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Multi-junction solar cells electrical characterization by neuronal networks under different irradiance, spectrum and cell temperature

机译:不同辐照度,光谱和电池温度下神经网络对多结太阳能电池的电学表征

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Nowadays, HCPV (high concentrator photovoltaics) is largely based on high efficiency MJ (multi-junction) solar cells. Hence, the prediction of the electrical parameters of MJ solar cells is crucial for designing and evaluating the performance of this emerging technology. At the same time, the analytical modelling of the I V parameters of these devices is complex due to their strong and complex dependence with irradiance, spectrum and cell temperature. In this work, the possibility of predicting the main electrical characteristics of a MJ solar cell by using artificial intelligent techniques is analysed. In particular, three artificial neural network (ANN)-based models were developed: one for simulating the short-circuit current (I-SC), one for simulating the open-circuit voltage (V-oc) and for simulating the maximum power (P-max). The models were developed and evaluated with the data of a lattice-matched GaInP/GaInAs/Ge triple-junction operating at a wide range of conditions. Results show that the models accurately estimate the main electrical parameters of a MJ solar cell under different concentrated sunlight, spectral irradiance and cell temperature with a RMSE (root mean square error) lower than 0.5% and a MBE (mean bias error) almost 0%. (C) 2015 Elsevier Ltd. All rights reserved.
机译:如今,HCPV(高聚光光伏)主要基于高效MJ(多结)太阳能电池。因此,MJ太阳能电池电参数的预测对于设计和评估这种新兴技术的性能至关重要。同时,由于这些器件对辐照度,光谱和电池温度的强烈和复杂的依赖性,因此这些器件的I V参数的分析建模非常复杂。在这项工作中,分析了使用人工智能技术预测MJ太阳能电池主要电气特性的可能性。特别是,开发了三种基于人工神经网络(ANN)的模型:一种用于模拟短路电流(I-SC),一种用于模拟开路电压(V-oc)和用于模拟最大功率( P-max)。使用在各种条件下运行的晶格匹配的GaInP / GaInAs / Ge三重结的数据来开发和评估模型。结果表明,该模型能够准确估计MJ太阳能电池在不同的聚光日光,光谱辐照度和电池温度下的主要电参数,其RMSE(均方根误差)低于0.5%,MBE(平均偏差误差)几乎为0% 。 (C)2015 Elsevier Ltd.保留所有权利。

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