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Data-driven symbolic ensemble models for wind speed forecasting through evolutionary algorithms

机译:通过进化算法的风速预测数据驱动符号集合模型

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摘要

Non-linear data-driven symbolic models have been gaining traction in many fields due to their distinctive combination of modeling expressiveness and interpretability. Despite that, they are still rather unexplored for ensemble wind speed forecasting, leaving behind new promising avenues for advancing the development of more accurate models which impact the efficiency of energy production. In this work, we develop a methodology based on the evolutionary algorithm known as grammatical evolution, and apply it to build forecasting models of near-surface wind speed over five locations in northeastern Brazil. Taking advantage of the symbolic nature of the models built, we conducted an extensive series of post-analyses. Overall, our models reduced the forecasting errors by 7%-56% when compared with other techniques, including a real-world operational ensemble model used in Brazil. (C) 2019 Elsevier B.V. All rights reserved.
机译:由于其在建模表达性和解释性的独特组合,非线性数据驱动的符号模型在许多领域中获得了牵引力。 尽管如此,它们仍然是宁愿未开发的集合风速预测,留下了新的有希望的途径,以推进更准确的模型的开发,影响能源生产效率。 在这项工作中,我们基于称为语法演进的进化算法开发一种方法,并将其应用于巴西东北五个地区的近地上风速预测模型。 利用构建模型的象征性,我们进行了广泛的分析后系列。 总体而言,与其他技术相比,我们的模型将预测误差减少了7%-56%,包括在巴西使用的真实运营集合模型。 (c)2019年Elsevier B.V.保留所有权利。

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