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Multi-reservoir echo state computing for solar irradiance prediction: A fast yet efficient deep learning approach

机译:太阳辐照度预测的多储层回声状态计算:快速且有效的深度学习方法

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Accurate solar irradiance prediction plays an important role in renewable energy systems. Based on time series analysis, a serially connected multi-reservoir echo state network (MR-ESN) is developed to predict solar irradiance. MR-ESN is a fast yet efficient approach, which makes use of the high efficiency of ESN and the advantages of deep learning. MR-ESN consists of multiple reservoirs in series, which are responsible for encoding the input signals into a richer state representation. The time series analysis is adopted to provide more appropriate input and output for MR-ESN. Various prediction horizons including one-hour-ahead and multi-hour-ahead prediction are conducted, respectively. The effect of reservoir layer number on the MR-ESN performance is explored in detail. Three internal qualitative indicators are adopted to investigate the performance differences of MR-ESN, i.e., probability distribution, correlation analysis, and principal component analysis (PCA) of network states. Simulation results demonstrate that MR-ESN outperforms than traditional ESN, backpropagation (BP) and Elman neural networks. (C) 2020 Elsevier B.V. All rights reserved.
机译:精确的太阳辐照度预测在可再生能源系统中起着重要作用。基于时间序列分析,开发了一种串联的多储层回波状态网络(MR-ESN)以预测太阳辐照度。 MR-ESN是一种快速且有效的方法,它利用了高效率的ESN和深度学习的优势。 MR-ESN由串联的多个水库组成,该载体负责将输入信号编码为更丰富的状态表示。采用时间序列分析为MR-ESN提供更合适的输入和输出。分别进行各种预测视野,分别进行了一小时和多时预测。详细探讨了储层层数对MR-ESN性能的影响。采用了三个内部定性指标来研究网络状态的MR-ESN,即概率分布,相关性分析和主成分分析(PCA)的性能差异。仿真结果表明,MR-ESN优于传统ESN,BROWPROMAGAGAGE(BP)和ELMAN神经网络。 (c)2020 Elsevier B.V.保留所有权利。

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