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Optimizing the Heliostat Field Layout by Applying Stochastic Population-Based Algorithms

机译:应用基于随机种群的算法优化定日镜场布局

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摘要

The heliostat field of Solar Central Receiver Systems takes up to 50% of the initial investment and can cause up to 40% of energetic loss in operation. Hence, it must be carefully optimized Design procedures usually rely on particular heliostat distribution models. In this work, optimization of the promising biomimetic distribution model is studied. Two stochastic population-based optimizers are applied to maximize the optical efficiency of fields: a genetic algorithm, micraGA, and a memetic one, UEGO. As far as the authors know, they have not been previously applied to this problem. However, they could be a good option according to their structure. Additionally, a Brute-Force Grid is used to estimate the global optimum and a Pure-Random Search is applied as a baseline reference. Our empirical results show that many different configurations of the distribution model lead to very similar solutions. Although micraGA exhibits poor performance, UEGO achieves the best results in a reduced time and seems appropriate for the problem at hand.
机译:Solar Central Receiver Systems的定日镜领域占初始投资的50%,并且可能导致运行中高达40%的能量损失。因此,必须仔细优化设计过程通常依赖于特定的定日镜分布模型。在这项工作中,对有前途的仿生分布模型的优化进行了研究。应用了两种基于种群的随机优化器,以最大化场的光学效率:一种遗传算法micraGA和一种模因算法UEGO。据作者所知,它们以前尚未应用于此问题。但是,根据其结构,它们可能是一个不错的选择。另外,使用蛮力网格估计全局最优值,并使用纯随机搜索作为基准参考。我们的经验结果表明,分布模型的许多不同配置导致了非常相似的解决方案。尽管micraGA表现不佳,但UEGO可以在较短的时间内获得最佳结果,并且似乎可以解决当前的问题。

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