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Optimization of Surface Roughness Based on Multi-linear Regression Model and Genetic Algorithm

机译:基于多线性回归模型和遗传算法的表面粗糙度优化

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During the high-speed milling operations of 7050-T7451 aluminum alloy using solid carbide end mills, helical angle, axial and radial depth-of-cut have significant effects on the milling uniformity. A surface roughness predictive model of work-piece was developed by using a full-factorial experimental design and multi-linear regression technology. Genetic algorithm was utilized to optimize the helical angle and cutting parameters by means of a series of operations of selection, crossover and mutation based on genetics. The result shows that it is possible to select optimum axial depth-of-cut, radial depth-of-cut and helical angle for obtaining minimum cutting force and reasonably good metal removal rate.
机译:在7050-T7451铝合金的高速研磨操作期间,使用固体碳化物端铣刀,螺旋角,轴向和径向深度对铣削均匀性具有显着影响。采用全源实验设计和多线性回归技术开发了工件的表面粗糙度预测模型。利用遗传算法通过基于遗传学的选择,交叉和突变的一系列操作来优化螺旋角度和切削参数。结果表明,可以选择最佳的轴向深度切割,径向切割和螺旋角度,以获得最小的切割力和合理的金属去除率。

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