A computational intelligence approach for solar photovoltaic power generation forecasting

S. Nesmachnow, C. Risso
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Abstract

This article describes an approach applying computational intelligence methods for the problem of forecasting solar photovoltaic power generation at country level. Precise forecast of power generation plays a vital role in designing a dependable photovoltaic power generation system. The computed predictions enable the implementation of efficient planning, management, and distribution strategies for the generated power, ultimately enhancing the performance and efficiency of the system. The study analyzes and compares artificial neural network approaches for a specific case study using real solar photovoltaic power generation data from Uruguay in the period 2018 to 2022. Several artificial neural network architectures are evaluated for forecasting. The main results indicate that the approach applying a combination of Encoder-Decoder and Long Short Term Memory artificial neural networks is the most effective method for the addressed forecasting problem. The approach yielded promising results, with an average mean error value of 0.09, improving over the other artificial neural network architectures. Even better results were obtained for sunny days. The generated forecasts hold significant value for its application in planning and scheduling processes, aiming to enhance the overall quality of service of the electricity grid.
太阳能光伏发电预测的计算智能方法
本文介绍了一种应用计算智能方法解决国家级太阳能光伏发电预测问题的方法。发电量的精确预测对设计可靠的光伏发电系统起着至关重要的作用。计算得出的预测结果可帮助实施高效的发电规划、管理和分配策略,最终提高系统的性能和效率。本研究利用乌拉圭 2018 年至 2022 年期间的真实太阳能光伏发电数据,对人工神经网络方法进行了分析和比较。对几种人工神经网络架构进行了预测评估。主要结果表明,采用编码器-解码器和长短期记忆人工神经网络组合的方法是解决预测问题的最有效方法。该方法取得了可喜的成果,平均误差值为 0.09,优于其他人工神经网络结构。对于晴天,结果甚至更好。生成的预测结果在规划和调度过程中具有重要的应用价值,旨在提高电网的整体服务质量。
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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