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Title: Do Machine Learning Approaches Offer Skill Improvement for Short-Term Forecasting of Wind Gust Occurrence and Magnitude?

Journal Article · · Weather and Forecasting

Abstract Wind gusts, and in particular intense gusts, are societally relevant but extremely challenging to forecast. This study systematically assesses the skill enhancement that can be achieved using artificial neural networks (ANNs) for forecasting of wind gust occurrence and magnitude. Geophysical predictors from the ERA5 reanalysis are used in conjunction with an autoregressive term in regression and ANN models with different predictors, and varying model complexity. Models are derived and assessed for the warm (April–September) and cold (October–March) seasons for three high passenger volume airports in the United States. Model uncertainty is assessed by deriving models for 1000 different randomly selected training (70%) and testing (30%) subsets. Gust prediction fidelity in independent test samples is critically dependent on inclusion of an autoregressive term. Gust occurrence probabilities derived using five-layer ANNs exhibit consistently higher fidelity than those from regression models and shallower ANNs. Inclusion of the autoregressive term and increasing the number of hidden layers in ANNs from 1 to 5 also improve the model performance for gust magnitudes (lower RMSE, increased correlation, and model standard deviations that more closely approximate observed values). Deeper ANNs (e.g., 20 hidden layers) exhibit higher skill in forecasting strong (17–25.7 m s −1 ) and damaging (≥25.7 m s −1 ) wind gusts. However, such deep networks exhibit evidence of overfitting and still substantially underestimate (by 50%) the frequency of strong and damaging wind gusts at the three airports considered herein. Significance Statement Improved short-term forecasting of wind gusts will enhance aviation safety and logistics and may offer other societal benefits. Here we present a rigorous investigation of the relative skill of models of wind gust occurrence and magnitude that employ different statistical methods. It is shown that artificial neural networks (ANNs) offer considerable skill enhancement over regression methods, particularly for strong and damaging wind gusts. For wind gust magnitudes in particular, application of deeper learning networks (e.g., five or more hidden layers) offers tangible improvements in forecast accuracy. However, deeper networks are vulnerable to overfitting and exhibit substantial variability with the specific training and testing data subset used. Also, even deep ANNs reproduce only half of strong and damaging wind gusts. These results indicate the need for future work to elucidate the dynamical mechanisms of intense wind gusts and advance solutions to their prediction.

Sponsoring Organization:
USDOE
Grant/Contract Number:
NONE; SC0016605
OSTI ID:
1865488
Journal Information:
Weather and Forecasting, Journal Name: Weather and Forecasting Journal Issue: 5 Vol. 37; ISSN 0882-8156
Publisher:
American Meteorological SocietyCopyright Statement
Country of Publication:
United States
Language:
English

References (65)

Subsynoptic-scale features associated with extreme surface gusts in UK extratropical cyclone events: Extreme Wind Features in UK Cyclones journal April 2017
Wind-gust parametrizations at heights relevant for wind energy: a study based on mast observations journal January 2013
The ERA5 global reanalysis journal June 2020
A Review of High Impact Weather for Aviation Meteorology journal May 2019
Near-surface mean and gust wind speeds in ERA5 across Sweden: towards an improved gust parametrization journal May 2020
Wind speed prediction using statistical regression and neural network journal August 2008
Comparison of short-term rainfall prediction models for real-time flood forecasting journal December 2000
Vulnerability of buildings to windstorms and insurance loss estimation journal March 2003
Forecasting wind with neural networks journal January 2003
A neural networks approach for wind speed prediction journal March 1998
Artificial neural networks (the multilayer perceptron)—a review of applications in the atmospheric sciences journal August 1998
Wind damage propagation in forests journal December 2015
Agent-based modelling of wind damage processes and patterns in forests journal April 2019
On comparing three artificial neural networks for wind speed forecasting journal July 2010
A machine-learning algorithm for wind gust prediction journal September 2011
Very short-term wind speed prediction: A new artificial neural network–Markov chain model journal January 2011
Analysis of airport weather impact on on-time performance of arrival flights for the Brazilian domestic air transportation system journal March 2021
Observed gust wind speeds in the coterminous United States, and their relationship to local and regional drivers journal February 2018
A new gust parameterization for weather prediction models journal June 2018
A probabilistic approach for short-term prediction of wind gust speed using ensemble learning journal July 2020
A two-stage model for time series prediction based on fuzzy cognitive maps and neural networks journal April 2017
Multi-step forecasting for wind speed using a modified EMD-based artificial neural network model journal January 2012
An improved neural network-based approach for short-term wind speed and power forecast journal May 2017
Summarizing multiple aspects of model performance in a single diagram journal April 2001
Using Machine Learning to Parameterize Moist Convection: Potential for Modeling of Climate, Climate Change, and Extreme Events journal October 2018
Sensitivity of Blocks and Cyclones in ERA5 to Spatial Resolution and Definition journal April 2020
Physically Interpretable Neural Networks for the Geosciences: Applications to Earth System Variability journal August 2020
Severe convection-related winds in Australia and their associated environments journal January 2021
Extreme value statistics and wind storm losses: A case study journal January 1997
Short term wind speed prediction using artificial neural networks conference April 2014
Collinearity: a review of methods to deal with it and a simulation study evaluating their performance journal May 2012
Risk Assessment of Road Vehicles Under Wind Gust Excitation journal August 2020
Projections of Wind Gusts for New York City Under a Changing Climate
  • Comarazamy, Daniel; González-Cruz, Jorge E.; Andreopoulos, Yiannis
  • ASME Journal of Engineering for Sustainable Buildings and Cities, Vol. 1, Issue 3 https://doi.org/10.1115/1.4048059
journal August 2020
The Potential Impact of Climate Change on Oat Lodging in the UK and Republic of Ireland journal January 2020
Wind Measurement and Archival under the Automated Surface Observing System (ASOS): User Concerns and Opportunity for Improvement journal April 1993
Development and Application of a Physical Approach to Estimating Wind Gusts journal January 2001
Statistical Modeling of Downslope Windstorms in Boulder, Colorado journal December 2008
Visualizing Multiple Measures of Forecast Quality journal April 2009
Neural Network Classifiers for Local Wind Prediction journal May 2004
Making the Black Box More Transparent: Understanding the Physical Implications of Machine Learning journal November 2019
From Atmospheric Dynamics to Insurance Losses: An Interdisciplinary Workshop on European Storms journal June 2019
Intense and Extreme Wind Speeds Observed by Anemometer and Seismic Networks: An Eastern U.S. Case Study* journal November 2014
The Paths of Extratropical Cyclones Associated with Wintertime High-Wind Events in the Northeastern United States journal September 2015
Climatology of Severe Local Storm Environments and Synoptic-Scale Features over North America in ERA5 Reanalysis and CAM6 Simulation journal October 2020
Probabilistic Wind Gust Forecasting Using Nonhomogeneous Gaussian Regression journal February 2012
Evaluating Mesoscale NWP Models Using Kinetic Energy Spectra journal December 2004
Environments of Northeast U.S. Severe Thunderstorm Events from 1999 to 2009 journal February 2014
Climatology and Ensemble Predictions of Nonconvective High Wind Events in the New York City Metropolitan Region journal April 2015
Machine Learning for Real-Time Prediction of Damaging Straight-Line Convective Wind journal December 2017
Vulnerability to wind hazards in the traditional city of Ibadan, Nigeria journal October 2012
Weather Impact on Airport Performance journal October 2018
Extreme Wind and Waves in U.S. East Coast Offshore Wind Energy Lease Areas journal February 2021
Wind Speed Prediction Using a Univariate ARIMA Model and a Multivariate NARX Model journal February 2016
The 2017 North Bay and Southern California Fires: A Case Study journal June 2018
Winds and Gusts during the Thomas Fire journal November 2018
Wind Gust Measurement Techniques—From Traditional Anemometry to New Possibilities journal April 2018
Wind gust estimation for Mid-European winter storms: towards a probabilistic view journal February 2012
Modeling the contributions of global air temperature, synoptic-scale phenomena and soil moisture to near-surface static energy variability using artificial neural networks journal January 2017
From ERA-Interim to ERA5: the considerable impact of ECMWF's next-generation reanalysis on Lagrangian transport simulations journal January 2019
Characterizing wind gusts in complex terrain journal January 2019
Current gust forecasting techniques, developments and challenges journal January 2018
The making of the New European Wind Atlas – Part 1: Model sensitivity journal January 2020
The XWS open access catalogue of extreme European windstorms from 1979 to 2012 journal January 2014
Intense windstorms in the northeastern United States journal January 2021
Statistical postprocessing of ensemble forecasts for severe weather at Deutscher Wetterdienst journal January 2020

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