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A novel random walk algorithm with compulsive evolution combined with an optimum-protection strategy for heat exchanger network synthesis

机译:带有强制进化和最优保护策略的新型随机游走算法用于换热器网络综合

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摘要

Random walk algorithm with compulsive evolution is a novel stochastic method with strong global search ability for heat exchanger network synthesis; however, its mutation behavior of accepting bad solutions might substitute excellent solutions with bad ones and consequently cost-optimal structures cannot be guaranteed. Therefore, an optimum-protection strategy is proposed to protect and exploit excellent solutions. In the presented method, a basic population is set to generate numerous candidate solutions based on the evolution principle of original algorithm, where the excellent solutions including current optimums and pseudo optimums are delivered to a protective population. For higher convergence precision, a dimensionality-reduction random walk technique is designed for the protective population to perform a complete local optimization for the protected solutions. The presented method consisting of two populations can maintain the normal evolution of original algorithm and exploit the potentialities of the excellent solutions, which can satisfy the needs of global and local search abilities. Moreover, a leader-follower optimization technique is presented to reduce computational time when considering stream splits. Five different-sized cases available in the literature are systematically examined and some more economical solutions compared to the reported ones are found within reasonable time. (C) 2018 Elsevier Ltd. All rights reserved.
机译:具有强迫进化的随机游走算法是一种新型的具有强大全局搜索能力的换热网络综合随机方法。但是,其接受不良解决方案的变异行为可能会用不良解决方案替代优良解决方案,因此无法保证成本最优的结构。因此,提出了一种最佳保护策略来保护和利用优秀的解决方案。在提出的方法中,基于原始算法的演化原理,将基本种群设置为生成大量候选解,其中将包括当前最优值和伪最优值在内的优良解传递给保护种群。为了获得更高的收敛精度,针对保护种群设计了降维随机游走技术,以对保护解决方案执行完整的局部优化。该方法由两个种群组成,可以保持原始算法的正常演化,并可以利用优良的解的潜力,可以满足全局和局部搜索能力的需要。此外,提出了一种前导跟随优化技术,以减少考虑流分割时的计算时间。系统地检查了文献中的五个不同大小的案例,并在合理的时间内找到了与所报告的案例相比更经济的解决方案。 (C)2018 Elsevier Ltd.保留所有权利。

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