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Analysis and Multi-Objective Optimization for Reducing Energy Consumption and Improving Surface Quality during Dry Machining of 304 Stainless Steel

机译:减少电能消耗和改善304不锈钢干加工期间的能量消耗和改善表面质量的分析和多目标优化

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摘要

Cutting quality and production cleanliness are main aspects to be considered in the machining process, and determining the optimal cutting parameters is a significant measure to reduce energy consumption and optimize surface quality. In this paper, 304 stainless steel is adopted as the research objective. The regression models of the specific cutting energy, surface roughness, and microhardness are constructed and the inherent influence mechanism between cutting parameters and output responses are analyzed by analysis of variance (ANOVA). The desirability analysis method is introduced to perform the multi-objective optimization for low energy consumption (LEC) mode and low surface roughness (LSR) mode. Optimal combination of process parameters with composite desirability of 0.925 and 0.899 are obtained in such two modes respectively. As indicated by the results of multi-objective genetic algorithm (MOGA), genetic algorithm (GA) combined with weighted-sum-type objective function and experiment, the relative deviation values are within 10%. Moreover, the results also reveal that the feed rate is the most significant factor affecting the three responses, while the correlation of cutting depth is less noticeable. The effect of low feed rate on microhardness is primarily related to the mechanical load caused by extrusion, and the influence at high feed rate is determined by plastic deformation.
机译:切割质量和生产清洁是在加工过程中考虑的主要方面,并确定最佳切削参数是降低能量消耗并优化表面质量的重要措施。本文采用了304个不锈钢作为研究目标。构建特定切削能量,表面粗糙度和显微硬度的回归模型,通过对方差分析(ANOVA)分析切割参数和输出响应之间的固有的影响机制。引入了期望分析方法,以对低能量消耗(LEC)模式和低表面粗糙度(LSR)模式执行多目标优化。在这种两种模式中分别获得具有0.925和0.899的复合性期望的过程参数的最佳组合。如多目标遗传算法(MOGA)的结果所示,遗传算法(GA)与加权和型物镜函数和实验组合,相对偏差值在10%以内。此外,结果还揭示了进料速率是影响三种反应的最重要因素,而切削深度的相关性不太明显。低进料速率对显微硬度的影响主要与挤出引起的机械负荷相关,并且通过塑性变形确定高进料速率的影响。

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