Tech

New computer model could make using solar power more reliable

Share
Share
New computer model could make using solar power more reliable
Schematic of the sky images for the two data sets under different weather conditions. Credit: Applied Energy (2024). DOI: 10.1016/j.apenergy.2024.124353

Researchers at the University of Nottingham have created an AI model that allows them to accurately predict the amount of solar energy that can be created in different climates, making grid integration easier in the UK.

Solar energy now contributes almost six percent of the UK’s energy, with this predicted to double over the next five years. This makes the UK’s climate, particularly the amount of consistent cloud cover, a challenge for the generation of solar power.

Solar forecasting, and the ability to predict how much sunlight a certain area might receive, has therefore become more important, prompting researchers in the Faculty of Engineering to find new ways of making this process more reliable.

As a novel approach, researchers have used very-short-term (VST) solar energy forecasting, using ground-based fisheye images, which has proven effective in predicting rapid and accurate changes in solar irradiance, especially for fast-changing local cloud movements.

To address varied geographical and climatic conditions, the researchers showed that a model initially trained in California’s sunny climate can effectively predict solar output in Nottingham, known for its humid and rainy conditions. The findings are published in the journal Applied Energy.

The approach significantly cut down the amount of local data needed to make accurate forecasts—from four months’ worth to just two weeks.

Liwenbo Zhang, a Postdoctoral Research Fellow from the University of Nottingham, said, “This breakthrough could make it much faster and easier to predict solar energy output in new locations, helping to balance energy grids and integrate solar power more efficiently.

“It means that solar forecasting can be more adaptable to diverse climates, which is crucial as we aim to rely more on renewable energy sources globally,” said Zhang.

In using data from other locations, the researchers hope that a model trained in a region with stable sunlight can be adapted for an area with more unpredictable sunlight, like Nottingham, and be beneficial for future energy targets.

More information:
Liwenbo Zhang et al, Transfer learning in very-short-term solar forecasting: Bridging single site data to diverse geographical applications, Applied Energy (2024). DOI: 10.1016/j.apenergy.2024.124353

Provided by
University of Nottingham

Citation:
New computer model could make using solar power more reliable (2024, November 21)
retrieved 21 November 2024
from

This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no
part may be reproduced without the written permission. The content is provided for information purposes only.

Share

Leave a comment

Leave a Reply

Your email address will not be published. Required fields are marked *

Related Articles
Researchers train AI to detect foreign interference online
Tech

Researchers train AI to detect foreign interference online

Credit: CC0 Public Domain Modern technologies like social media are making it...

Google’s AI-powered bug hunting tool finds a host of concerning open source security flaws
Tech

Google’s AI-powered bug hunting tool finds a host of concerning open source security flaws

Google’s OSS-Fuzz finds more than two dozen vulnerabilities in different open-source projects...

Apple just confirmed its annual Black Friday shopping event, and it’s all about gift cards
Tech

Apple just confirmed its annual Black Friday shopping event, and it’s all about gift cards

Like clockwork, Apple’s confirmed it’s Black Friday Shopping event Starting November 29,...

Protective coating significantly extends perovskite solar cell life
Tech

Protective coating significantly extends perovskite solar cell life

Yi Yang, the study’s first author, tests a sample of the team’s...