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Title: Photovoltaic output potential assessment via transformer-based solar forecasting and rooftop segmentation methods
Authors: Gong, Y
Guo, Z 
Li, X
Shi, X
Lin, Z 
Zhang, H
Yan, J 
Issue Date: 2023
Source: Energy proceedings, 2023, v. 36, https://doi.org/10.46855/energy-proceedings-10805
Abstract: Given the escalating carbon emission crisis, there is an urgent need for large-scale adoption of renewable energy generation to replace traditional fossil fuel-based energy generation for a smooth energy transition. In this regard, distributed photovoltaic power generation plays a crucial role. Predicting the GHI in advance to predict the power of photovoltaic power generation has become one of the methods to solve the grid-connected stability in recent years, which enables the grid staff to dispatch and plan in advance through the forecast results, reduce fluctuations, and maintain grid stability. In this study, we present a deep learning-based method to assess photovoltaic output potential by solar irradiance forecasting and rooftop segmentation. First, we utilize a multivariate input Transformer model that incorporates various data to predict GHI; Second, using remote sensing images to train Swin-Transformer to identify the potential area of rooftop photovoltaic panel; Finally, the potential assessment was achieved by calculating the array output through the GHI and area data we generated in the first two parts. Our evaluation methodology and results provide technical support for the transition of energy structure.
Keywords: Deep learning
Photovoltaic potential
Renewable energy
Segmentation
Solar forecasting
Publisher: Scanditale AB
Journal: Energy proceedings 
ISSN: 2004-2965
DOI: 10.46855/energy-proceedings-10805
Description: 9th Applied Energy Symposium: Low Carbon Cities and Urban Energy Systems (CUE2023), Sep. 2-7, 2023, Matsue & Tokyo, Japan
Rights: Copyright for all published articles within Energy Proceedings are retained to its credited authors. All peer-reviewed research article under publication in Energy Proceedings will be licensed under an open access following Creative Commons Attribution-NonCommercial-NoDerivs (CC BY-NC-ND) (see https://creativecommons.org/licenses/by/4.0/). It means for non-commercial purposes, anyone may use, process, and distribute the article (or part of it) if the author is credited. The article will not be altered or modified while the author(s) are credited.
The following publication Gong, Y., Guo, Z., Li, X., Shi, X., Lin, Z., Zhang, H., & Yan, J. (2023). Photovoltaic Output Potential Assessment via Transformer-based Solar Forecasting and Rooftop Segmentation Methods. Energy Proceedings, 36 is available at https://doi.org/10.46855/energy-proceedings-10805.
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