Vahid Nourani, Nazanin Behfar, Anne Ng, Chunwei Zhang, Fahreddin Sadikoglu
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引用次数: 0
摘要
本研究以每小时为单位,对伊朗和美国六个站点的太阳辐照度进行建模。我们探索了两种季节性情感人工神经网络(EANN):序列人工神经网络(SEANN)和小波人工神经网络(WEANN)。通过分析十年的气候和太阳数据,我们利用基于人工神经网络(ANN)的引导法计算出的预测区间(PIs)评估了不确定性。与独立的 EANNs 不同,所提出的季节模型有效地捕捉了季节信息,并充分利用了时间序列处理的优势。利用小波变换和傅立叶变换,这些模型捕捉到了太阳辐照度的长短自回归依赖关系,解决了扩展的季节依赖关系问题。结果表明,在训练和测试中,季节性 EANN 模型的性能比经典 EANN 模型高出约 15%,比经典前馈神经网络(FFNN)高出约 25%。WEANN 模型在 PI 方面表现最佳,平均归一化平均 PI 宽度 (NMPIW) 为 0.8,平均 PI 覆盖概率 (PICP) 为 0.96。
Application of wavelet and seasonal-based emotional ANN (EANN) models to predict solar irradiance
This study models solar irradiance at six stations in Iran and the USA on an hourly scale. We explored two seasonal emotional artificial neural networks (EANN): sequence-EANN (SEANN) and wavelet EANN (WEANN). Analyzing ten years of climatic and solar data, we evaluated uncertainty using prediction intervals (PIs) computed via the bootstrap method based on artificial neural networks (ANNs). Unlike standalone EANNs, the proposed seasonal models effectively captured seasonal information and leveraged time series processing advantages. Utilizing Wavelet and Fourier transforms, these models captured long-short autoregressive dependencies in solar irradiance, addressing extended seasonal dependencies. Results showed that the seasonal EANN models outperformed the classic EANN model by approximately 15 % and the classic feed-forward neural network (FFNN) by about 25 % in both training and testing. The WEANN model demonstrated the highest performance in PIs, with an average normalized mean PI width (NMPIW) of 0.8 and an average PI coverage probability (PICP) of 0.96.
期刊介绍:
Energy Reports is a new online multidisciplinary open access journal which focuses on publishing new research in the area of Energy with a rapid review and publication time. Energy Reports will be open to direct submissions and also to submissions from other Elsevier Energy journals, whose Editors have determined that Energy Reports would be a better fit.