AI can forecast the weather in seconds without needing supercomputers

by Admin
AI can forecast the weather in seconds without needing supercomputers

Thunderstorms over Indonesia, seen from the International Space Station

NASA Earth Observatory / International Space Station (ISS)

An AI weather program running for a single second on a desktop can match the accuracy of traditional forecasts that take hours or days on powerful supercomputers, claim its creators.

Weather forecasting has, since the 1950s, relied on physics-based models that extrapolate from observations made using satellites, balloons and weather stations. But these calculations, known as numerical weather prediction (NWP), are extremely intensive and rely on vast, expensive and energy-hungry supercomputers.

In recent years, researchers have tried to streamline this process by applying AI. Google scientists last year created an AI tool that could replace small chunks of complex code in each cell of a weather model, cutting the computer power required dramatically. DeepMind later took this even further and used AI to replace the entire forecast. This approach has been adopted by the European Centre for Medium-Range Weather Forecasts (ECMWF), which launched a tool called the Artificial Intelligence Forecasting System last month.

But this gradual expansion of AI’s role in weather prediction has fallen short of replacing all traditional number-crunching – something a new model created by Richard Turner at the University of Cambridge and his colleagues seeks to change.

Turner says previous work was limited to forecasting, and passed over a step called initialisation, where data from satellites, balloons and weather stations around the world is collated, cleaned, manipulated and merged into an organised grid that the forecast can start from. “That’s actually half the computational resources,” says Turner.

The researchers created a model called Aardvark Weather that, for the first time, replaces both the forecast and initialisation stages. It uses just 10 per cent of the input data that existing systems do, but can achieve results comparable to the latest NWP forecasts, report Turner and his colleagues in a study assessing their method.

Generating a full forecast, which would take hours or even days on a powerful supercomputer for an NWP forecast, can be done in approximately 1 second on a single desktop computer using Aardvark.

However, Aardvark is using a grid model of Earth’s surface with cells that are 1.5 degrees square, while the ECMWF’s ERA5 model uses a grid with cells as small as 0.3 degrees. This means Aardvark’s model is too coarse to pick up on complex and unexpected weather patterns, says David Schultz at the University of Manchester, UK.

“There’s a lot of unresolved things going on that could blow up your forecast,” says Schultz. “They are not representing the extremes at all. They can’t resolve it at this scale.”

Turner argues that Aardvark can actually beat some existing models in picking up unusual events such as cyclones. But he concedes that AI models like his also rely entirely on those physics-based models for training. “It absolutely doesn’t work if you take their training data away and just use the observational data to train off,” he says. “We did try to do that, and go completely physics model-free, but that didn’t work.”

He believes the future of weather forecasting may be scientists working on ever-more accurate physics-based models, which are then used to train AI models that replicate their output faster and with less hardware. Some are even more optimistic about the prospects of AI.

Nikita Gourianov at the University of Oxford believes that, in time, AI will be able to create weather forecasts that actually surpass NWP. These will be trained on observational and historical weather data alone, creating accurate forecasts entirely independent of NWP, he says. “It’s a question of scale, but also a question of cleverness. You have to be clever with how you feed the data in – and how you structure the neural network.”

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