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Parameter estimation of photovoltaic cells using improved Lozi map based chaotic optimization Algorithm

机译:基于改进Lozi图的混沌优化算法估算光伏电池参数

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摘要

Evaluating the performance of photovoltaic panels inevitably involves having the exact model of solar cells. Different approaches to model solar cells have been proposed in literature which can generally be classified as either traditional or intelligent methods. To obtain the accurate model of such highly nonlinear systems, however, is still a challenging task, defying researchers. This study proposes an Improved Lozi Map based Chaotic Optimization Algorithm (ILCOA) algorithm to estimate the unknown parameters of the solar cells. Remarkable local and global searching abilities of the proposed algorithm give it a distinct edge over other optimization methods, enabling it to sift the whole search space for the global optimum. The efficacy of the proposed approach is finally highlighted by comparing its performance with those of three other algorithms including BMO, CWOA, and LCOA in terms of RMSE, Relative Error, Mean Absolute Error (MAE), Normalized MAE, and Mean Bias Error.
机译:评估光伏面板的性能不可避免地涉及到具有太阳能电池的精确模型。在文献中已经提出了对太阳能电池进行建模的不同方法,这些方法通常可以分为传统方法或智能方法。然而,要获得这种高度非线性系统的准确模型,仍然是一项艰巨的任务,这使研究人员大为反感。这项研究提出了一种改进的基于Lozi地图的混沌优化算法(ILCOA)算法来估计太阳能电池的未知参数。与其他优化方法相比,该算法具有显着的局部和全局搜索能力,从而使其能够筛选整个搜索空间以实现全局最优。最后,通过将方法的性能与RMSE,相对误差,平均绝对误差(MAE),归一化MAE和平均偏置误差等三种其他算法(包括BMO,CWOA和LCOA)的性能进行比较,最终突出了该方法的有效性。

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