Spatial Sensitivity of River Flooding to Changes in Climate and Land Cover Through Explainable AI

Author:

Slater Louise1ORCID,Coxon Gemma2ORCID,Brunner Manuela345ORCID,McMillan Hilary6ORCID,Yu Le789ORCID,Zheng Yanchen2ORCID,Khouakhi Abdou10ORCID,Moulds Simon111ORCID,Berghuijs Wouter12ORCID

Affiliation:

1. School of Geography and the Environment University of Oxford Oxford UK

2. School of Geographical Sciences University of Bristol Bristol UK

3. WSL Institute for Snow and Avalanche Research SLF Davos Dorf Switzerland

4. Institute for Atmospheric and Climate Science ETH Zurich Zurich Switzerland

5. Climate Change Extremes and Natural Hazards in Alpine Regions Research Center CERC Davos Dorf Switzerland

6. Department of Geography San Diego State University San Diego CA USA

7. Department of Earth System Science Ministry of Education Key Laboratory for Earth System Modeling Institute for Global Change Studies Tsinghua University Beijing China

8. Ministry of Education Ecological Field Station for East Asian Migratory Birds Beijing China

9. Department of Earth System Science Xi'an Institute of Surveying and Mapping Joint Research Center for Next‐Generation Smart Mapping Tsinghua University Beijing China

10. School of Water, Energy and Environment Centre for Environmental and Agricultural Informatics Cranfield University Cranfield UK

11. School of Geo Sciences University of Edinburgh Edinburgh UK

12. Department of Earth Sciences Free University Amsterdam Amsterdam The Netherlands

Abstract

AbstractExplaining the spatially variable impacts of flood‐generating mechanisms is a longstanding challenge in hydrology, with increasing and decreasing temporal flood trends often found in close regional proximity. Here, we develop a machine learning‐informed approach to unravel the drivers of seasonal flood magnitude and explain the spatial variability of their effects in a temperate climate. We employ 11 observed meteorological and land cover (LC) time series variables alongside 8 static catchment attributes to model flood magnitude in 1,268 catchments across Great Britain over four decades. We then perform a sensitivity analysis to assess how a 10% increase in precipitation, a 1°C rise in air temperature, or a 10 percentage point increase in urban or forest LC may affect flood magnitude in catchments with varying characteristics. Our simulations show that increasing precipitation and urbanization both tend to amplify flood magnitude significantly more in catchments with high baseflow contribution and low runoff ratio, which tend to have lower values of specific discharge on average. In contrast, rising air temperature (in the absence of changing precipitation) decreases flood magnitudes, with the largest effects in dry catchments with low baseflow index. Afforestation also tends to decrease floods more in catchments with low groundwater contribution, and in dry catchments in the summer. Our approach may be used to further disentangle the joint effects of multiple flood drivers in individual catchments.

Funder

University of Oxford

NSF Division of Earth Sciences

Publisher

American Geophysical Union (AGU)

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