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Intelligent and robust prediction of short term wind power using genetic programming based ensemble of neural networks

机译:基于神经网络集成的智能风力发电短期风电预测

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The inherent instability of wind power production leads to critical problems for smooth power generation from wind turbines, which then requires an accurate forecast of wind power. In this study, an effective short term wind power prediction methodology is presented, which uses an intelligent ensemble regressor that comprises Artificial Neural Networks and Genetic Prograrriming. In contrast to existing series based combination of wind power predictors, whereby the error or variation in the leading predictor is propagated down the stream to the next predictors, the proposed intelligent ensemble predictor avoids this shortcoming by introducing Genetical Programming based semi-stochastic combination of neural networks. It is observed that the decision of the individual base regressors may vary due to the frequent and inherent fluctuations in the atmospheric conditions and thus meteorological properties. The novelty of the reported work lies in creating ensemble to generate an intelligeht, collective and robust decision space and thereby avoiding large errors due to the sensitivity of the individual wind predictors. The proposed ensemble based regressor, Genetic Programming based ensemble Of Artificial Neural Networks, has been implemented and tested on data taken from five different wind farms located in Europe. Obtained numerical results of the proposed model in terms of various error measures are compared with the recent artificial intelligence based strategies to demonstrate the efficacy of the proposed scheme. Average root mean squared error of the proposed model for five wind farms is 0.117575. (C) 2016 Elsevier Ltd. All rights reserved.
机译:风力发电的内在不稳定性导致了来自风力涡轮机的平稳发电的关键问题,这随后需要对风力的准确预测。在这项研究中,提出了一种有效的短期风能预测方法,该方法使用了包含人工神经网络和遗传繁殖的智能集成回归器。与现有的基于序列的风电预测器组合不同,领先的预测器中的误差或变化会向下传播到下一个预测器,因此,所提出的智能整体预测器通过引入基于遗传编程的神经网络半随机组合避免了这一缺点。网络。可以看出,由于大气条件的频繁和固有波动以及因此的气象特性,各个基本回归指标的决定可能会有所不同。所报告工作的新颖性在于创建集合以生成智能,集体和鲁棒的决策空间,从而避免由于各个风向预报器的敏感性而导致的大错误。拟议的基于集合的回归器,即基于遗传编程的人工神经网络集合,已经对来自欧洲五个不同风电场的数据进行了实施和测试。将所获得的模型在各种误差度量方面的数值结果与最近基于人工智能的策略进行比较,以证明所提出的方案的有效性。五个风电场的拟议模型的平均均方根误差为0.117575。 (C)2016 Elsevier Ltd.保留所有权利。

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