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首页> 外文期刊>International Journal of Heat and Mass Transfer >Optimal design of plate-fin heat exchanger by combining multi-objective algorithms
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Optimal design of plate-fin heat exchanger by combining multi-objective algorithms

机译:结合多目标算法的板翅式换热器的优化设计

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In this paper, a multi-objective optimization method is proposed which is a combination of Genetic algorithm, Differential Evolution and Adaptive Simulated Annealing algorithms. This technique is intended to generalize and improve the robustness of the three population based algorithms. In optimization problems, it is essential to keep the balance between local and global search abilities of algorithms. In the current method, DE, GA and ASA algorithms are linked in the variation stage to enrich the searching behavior and enhance the diversity of the population. The performance of the proposed DE-GA-ASA is tested against benchmark problems for multi-objectives and compared with two widely recognized vector optimizers. Next, the proposed technique is successfully implemented to optimize the design of plate-fin heat exchanger. The effectiveness of the present method is illustrated by comparing with various case studies. Some of the earlier case studies violated the constraints and/or only focused on single objective optimization. Results show that DE-GA-ASA method can be used effectively for the optimal design of plate-fin heat exchanger. Moreover, the effect of variation of fin and heat exchanger parameters on the optimal design is also investigated. Hot, cold and no-flow length of the heat exchanger, fin offset length, fin height and fin length are introduced as the optimization variables to obtain maximum heat transfer rate and minimum total annual cost. The investment cost and operating costs are independently optimized to provide a detailed investigation on the effect of fin and heat exchanger geometry parameters on their variation. Furthermore, a multi-criteria decision making method, TOPSIS is introduced for the selection of final optimal solution from the set of non-dominated solutions.
机译:提出了一种遗传算法,差分进化算法和自适应模拟退火算法相结合的多目标优化方法。该技术旨在概括和改进三种基于总体的算法的鲁棒性。在优化问题中,至关重要的是要在算法的局部和全局搜索能力之间保持平衡。在目前的方法中,DE,GA和ASA算法在变化阶段相联系,以丰富搜索行为并增强种群的多样性。针对多目标基准问题,对提出的DE-GA-ASA的性能进行了测试,并与两个公认的矢量优化器进行了比较。接下来,成功地实施了所提出的技术以优化板翅式热交换器的设计。通过与各种案例研究进行比较说明了本方法的有效性。一些较早的案例研究违反了约束条件,并且/或者仅关注于单一目标优化。结果表明,DE-GA-ASA方法可以有效地用于板翅式换热器的优化设计。此外,还研究了翅片和热交换器参数的变化对最佳设计的影响。引入热交换器的热,冷和无流量长度,翅片偏移长度,翅片高度和翅片长度作为优化变量,以获得最大的传热速率和最小的年度总成本。独立地优化了投资成本和运营成本,以详细研究翅片和热交换器几何参数对其变化的影响。此外,引入了一种多准则决策方法TOPSIS,用于从非支配解集中选择最终的最优解。

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