Using historical tropical cyclone climate datasets to examine wind speed recurrence for coastal Australia
Abstract Likelihood estimates of extreme winds, including those from tropical cyclones (TCs) at certain locations are used to inform wind load standards for structural design. Here, wind speed average recurrence intervals (ARIs) determined from TC climate data dating back to the 1970s in two quantil...
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Nature Portfolio
2022-07-01
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Series: | Scientific Reports |
Online Access: | https://doi.org/10.1038/s41598-022-14842-2 |
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author | S. S. Bell A. J. Dowdy H. A. Ramsay S. S. Chand C-H Su H. Ye |
author_facet | S. S. Bell A. J. Dowdy H. A. Ramsay S. S. Chand C-H Su H. Ye |
author_sort | S. S. Bell |
collection | DOAJ |
description | Abstract Likelihood estimates of extreme winds, including those from tropical cyclones (TCs) at certain locations are used to inform wind load standards for structural design. Here, wind speed average recurrence intervals (ARIs) determined from TC climate data dating back to the 1970s in two quantile–quantile adjusted reanalysis datasets (ERA5 and BARRA [1990]), and best-track observations for context, were compared with Standardized ARIs (AS/NZS) across seven tropical and two subtropical Australian inland coastal regions. The novelty of this work lies in determining TC-wind speed ARIs from a range of datasets that are not typically used to evaluate this metric. Inherent differences between the data used to determine the Standard ARIs (large sample size allow for larger extrapolations; GEV function) and TC data ARIs (smaller sample size and less certain data; the more asymptotic Lognormal/Weibull functions are used) led to the use of different extreme value functions. Results indicated that although these are two distinct ways of determining design wind speeds, when they are considered equivalent, there was a moderate reproduction of the ARI curves with respect to the Standard in both reanalysis datasets, suggesting that similar analyses using climate model products can provide useful information on these types of metrics with some caveats. Trends in TC wind strength affecting coastal Australia were also analyzed, indicating a potential slight downtrend in tropical West coast TC wind strength and slight uptrend for tropical East coast TC wind strength, noting considerable uncertainty given the short time period and limitations of data quality including over longer time periods. Such trends are not only limited to the relationship between TC intensity and anthropogenic warming, but also to regional changes in TC frequency and track direction. This could lead to significant trends emerging in regional Australian TC wind gust strength before several decades of warming have occurred. It is hoped that climate models can provide both longer-term and a more homogenous base for these types of evaluations and subsequent projections with respect to climate change simulations. |
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spelling | doaj.art-0d4030e3f93a4ef198adabfdc8b89a572022-12-22T02:44:04ZengNature PortfolioScientific Reports2045-23222022-07-0112111310.1038/s41598-022-14842-2Using historical tropical cyclone climate datasets to examine wind speed recurrence for coastal AustraliaS. S. Bell0A. J. Dowdy1H. A. Ramsay2S. S. Chand3C-H Su4H. Ye5Bureau of MeteorologyBureau of MeteorologyCSIRO Oceans and AtmosphereSchool of Engineering, IT and Physical Sciences, Federation UniversityBureau of MeteorologyBureau of MeteorologyAbstract Likelihood estimates of extreme winds, including those from tropical cyclones (TCs) at certain locations are used to inform wind load standards for structural design. Here, wind speed average recurrence intervals (ARIs) determined from TC climate data dating back to the 1970s in two quantile–quantile adjusted reanalysis datasets (ERA5 and BARRA [1990]), and best-track observations for context, were compared with Standardized ARIs (AS/NZS) across seven tropical and two subtropical Australian inland coastal regions. The novelty of this work lies in determining TC-wind speed ARIs from a range of datasets that are not typically used to evaluate this metric. Inherent differences between the data used to determine the Standard ARIs (large sample size allow for larger extrapolations; GEV function) and TC data ARIs (smaller sample size and less certain data; the more asymptotic Lognormal/Weibull functions are used) led to the use of different extreme value functions. Results indicated that although these are two distinct ways of determining design wind speeds, when they are considered equivalent, there was a moderate reproduction of the ARI curves with respect to the Standard in both reanalysis datasets, suggesting that similar analyses using climate model products can provide useful information on these types of metrics with some caveats. Trends in TC wind strength affecting coastal Australia were also analyzed, indicating a potential slight downtrend in tropical West coast TC wind strength and slight uptrend for tropical East coast TC wind strength, noting considerable uncertainty given the short time period and limitations of data quality including over longer time periods. Such trends are not only limited to the relationship between TC intensity and anthropogenic warming, but also to regional changes in TC frequency and track direction. This could lead to significant trends emerging in regional Australian TC wind gust strength before several decades of warming have occurred. It is hoped that climate models can provide both longer-term and a more homogenous base for these types of evaluations and subsequent projections with respect to climate change simulations.https://doi.org/10.1038/s41598-022-14842-2 |
spellingShingle | S. S. Bell A. J. Dowdy H. A. Ramsay S. S. Chand C-H Su H. Ye Using historical tropical cyclone climate datasets to examine wind speed recurrence for coastal Australia Scientific Reports |
title | Using historical tropical cyclone climate datasets to examine wind speed recurrence for coastal Australia |
title_full | Using historical tropical cyclone climate datasets to examine wind speed recurrence for coastal Australia |
title_fullStr | Using historical tropical cyclone climate datasets to examine wind speed recurrence for coastal Australia |
title_full_unstemmed | Using historical tropical cyclone climate datasets to examine wind speed recurrence for coastal Australia |
title_short | Using historical tropical cyclone climate datasets to examine wind speed recurrence for coastal Australia |
title_sort | using historical tropical cyclone climate datasets to examine wind speed recurrence for coastal australia |
url | https://doi.org/10.1038/s41598-022-14842-2 |
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