How does Google’s GenCast AI, which predicts the weather, work?
- December 24, 2024
- Posted by: OptimizeIAS Team
- Category: DPN Topics
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How does Google’s GenCast AI, which predicts the weather, work?
Sub: Sci
Sec: Awareness in IT
Context:
- Google DeepMind introduced GenCast, an advanced AI model designed to improve weather forecasting. According to a paper published in the journal Nature, GenCast outperforms existing models in predicting the weather, offering more accurate forecasts, especially for extreme weather events.
How Does the Weather Forecasting Work?
- Numerical Weather Prediction (NWP):
- Weather forecasts are traditionally made by running multiple simulations of the atmosphere using supercomputers.
- These simulations are based on equations that model the physical laws of nature, but they can only predict the weather accurately for about a week.
- Ensemble forecasting was introduced in the 1990s, where several predictions are made using different starting conditions to account for uncertainty.
How GenCast Performs?
- AI-Driven Ensemble Forecasting:
- Unlike traditional models, GenCast generates forecasts using AI instead of NWP simulations.
- Trained on 40 years of reanalysis data (1979–2019), GenCast provides predictions with greater accuracy than the ECMWF’s ensemble (ENS) model, which is regarded as one of the best in NWP.
- Key Performance Metrics:
- Outperforms ENS on 97.2% of 1,320 targets.
- More accurate than ENS on 99.8% of the targets when predicting weather more than 36 hours in advance.
- Better predictions for extreme weather, tropical cyclones, and wind power production.
How GenCast Works?
- AI Model Structure:
- GenCast uses a neural network with 41,162 nodes and 240,000 edges to process data.
- The model “de-noises” input data through a series of 30 refinements to generate accurate weather predictions.
- This process is similar to how diffusion models work in AI (e.g., generating images or videos).
- The model generates 50+ forecasts simultaneously, each covering 15 days with a 12-hour temporal resolution and spatial resolution of 0.25° x 0.25°.
- Speed:
- GenCast can produce forecasts in 8 minutes using a single TPU v5 unit, a significant improvement over the hours required by supercomputers for traditional NWP.
Will GenCast Replace NWP?
- Probabilistic Forecasts:
- Unlike deterministic NWP models, GenCast provides probabilistic forecasts, such as the chance of rain rather than exact measurements.
- Experts believe probabilistic forecasts are more useful for predicting extreme weather events, offering better preparation time.
- Complementary, Not Replacing NWP:
- While GenCast’s performance shows promise, traditional NWP models remain essential. They provide critical initial weather data and training data for AI models like GenCast.
- Both NWP and GenCast rely on fundamental weather data governed by the laws of physics.
Other AI Models in Development:
- DeepMind is also working on GraphCast for medium-range deterministic forecasts.
- Google Research is developing NeuralGCM to combine AI with NWP for deterministic predictions.
- Other companies, like Huawei and Nvidia, are developing AI models that outperform traditional NWP models in speed and extreme weather prediction.
Source: TH