Classification of cell line Halm machine data in solar panel production factories using artificial intelligence models

İrfan Yilmaz, Demiral Akbar, Murat Şimşek
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Abstract

A solar energy module consists of solar cells that convert sunlight into electrical energy. The quality of these cells is the most important determinant of panel performance and lifespan. High-quality cells increase energy efficiency and extend panel life. Solar cells are typically composed of crystalline silicon, thin layers, and organic materials. Each material has its own advantages and disadvantages. However, what all cells have in common is that they produce electrical energy when exposed to solar radiation. Solar cells can be classified and ranked. This classification indicates the efficiency and performance of the cell. Solar energy modules are widely used to meet the energy needs of many homes and businesses. Accurately measuring cell performance can improve the overall efficiency of the panel. Therefore, AI (artificial intelligence) modeling offers many advantages in optimizing cell performance. The study yielded several benefits associated with modeling solar panel cells with artificial intelligence. Some of the benefits derived from this research are: Improved efficiency, Error detection and correction, Reduced maintenance costs, predictability, Increased production. These advantages demonstrate that AI modeling can help optimize solar panel cell performance.
利用人工智能模型对太阳能电池板生产厂的电池生产线 Halm 机器数据进行分类
太阳能电池组件由太阳能电池组成,可将太阳光转化为电能。这些电池的质量是决定电池板性能和寿命的最重要因素。高质量的电池能提高能源效率,延长太阳能电池板的使用寿命。太阳能电池通常由晶体硅、薄层和有机材料组成。每种材料都有自己的优缺点。不过,所有电池的共同点都是在太阳辐射下产生电能。太阳能电池可以分类和分级。这种分类表明了电池的效率和性能。太阳能电池组件被广泛用于满足许多家庭和企业的能源需求。准确测量电池性能可以提高电池板的整体效率。因此,AI(人工智能)建模在优化电池性能方面具有很多优势。这项研究发现了利用人工智能为太阳能电池板电池建模的若干好处。这项研究带来的一些益处包括提高效率、错误检测和纠正、降低维护成本、可预测性、提高产量。这些优势表明,人工智能建模有助于优化太阳能电池板的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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