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New method predicts extreme weather events more accurately

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Overview of proposed framework for parameterizing precipitation. (A) Coarse-graining the high-resolution data. (B) Baseline-NN architecture: This network receives coarse-scale variables (e.g., SST and PW) as input and predicts coarse-scale precipitation. (C). Org-NN architecture: The Left panel shows the autoencoder that receives the high-resolution PW as input and reconstructs it after passing it through a bottleneck. The Right panel shows the neural network that predicts coarse-scale precipitation. The input to this network is the coarse-scale variables (as for the baseline network) as well as org extracted from the autoencoder. The two blocks are trained simultaneously. Credit: Proceedings of the National Academy of Sciences (2023). DOI: 10.1073/pnas.2216158120

With the rise of extreme weather events, which are becoming more frequent in our warming climate, accurate predictions are becoming more critical for all of us, from farmers to city-dwellers to businesses around the world. To date, climate models have failed to accurately predict precipitation intensity, particularly extremes. While in nature, precipitation can be very varied, with many extremes of precipitation, climate models predict a smaller variance in precipitation with a bias toward light rain.

Researchers have been working to develop algorithms that will improve prediction accuracy but, as Columbia Engineering climate scientists report, there has been a missing piece of information in traditional climate model parameterizations—a way to describe cloud structure and organization that is so fine-scale it is not captured on the computational grid being used.

These organization measurements affect predictions of both precipitation intensity and its stochasticity, the variability of random fluctuations in precipitation intensity. Up to now, there has not been an effective, accurate way to measure cloud structure and quantify its impact.

A new study from a team led by Pierre Gentine, director of the Learning the Earth with Artificial Intelligence and Physics (LEAP) Center, used global storm-resolving simulations and machine learning to create an algorithm that can deal separately with two different scales of cloud organization: those resolved by a climate model, and those that cannot be resolved as they are too small.

This new approach addresses the missing piece of information in traditional climate model parameterizations and provides a way to predict precipitation intensity and variability more precisely.

“Our findings are especially exciting because, for many years, the scientific community has debated whether to include cloud organization in climate models,” said Gentine, Maurice Ewing and J. Lamar Worzel Professor of Geophysics in the Departments of Earth and Environmental Engineering and Earth Environmental Sciences and a member of the Data Science Institute.

“Our work provides an answer to the debate and a novel solution for including organization, showing that including this information can significantly improve our prediction of precipitation intensity and variability.”

Using AI to design neural network algorithm

Sarah Shamekh, a Ph.D. student working with Gentine, developed a neural network algorithm that learns the relevant information about the role of fine-scale cloud organization (unresolved scales) on precipitation. Because Shamekh did not define a metric or formula in advance, the model learns implicitly—on its own—how to measure the clustering of clouds, a metric of organization, and then uses this metric to improve the prediction of precipitation. Shamekh trained the algorithm on a high-resolution moisture field, encoding the degree of small-scale organization.

“We discovered that our organization metric explains precipitation variability almost entirely and could replace a stochastic parameterization in climate models,” said Shamekh, lead author of the study, published by PNAS. “Including this information significantly improved precipitation prediction at the scale relevant to climate models, accurately predicting precipitation extremes and spatial variability.”

Machine-learning algorithm will improve future projections

The researchers are now using their machine-learning approach, which implicitly learns the sub-grid cloud organization metric, in climate models. This should significantly improve the prediction of precipitation intensity and variability, including extreme precipitation events, and enable scientists to better project future changes in the water cycle and extreme weather patterns in a warming climate.

This research also opens up new avenues for investigation, such as exploring the possibility of precipitation creating memory, where the atmosphere retains information about recent weather conditions, which in turn influences atmospheric conditions later on, in the climate system. This new approach could have wide-ranging applications beyond just precipitation modeling, including better modeling of the ice sheet and ocean surface.

More information:
Sara Shamekh et al, Implicit learning of convective organization explains precipitation stochasticity, Proceedings of the National Academy of Sciences (2023). DOI: 10.1073/pnas.2216158120

Provided by
Columbia University School of Engineering and Applied Science


Citation:
New method predicts extreme weather events more accurately (2023, May 24)
retrieved 24 May 2023
from https://phys.org/news/2023-05-method-extreme-weather-events-accurately.html

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.




New method predicts extreme events more accurately
Overview of proposed framework for parameterizing precipitation. (A) Coarse-graining the high-resolution data. (B) Baseline-NN architecture: This network receives coarse-scale variables (e.g., SST and PW) as input and predicts coarse-scale precipitation. (C). Org-NN architecture: The Left panel shows the autoencoder that receives the high-resolution PW as input and reconstructs it after passing it through a bottleneck. The Right panel shows the neural network that predicts coarse-scale precipitation. The input to this network is the coarse-scale variables (as for the baseline network) as well as org extracted from the autoencoder. The two blocks are trained simultaneously. Credit: Proceedings of the National Academy of Sciences (2023). DOI: 10.1073/pnas.2216158120

With the rise of extreme weather events, which are becoming more frequent in our warming climate, accurate predictions are becoming more critical for all of us, from farmers to city-dwellers to businesses around the world. To date, climate models have failed to accurately predict precipitation intensity, particularly extremes. While in nature, precipitation can be very varied, with many extremes of precipitation, climate models predict a smaller variance in precipitation with a bias toward light rain.

Researchers have been working to develop algorithms that will improve prediction accuracy but, as Columbia Engineering climate scientists report, there has been a missing piece of information in traditional climate model parameterizations—a way to describe cloud structure and organization that is so fine-scale it is not captured on the computational grid being used.

These organization measurements affect predictions of both precipitation intensity and its stochasticity, the variability of random fluctuations in precipitation intensity. Up to now, there has not been an effective, accurate way to measure cloud structure and quantify its impact.

A new study from a team led by Pierre Gentine, director of the Learning the Earth with Artificial Intelligence and Physics (LEAP) Center, used global storm-resolving simulations and machine learning to create an algorithm that can deal separately with two different scales of cloud organization: those resolved by a climate model, and those that cannot be resolved as they are too small.

This new approach addresses the missing piece of information in traditional climate model parameterizations and provides a way to predict precipitation intensity and variability more precisely.

“Our findings are especially exciting because, for many years, the scientific community has debated whether to include cloud organization in climate models,” said Gentine, Maurice Ewing and J. Lamar Worzel Professor of Geophysics in the Departments of Earth and Environmental Engineering and Earth Environmental Sciences and a member of the Data Science Institute.

“Our work provides an answer to the debate and a novel solution for including organization, showing that including this information can significantly improve our prediction of precipitation intensity and variability.”

Using AI to design neural network algorithm

Sarah Shamekh, a Ph.D. student working with Gentine, developed a neural network algorithm that learns the relevant information about the role of fine-scale cloud organization (unresolved scales) on precipitation. Because Shamekh did not define a metric or formula in advance, the model learns implicitly—on its own—how to measure the clustering of clouds, a metric of organization, and then uses this metric to improve the prediction of precipitation. Shamekh trained the algorithm on a high-resolution moisture field, encoding the degree of small-scale organization.

“We discovered that our organization metric explains precipitation variability almost entirely and could replace a stochastic parameterization in climate models,” said Shamekh, lead author of the study, published by PNAS. “Including this information significantly improved precipitation prediction at the scale relevant to climate models, accurately predicting precipitation extremes and spatial variability.”

Machine-learning algorithm will improve future projections

The researchers are now using their machine-learning approach, which implicitly learns the sub-grid cloud organization metric, in climate models. This should significantly improve the prediction of precipitation intensity and variability, including extreme precipitation events, and enable scientists to better project future changes in the water cycle and extreme weather patterns in a warming climate.

This research also opens up new avenues for investigation, such as exploring the possibility of precipitation creating memory, where the atmosphere retains information about recent weather conditions, which in turn influences atmospheric conditions later on, in the climate system. This new approach could have wide-ranging applications beyond just precipitation modeling, including better modeling of the ice sheet and ocean surface.

More information:
Sara Shamekh et al, Implicit learning of convective organization explains precipitation stochasticity, Proceedings of the National Academy of Sciences (2023). DOI: 10.1073/pnas.2216158120

Provided by
Columbia University School of Engineering and Applied Science


Citation:
New method predicts extreme weather events more accurately (2023, May 24)
retrieved 24 May 2023
from https://phys.org/news/2023-05-method-extreme-weather-events-accurately.html

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.

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