Modelling and simulating spatial extremes by combining extreme value
theory with generative adversarial networks
- URL: http://arxiv.org/abs/2111.00267v1
- Date: Sat, 30 Oct 2021 15:05:43 GMT
- Title: Modelling and simulating spatial extremes by combining extreme value
theory with generative adversarial networks
- Authors: Younes Boulaguiem, Jakob Zscheischler, Edoardo Vignotto, Karin van der
Wiel and Sebastian Engelke
- Abstract summary: In statistics, extreme value theory is often used to model spatial extremes.
Here we combine GANs with extreme value theory (evtGAN) to model spatial dependencies in summer maxima of temperature and winter maxima in precipitation.
Our results show that evtGAN outperforms classical GANs and standard statistical approaches to model spatial extremes.
- Score: 0.1469945565246172
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Modelling dependencies between climate extremes is important for climate risk
assessment, for instance when allocating emergency management funds. In
statistics, multivariate extreme value theory is often used to model spatial
extremes. However, most commonly used approaches require strong assumptions and
are either too simplistic or over-parametrised. From a machine learning
perspective, Generative Adversarial Networks (GANs) are a powerful tool to
model dependencies in high-dimensional spaces. Yet in the standard setting,
GANs do not well represent dependencies in the extremes. Here we combine GANs
with extreme value theory (evtGAN) to model spatial dependencies in summer
maxima of temperature and winter maxima in precipitation over a large part of
western Europe. We use data from a stationary 2000-year climate model
simulation to validate the approach and explore its sensitivity to small sample
sizes. Our results show that evtGAN outperforms classical GANs and standard
statistical approaches to model spatial extremes. Already with about 50 years
of data, which corresponds to commonly available climate records, we obtain
reasonably good performance. In general, dependencies between temperature
extremes are better captured than dependencies between precipitation extremes
due to the high spatial coherence in temperature fields. Our approach can be
applied to other climate variables and can be used to emulate climate models
when running very long simulations to determine dependencies in the extremes is
deemed infeasible.
Related papers
- Causal Representation Learning in Temporal Data via Single-Parent Decoding [66.34294989334728]
Scientific research often seeks to understand the causal structure underlying high-level variables in a system.
Scientists typically collect low-level measurements, such as geographically distributed temperature readings.
We propose a differentiable method, Causal Discovery with Single-parent Decoding, that simultaneously learns the underlying latents and a causal graph over them.
arXiv Detail & Related papers (2024-10-09T15:57:50Z) - MambaDS: Near-Surface Meteorological Field Downscaling with Topography Constrained Selective State Space Modeling [68.69647625472464]
Downscaling, a crucial task in meteorological forecasting, enables the reconstruction of high-resolution meteorological states for target regions.
Previous downscaling methods lacked tailored designs for meteorology and encountered structural limitations.
We propose a novel model called MambaDS, which enhances the utilization of multivariable correlations and topography information.
arXiv Detail & Related papers (2024-08-20T13:45:49Z) - Generating High-Resolution Regional Precipitation Using Conditional
Diffusion Model [7.784934642915291]
This paper presents a deep generative model for downscaling climate data, specifically precipitation on a regional scale.
We employ a denoising diffusion probabilistic model conditioned on multiple LR climate variables.
Our results demonstrate significant improvements over existing baselines, underscoring the effectiveness of the conditional diffusion model in downscaling climate data.
arXiv Detail & Related papers (2023-12-12T09:39:52Z) - Combining deep generative models with extreme value theory for synthetic
hazard simulation: a multivariate and spatially coherent approach [0.0]
Generative adversarial networks (GANs) are well-suited to such a problem due to their ability to implicitly learn the distribution of data in high-dimensional settings.
We employ a GAN to model the dependence structure for daily maximum wind speed, significant wave height, and total precipitation over the Bay of Bengal.
Once trained, the model can be used to efficiently generate thousands of realistic compound hazard events.
arXiv Detail & Related papers (2023-11-30T12:55:51Z) - ClimaX: A foundation model for weather and climate [51.208269971019504]
ClimaX is a deep learning model for weather and climate science.
It can be pre-trained with a self-supervised learning objective on climate datasets.
It can be fine-tuned to address a breadth of climate and weather tasks.
arXiv Detail & Related papers (2023-01-24T23:19:01Z) - Spatiotemporal modeling of European paleoclimate using doubly sparse
Gaussian processes [61.31361524229248]
We build on recent scale sparsetemporal GPs to reduce the computational burden.
We successfully employ such a doubly sparse GP to construct a probabilistic model of paleoclimate.
arXiv Detail & Related papers (2022-11-15T14:15:04Z) - Contrastive Learning for Climate Model Bias Correction and
Super-Resolution [0.0]
Post-processing is needed to make accurate estimates of local climate risk.
Here we propose an alternative approach to this challenge based on a combination of image super resolution (SR) and contrastive learning generative adversarial networks (GANs)
We find that our model successfully reaches a spatial resolution double that of NASA's product while also achieving comparable or improved levels of bias correction in both daily precipitation and temperature.
arXiv Detail & Related papers (2022-11-10T19:45:17Z) - Loosely Conditioned Emulation of Global Climate Models With Generative
Adversarial Networks [2.937141232326068]
We train two "loosely conditioned" Generative Adversarial Networks (GANs) that emulate daily precipitation output from a fully coupled Earth system model.
GANs are trained to producetemporal samples: 32 days of precipitation over a 64x128 regular grid discretizing the globe.
Our trained GANs can rapidly generate numerous realizations at a vastly reduced computational expense.
arXiv Detail & Related papers (2021-04-29T02:10:08Z) - DeepClimGAN: A High-Resolution Climate Data Generator [60.59639064716545]
Earth system models (ESMs) are often used to generate future projections of climate change scenarios.
As a compromise, emulators are substantially less expensive but may not have all of the complexity of an ESM.
Here we demonstrate the use of a conditional generative adversarial network (GAN) to act as an ESM emulator.
arXiv Detail & Related papers (2020-11-23T20:13:37Z) - Autoregressive Score Matching [113.4502004812927]
We propose autoregressive conditional score models (AR-CSM) where we parameterize the joint distribution in terms of the derivatives of univariable log-conditionals (scores)
For AR-CSM models, this divergence between data and model distributions can be computed and optimized efficiently, requiring no expensive sampling or adversarial training.
We show with extensive experimental results that it can be applied to density estimation on synthetic data, image generation, image denoising, and training latent variable models with implicit encoders.
arXiv Detail & Related papers (2020-10-24T07:01:24Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.