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May 27, 2025

Rapid nanoparticle simulations could boost efforts to combat air pollution

Credit: Journal of Computational Âé¶¹ÒùÔºics (2025). DOI: 10.1016/j.jcp.2025.114034
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Credit: Journal of Computational Âé¶¹ÒùÔºics (2025). DOI: 10.1016/j.jcp.2025.114034

A pioneering method to simulate how nanoparticles move through the air could boost efforts to combat air pollution, suggests in the Journal of Computational Âé¶¹ÒùÔºics.

Tiny particles found in exhaust fumes, wildfire smoke and other forms of airborne pollution are linked with serious health conditions such as stroke, and cancer, but predicting how they move is notoriously difficult, researchers say.

Now, scientists have developed a new computer modeling approach that dramatically improves the accuracy and efficiency of simulating how nanoparticles behave in the air. In practice, this could mean simulations that can currently take weeks to run could be completed in a matter of hours, the team says.

Better understanding the behavior of these particles—which are small enough to bypass the body's natural defenses—could lead to more precise ways of monitoring air pollution, researchers say.

Using the UK's national supercomputer ARCHER2, researchers from the Universities of Edinburgh and Warwick have created a method that allows a key factor governing how particles travel—known as the —to be calculated up to 4,000 times faster than existing techniques.

At the heart of the team's approach is a new way of modeling the way air flows around nanoparticles. It involves a mathematical solution based on how air disturbances caused by nanoparticles fade with distance. When applied to the simulation, researchers can zoom in much closer to particles without compromising accuracy. This differs from current methods, which involve simulating vast regions of surrounding air to mimic undisturbed air flow and require far more computing power, the team says.

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By enabling fast and precise simulations at the nanoscale, the new approach could help better predict how these particles will behave inside the body, the team says.

As well as potentially aiding the development of improved monitoring tools, the advance could also inform the design of nanoparticle-based technologies, such as lab-made particles for targeted , the team adds.

Lead author Dr. Giorgos Tatsios, of the University of Edinburgh's School of Engineering, said, "Airborne particles in the nanoscale range are some of the most harmful to —but also the hardest to model. Our method allows us to simulate their behavior in complex flows far more efficiently, which is crucial for understanding where they go and how to mitigate their effects."

Professor Duncan Lockerby, of the University of Warwick's School of Engineering, added, "This approach could unlock new levels of accuracy in modeling how toxic particles move through the air—from city streets to human lungs—as well as how they behave in advanced sensors and cleanroom environments."

More information: Giorgos Tatsios et al, A far-field boundary condition for measuring drag force on micro/nano particles, Journal of Computational Âé¶¹ÒùÔºics (2025).

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A new computational method enables simulation of airborne nanoparticle movement up to 4,000 times faster than previous techniques by efficiently modeling drag force and air flow at the nanoscale. This advance allows for more accurate and rapid predictions of particle behavior, supporting improved air pollution monitoring and the development of nanoparticle-based technologies.

This summary was automatically generated using LLM.