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Backtracking search algorithm with reusing differential vectors for parameter identification of photovoltaic models

机译:回收差分向量的回溯搜索算法,用于光伏模型的参数识别

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摘要

In order to simulate, control and optimize photovoltaic (PV) systems, how to accurately identify the unknown parameters of PV models is a major challenge. To overcome this challenge, this work reports a very simple but efficient optimization method called backtracking search algorithm with reusing differential vectors (BSARDVs). BSARDVs has a very simple structure and only needs the essential population size and stopping criterion for optimization. Mutation operator is employed to generate new individuals in the search process of backtracking search algorithm (BSA), which guides the search direction of population by the differential vectors between history population and current population. To enhance the global search ability of BSA, BSARDVs first archives some most promising difference vectors from history population and then reuses these differential vectors for generating next generation population. The performance of BSARDVs is investigated for parameter identification of three PV models, i.e. single diode model, double diode model and PV module model. Experimental results reveal BSARDVs can find the better solution than the compared algorithms on double diode model. In addition, for single diode model and PV module model, the solutions of BSARDVs are the same solutions with those of some compared algorithms while BSARDVs consumes less function evaluations than these algorithms. This proves the effectiveness of reusing differential vectors in BSA for parameter identification of PV models.
机译:为了模拟,控制和优化光伏(PV)系统,如何准确识别PV模型的未知参数是一个主要挑战。为了克服这一挑战,这项工作报告了一种非常简单但有效的优化方法,称为反向传出差分向量(BSANDV)的回溯搜索算法。 BSARDVS具有非常简单的结构,只需要基本的人口大小和停止算法进行优化。用于在回溯搜索算法(BSA)的搜索过程中生成突变操作员的新个人,该搜索过程通过历史人群和当前群体之间的差分向量引导人口的搜索方向。为了增强BSA的全球搜索能力,BSARDVS首先归档历史人口中的一些最有希望的差异向量,然后重用这些差分向量以产生下一代人口。研究了BSARDVS的性能,用于参数识别三个PV型号,即单二极管模型,双二极管模型和光伏模块模型。实验结果显示,BSARDV可以找到比双二极管模型的比较算法更好的解决方案。此外,对于单二极管模型和光伏模块模型,BSARDV的解决方案与某些比较算法的解决方案相同,而BSARDVS消耗比这些算法更少的功能评估。这证明了在BSA中重用差分载体的有效性,用于PV模型的参数识别。

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