基于特征分析和多模型融合的光伏短期产量预测方法

Yuansheng Song, Teng Zhao, Ziru Niu, Jin Du, Fanghui Jiang, Fangyue Zhai
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引用次数: 1

摘要

未来,光伏发电将迎来更大的市场。人工智能的快速发展为光伏发电预测提供了新的解决方案。本文结合当前人工智能领域的前沿理论研究,提出了一种基于多模型融合叠加集成学习的短期光伏发电功率预测方法。采用随机森林和相关系数特征重要性分析确定重要气候因子作为预测模型的输入特征。在此基础上,将单个预测性能良好且存在一定差异的多个机器学习模型集成到堆叠集成学习光伏输出预测模型中。该模型的基础学习器包括XGBoost树集成算法和GRU神经网络算法。为了防止过拟合,元学习器由复杂度相对简单、准确率较高的LSSVM算法组成。算例使用澳大利亚太阳能研究与发展中心提供的光伏功率和气候数据验证了算法的有效性。预测结果表明,叠加模型比传统的单一模型具有更高的预测精度,能更好地跟踪输出功率的波动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short-Term PV Output Prediction Method Based on Feature Analysis and Multi-model Fusion
In the future, photovoltaic power generation will usher in a larger market. The rapid development of artificial intelligence provides a new solution for photovoltaic power generation forecasting. In this paper, combined with the current cutting-edge theoretical research in the field of artificial intelligence, a short-term photovoltaic power generation power prediction method based on multi-model fusion Stacking ensemble learning is proposed. Random Forest and correlation coefficient feature importance analysis were used to determine the important climate factors as the input characteristics of the prediction model. On this basis, multiple machine learning models with good single prediction performance and certain differences are integrated into the Stacking ensemble learning photovoltaic output prediction model. The base learner of the model includes XGBoost tree ensemble algorithm and GRU neural network algorithm. To prevent overfitting, the meta-learner consists of the LSSVM algorithm with relatively simple complexity and high accuracy. The calculation example uses the photovoltaic power and climate data provided by the Australian Solar Energy Research and Development Center to verify the effectiveness of the algorithm. The prediction results show that the Stacking model has higher prediction accuracy than the traditional single model which can better track the fluctuation of output power.
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