RBF Neural Network Model to Increase the Performance of Solar Panels

Mohammed Ali Taleb, Jamal Haydar, W. Fahs, A. Mokdad
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Abstract

One of the significant sources of environmental conservation is the utilization of renewable energy. Renewable energy is the energy derived from natural sources that are replenished automatically from unlimited sources. In this paper, we study the solar energy and how to increase the performance by solving the problem of dust and dirt accumulated on solar cells. Dust and dirt are the most important reasons that reduce the performance of solar cells in natural conditions. We use artificial intelligence neural networks to make the decision that solar cells need to be cleaned. Moreover, we propose two scenarios and we compare them. In the first scenario, the variables, temperature, weather and humidity are considered and in the second scenario, the variables, temperature, weather, light Intensity and humidity are considered. Concerning the weather conditions, a system prediction based on previous years is done. Results show that this system increases the solar cells’ performance by cleaning the dust and dirt in correct time.
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提高太阳能电池板性能的RBF神经网络模型
环境保护的重要来源之一是可再生能源的利用。可再生能源是从自然资源中获得的能源,可以从无限的资源中自动补充。本文主要研究太阳能电池,以及如何通过解决太阳能电池上积存的灰尘和污垢来提高太阳能电池的性能。在自然条件下,灰尘和污垢是降低太阳能电池性能的最重要原因。我们使用人工智能神经网络来决定太阳能电池是否需要清洁。此外,我们提出了两种情况,并进行了比较。在第一个场景中,考虑变量,温度,天气和湿度,在第二个场景中,考虑变量,温度,天气,光照强度和湿度。根据往年的天气情况,进行了系统预报。结果表明,该系统能及时清除太阳能电池中的灰尘和污垢,提高了太阳能电池的性能。
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