首页> 外文会议>ASME summer heat transfer conference 2008 >PERFORMANCE COMPARISON OF PARTICLE SWARM OPTIMIZATION AND GENETIC ALGORITHM IN ROLLING FIN-TUBE HEAT EXCHANGER OPTIMIZATION DESIGN
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PERFORMANCE COMPARISON OF PARTICLE SWARM OPTIMIZATION AND GENETIC ALGORITHM IN ROLLING FIN-TUBE HEAT EXCHANGER OPTIMIZATION DESIGN

机译:轧制翅片换热器优化设计中粒子群优化与遗传算法的性能比较

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摘要

A method for optimization designs of rolling fin-tube heat exchangers was put forward with Particle Swarm Optimization (PSO) and Genetic Algorithm (GA), respectively. The length of tube bundles, the row numbers of tubes, the width of heat exchanger core and fin pitch were used as the optimization variables. The allowable pressure drop and heat exchange requirements were considered as restrictive conditions. According to specific design requirements, the volume, weight or pressure drop may be chosen as the optimization objective function. In the same design parameters, ranges of the search variables and restrictive conditions, optimization results compared with GA, the minimum volume, weight and pressure drop PSO could decrease by 3.34%, 4.31% and 14.04%, respectively, and corresponding CPU time could be reduced by 32.39%, 40.23% and 33.45%, respectively. In the fields of optimization designs of heat exchanger, Particle Swarm Optimization is a promising optimization method.
机译:分别采用粒子群算法(PSO)和遗传算法(GA)提出了翅片管式换热器的优化设计方法。管束的长度,管的排数,换热器芯的宽度和翅片间距被用作优化变量。允许的压降和热交换要求被认为是限制性条件。根据特定的设计要求,可以选择体积,重量或压降作为优化目标函数。在相同的设计参数,搜索变量范围和限制条件下,与GA相比的优化结果,最小体积,重量和压降PSO分别降低了3.34%,4.31%和14.04%,相应的CPU时间为分别减少了32.39%,40.23%和33.45%。在换热器的优化设计领域,粒子群优化是一种很有前途的优化方法。

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