An integration and assessment of multiple covariates of nonstationary storm surge statistical behavior by Bayesian model averaging

<p>Projections of coastal storm surge hazard are a basic requirement for effective management of coastal risks. A common approach for estimating hazards posed by extreme sea levels is to use a statistical model, which may use a time series of a climate variable as a covariate to modulate the s...

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Main Author: T. E. Wong
Format: Article
Language:English
Published: Copernicus Publications 2018-12-01
Series:Advances in Statistical Climatology, Meteorology and Oceanography
Online Access:https://www.adv-stat-clim-meteorol-oceanogr.net/4/53/2018/ascmo-4-53-2018.pdf
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spelling doaj-6546e9238527488a97ce29d97586f6202020-11-25T01:49:35ZengCopernicus PublicationsAdvances in Statistical Climatology, Meteorology and Oceanography2364-35792364-35872018-12-014536310.5194/ascmo-4-53-2018An integration and assessment of multiple covariates of nonstationary storm surge statistical behavior by Bayesian model averagingT. E. Wong0Department of Computer Science, University of Colorado, Boulder, CO 80309, USA<p>Projections of coastal storm surge hazard are a basic requirement for effective management of coastal risks. A common approach for estimating hazards posed by extreme sea levels is to use a statistical model, which may use a time series of a climate variable as a covariate to modulate the statistical model and account for potentially nonstationary storm surge behavior (e.g., North Atlantic Oscillation index). Previous works using nonstationary statistical approaches to assess coastal flood hazard have demonstrated the importance of accounting for many key modeling uncertainties. However, many assessments have typically relied on a single climate covariate, which may leave out important processes and lead to potential biases in the projected flood hazards. Here, I employ a recently developed approach to integrate stationary and nonstationary statistical models, and characterize the effects of choice of covariate time series on projected flood hazard. Furthermore, I expand upon this approach by developing a nonstationary storm surge statistical model that makes use of multiple covariate time series, namely, global mean temperature, sea level, the North Atlantic Oscillation index and time. Using Norfolk, Virginia, as a case study, I show that a storm surge model that accounts for additional processes raises the projected 100-year storm surge return level by up to 23&thinsp;cm relative to a stationary model or one that employs a single covariate time series. I find that the total model posterior probability associated with each candidate covariate, as well as a stationary model, is about 20&thinsp;%. These results shed light on how including a wider range of physical process information and considering nonstationary behavior can better enable modeling efforts to inform coastal risk management.</p>https://www.adv-stat-clim-meteorol-oceanogr.net/4/53/2018/ascmo-4-53-2018.pdf
collection DOAJ
language English
format Article
sources DOAJ
author T. E. Wong
spellingShingle T. E. Wong
An integration and assessment of multiple covariates of nonstationary storm surge statistical behavior by Bayesian model averaging
Advances in Statistical Climatology, Meteorology and Oceanography
author_facet T. E. Wong
author_sort T. E. Wong
title An integration and assessment of multiple covariates of nonstationary storm surge statistical behavior by Bayesian model averaging
title_short An integration and assessment of multiple covariates of nonstationary storm surge statistical behavior by Bayesian model averaging
title_full An integration and assessment of multiple covariates of nonstationary storm surge statistical behavior by Bayesian model averaging
title_fullStr An integration and assessment of multiple covariates of nonstationary storm surge statistical behavior by Bayesian model averaging
title_full_unstemmed An integration and assessment of multiple covariates of nonstationary storm surge statistical behavior by Bayesian model averaging
title_sort integration and assessment of multiple covariates of nonstationary storm surge statistical behavior by bayesian model averaging
publisher Copernicus Publications
series Advances in Statistical Climatology, Meteorology and Oceanography
issn 2364-3579
2364-3587
publishDate 2018-12-01
description <p>Projections of coastal storm surge hazard are a basic requirement for effective management of coastal risks. A common approach for estimating hazards posed by extreme sea levels is to use a statistical model, which may use a time series of a climate variable as a covariate to modulate the statistical model and account for potentially nonstationary storm surge behavior (e.g., North Atlantic Oscillation index). Previous works using nonstationary statistical approaches to assess coastal flood hazard have demonstrated the importance of accounting for many key modeling uncertainties. However, many assessments have typically relied on a single climate covariate, which may leave out important processes and lead to potential biases in the projected flood hazards. Here, I employ a recently developed approach to integrate stationary and nonstationary statistical models, and characterize the effects of choice of covariate time series on projected flood hazard. Furthermore, I expand upon this approach by developing a nonstationary storm surge statistical model that makes use of multiple covariate time series, namely, global mean temperature, sea level, the North Atlantic Oscillation index and time. Using Norfolk, Virginia, as a case study, I show that a storm surge model that accounts for additional processes raises the projected 100-year storm surge return level by up to 23&thinsp;cm relative to a stationary model or one that employs a single covariate time series. I find that the total model posterior probability associated with each candidate covariate, as well as a stationary model, is about 20&thinsp;%. These results shed light on how including a wider range of physical process information and considering nonstationary behavior can better enable modeling efforts to inform coastal risk management.</p>
url https://www.adv-stat-clim-meteorol-oceanogr.net/4/53/2018/ascmo-4-53-2018.pdf
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