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An adaptive artificial neural network model for sizing stand-alone photovoltaic systems: application for isolated sites in Algeria

机译:用于调整独立光伏系统规模的自适应人工神经网络模型:在阿尔及利亚偏远地区的应用

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In this paper we investigate, the possibility of using an adaptive Artificial Neural Network (ANN), in order to find a suitable model for sizing Stand-Alone Photovoltaic (SAPV) systems, based on a minimum of input data. The model combines Radial Basis Function (RBF) network and Infinite Impulse Response (IIR) filter in order to accelerate the convergence of the network. For the sizing of a photovoltaic (PV) systems, we need to determine the optimal sizing coefficients (K_(PV), K_B). These coefficients allow us to determine the number of solar panels and storage batteries necessary to satisfy a given consumption, especially in isolated sites where the global solar radiation data is not always available. These coefficients are considered the most important parameters for sizing a PV system. Results obtained by classical models (analytical, numerical, analytical-numerical, B-spline function) and new models like feed-forward (MLP), radial basis function (RBF), MLP-IIR and RBF-IIR are compared with experimental sizing coefficients in order to illustrate the accuracy of the new developed model. This model has been trained by using 200 known optimal sizing coefficients corresponding to 200 locations in Algeria. In this way, the adaptive model was trained to accept and handle a number of unusual cases. The unknown validation sizing coefficients set produced very accurate estimation with a correlation coefficient of 98%. This result indicates that the proposed method can be successfully used for the estimation of optimal sizing coefficients of SAPV systems for any locations in Algeria. The methodology proposed in this paper however, can be generalized using different locations of the world.
机译:在本文中,我们研究了使用自适应人工神经网络(ANN)的可能性,以便基于最少的输入数据找到用于调整独立光伏(SAPV)系统规模的合适模型。该模型结合了径向基函数(RBF)网络和无限冲激响应(IIR)滤波器,以加快网络的收敛速度。为了确定光伏(PV)系统的尺寸,我们需要确定最佳尺寸系数(K_(PV),K_B)。这些系数使我们能够确定满足给定消耗所需的太阳能电池板和蓄电池的数量,尤其是在并非总能获得全球太阳辐射数据的偏远地区。这些系数被认为是确定光伏系统尺寸的最重要参数。将经典模型(分析,数值,解析数值,B样条函数)和新模型(例如前馈(MLP),径向基函数(RBF),MLP-IIR和RBF-IIR)获得的结果与实验尺寸系数进行比较为了说明新开发模型的准确性。通过使用对应于阿尔及利亚200个位置的200个已知最佳尺寸系数来训练该模型。通过这种方式,对自适应模型进行了训练,以接受和处理许多异常情况。未知的验证大小调整系数集产生了非常准确的估计,相关系数为98%。该结果表明,所提出的方法可以成功地用于估计阿尔及利亚任何位置的SAPV系统的最佳规模系数。但是,本文中提出的方法可以使用世界上的不同位置进行概括。

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