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Wind speed forecasting using deep neural network with feature selection

机译:具有特征选择的深神经网络风速预测

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With the rapid growth of wind power penetration into modern power grids, wind speed forecasting (WSF) becomes an increasing important task in the planning and operation of electric power and energy systems. However, WSF is quite challengeable due to its highly varying and complex features. In this paper, a novel hybrid deep neural network forecasting method is constituted. A feature selection method based on mutual information is developed in the WSF problem. With the real-time big data from the wind farm running log, the deep neural network model for WSF is established using a stacked denoising auto-encoder and long short-term memory network. The effectiveness of the deep neural network is evaluated by 10-minutes-ahead WSF. Comparing with the traditional multi-layer perceptron network, conventional long short-term memory network and stacked auto-encoder, the resulting deep neural network significantly improves the forecasting accuracy. (C) 2020 Elsevier B.V. All rights reserved.
机译:随着风力渗透到现代电网的快速增长,风速预测(WSF)成为电力和能源系统规划和运行中的越来越重要的任务。然而,由于其高度变化和复杂的特征,WSF是非常挑战的。本文构成了一种新型混合深神经网络预测方法。基于互信息的特征选择方法在WSF问题中开发。利用来自风电场运行日志的实时大数据,使用堆叠的去噪自动编码器和长短期内存网络来建立WSF的深神经网络模型。深神经网络的有效性由前方10分钟的WSF评估。与传统的多层Perceptron网络相比,传统的长短期内存网络和堆叠自动编码器,所产生的深度神经网络显着提高了预测精度。 (c)2020 Elsevier B.v.保留所有权利。

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