A Bayesian network approach to modelling rip-current drownings and shore-break wave injuries

<p>A Bayesian network (BN) approach is used to model and predict shore-break-related injuries and rip-current drowning incidents based on detailed environmental conditions (wave, tide, weather, beach morphology) on the high-energy Gironde coast, southwest France. Six years (2011–2017) of borea...

Full description

Bibliographic Details
Main Authors: E. de Korte, B. Castelle, E. Tellier
Format: Article
Language:English
Published: Copernicus Publications 2021-07-01
Series:Natural Hazards and Earth System Sciences
Online Access:https://nhess.copernicus.org/articles/21/2075/2021/nhess-21-2075-2021.pdf
id doaj-f70e5ce752e74e4792bdf2d7c114eb13
record_format Article
spelling doaj-f70e5ce752e74e4792bdf2d7c114eb132021-07-09T07:53:09ZengCopernicus PublicationsNatural Hazards and Earth System Sciences1561-86331684-99812021-07-01212075209110.5194/nhess-21-2075-2021A Bayesian network approach to modelling rip-current drownings and shore-break wave injuriesE. de Korte0E. de Korte1B. Castelle2B. Castelle3E. Tellier4E. Tellier5E. Tellier6Faculty of Geosciences, Utrecht University, Utrecht, the NetherlandsDepartment of Applied Mathematics, TU Delft, Delft, the NetherlandsCNRS, UMR EPOC, Pessac, FranceUniv. Bordeaux, UMR EPOC, Pessac, FranceINSERM, ISPED, Centre INSERM U1219 Bordeaux Population Health Research, Bordeaux, FranceUniv. Bordeaux, ISPED, Centre INSERM U1219 Bordeaux Population Health Research, Bordeaux, FrancePôle Urgences Adultes, CHU de Bordeaux, SAMU-SMUR, Bordeaux, France<p>A Bayesian network (BN) approach is used to model and predict shore-break-related injuries and rip-current drowning incidents based on detailed environmental conditions (wave, tide, weather, beach morphology) on the high-energy Gironde coast, southwest France. Six years (2011–2017) of boreal summer (15 June–15 September) surf zone injuries (SZIs) were analysed, comprising 442 (fatal and non-fatal) drownings caused by rip currents and 715 injuries caused by shore-break waves. Environmental conditions at the time of the SZIs were used to train two separate Bayesian networks (BNs), one for rip-current drownings and the other one for shore-break wave injuries. Each BN included two so-called “hidden” exposure and hazard variables, which are not observed yet interact with several of the observed (environmental) variables, which in turn limit the number of BN edges. Both BNs were tested for varying complexity using <span class="inline-formula"><i>K</i></span>-fold cross-validation based on multiple performance metrics. Results show a poor to fair predictive ability of the models according to the different metrics. Shore-break-related injuries appear more predictable than rip-current drowning incidents using the selected predictors within a BN, as the shore-break BN systematically performed better than the rip-current BN. Sensitivity and scenario analyses were performed to address the influence of environmental data variables and their interactions on exposure, hazard and resulting life risk. Most of our findings are in line with earlier SZI and physical hazard-based work; that is, more SZIs are observed for warm sunny days with light winds; long-period waves, with specifically more shore-break-related injuries at high tide and for steep beach profiles; and more rip-current drownings near low tide with near-shore-normal wave incidence and strongly alongshore non-uniform surf zone morphology. The BNs also provided fresh insight, showing that rip-current drowning risk is approximately equally distributed between exposure (variance reduction <span class="inline-formula">Vr=14.4</span> %) and hazard (<span class="inline-formula">Vr=17.4</span> %), while exposure of water user to shore-break waves is much more important (<span class="inline-formula">Vr=23.5</span> %) than the hazard (<span class="inline-formula">Vr=10.9</span> %). Large surf is found to decrease beachgoer exposure to shore-break hazard, while this is not observed for rip currents. Rapid change in tide elevation during days with large tidal range was also found to result in more drowning incidents. We advocate that such BNs, providing a better understanding of hazard, exposure and life risk, can be developed to improve public safety awareness campaigns, in parallel with the development of more skilful risk predictors to anticipate high-life-risk days.</p>https://nhess.copernicus.org/articles/21/2075/2021/nhess-21-2075-2021.pdf
collection DOAJ
language English
format Article
sources DOAJ
author E. de Korte
E. de Korte
B. Castelle
B. Castelle
E. Tellier
E. Tellier
E. Tellier
spellingShingle E. de Korte
E. de Korte
B. Castelle
B. Castelle
E. Tellier
E. Tellier
E. Tellier
A Bayesian network approach to modelling rip-current drownings and shore-break wave injuries
Natural Hazards and Earth System Sciences
author_facet E. de Korte
E. de Korte
B. Castelle
B. Castelle
E. Tellier
E. Tellier
E. Tellier
author_sort E. de Korte
title A Bayesian network approach to modelling rip-current drownings and shore-break wave injuries
title_short A Bayesian network approach to modelling rip-current drownings and shore-break wave injuries
title_full A Bayesian network approach to modelling rip-current drownings and shore-break wave injuries
title_fullStr A Bayesian network approach to modelling rip-current drownings and shore-break wave injuries
title_full_unstemmed A Bayesian network approach to modelling rip-current drownings and shore-break wave injuries
title_sort bayesian network approach to modelling rip-current drownings and shore-break wave injuries
publisher Copernicus Publications
series Natural Hazards and Earth System Sciences
issn 1561-8633
1684-9981
publishDate 2021-07-01
description <p>A Bayesian network (BN) approach is used to model and predict shore-break-related injuries and rip-current drowning incidents based on detailed environmental conditions (wave, tide, weather, beach morphology) on the high-energy Gironde coast, southwest France. Six years (2011–2017) of boreal summer (15 June–15 September) surf zone injuries (SZIs) were analysed, comprising 442 (fatal and non-fatal) drownings caused by rip currents and 715 injuries caused by shore-break waves. Environmental conditions at the time of the SZIs were used to train two separate Bayesian networks (BNs), one for rip-current drownings and the other one for shore-break wave injuries. Each BN included two so-called “hidden” exposure and hazard variables, which are not observed yet interact with several of the observed (environmental) variables, which in turn limit the number of BN edges. Both BNs were tested for varying complexity using <span class="inline-formula"><i>K</i></span>-fold cross-validation based on multiple performance metrics. Results show a poor to fair predictive ability of the models according to the different metrics. Shore-break-related injuries appear more predictable than rip-current drowning incidents using the selected predictors within a BN, as the shore-break BN systematically performed better than the rip-current BN. Sensitivity and scenario analyses were performed to address the influence of environmental data variables and their interactions on exposure, hazard and resulting life risk. Most of our findings are in line with earlier SZI and physical hazard-based work; that is, more SZIs are observed for warm sunny days with light winds; long-period waves, with specifically more shore-break-related injuries at high tide and for steep beach profiles; and more rip-current drownings near low tide with near-shore-normal wave incidence and strongly alongshore non-uniform surf zone morphology. The BNs also provided fresh insight, showing that rip-current drowning risk is approximately equally distributed between exposure (variance reduction <span class="inline-formula">Vr=14.4</span> %) and hazard (<span class="inline-formula">Vr=17.4</span> %), while exposure of water user to shore-break waves is much more important (<span class="inline-formula">Vr=23.5</span> %) than the hazard (<span class="inline-formula">Vr=10.9</span> %). Large surf is found to decrease beachgoer exposure to shore-break hazard, while this is not observed for rip currents. Rapid change in tide elevation during days with large tidal range was also found to result in more drowning incidents. We advocate that such BNs, providing a better understanding of hazard, exposure and life risk, can be developed to improve public safety awareness campaigns, in parallel with the development of more skilful risk predictors to anticipate high-life-risk days.</p>
url https://nhess.copernicus.org/articles/21/2075/2021/nhess-21-2075-2021.pdf
work_keys_str_mv AT edekorte abayesiannetworkapproachtomodellingripcurrentdrowningsandshorebreakwaveinjuries
AT edekorte abayesiannetworkapproachtomodellingripcurrentdrowningsandshorebreakwaveinjuries
AT bcastelle abayesiannetworkapproachtomodellingripcurrentdrowningsandshorebreakwaveinjuries
AT bcastelle abayesiannetworkapproachtomodellingripcurrentdrowningsandshorebreakwaveinjuries
AT etellier abayesiannetworkapproachtomodellingripcurrentdrowningsandshorebreakwaveinjuries
AT etellier abayesiannetworkapproachtomodellingripcurrentdrowningsandshorebreakwaveinjuries
AT etellier abayesiannetworkapproachtomodellingripcurrentdrowningsandshorebreakwaveinjuries
AT edekorte bayesiannetworkapproachtomodellingripcurrentdrowningsandshorebreakwaveinjuries
AT edekorte bayesiannetworkapproachtomodellingripcurrentdrowningsandshorebreakwaveinjuries
AT bcastelle bayesiannetworkapproachtomodellingripcurrentdrowningsandshorebreakwaveinjuries
AT bcastelle bayesiannetworkapproachtomodellingripcurrentdrowningsandshorebreakwaveinjuries
AT etellier bayesiannetworkapproachtomodellingripcurrentdrowningsandshorebreakwaveinjuries
AT etellier bayesiannetworkapproachtomodellingripcurrentdrowningsandshorebreakwaveinjuries
AT etellier bayesiannetworkapproachtomodellingripcurrentdrowningsandshorebreakwaveinjuries
_version_ 1721311574054928384