基于稀疏重建和极限学习机的太阳能板热点揭示

R. Saranya, R. Karthikeyan, K. Manivannan
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引用次数: 0

摘要

在当今世界,太阳能电池板是利用电子过程直接从阳光中发电的主要来源之一,光伏电池没有温室气体排放,因为它不需要任何其他燃料来源,如煤,天然气,石油,核电系统。热点是光伏电池产生的主要原因之一,它是由于遮阳电池的功率耗散而产生的。在现有文献中,太阳能电池板的热点检测采用了各种算法和技术,但并没有提高精度、性能和温度分布,还存在过拟合和欠拟合的问题。为了克服这一问题,本文提出了利用主要用于温度分布的红外摄像机以热图像的形式捕获热点的方法。为了识别热点,使用稀疏重建和GLCM算法提取阴影、相关性、对比度、能量、熵、均匀性、突出性、稀疏等特征。极限学习机分类算法具有良好的泛化性能,与其他分类算法相比准确率有了更高的提高。利用这些算法还可以纠正过拟合和欠拟合问题。最后利用极值学习机识别出光伏电池中热点的百分比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hotspot Revelation in Solar Panel Using Sparse Reconstruction and Extreme Learning Machine
In today’s world, solar panel is one of the major sources for generating power directly from the sunlight by using electronic processes and there is no greenhouse emission in photo-voltaic cell as it does not require any other source of fuel like coal, natural gas, oil, nuclear power systems. Hotspot is one of the main causes of photo-voltaic cell which occurs due to the dissipation of power in shaded cells. In the existing literature, the hotspot in solar panel is detected by using various algorithms and techniques but it does not improve accuracy, performance, temperature distribution, problem like over-fitting and under-fitting also exists. To overcome that, the proposed work deals with capturing the hotspot as thermal image through an infrared camera which is mainly used for temperature distribution. For identifying hotspot, the features like shade, correlation, contrast, energy, entropy, homogeneity, prominence, sparse are extracted using sparse reconstruction and GLCM algorithms. The features are given to the classification algorithm named as Extreme earning Machine which gives the good generalization performance and improves accuracy higher when compared to other algorithms. The over-fitting and under-fitting problem can also be rectified by using these algorithms. Finally using extreme learning machine, the percentage of hotspot in photo-voltaic cell can be identified.
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