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An improved neural network-based approach for short-term wind speed and power forecast

机译:改进的基于神经网络的短期风速和功率预测方法

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Accurate forecasts of wind speed and wind power generation are essential for the effective operation of a wind farm. This paper presents an improved radial basis function neural network-based model with an error feedback scheme (IRBFNN-EF) for forecasting short-term wind speed and power of a wind farm, where an additional shape factor is included in the classic Gaussian basis function associated with each neuron in the hidden layer and a simple parameter initialization method is proposed to effectively find initial values of two key parameters of the basis fiinction when performing neural network training. A wind farm near central Taiwan area connected to Taipower system is served, as the measurement target. Provided with 24 h of input data at 10-min resolution (i.e. 6 x 24 input time steps) for training the proposed neural network, a look-ahead time up to 72 h (i.e. 6 x 72 forecasted output time steps) have been performed. Test cases for different months over 2014 are reported. Results obtained by the proposed model are compared with those obtained by four other artificial neural network-based forecasting methods. It shows that the proposed model leads to better accuracy for forecasting wind speed and wind power while the computational efficiency is maintained. (C) 2016 Elsevier Ltd. All rights reserved.
机译:准确预测风速和风力发电对于风电场的有效运行至关重要。本文提出了一种改进的基于径向基函数神经网络的模型,该模型具有误差反馈方案(IRBFNN-EF),可用于预测风电场的短期风速和功率,经典的高斯基函数中还包含其他形状因子提出了一种与隐藏层中的每个神经元相关联的简单参数初始化方法,以在进行神经网络训练时有效地找到基础功能的两个关键参数的初始值。台湾中部地区附近与台电系统相连的风电场被用作测量目标。以10分钟的分辨率提供24小时的输入数据(即6 x 24个输入时间步长)以训练拟议的神经网络,已经执行了长达72小时的预见时间(即6 x 72个预测的输出时间步长)。 。报告了2014年不同月份的测试用例。通过该模型获得的结果与通过其他四种基于人工神经网络的预测方法获得的结果进行了比较。结果表明,所提出的模型在保持计算效率的同时,可以更好地预测风速和风能。 (C)2016 Elsevier Ltd.保留所有权利。

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