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Hybrid Particle Swarm Optimization and Ant Colony Optimization Technique for the Optimal Design of Shell and Tube Heat Exchangers

机译:壳管式换热器优化设计的混合粒子群优化和蚁群优化技术

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摘要

Owing to the wide utilization of shell and tube heat exchangers (STHEs) in industrial processes, their cost minimization is an important target for both designers and users. Traditional design approaches are based on iterative procedures which gradually change the design and geometric parameters until satisfying a given heat duty and set of geometric and operational constraints. Although well proven, this kind of approach is time-consuming and may not lead to cost-effective design. The present study explores the use of non-traditional optimization technique called hybrid particle swarm optimization (PSO) and ant colony optimization (ACO), for design optimization of STHEs from economic point of view. The PSO applies for global optimization and ant colony approach is employed to update positions of particles to attain rapidly the feasible solution space. ACO works as a local search, wherein ants apply pher-omone-guided mechanism to update the positions found by the particles in the earlier stage. The optimization procedure involves the selection of the major geometric parameters such as tube diameters, tube length, baffle spacing, number of tube passes, tube layout, type of head, baffle cut, etc. and minimization of total annual cost is considered as design target. The methodology takes into account the geometric and operational constraints typically recommended by design codes. Three different case studies are presented to demonstrate the effectiveness and accuracy of proposed algorithm. The examples analyzed show that the hybrid PSO and ACO algorithm provides a valuable tool for optimal design of heat exchanger. The hybrid PSO and ACO approach is able to reduce the total cost of heat exchanger as compare to cost obtained by previously reported genetic algorithm (GA) approach. The result comparisons with particle swarm optimizer and other optimization algorithms (GA) demonstrate the effectiveness of the presented method.
机译:由于壳管式换热器(STHE)在工业过程中的广泛使用,使其成本最小化是设计人员和用户的重要目标。传统的设计方法基于迭代过程,该过程逐渐更改设计和几何参数,直到满足给定的热负荷以及一组几何和操作约束。尽管已被充分证明,但这种方法很耗时,并且可能无法实现具有成本效益的设计。本研究探索从经济角度出发,将非传统优化技术称为混合粒子群优化(PSO)和蚁群优化(ACO)用于STHE的设计优化。 PSO应用于全局优化,采用蚁群方法更新粒子的位置以快速获得可行的解空间。 ACO用作局部搜索,其中蚂蚁应用信息素引导的机制来更新粒子在较早阶段发现的位置。优化程序包括选择主要几何参数,例如管径,管长,挡板间距,管通过次数,管布局,管头类型,挡板切割等,并且将年度总成本的最小化视为设计目标。 。该方法考虑了设计规范通常建议的几何和操作约束。提出了三个不同的案例研究,以证明所提出算法的有效性和准确性。分析的例子表明,混合的PSO和ACO算法为热交换器的优化设计提供了有价值的工具。与以前报告的遗传算法(GA)方法获得的成本相比,PSO和ACO混合方法能够降低热交换器的总成本。与粒子群优化器和其他优化算法(GA)的结果比较证明了该方法的有效性。

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