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Teaching learning based optimization of squeeze casting process for quality castings

机译:基于挤压铸造工艺的教学学习优化

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The hybrid squeeze casting method combines the immense features of forging and casting processes. Ultimate tensile strength(UTS),surface roughness(SR),and yield strength(YS)are the important casting quality characteristics influenced mainly by input variables. Determining the set of optimal input variables(pressurized duration,squeeze pressure,pouring and die temperature)for conflicting requirement in casting quality(maximize: YS and UTS and minimize: SR)is considered to behave complex and non-linear. Multiple objective functions with conflicting requirements are modified suitably to single fitness function with different set of weight fractions for maximization to solve the optimization problem. Four scenarios are selected with different sets of weight fractions by assigning equal weights for all outputs,followed by assigning maximum weight fraction for each individual output function,after keeping the rest at fixed low equal weights. Teaching learning based optimization(TLBO)is selected to optimize the squeeze casting input-output parameters. TLBO results are found to be comparable with evolutionary algorithms(i.e. GA,PSO and MOPSO-CD). TLBO has outperformed the evolutionary algorithms with regard to computation time.
机译:混合挤压铸造方法结合了锻造和铸造工艺的巨大特征。最终拉伸强度(UTS),表面粗糙度(SR)和屈服强度(YS)是主要受输入变量影响的重要铸造质量特征。确定用于铸造质量需求冲突的最佳输入变量(加压持续时间,挤压压力,浇筑和模芯温度)被认为是表现复杂和非线性的冲突质量要求(最大化:ys和UTs和最小化:sr)。具有相互冲突的多目标功能,适当地修改单个健身功能,具有不同的重量分数,以最大化解决优化问题。通过为所有输出分配相等的重量,用不同的重量分数组选择四种情况,然后在固定的低相等权重保持静止之后为每个单独输出函数分配最大权重分数。选择基于学习的学习优化(TLBO)以优化挤压铸造输入输出参数。发现TLBO结果与进化算法相当(即GA,PSO和MOPSO-CD)。 TLBO在计算时间方面表现出了进化算法。

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