基于人工神经网络模型的Nipc/P-Si(有机/无机)异质结光伏特性数学建模

R. A. Mohamed, M. Y. El-Bakry, D. M. Habashy, E. H. Aamer
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摘要

在本研究中,利用人工神经网络(ANN)和弹性反向传播(R-prop)训练算法对镍-酞菁(NiPc/p-Si)异质结的光伏特性进行了建模。实验数据摘自实验研究。实验数据作为人工神经网络模型的输入。对不同结构的人工神经网络进行训练,使其接近最小误差值。对8个人工神经网络进行了训练,以获得更好的均方误差(MSE)和网络的最佳执行。人工神经网络的性能也被研究,它们的值很小(MSE < 10-3)。给出了NiPc薄膜电流-电压特性的仿真结果,并与实验数据进行了较好的匹配。利用人工神经网络模型进行预测,得到了准确的预测结果。得到了描述输入和输出之间关系的方程。人工神经网络模型的高准确度体现在主要的猜测能力和根据所得到的方程进行泛化的能力。
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Mathematical Modeling of Photovoltaic Properties of Nipc/P-Si (Organic/Inorganic) Heterojunction by Using Artificial Neural Networks Model
In this research, the artificial neural network (ANN) and resilient back propagation (R-prop) training algorithm are utilized to model the photovoltaic properties of Nickel–phthalocyanine (NiPc/p-Si) heterojunction. The experimental data are extracted from experimental studies. Experimental data are utilized as inputs in the ANN model. Training of different structures of the ANN is processed to approach the minimum value of error. Eight artificial neural networks are trained to get a better mean square error (MSE) and best execution for the networks. The ANN performances are also investigated and their values are very small (MSE < 10-3). The simulation results of the current-voltage characteristics of NiPc films are produced and provided excellent matching with the corresponding experimental data. Utilization of ANN model for predictions is also processed and gives accurate results.  The equation which describes the relation between the inputs and outputs is obtained. The high accuracy of the ANN model has appeared in the major guessing power and the ability of generalization depending on the obtained equations.
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