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Solar radiation forecasting using MARS CART M5 and random forest model: A case study for India

机译:使用MARSCARTM5和随机森林模型进行太阳辐射预测:以印度为例

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摘要

Solar radiation is a critical requirement for all solar power plants. As it is a time-varying quantity, the power output of any solar power plant is also time variant in nature. Hence, for the prediction of probable electricity generation for a few days in advance, for any solar power plant, forecasting solar radiation a few days into the future is vital. Hourly forecasting for a few days in advance may help a utility or ISO in the bidding process. In this study, 1-day-ahead to 6-day-ahead hourly solar radiation forecasting was been performed using the MARS, CART, M5 and random forest models. The data required for the forecasting were collected from a solar radiation resource setup, commissioned by an autonomous body of the Government of India in Gorakhpur, India. From the results, it was determined that, for the present study, the random forest model provided the best results, whereas the CART model presented the worst results among all four models considered.
机译:太阳辐射是所有太阳能发电厂的关键要求。由于它是随时间变化的量,因此任何太阳能发电厂的功率输出本质上也是随时间变化的。因此,对于提前几天预测可能的发电量,对于任何太阳能发电厂而言,预测未来几天的太阳辐射至关重要。提前几天进行每小时预报可能会帮助公用事业公司或ISO参与投标过程。在这项研究中,使用MARS,CART,M5和随机森林模型进行了提前1天到6天的每小时太阳辐射预报。预测所需的数据是从印度政府在印度戈拉克布尔的一个自治机构委托的太阳辐射资源设置中收集的。从结果可以确定,对于本研究,随机森林模型提供了最佳结果,而CART模型在所考虑的所有四个模型中均提供了最差的结果。

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