基于不同计算智能算法的太阳能发电混合预测方法

Md. Reduan Hossain, A. Oo, A. S. Ali
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引用次数: 43

摘要

计算智能(CI)是智能电网发展的关键,通过对可再生能源(RES)的准确预测来克服规划和优化的挑战。本文提出了一种构建太阳能混合智能预测器的体系结构框架。本研究利用澳大利亚罗克汉普顿的历史数据,研究了异构回归算法在6小时前太阳能可用性预测中的适用性。数据是在2005年至2010年的六年中以每小时分辨率收集的。结果表明,混合预测方法适用于智能电网的可靠能量管理。基于统计方法和图形方法对混合预测方法的预测误差性能进行了预测可靠性分析。实验结果表明,该方法具有较好的预测精度。这些潜在模型可以作为任何混合方法的局部预测器,在实际应用中提前6小时进行预测,以保证智能电网运行中太阳能电力的恒定供应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid prediction method of solar power using different computational intelligence algorithms
Computational Intelligence (CI) holds the key to the development of smart grid to overcome the challenges of planning and optimization through accurate prediction of Renewable Energy Sources (RES). This paper presents an architectural framework for the construction of hybrid intelligent predictor for solar power. This research investigates the applicability of heterogeneous regression algorithms for 6 hour ahead solar power availability forecasting using historical data from Rockhampton, Australia. Data is collected across six years with hourly resolution from 2005 to 2010. We observe that the hybrid prediction method is suitable for a reliable smart grid energy management. Prediction reliability of the proposed hybrid prediction method is carried out in terms of prediction error performance based on statistical and graphical methods. The experimental results show that the proposed hybrid method achieved acceptable prediction accuracy. These potential model could be apply as a local predictor for any proposed hybrid method in the real life application for six hour in advance prediction to ensure constant solar power supply in the smart grid operation.
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