the artificial intelligence techniques like adaptive ncuro-fuzzy interface system(ANFIS)backed by a heuristic genetic algorithm(GA)is employed.The comparison between the predicted model values with the experiment results is exhibited ±1% error having R-square value 0.9927.The interaction plot and soft computing model stood in equal agreement that with the rise in both depth of cut and feed rate,the cutting force value decreases.Again for an increase in ZrO2% and feed rate,a definite increase in cutting force is observed.The effect of an increase in ZrO2% in the composite over the machining parameter is suggested through the main effect plot,which stands in equal agreement with the GA model.
机译:在复合材料和陶瓷的时代,增强金属基质复合材料由于其优越的机械和热特性而铺平了许多工程领域。改进了复合材料的摩擦学方面。为了简化这种新复合材料的后模加工,本工作强调了用SICP和石墨增强的铝金属基质复合材料中不同组成的切削力的预测。目的是用可量化的复合材料转动转弯过程中诱导切割力的复杂分析。分析了两种加工参数的影响,如ZrO2%的增加。对于切割力的更好预测,由启发式遗传族藻支持的自适应Ncuro-Fuzzy界面系统(ANFIS)等人工智能技术算法(GA)就是使用实验结果的预测模型值与R-Square值0.9927的误差。相互协议和软计算模型的互动图和软计算模型在两个深度上升切割和进料速率,切割力值降低。ZrO2%的增加和进料速率,观察到切割力的明确增加。通过ZrO2%在加工参数上增加ZrO2%的效果主要效果情节,其与GA型号相同协议。

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