Generative emulation of weather forecast ensembles with diffusion models.

Lizao Li, Robert Carver, Ignacio Lopez-Gomez, Fei Sha, John Anderson
Author Information
  1. Lizao Li: Google Research, Mountain View, CA, USA. ORCID
  2. Robert Carver: Google Research, Mountain View, CA, USA. ORCID
  3. Ignacio Lopez-Gomez: Google Research, Mountain View, CA, USA. ORCID
  4. Fei Sha: Google Research, Mountain View, CA, USA. ORCID
  5. John Anderson: Google Research, Mountain View, CA, USA.

Abstract

Uncertainty quantification is crucial to decision-making. A prominent example is probabilistic forecasting in numerical weather prediction. The dominant approach to representing uncertainty in weather forecasting is to generate an ensemble of forecasts by running physics-based simulations under different conditions, which is a computationally costly process. We propose to amortize the computational cost by emulating these forecasts with deep generative diffusion models learned from historical data. The learned models are highly scalable with respect to high-performance computing accelerators and can sample thousands of realistic weather forecasts at low cost. When designed to emulate operational ensemble forecasts, the generated ones are similar to physics-based ensembles in statistical properties and predictive skill. When designed to correct biases present in the operational forecasting system, the generated ensembles show improved probabilistic forecast metrics. They are more reliable and forecast probabilities of extreme weather events more accurately. While we focus on weather forecasting, this methodology may enable creating large climate projection ensembles for climate risk assessment.

References

  1. Philos Trans A Math Phys Eng Sci. 2021 Apr 5;379(2194):20200092 [PMID: 33583263]
  2. Nat Commun. 2023 Apr 14;14(1):2145 [PMID: 37059735]
  3. Nature. 2022 Aug;608(7923):464-465 [PMID: 35927493]
  4. Philos Trans A Math Phys Eng Sci. 2011 Dec 13;369(1956):4751-67 [PMID: 22042896]
  5. Nat Commun. 2023 Aug 22;14(1):4643 [PMID: 37607932]
  6. Nature. 2015 Sep 3;525(7567):47-55 [PMID: 26333465]
  7. Proc Natl Acad Sci U S A. 2021 Feb 23;118(8): [PMID: 33597296]
  8. J Adv Model Earth Syst. 2022 Oct;14(10):e2022MS003120 [PMID: 36590321]

Word Cloud

Created with Highcharts 10.0.0weatherforecastingforecastsensemblesmodelsforecastprobabilisticensemblephysics-basedcostdiffusionlearneddesignedoperationalgeneratedclimateUncertaintyquantificationcrucialdecision-makingprominentexamplenumericalpredictiondominantapproachrepresentinguncertaintygeneraterunningsimulationsdifferentconditionscomputationallycostlyprocessproposeamortizecomputationalemulatingdeepgenerativehistoricaldatahighlyscalablerespecthigh-performancecomputingacceleratorscansamplethousandsrealisticlowemulateonessimilarstatisticalpropertiespredictiveskillcorrectbiasespresentsystemshowimprovedmetricsreliableprobabilitiesextremeeventsaccuratelyfocusmethodologymayenablecreatinglargeprojectionriskassessmentGenerativeemulation

Similar Articles

Cited By (3)