An efficient hybrid algorithm based on particle swarm optimisation and teaching-learning-based optimisation for parameter estimation of photovoltaic models

IF 2.4 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IET Smart Grid Pub Date : 2024-11-25 DOI:10.1049/stg2.12198
Dianlang Wang, Zhongrui Qiu, Qi Yin, Haifeng Wang, Jing Chen, Chengbi Zeng
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Abstract

In recent years, many meta-heuristic algorithms have been investigated to estimate the parameters of photovoltaic (PV) models. However, the accuracy of the estimated parameters still needs to be concerned, especially for some complex PV models with many unknown parameters. In order to estimate the unknown parameters of the PV models more precisely and reliably, an efficient hybrid algorithm based on particle swarm optimisation and teaching-learning-based optimisation (PSOTLBO) is proposed in this paper. In PSOTLBO, inspired by the learner phase of teaching-learning-based optimisation (TLBO), an improved learner phase is designed and introduced into the basic PSO to enhance the global search ability and the ability to get rid of local optimum. The improved learner phase divides the population into four groups according to three values, which are the average fitness values of the overall population, the population in the first half of the fitness ranking and the population in the second half of the fitness ranking. Typically, each group has its particular movement pattern concentrating on exploration or exploitation respectively to improve the search efficiency of the algorithm. Furthermore, to deal with individuals beyond the boundary, a new designed probabilistic rebound strategy is introduced, which increases the diversity of population and avoids population aggregation at the search boundary. Then, the proposed PSOTLBO is applied to estimate the parameters of the single diode model, double diode model and PV module model. The comparative results between PSOTLBO and other 14 advanced algorithms show that the average root mean square error values of different PV models obtained by PSOTLBO are 9.86021878E−04, 9.82630511E−04, 2.42507487E−03, 1.72981371E−03, and 1.66006031E−02, respectively, which indicate that PSOTLBO can provide more accurate and stable parameter estimation results than other compared algorithms. Furthermore, the convergence experimental results demonstrate that PSOTLBO has outstanding performance in convergence speed and stability.

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近年来,人们研究了许多元启发式算法来估计光伏(PV)模型的参数。然而,估计参数的准确性仍然需要关注,特别是对于一些复杂的、有许多未知参数的光伏模型。为了更精确、可靠地估计光伏模型的未知参数,本文提出了一种基于粒子群优化和基于教学的优化(PSOTLBO)的高效混合算法。在 PSOTLBO 中,受基于教学的优化算法(TLBO)学习者阶段的启发,设计了一种改进的学习者阶段,并将其引入到基本 PSO 中,以增强全局搜索能力和摆脱局部最优的能力。改进学习阶段根据三个值将种群分为四组,这三个值分别是总体种群的平均适配值、适配度排名前半部分的种群和适配度排名后半部分的种群。通常情况下,每个组都有其特定的运动模式,分别侧重于探索或开发,以提高算法的搜索效率。此外,为了处理边界外的个体,引入了新设计的概率反弹策略,增加了种群的多样性,避免了搜索边界的种群聚集。然后,应用所提出的 PSOTLBO 估算单二极管模型、双二极管模型和光伏组件模型的参数。PSOTLBO 与其他 14 种先进算法的比较结果表明,PSOTLBO 得到的不同光伏模型的平均均方根误差值分别为 9.86021878E-04、9.82630511E-04、2.42507487E-03、1.72981371E-03 和 1.66006031E-02,这表明 PSOTLBO 比其他比较算法能提供更精确、更稳定的参数估计结果。此外,收敛实验结果表明,PSOTLBO 在收敛速度和稳定性方面表现突出。
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来源期刊
IET Smart Grid
IET Smart Grid Computer Science-Computer Networks and Communications
CiteScore
6.70
自引率
4.30%
发文量
41
审稿时长
29 weeks
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