Renewable energy forecasting is attaining greater importance due to its constant increase in contribution to the electrical power grids. Solar energy is one of the most significant contributors to renewable energy and is dependent on solar irradiation. For the effective management of electrical power grids, forecasting models that predict solar irradiation, with high accuracy, are needed. In the current study, Machine Learning techniques such as Linear Regression, Extreme Gradient Boosting and Genetic Algorithm Optimization are used to forecast solar irradiation. The data used for training and validation is recorded from across three different geographical stations in the United States that are part of the SURFRAD network. A Global Horizontal Index (GHI) is predicted for the models built and compared. Genetic Algorithm Optimization is applied to XGB to further improve the accuracy of solar irradiation prediction.
翻译:由于可再生能源对电网的贡献不断增加,可再生能源预测越来越重要,太阳能是可再生能源的最重要贡献者之一,依赖太阳辐照。为了有效管理电力网,需要精确预测太阳辐照的预测模型。在目前的研究中,利用诸如线性反射、极端梯度推动和遗传性高压电光化等机械学习技术预测太阳辐照。用于培训和验证的数据来自美国三个不同地理区域的培训和验证数据,这三个地理站都是SURFRAD网络的一部分。为建造和比较模型预测全球水平指数(GHI)是预测的。遗传Algorithm 最佳化适用于XGB,以进一步提高太阳辐照预测的准确性。