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.
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Univ Auckland, Sch Populat Hlth, Social & Community Hlth, Auckland, New Zealand
Univ Auckland, Sch Populat Hlth, Social & Community Hlth, Private Bag 92019, Auckland 1142, New ZealandUniv Auckland, Sch Populat Hlth, Social & Community Hlth, Auckland, New Zealand
Gerritsen, Sarah
Kidd, Bruce
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Univ Auckland, Natl Inst Hlth Innovat, Auckland, New ZealandUniv Auckland, Sch Populat Hlth, Social & Community Hlth, Auckland, New Zealand
Kidd, Bruce
Rosin, Magda
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Univ Auckland, Sch Populat Hlth, Auckland, New ZealandUniv Auckland, Sch Populat Hlth, Social & Community Hlth, Auckland, New Zealand
Rosin, Magda
Shen, Stephanie
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Univ Auckland, Natl Inst Hlth Innovat, Auckland, New ZealandUniv Auckland, Sch Populat Hlth, Social & Community Hlth, Auckland, New Zealand
Shen, Stephanie
Mackay, Sally
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Univ Auckland, Sch Populat Hlth, Epidemiol & Biostat, Auckland, New ZealandUniv Auckland, Sch Populat Hlth, Social & Community Hlth, Auckland, New Zealand
Mackay, Sally
Te Morenga, Lisa
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Massey Univ, Res Ctr Hauora & Hlth, Wellington, New ZealandUniv Auckland, Sch Populat Hlth, Social & Community Hlth, Auckland, New Zealand
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AgResearch, Adopt & Practice Change, 10 Bisley Rd, Hamilton 3214, New ZealandAgResearch, Farms Syst & Environm, 10 Bisley Rd, Hamilton 3214, New Zealand
Percy, Helen
Bortagaray, Isabel
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Inst Nacl Invest Agr INIA, Innovat & Commun Management, Edificio Guayabos Parque Tecnol LATU, Ave Italia 6201, Montevideo 11500, Uruguay
Univ Republica, Inst Desarrollo Sostenible, Innovac Inclus Social IDIIS, Montevideo, UruguayAgResearch, Farms Syst & Environm, 10 Bisley Rd, Hamilton 3214, New Zealand
Bortagaray, Isabel
Chams, Nour
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Parc Mediterrani Tecnol, Ctr Agrofood Econ & Dev CREDA UPC IRTA, Edif ESAB, Barcelona 08860, Spain
Univ Ramon Llull, IQS Sch Management Via Augusta 390, Barcelona 08017, SpainAgResearch, Farms Syst & Environm, 10 Bisley Rd, Hamilton 3214, New Zealand
Chams, Nour
Milne, Cath
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Formerly SRUC, Peter Wilson Bldg,West Mains Rd, Edinburgh EH9 3JG, ScotlandAgResearch, Farms Syst & Environm, 10 Bisley Rd, Hamilton 3214, New Zealand