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Time varying acceleration coefficients particle swarm optimisation (TVACPSO): A new optimisation algorithm for estimating parameters of PV cells and modules

机译:时变加速度系数粒子群优化(TVACPSO):一种用于估算PV电池和组件参数的新优化算法

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Estimating circuit model parameters of PV cells/modules represents a challenging problem. PV cell/module parameter estimation problem is typically translated into an optimisation problem and is solved by metaheuristic optimisation problems. Particle swarm optimisation (PSO) is considered as a popular and well-established optimisation algorithm. Despite all its advantages, PSO suffers from premature convergence problem meaning that it may get trapped in local optima. Personal and social acceleration coefficients are two control parameters that, due to their effect on explorative and exploitative capabilities, play important roles in computational behavior of PSO. In this paper, in an attempt toward premature convergence mitigation in PSO, its personal acceleration coefficient is decreased during the course of run, while its social acceleration coefficient is increased. In this way, an appropriate tradeoff between explorative and exploitative capabilities of PSO is established during the course of run and premature convergence problem is significantly mitigated. The results vividly show that in parameter estimation of PV cells and modules, the proposed time varying acceleration coefficients PSO (TVACPSO) offers more accurate parameters than conventional PSO, teaching learning-based optimisation (TLBO) algorithm, imperialistic competitive algorithm (ICA), grey wolf optimisation (GWO), water cycle algorithm (WCA), pattern search (PS) and Newton algorithm. For validation of the proposed methodology, parameter estimation has been done both for RTC France PV cell and Photowatt-PWP 201 PV module. In all terms of mean, best and standard deviation of achieved results, the proposed TVACPSO outperforms other compared algorithms. (C) 2016 Elsevier Ltd. All rights reserved.
机译:估计PV电池/模块的电路模型参数代表了一个具有挑战性的问题。 PV电池/模块参数估计问题通常被转化为优化问题,并通过元启发式优化问题解决。粒子群优化(PSO)被认为是一种流行且完善的优化算法。尽管具有所有优点,但PSO仍存在过早收敛的问题,这意味着它可能会陷入局部最优中。个人和社会加速度系数是两个控制参数,由于它们对探索和开发能力的影响,在PSO的计算行为中起着重要作用。本文尝试降低PSO的过早收敛性,在运行过程中降低其个人加速系数,同时提高其社会加速系数。通过这种方式,可以在运行过程中在PSO的探索能力和开发能力之间建立适当的权衡,从而大大缓解了过早收敛的问题。结果生动地表明,在光伏电池和组件的参数估计中,所提出的时变加速度系数PSO(TVACPSO)比常规PSO,基于教学的学习优化(TLBO)算法,帝国竞争算法(ICA),灰色提供了更准确的参数狼优化(GWO),水循环算法(WCA),模式搜索(PS)和牛顿算法。为了验证所提出的方法,已经对RTC France PV电池和Photowatt-PWP 201 PV模块进行了参数估计。在获得的结果的均值,最佳和标准偏差方面,拟议的TVACPSO优于其他比较算法。 (C)2016 Elsevier Ltd.保留所有权利。

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