Analyzing the impact of temperature on PV module surface during electricity generation using machine learning models

S. M. Rezaul Karim , Debasish Sarker , Md. Monirul Kabir
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Abstract

Use of fossil fuel in industries causes Carbon emission, which is mostly responsible for global warming. Another aspect is that environment friendly energy production and sustainable development goal is highly dependent on the production of clean energy. According to the IEA solar energy has a huge potential and will contribute up to 16 % of the global electricity by 2050. Hence, prediction of solar energy production has a great deal of demand in renewable energy sector. This paper compares machine-learning algorithms to evaluate the impact of PV module back surface temperature (degC) on the generated power. Support Vector Machine for Regression (SMOreg), Multilayer Perceptron (ANN), Linear Regression, M5 Rules, k-Nearest-Neighbor (Ibk) and Random Forest methods are employed to test their performance in different ratio of training and testing data. The dataset comprises five independent parameters such as PV module back surface temperature (degC), Dry bulb temperature (degC), Relative humidity (%RH), Atmospheric pressure (mb), and Precipitation (mm). The dependent parameter is Maximum power of PV module (W). The correlation coefficient was determined by varying the percentage of training data from 60 % to 85 %. The numerical tests were done for two data sets, one dataset includes all the independent variables and another one excluded the PV module back surface temperature. Except for M5 Rules, other models exhibit consistent correlation coefficients with several of training data. All models demonstrate a dependency on the PV module back surface temperature, with Random Forest surpassing others in overall performance with a correlation coefficient of 0.9713 at 75 % of training set.

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利用机器学习模型分析发电过程中温度对光伏组件表面的影响
工业使用化石燃料会造成碳排放,而碳排放是全球变暖的主要原因。另一方面,环境友好型能源生产和可持续发展目标高度依赖于清洁能源的生产。国际能源机构认为,太阳能潜力巨大,到 2050 年将占全球电力的 16%。因此,太阳能生产预测在可再生能源领域有着巨大的需求。本文比较了机器学习算法,以评估光伏组件背面温度(摄氏度)对发电量的影响。本文采用了支持向量机回归(SMOreg)、多层感知器(ANN)、线性回归、M5 规则、k-最近邻(Ibk)和随机森林方法,以测试它们在不同训练和测试数据比例下的性能。数据集包括五个独立参数,如光伏组件背面温度(摄氏度)、干球温度(摄氏度)、相对湿度(%RH)、大气压力(mb)和降水量(毫米)。因变量是光伏组件的最大功率(瓦)。相关系数是通过将训练数据的百分比从 60% 调整到 85% 来确定的。对两个数据集进行了数值测试,一个数据集包括所有自变量,另一个数据集不包括光伏组件背面温度。除 M5 规则外,其他模型与几个训练数据的相关系数一致。所有模型都显示出对光伏组件背面温度的依赖性,其中随机森林模型在 75% 的训练集上相关系数为 0.9713,在总体性能上超过了其他模型。
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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