Enhancing assessment of direct and indirect exposure of settlement-transportation systems to mass movements by intergraph representation learning
Permanent lenke
https://hdl.handle.net/10037/36357Dato
2024-10-14Type
Journal articleTidsskriftartikkel
Peer reviewed
Sammendrag
Amidst the intensifying extreme rainfall patterns due to climate change, global early warning
systems for mass movements (e.g. landslides, avalanches) need to provide not only the coarsely
aggregated danger reports, but also the necessary fine details to understand its potential
implications on critical infrastructures such as transportation systems. In this study, we introduce a
novel ‘intergraph’ method that enhances the exposure information using a graph-based machine
learning implementation on the hydrological and geological characteristics of mass movements
and the underlying connectivity of settlement-transportation systems. Demonstrating the entire
country of Norway and the 2020 Gjerdrum quick clay incident as a case study, we integrated the
assessment of both direct and indirect exposure information of settlement-transportation systems
and their daily 1 km-by-1 km susceptibility map, which were derived from the 68 934 mass
movement incidents since 1957 and the connectivity information of 4778 settlements and 257 000
km road networks. Our findings achieved 86.25% accuracy, providing a distribution of improved
susceptibility estimates and identifying critical settlements in near-real-time. By interacting the
graphical representations of the shared causal drivers of susceptibility and the settlementtransportation system connectivity, our study extends our understanding of the exposure of
multiple interacting settlements with a high granularity degree in a unified approach.
Forlag
IOP PublishingSitering
Dimasaka, Selvakumaran, Marinoni. Enhancing assessment of direct and indirect exposure of settlement-transportation systems to mass movements by intergraph representation learning. Environmental Research Letters. 2024;19(11)Metadata
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