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Need for judicious selection of runoff inputs in a global flood model
by
Mohanty, Mohit Prakash
, Karmakar, Subhankar
, Parmar, Jayesh
in
cascading uncertainty
/ Datasets
/ Decision making
/ Disaster management
/ disaster risk
/ Emergency preparedness
/ Flood control
/ Flood hazards
/ Flood management
/ Floods
/ floods hazard
/ global flood models
/ Hazard assessment
/ Hydrologic models
/ inter-model flood depth variation
/ land surface models
/ Population density
/ Risk assessment
/ Risk management
/ River basins
/ Runoff
/ Uncertainty
/ Vehicle safety
/ Water depth
2025
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Need for judicious selection of runoff inputs in a global flood model
by
Mohanty, Mohit Prakash
, Karmakar, Subhankar
, Parmar, Jayesh
in
cascading uncertainty
/ Datasets
/ Decision making
/ Disaster management
/ disaster risk
/ Emergency preparedness
/ Flood control
/ Flood hazards
/ Flood management
/ Floods
/ floods hazard
/ global flood models
/ Hazard assessment
/ Hydrologic models
/ inter-model flood depth variation
/ land surface models
/ Population density
/ Risk assessment
/ Risk management
/ River basins
/ Runoff
/ Uncertainty
/ Vehicle safety
/ Water depth
2025
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Do you wish to request the book?
Need for judicious selection of runoff inputs in a global flood model
by
Mohanty, Mohit Prakash
, Karmakar, Subhankar
, Parmar, Jayesh
in
cascading uncertainty
/ Datasets
/ Decision making
/ Disaster management
/ disaster risk
/ Emergency preparedness
/ Flood control
/ Flood hazards
/ Flood management
/ Floods
/ floods hazard
/ global flood models
/ Hazard assessment
/ Hydrologic models
/ inter-model flood depth variation
/ land surface models
/ Population density
/ Risk assessment
/ Risk management
/ River basins
/ Runoff
/ Uncertainty
/ Vehicle safety
/ Water depth
2025
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Need for judicious selection of runoff inputs in a global flood model
Journal Article
Need for judicious selection of runoff inputs in a global flood model
2025
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Overview
Numerous flood hazard assessment and risk management studies depend on hydrodynamic flood models, which require detailed inputs. However, these models face challenges when assessing flood hazards and risks at national scales due to the unavailability of input data and high computational demands. Recent advancements in global flood models (GFMs) have emerged as promising solutions. These widely adopted GFMs, capable of producing flood characteristics, require runoff input typically derived from land surface models (LSMs) or global hydrological models (GHMs), which are prone to inherit cascading uncertainties. Moreover, the utilization of a single runoff input into a GFM can produce biased and misinterpreted flood hazards due to underestimation or overestimation of GFM outputs. To highlight these implications, the present study examines GFM simulations forced with eight state-of-the-art model runoff datasets, including LSMs, GHMs, and reanalysis observations, uncovering unsafe inter-model flood depth variation (IMDV). Focusing on the flood-prone Mahanadi River Basin (MRB) of India, the study observes that IMDV surpasses the self-help range of humans (0.2 m) for 65% of the MRB region, and exceeds human and vehicle safety thresholds (2 m) for 15% of the region, based on four past flood events from the Dartmouth Flood Observatory. These regions exhibiting high IMDV overlap with densely populated areas, potentially affecting 1.66–3.65 million people. Thus, the injudicious use of runoff in GFM for flood disaster planning can lead to inaccurate flood hazard and risk assessments, significantly affecting populous regions. An alternative approach is recommended, advocating for the use of multiple simulations incorporating diverse runoff datasets. This approach would generate conservative and optimistic flood scenarios, leveraging each model’s strengths. Such comprehensive hazard scenarios would enhance flood management and decision-making for policymakers by addressing the uncertainty and providing possible impacts through risk assessments.
Publisher
IOP Publishing
Subject
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