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首页> 外文期刊>Electric Power Components and Systems >Wavelet Neural Network-based Wind-power Forecasting in Economic Dispatch: A Differential Evolution, Bacterial Foraging Technology, and Primal Dual-interior Point Approach
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Wavelet Neural Network-based Wind-power Forecasting in Economic Dispatch: A Differential Evolution, Bacterial Foraging Technology, and Primal Dual-interior Point Approach

机译:基于小波神经网络的经济调度风电预测:差分进化,细菌觅食技术和原始双内点法

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摘要

Wind speed and wind-power generation are characterized by their inherent variability and uncertainty. To overcome this drawback, an accurate prediction of wind speed is essential. The purpose of this paper is to develop a hybrid wavelet neural network model for wind-speed forecasting and thus, in turn, for wind-power generation. The combined optimal economic scheduling of the wind generators and conventional generators has also been investigated in this paper. The solution methods, namely primal dual interior point, differential evolution, and bacterial foraging technology, are used for solving the wind-thermal economic dispatch (ED). The feasibility of the proposed algorithms is demonstrated on three-unit, 13-unit, and 40-unit systems and their performances are compared in terms of the generation cost and execution time. The results show that the proposed algorithms are indeed capable of handling ED problems.
机译:风速和风力发电的特征在于其固有的可变性和不确定性。为了克服这个缺点,准确预测风速至关重要。本文的目的是开发一种混合小波神经网络模型,用于风速预测,进而用于风力发电。本文还研究了风力发电机和常规发电机的组合最优经济调度。解决方法是原始的双重内点,差分进化和细菌觅食技术,用于解决风热经济调度(ED)。在三单元,十三单元和四十单元系统上论证了所提出算法的可行性,并在发电成本和执行时间方面比较了它们的性能。结果表明,所提出的算法确实能够处理ED问题。

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