英文摘要: |
River flooding is among the costliest natural disasters with severe economic, societal, and environmental consequences. However, substantial uncertainties remain in global and regional projections of future flood conditions simulated by global climate models (GCMs) and/or global hydrological models (GHMs). Using physical models coupled with machine learning (ML), for the first time, we project changes in flood magnitudes of 2062 global river basins by constraining physical-based streamflow simulations with observations under 1.5 degrees C and 2 degrees C warming scenarios identified for the Representative Concentration Pathway 8.5. We found that, during the validation period, the GHMs-simulated flood magnitudes would improve with reduced uncertainty over the selected river basins after ML with a Long Short-Term Memory network. Our estimation suggested that flood magnitudes would increase in many Northern Hemisphere mid- and high-latitude rivers (e.g., Lena River, Amur River and Volga River) but decrease in some river basins in southern Finland and Eastern Europe in future periods (i.e., 1.5 degrees C and 2 degrees C warming levels). In 1.5 degrees C and 2 degrees C warmer worlds, the decreasing flood magnitudes in most South American rivers are associated with decreased soil moisture and increased evapotranspiration induced by warmer temperatures. Although the geographical pattern of changes in flood magnitudes for the +2 degrees C experiment is close to that of the +1.5 degrees C experiment, a 1.5 degrees C warming target is more likely to reduce flood magnitudes of many river basins worldwide (e.g., in central and eastern Siberia, Alaska/ Northwest Canada and South America). |