Evaluation of residential building damage for the July 2021 flood in Westport, New Zealand

被引:0
作者
Ryan Paulik
Alec Wild
Conrad Zorn
Liam Wotherspoon
Shaun Williams
机构
[1] University of Auckland,Department of Civil and Environmental Engineering, Faculty of Engineering
[2] National Institute of Water and Atmospheric Research (NIWA),undefined
[3] Greta Point,undefined
[4] Aon,undefined
[5] National Institute of Water and Atmospheric Research,undefined
来源
Geoscience Letters | / 11卷
关键词
Flood; Damage; Residential building; Univariable model; Multivariable model;
D O I
暂无
中图分类号
学科分类号
摘要
Reliable flood damage models are informed by detailed damage assessments. Damage models are critical in flood risk assessments, representing an elements vulnerability to damage. This study evaluated residential building damage for the July 2021 flood in Westport, New Zealand. We report on flood hazard, exposure and damage features observed for 247 residential buildings. Damage samples were applied to evaluate univariable and multivariable model performance using different variable sample sizes and regression-based supervised learning algorithms. Feature analysis for damage prediction showed high importance of water depth variables and low importance for commonly observed building variables such as structural frame and storeys. Overfitting occurred for most models evaluated when more than 150 samples were used. This resulted from limited damage heterogeneity observed, and variables of low importance affecting model learning. The Random Forest algorithm, which considered multiple important variables (water depth above floor level, area and floor height) improved predictive precision by 17% relative to other models when over 150 damage samples were considered. Our findings suggest the evaluated model performance could be improved by incorporating heterogeneous damage samples from similar flood contexts, in turn increasing capacity for reliable spatial transfer.
引用
收藏
相关论文
共 71 条
[11]  
Di Bacco M(2008)Assessment of damage caused by high groundwater inundation Water Res Resear undefined undefined-undefined
[12]  
Rotello P(2002)Classification and regression by Random Forest R News undefined undefined-undefined
[13]  
Suppasri A(2021)Expert-based versus data-driven flood damage models: a comparative evaluation for data-scarce regions Int J Disaster Risk Reduct undefined undefined-undefined
[14]  
Scorzini AR(2020)A comparison of factors driving flood losses in households affected by different flood types Water Res Resear undefined undefined-undefined
[15]  
Gardner MW(2022)Residential building flood damage: insights on processes and implications for risk assessments J Flood Risk Manag undefined undefined-undefined
[16]  
Dorling SR(2011)Scikit-learn: machine learning in Python J Mach Learn Res undefined undefined-undefined
[17]  
Gerl T(2009)Multilayer perceptron and neural networks WSEAS Trans Circ Syst undefined undefined-undefined
[18]  
Kreibich H(2018)Flood loss estimation using 3D city models and remote sensing data Env Model Soft undefined undefined-undefined
[19]  
Franco G(2017)Flood damage curves: new insights from the 2010 flood in Veneto, Italy J Flood Risk Manag undefined undefined-undefined
[20]  
Marechal D(2018)Regional and temporal transferability of multivariable flood damage models Water Res Resear undefined undefined-undefined