The use of insurance data in the analysis of Surface Water Flood events – A systematic review

Journal of Hydrology - Tập 568 - Trang 194-206 - 2019
Klodian Gradeci1, Nathalie Labonnote1, Edvard Sivertsen1, Berit Time1
1SINTEF Building and Infrastructure, Trondheim, Norway

Tài liệu tham khảo

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