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Main Authors: Scott, Andea, Sreedhara, Sindhu, Ayoola, Folasade
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.03188
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author Scott, Andea
Sreedhara, Sindhu
Ayoola, Folasade
author_facet Scott, Andea
Sreedhara, Sindhu
Ayoola, Folasade
contents Reliable forecasts of the power output from variable renewable energy generators like solar photovoltaic systems are important to balancing load on real-time electricity markets and ensuring electricity supply reliability. However, solar PV power output is highly uncertain, with significant variations occurring over both longer (daily or seasonally) and shorter (within minutes) timescales due to weather conditions, especially cloud cover. This paper builds on existing work that uses convolutional neural networks in the computer vision task of predicting (in a Nowcast model) and forecasting (in a Forecast model) solar PV power output (Stanford EAO SUNSET Model). A pure transformer architecture followed by a fully-connected layer is applied to one year of image data with experiments run on various combinations of learning rate and batch size. We find that the transformer architecture performs almost as well as the baseline model in the PV output prediction task. However, it performs worse on sunny days.
format Preprint
id arxiv_https___arxiv_org_abs_2505_03188
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Transformers Applied to Short-term Solar PV Power Output Forecasting
Scott, Andea
Sreedhara, Sindhu
Ayoola, Folasade
Computational Engineering, Finance, and Science
Reliable forecasts of the power output from variable renewable energy generators like solar photovoltaic systems are important to balancing load on real-time electricity markets and ensuring electricity supply reliability. However, solar PV power output is highly uncertain, with significant variations occurring over both longer (daily or seasonally) and shorter (within minutes) timescales due to weather conditions, especially cloud cover. This paper builds on existing work that uses convolutional neural networks in the computer vision task of predicting (in a Nowcast model) and forecasting (in a Forecast model) solar PV power output (Stanford EAO SUNSET Model). A pure transformer architecture followed by a fully-connected layer is applied to one year of image data with experiments run on various combinations of learning rate and batch size. We find that the transformer architecture performs almost as well as the baseline model in the PV output prediction task. However, it performs worse on sunny days.
title Transformers Applied to Short-term Solar PV Power Output Forecasting
topic Computational Engineering, Finance, and Science
url https://arxiv.org/abs/2505.03188