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Multi-objective optimization of condensation heat transfer using teaching-learning-based optimization algorithm

机译:基于教学学习的优化算法对凝结换热的多目标优化

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In this paper, the multi-objective optimization of R-245fa vapour condensation inside horizontal tube has been carried out using teaching-learning-based optimization algorithm. The teaching-learning-based optimization algorithm is teaching-learning procedure motivated and works on the impact of a teacher on the outcome of students in a class. Heat transfer coefficient and pressure drop with two parameters have been considered to evaluate the performance of the tube. The mass flux and vapour quality of refrigerant are taken as the parameters. The limit of mass flux and vapour quality are from 100 to 300 kg/m(2)s and 0.1 to 0.8, respectively. The optimum values of heat transfer coefficient 2820.5 W/m(2)K and pressure drop 1360.2 Pa are obtained with mass flux 137.65 kg/m(2)s and vapour quality 0.77 using teaching-learning-based optimization algorithm.
机译:本文采用基于教学学习的优化算法,对水平管内R-245fa水蒸气冷凝进行了多目标优化。基于教学的优化算法是基于教学过程的动机,它在教师对班级学生的学习效果的影响下起作用。已经考虑了具有两个参数的传热系数和压降来评估管的性能。以制冷剂的质量通量和蒸气质量为参数。质量通量和蒸气质量的极限分别为100至300 kg / m(2)s和0.1至0.8。使用基于教学学习的优化算法,以质量通量137.65 kg / m(2)s和蒸汽质量0.77获得传热系数2820.5 W / m(2)K和压降1360.2 Pa的最佳值。

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