Day-ahead regional solar power forecasting with hierarchical temporal convolutional neural networks using historical power generation and weather data
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DOI: 10.1016/j.apenergy.2024.122971
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- Jia, Min & Zhang, Zhe & Zhang, Li & Zhao, Liang & Lu, Xinbo & Li, Linyan & Ruan, Jianhui & Wu, Yunlong & He, Zhuoming & Liu, Mei & Jiang, Lingling & Gao, Yajing & Wu, Pengcheng & Zhu, Shuying & Niu, M, 2024. "Optimization of electricity generation and assessment of provincial grid emission factors from 2020 to 2060 in China," Applied Energy, Elsevier, vol. 373(C).
- Sahar Zargarzadeh & Aditya Ramnarayan & Felipe de Castro & Michael Ohadi, 2024. "ML-Enabled Solar PV Electricity Generation Projection for a Large Academic Campus to Reduce Onsite CO 2 Emissions," Energies, MDPI, vol. 17(23), pages 1-29, December.
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Keywords
Solar photovoltaic power forecasting; Regional solar forecasting; Hierarchical time series; Convolutional neural networks; Dilated temporal convolutional neural networks;All these keywords.
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