TY - JOUR
T1 - Unravelling compound risks of hydrological extrems in a changing climate: typology, methods and futures
AU - Chun, Kwok Pan
AU - Octavianti, Thanti
AU - Papacharalampous, Georgia
AU - Tyralis, Hristos
AU - Sutanto, Samuel
AU - Terskii, Pavel
AU - Mazzoglio, Paola
AU - Treppiedi, Dario
AU - Riviera, Juan
AU - Dogulu, Nilay
AU - Olusola, Adeyemi
AU - Dieppois, Bastien
AU - Dembele, Moctar
AU - Moulds, Simon
AU - Li, Cheng
AU - Marin, Luis Alejandro Morales
AU - Macdonald, Neil
AU - Amoussou, Toundji Olivier
AU - Yonaba, Roland
AU - Obahoundje, Salomon
AU - Massei, Nicolas
AU - Hannah, David M.
AU - Reddy, Sivarama Krishna
AU - Hamududu, Byman
PY - 2024/9/19
Y1 - 2024/9/19
N2 - We have witnessed and experienced increasing compound extreme events resulting from simultaneous or sequential occurrence of multiple events in a changing climate. In addition to a growing demand for a clearer explanation of compound risks from a hydrological perspective, there has been a lack of attention paid to socioeconomic factors driving and impacted by these risks. Through a critical review and co-production approaches, we identified four types of compound hydrological events based on autocorrelated, multivariate, and spatiotemporal patterns. A framework to quantify compound risks based on conditional probability is offered, including an argument on the potential use of generative Artificial Intelligence (AI) algorithms for identifying emerging trends and patterns for climate change. Insights for practices are discussed, highlighting the implications for disaster risk reduction and knowledge co-production. Our argument centres on the importance of meaningfully considering the socioeconomic contexts in which compound risks may have impacts, and the need for interdisciplinary collaboration to effectively translate climate science to climate actions.
AB - We have witnessed and experienced increasing compound extreme events resulting from simultaneous or sequential occurrence of multiple events in a changing climate. In addition to a growing demand for a clearer explanation of compound risks from a hydrological perspective, there has been a lack of attention paid to socioeconomic factors driving and impacted by these risks. Through a critical review and co-production approaches, we identified four types of compound hydrological events based on autocorrelated, multivariate, and spatiotemporal patterns. A framework to quantify compound risks based on conditional probability is offered, including an argument on the potential use of generative Artificial Intelligence (AI) algorithms for identifying emerging trends and patterns for climate change. Insights for practices are discussed, highlighting the implications for disaster risk reduction and knowledge co-production. Our argument centres on the importance of meaningfully considering the socioeconomic contexts in which compound risks may have impacts, and the need for interdisciplinary collaboration to effectively translate climate science to climate actions.
M3 - Article
SN - 1757-7799
JO - Wiley Interdisciplinary Reviews: Climate Change
JF - Wiley Interdisciplinary Reviews: Climate Change
ER -