Architecture of Environmental Risk Modelling: for a faster and more robust response to natural disasters
Dario Rodriguez-Aseretto, Christian Schaerer, Daniele de Rigo

TL;DR
This paper presents an adaptive, robust environmental risk modelling architecture that integrates social contributions and advanced computational methods to improve disaster response efficiency and reliability.
Contribution
It introduces a novel architecture based on Semantic Array Programming and Citizen Sensor data, enhancing natural hazard modelling with uncertainty management and high-performance computing.
Findings
Proposes a multicriteria impact assessment approach.
Integrates social data through Citizen Sensor contributions.
Utilizes HPC for real-time environmental risk analysis.
Abstract
Demands on the disaster response capacity of the European Union are likely to increase, as the impacts of disasters continue to grow both in size and frequency. This has resulted in intensive research on issues concerning spatially-explicit information and modelling and their multiple sources of uncertainty. Geospatial support is one of the forms of assistance frequently required by emergency response centres along with hazard forecast and event management assessment. Robust modelling of natural hazards requires dynamic simulations under an array of multiple inputs from different sources. Uncertainty is associated with meteorological forecast and calibration of the model parameters. Software uncertainty also derives from the data transformation models (D-TM) needed for predicting hazard behaviour and its consequences. On the other hand, social contributions have recently been recognized…
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Taxonomy
TopicsFacility Location and Emergency Management · Flood Risk Assessment and Management · Disaster Management and Resilience
