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A novel transfer learning approach for wind power prediction based on a serio-parallel deep learning architecture

机译:一种基于串行平行深度学习架构的风电预测的新型转移学习方法

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摘要

Although machine learning methods have been widely applied in the wind power prediction field, they are not suitable for building the prediction model of a new-built wind farm because of no sufficient historical data. In this study, a novel deep transfer learning approach is proposed for addressing the few-shot learning problem in multi-step ahead wind power prediction. In the pre-training stage, several convolutional neural networks (CNNs) in parallel are separately connected to the long short-term memory network (LSTM), thus forming a unique serio-parallel CNNs-LSTM (CL) feature extractor. The CL utilizes the CNNs and LSTM to extract both the meteorological and temporal feature information of the neighboring wind farms for facilitating the prediction modeling of the source wind farm. In the transfer-training stage, a transfer strategy is designed to transfer partial network parameters of a well-trained CL feature extractor to construct the prediction model of the target wind farm. In addition, a personalized-training strategy is implemented by using crisscross optimization (CSO) to retrain the parameters of fully-connected layer. The proposed method is validated on a swarm of wind farms located in China and the experimental results show its obvious superiority over the non-transfer models involved in this study. (c) 2021 Elsevier Ltd. All rights reserved.
机译:虽然机器学习方法已广泛应用于风电预测场,但由于没有足够的历史数据,它们不适合构建新建风电场的预测模型。在这项研究中,提出了一种新的深度转移学习方法,用于解决多步前风力预测中的几次射击学习问题。在预训练阶段,并联的若干卷积神经网络(CNNS)分别连接到长短期存储器网络(LSTM),从而形成唯一的串行链式CNNS-LSTM(CL)特征提取器。 CL利用CNN和LSTM来提取邻近风电场的气象和时间特征信息,以便于源风电场的预测建模。在转移训练阶段,设计转移策略以传送训练良好的CL特征提取器的部分网络参数来构建目标风电场的预测模型。此外,通过使用Crosscross优化(CSO)来恢复完全连接层的参数来实现个性化培训策略。拟议的方法在位于中国的一群风电场上验证,实验结果表明,对本研究中涉及的非转移模型的明显优势。 (c)2021 elestvier有限公司保留所有权利。

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