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A Hybrid Model Based on Ensemble Empirical Mode Decomposition and Fruit Fly Optimization Algorithm for Wind Speed Forecasting

机译:一种基于集合经验模式分解和果蝇的风速预测果蝇优化算法的混合模型

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摘要

As a type of clean and renewable energy, the superiority of wind power has increasingly captured the world’s attention. Reliable and precise wind speed prediction is vital for wind power generation systems. Thus, a more effective and precise prediction model is essentially needed in the field of wind speed forecasting. Most previous forecasting models could adapt to various wind speed series data; however, these models ignored the importance of the data preprocessing and model parameter optimization. In view of its importance, a novel hybrid ensemble learning paradigm is proposed. In this model, the original wind speed data is firstly divided into a finite set of signal components by ensemble empirical mode decomposition, and then each signal is predicted by several artificial intelligence models with optimized parameters by using the fruit fly optimization algorithm and the final prediction values were obtained by reconstructing the refined series. To estimate the forecasting ability of the proposed model, 15 min wind speed data for wind farms in the coastal areas of China was performed to forecast as a case study. The empirical results show that the proposed hybrid model is superior to some existing traditional forecasting models regarding forecast performance.
机译:作为一种清洁和可再生能源,风电的优越性越来越多地夺取了世界的关注。可靠且精确的风速预测对于风力发电系统至关重要。因此,在风速预测领域基本上需要更有效和精确的预测模型。最先前的预测模型可以适应各种风速系列数据;但是,这些模型忽略了数据预处理和模型参数优化的重要性。鉴于其重要性,提出了一种新的混合集合学习范式。在该模型中,原始风速数据首先通过集合经验模式分解分为有限的信号分量集,然后通过使用果蝇优化算法和最终预测,通过多个人工智能模型预测每个信号的每个信号。通过重建精制的系列来获得值。为了估算拟议模型的预测能力,在中国沿海地区的风电场15分钟风速数据是为了预测作为案例研究。经验结果表明,拟议的混合模型优于一些现有的传统预测模型,了解预测性能。

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