Intelligent Architectures for Extreme Event Visualisation
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Published:2024
Issue:
Volume:
Page:37-48
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ISSN:2626-7683
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Container-title:Arts, Research, Innovation and Society
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language:en
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Short-container-title:
Author:
Song Yang,Pagnucco Maurice,Wu Frank,Asadipour Ali,Ostwald Michael J.
Abstract
AbstractRealistic immersive visualisation can provide a valuable method for studying extreme events and enhancing our understanding of their complexity, underlying dynamics and human impacts. However, existing approaches are often limited by their lack of scalability and incapacity to adapt to diverse scenarios. In this chapter, we present a review of existing methodologies in intelligent visualisation of extreme events, focusing on physical modelling, learning-based simulation and graphic visualisation. We then suggest that various methodologies based on deep learning and, particularly, generative artificial intelligence (AI) can be incorporated into this domain to produce more effective outcomes. Using generative AI, extreme events can be simulated, combining past data with support for users to manipulate a range of environmental factors. This approach enables realistic simulation of diverse hypothetical scenarios. In parallel, generative AI methods can be developed for graphic visualisation components to enhance the efficiency of the system. The integration of generative AI with extreme event modelling presents an exciting opportunity for the research community to rapidly develop a deeper understanding of extreme events, as well as the corresponding preparedness, response and management strategies.
Publisher
Springer Nature Switzerland
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