Analog Forecasting of Extreme‐Causing Weather Patterns Using Deep Learning

Abstract Numerical weather prediction models require ever‐growing computing time and resources but, still, have sometimes difficulties with predicting weather extremes. We introduce a data‐driven framework that is based on analog forecasting (prediction using past similar patterns) and employs a nov...

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Main Authors: Ashesh Chattopadhyay, Ebrahim Nabizadeh, Pedram Hassanzadeh
Format: Article
Language:English
Published: American Geophysical Union (AGU) 2020-02-01
Series:Journal of Advances in Modeling Earth Systems
Subjects:
Online Access:https://doi.org/10.1029/2019MS001958
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spelling doaj-d4eeaa857a9c4084b2f3395359f82eff2020-11-25T02:41:50ZengAmerican Geophysical Union (AGU)Journal of Advances in Modeling Earth Systems1942-24662020-02-01122n/an/a10.1029/2019MS001958Analog Forecasting of Extreme‐Causing Weather Patterns Using Deep LearningAshesh Chattopadhyay0Ebrahim Nabizadeh1Pedram Hassanzadeh2Department of Mechanical Engineering Rice University Houston TX USADepartment of Mechanical Engineering Rice University Houston TX USADepartment of Mechanical Engineering Rice University Houston TX USAAbstract Numerical weather prediction models require ever‐growing computing time and resources but, still, have sometimes difficulties with predicting weather extremes. We introduce a data‐driven framework that is based on analog forecasting (prediction using past similar patterns) and employs a novel deep learning pattern‐recognition technique (capsule neural networks, CapsNets) and an impact‐based autolabeling strategy. Using data from a large‐ensemble fully coupled Earth system model, CapsNets are trained on midtropospheric large‐scale circulation patterns (Z500) labeled 0–4 depending on the existence and geographical region of surface temperature extremes over North America several days ahead. The trained networks predict the occurrence/region of cold or heat waves, only using Z500, with accuracies (recalls) of 69–45% (77–48%) or 62–41% (73–47%) 1–5 days ahead. Using both surface temperature and Z500, accuracies (recalls) with CapsNets increase to ∼80% (88%). In both cases, CapsNets outperform simpler techniques such as convolutional neural networks and logistic regression, and their accuracy is least affected as the size of the training set is reduced. The results show the promises of multivariate data‐driven frameworks for accurate and fast extreme weather predictions, which can potentially augment numerical weather prediction efforts in providing early warnings.https://doi.org/10.1029/2019MS001958extreme weather eventsdeep learninganalog forecastingweather predictiondata‐driven modeling
collection DOAJ
language English
format Article
sources DOAJ
author Ashesh Chattopadhyay
Ebrahim Nabizadeh
Pedram Hassanzadeh
spellingShingle Ashesh Chattopadhyay
Ebrahim Nabizadeh
Pedram Hassanzadeh
Analog Forecasting of Extreme‐Causing Weather Patterns Using Deep Learning
Journal of Advances in Modeling Earth Systems
extreme weather events
deep learning
analog forecasting
weather prediction
data‐driven modeling
author_facet Ashesh Chattopadhyay
Ebrahim Nabizadeh
Pedram Hassanzadeh
author_sort Ashesh Chattopadhyay
title Analog Forecasting of Extreme‐Causing Weather Patterns Using Deep Learning
title_short Analog Forecasting of Extreme‐Causing Weather Patterns Using Deep Learning
title_full Analog Forecasting of Extreme‐Causing Weather Patterns Using Deep Learning
title_fullStr Analog Forecasting of Extreme‐Causing Weather Patterns Using Deep Learning
title_full_unstemmed Analog Forecasting of Extreme‐Causing Weather Patterns Using Deep Learning
title_sort analog forecasting of extreme‐causing weather patterns using deep learning
publisher American Geophysical Union (AGU)
series Journal of Advances in Modeling Earth Systems
issn 1942-2466
publishDate 2020-02-01
description Abstract Numerical weather prediction models require ever‐growing computing time and resources but, still, have sometimes difficulties with predicting weather extremes. We introduce a data‐driven framework that is based on analog forecasting (prediction using past similar patterns) and employs a novel deep learning pattern‐recognition technique (capsule neural networks, CapsNets) and an impact‐based autolabeling strategy. Using data from a large‐ensemble fully coupled Earth system model, CapsNets are trained on midtropospheric large‐scale circulation patterns (Z500) labeled 0–4 depending on the existence and geographical region of surface temperature extremes over North America several days ahead. The trained networks predict the occurrence/region of cold or heat waves, only using Z500, with accuracies (recalls) of 69–45% (77–48%) or 62–41% (73–47%) 1–5 days ahead. Using both surface temperature and Z500, accuracies (recalls) with CapsNets increase to ∼80% (88%). In both cases, CapsNets outperform simpler techniques such as convolutional neural networks and logistic regression, and their accuracy is least affected as the size of the training set is reduced. The results show the promises of multivariate data‐driven frameworks for accurate and fast extreme weather predictions, which can potentially augment numerical weather prediction efforts in providing early warnings.
topic extreme weather events
deep learning
analog forecasting
weather prediction
data‐driven modeling
url https://doi.org/10.1029/2019MS001958
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AT ebrahimnabizadeh analogforecastingofextremecausingweatherpatternsusingdeeplearning
AT pedramhassanzadeh analogforecastingofextremecausingweatherpatternsusingdeeplearning
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