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首页> 外文期刊>Archives of Metallurgy and Materials >APPLICATION OF ARTIFICIAL NEURAL NETWORKS IN MODELING OF MANUFACTURED FRONT METALLIZATION CONTACT RESISTANCE FOR SILICON SOLAR CELLS
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APPLICATION OF ARTIFICIAL NEURAL NETWORKS IN MODELING OF MANUFACTURED FRONT METALLIZATION CONTACT RESISTANCE FOR SILICON SOLAR CELLS

机译:人工神经网络在硅太阳能电池制造的前金属化接触电阻建模中的应用

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This paper presents the application of artificial neural networks for prediction contact resistance of front metallization for silicon solar cells. The influence of the obtained front electrode features on electrical properties of solar cells was estimated. The front electrode of photovoltaic cells was deposited using screen printing (SP) method and next to manufactured by two methods: convectional (1. co-fired in an infrared belt furnace) and unconventional (2. Selective Laser Sintering). Resistance of front electrodes solar cells was investigated using Transmission Line Model (TLM). Artificial neural networks were obtained with the use of Statistica Neural Network by Statsoft. Created artificial neural networks makes possible the easy modelling of contact resistance of manufactured front metallization and allows the better selection of production parameters. The following technological recommendations for the screen printing connected with co-firing and selective laser sintering technology such as optimal paste composition, morphology of the silicon substrate, co-firing temperature and the power and scanning speed of the laser beam to manufacture the front electrode of silicon solar cells were experimentally selected in order to obtain uniformly melted structure well adhered to substrate, of a small front electrode substrate joint resistance value. The prediction possibility of contact resistance of manufactured front metallization is valuable for manufacturers and constructors. It allows preserving the customers' quality requirements and bringing also measurable financial advantages.
机译:本文介绍了人工神经网络在预测硅太阳能电池正面金属化接触电阻中的应用。估算了获得的前电极特征对太阳能电池电性能的影响。光伏电池的前电极使用丝网印刷(SP)方法沉积,然后通过两种方法制造:对流(1.在红外带式炉中共烧)和非常规(2.选择性激光烧结)。使用传输线模型(TLM)研究了前电极太阳能电池的电阻。使用Statsoft的Statistica神经网络获得了人工神经网络。创建的人工神经网络可以轻松对制造的正面金属层的接触电阻建模,并可以更好地选择生产参数。以下与共烧和选择性激光烧结技术相关的丝网印刷技术建议,例如最佳的糊料成分,硅基板的形貌,共烧温度以及激光束的功率和扫描速度,以制造前电极。实验上选择硅太阳能电池,以便获得良好粘合到衬底的均匀熔化的结构,其前电极衬底的接合电阻值较小。所制造的正面金属镀层的接触电阻的预测可能性对于制造商和构造商而言是有价值的。它可以保留客户的质量要求,并带来可衡量的财务优势。

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