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The performance comparison of Multiple Linear Regression, Random Forest and Artificial Neural Network by using photovoltaic and atmospheric data

机译:利用光伏和大气数据进行多元线性回归,随机森林和人工神经网络的性能比较

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In this study, the estimation performances of Multiple Linear Regression, Random Forest, and Artificial Neural Network are examined comparatively. For comparison of these data mining techniques, the power production data from a Photovoltaic Module was used in the research. In this study, the model was constituted from seven variables. One of the variables is dependent (power) and the others are independent variables (global radiation, temperature, wind speed, wind direction, relative humidity, solar elevation angle). In this paper, the Mean Absolute Error and the correlation coefficient were used in order to compare the estimation performance of the mentioned data mining techniques. While the correlation coefficient is 0.963 in Multiple Linear Regression model, the correlation coefficient is 0.986 in Random Forest decision tree method. The highest correlation coefficient was obtained in Artificial Neural Network architecture (R = 0.997). According to the three data mining methods, the global radiation was found as the most important predictor. While the least important predictor is the wind direction in both the Artificial Neural Network and the Random Forest models, the solar elevation angle is the least important predictor in the Multiple Linear Regression model.
机译:在这项研究中,比较检验了多元线性回归,随机森林和人工神经网络的估计性能。为了比较这些数据挖掘技术,在研究中使用了来自光伏模块的发电数据。在这项研究中,该模型由七个变量构成。其中一个变量是因变量(功率),其他变量是独立变量(全局辐射,温度,风速,风向,相对湿度,太阳仰角)。在本文中,使用平均绝对误差和相关系数来比较上述数据挖掘技术的估计性能。在多元线性回归模型中,相关系数为0.963,而在随机森林决策树方法中,相关系数为0.986。在人工神经网络体系结构中获得最高的相关系数(R = 0.997)。根据这三种数据挖掘方法,发现全球辐射是最重要的预测指标。虽然在人工神经网络模型和随机森林模型中,最不重要的预测因子是风向,但在多重线性回归模型中,太阳仰角是最不重要的预测因子。

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