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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part E. Journal of Process Mechanical Engineering >Multiobjective optimization of in situ process parameters in preparation of Al-4.5%Cu-TiC MMC using a grey relation based teaching-learning-based optimization algorithm
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Multiobjective optimization of in situ process parameters in preparation of Al-4.5%Cu-TiC MMC using a grey relation based teaching-learning-based optimization algorithm

机译:基于灰色关系的基于教学 - 基于教学的优化算法,在制备Al-4.5%Cu-Tic MMC中的原位过程参数的多目标优化

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摘要

In modern in situ composite fabrication processes, the selection of optimal process parameters is greatly important for the preparation of best quality metal matrix composite. For achieving high-quality composite, an efficient optimization technique is essential. The present study explores the potential of a new robust algorithm named teaching-learning-based optimization algorithm for in situ process parameter optimization problems in fabrication of Al-4.5%Cu-TiC metal matrix composite fabricated by stir casting technique. Optimization process is carried out for optimizing the in situ processing parameters i.e. pouring temperature, stirring speed, reaction time for achieving better mechanical properties, i.e. better microhardness, toughness, and ultimate tensile strength. Taguchi's L-25 orthogonal array design of experiment was used for performing the experiments. Grey relational analysis is used for the conversion of the multiobjective function into a single objective function, which is being used as the objective function in the teaching-learning-based optimization algorithm. Confirmation test results show that the developed teaching-learning-based optimization model is a very efficient and robust approach for engineering materials process parameter optimization problems.
机译:在现代原位复合制造工艺中,选择最佳过程参数对于准备最佳质量金属基质复合材料非常重要。为了实现高质量的复合材料,有效的优化技术至关重要。本研究探讨了一种新的稳健算法的潜力,名为基于教学的优化算法,用于制备搅拌铸造技术制造的Al-4.5%Cu-Tic金属基质复合材料的原位工艺参数优化问题。进行优化过程,用于优化原位处理参数I.。浇注温度,搅拌速度,用于实现更好的机械性能的反应时间,即更好的微硬度,韧性和最终拉伸强度。 Taguchi的L-25正交阵列设计实验用于进行实验。灰色关系分析用于将多目标函数转换为单个目标函数,该函数被用作基于教学的优化算法中的目标函数。确认测试结果表明,开发的基于教学的优化模型是一种非常有效且强大的工程材料工艺参数优化问题。

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