Solar Radiation Forecasting Using Support Vector Regression

Subham Shaw, M. Prakash
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引用次数: 5

Abstract

Solar energy is the most predominant renewable energy resource available to humankind. To remain depend on it in future, forecasting of solar energy is essential. In this paper, solar potential is forecasted with the help of Support vector regression (SVR) depending on other easily measurable parameters. The parameters like pressure, temperature, humidity are exploited in the prediction of daily global solar radiation. The data used for the study is taken for a period of two year for the location of New Alipore, Kolkata. Two models where developed using RBF kernel and Polynomial kernel function of SVR. The performance of this two models are evaluated with the statistical measures viz, Coefficient of Determination (R2) and Root Mean Square Error (RMSE). The result obtained are R2 of 0.7976 and RMSE of 1.0564 for training while R2 of 0.7845 and RMSE of 1.0532 for testing with RBF kernel. While polynomial kernel gives R2 of 0.9393 and RMSE of 1.1975 for training while R2 of 0.9060 and RMSE of 1.1594 for testing.
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基于支持向量回归的太阳辐射预报
太阳能是人类可用的最主要的可再生能源。为了在未来继续依赖它,预测太阳能是必不可少的。在本文中,利用支持向量回归(SVR),根据其他容易测量的参数来预测太阳能电势。压力、温度、湿度等参数被用来预测每日的全球太阳辐射。该研究使用的数据是在加尔各答新阿里波雷地区收集的,为期两年。分别采用RBF核函数和多项式核函数建立了支持向量回归模型。用决定系数(R2)和均方根误差(RMSE)来评价这两个模型的性能。训练结果R2为0.7976,RMSE为1.0564;RBF核测试结果R2为0.7845,RMSE为1.0532。而多项式核给出的训练R2为0.9393,RMSE为1.1975,测试R2为0.9060,RMSE为1.1594。
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