Solar panels train to adapt to wind conditions
Solar energy continues to lead the renewable energy revolution, with photovoltaic solar power plants being a key technology in achieving global NetZero emissions by 2050. These plants convert sunlight into electricity and offer significant potential for generation of clean, renewable energy.
Wind plays a dual role in the efficiency and safety of solar energy systems. On the one hand, wind helps maintain panel performance by clearing debris and cooling surfaces, increasing efficiency. On the other hand, extreme wind events pose structural risks, potentially leading to costly damage and long-term system outages. As solar energy adoption grows, so do insurance claims related to weather-related damage.
In Physics of Fluids, researchers from the Center for Material Forming at PLS University in Sophia Antipolis, France, introduced an innovative numerical decision-making framework to address wind-related risks for solar panels. This solution combines computational fluid dynamics with machine learning to create smarter, adaptive systems.
“By combining advanced fluid dynamics and artificial intelligence, we saw an opportunity to tackle the risks of wind damage in an innovative way and contribute to the resilience of renewable energy systems,” explains Elie Hachem, co-author of the study .
Traditional strategies for mitigating wind damage focus on optimizing driving distance, ground clearance and tilt angles of solar panels. Existing tracking mounts, which rotate panels for optimal sunlight exposure, rely on a stow mode where panels are laid flat to reduce damage during high wind speeds. However, this approach shuts down energy production and offers limited protection against extreme wind gusts.
The team’s framework uses real-time wind simulations and machine learning to optimize the tilt angle of each panel individually, allowing them to respond dynamically to wind conditions. This new approach, which views panels as independent decision makers, minimizes stress and damage while maintaining energy yield and outperforming current safety measures.
“It’s like teaching the panels to dance with the wind, minimizing damage and protecting energy production during high wind speeds,” says Hachem.
This adaptive framework challenges conventional engineering methods and provides a scalable solution for increasing the resilience of solar energy systems. By integrating advanced simulation tools and AI, it sets a new standard for renewable energy systems designed to thrive in extreme weather conditions while contributing to global carbon neutrality goals.
Research report:Combining machine learning and computational fluid dynamics to optimize the tilt angle of solar panels in extreme wind conditions