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A Hybrid Framework for Short Term Multi-Step Wind Speed Forecasting Based on Variational Model Decomposition and Convolutional Neural Network

机译:基于变分模型分解和卷积神经网络的短期短期多步风速预测混合框架

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摘要

Wind speed is an important factor in wind power generation. Wind speed forecasting is complicated due to its highly nonstationary character. Therefore, this paper presents a hybrid framework for the development of multi-step wind speed forecasting based on variational model decomposition and convolutional neural networks. In the first step of signal pre-processing, the variational model decomposition approach decomposes the wind speed data into several independent modes under different center pulsation. The vibrations of decomposed modes are useful for accurate wind speed forecasting. Then, the influence of different numbers of modes and the input length of the convolutional neural network are discussed to select the optimal value through calculating the errors. During the regression step, each mode is treated as a channel that constitutes the input of the forecasting model. The convolution operations in convolutional neural networks extract helpful local features in each mode and the relationships between modes for forecasting. We take advantage of the convolutional neural network and directly output multi-step forecasting results. In order to show the forecasting and generalization performance of the proposed method, wind seed data from two wind farms in Inner Mongolia, China and Sotavento Galicia, Spain with different statistical information were employed. Some classic statistical approaches were adopted for comparison. The experimental results show the satisfactory performance for all of the methods in single-step forecasting and the advantages of using decomposed modes. The root mean squared errors range from 0.79 m/s to 1.64 m/s for all of the methods. In the case of multi-step forecasting, our proposed method achieves an outstanding improvement compared with the other methods. The root mean squared error of our proposed method was 1.30 m/s while the worst performance of the other methods was 9.68 m/s. The proposed method is able to directly predict the variation trend of wind speed based on historical data with minor errors. Hence, the proposed forecasting schemes can be utilized for wind speed multi-step forecasting to cost-effectively manage wind power generation.
机译:风速是风力发电的重要因素。由于其高度不稳定的性格,风速预测很复杂。因此,本文介绍了基于变分模型分解和卷积神经网络的多步风速预测的混合框架。在信号预处理的第一步中,变分模型分解方法将风速数据分解为不同中心脉冲下的几种独立模式。分解模式的振动可用于精确的风速预测。然后,讨论了不同数量的模式和卷积神经网络的输入长度的影响以通过计算错误来选择最佳值。在回归步骤中,每个模式被视为构成预测模型的输入的信道。卷积神经网络中的卷积操作提取每个模式中的有用的本地特征和预测模式之间的关系。我们利用卷积神经网络,直接输出多步预测结果。为了展示所提出的方法的预测和泛化性能,从内蒙古,中国和Sotavento Galicia的两个风电场的风子数据采用了不同统计信息的西班牙。采用一些经典的统计方法进行比较。实验结果表明了对单步预测中的所有方法的令人满意的性能和使用分解模式的优点。对于所有方法,根部平均平方误差范围为0.79米/秒至1.64米/秒。在多步骤预测的情况下,与其他方法相比,我们所提出的方法实现了出色的改进。我们所提出的方法的根均方误差为1.30米/秒,而其他方法的最差性能为9.68米/秒。该方法能够基于具有轻微误差的历史数据直接预测风速的变化趋势。因此,建议的预测方案可用于风速多步预测,以进行成本有效地管理风力发电。

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