RecovUS: An Agent-Based Model of Post-Disaster Household Recovery
Saeed Moradi () and
Ali Nejat ()
Journal of Artificial Societies and Social Simulation, 2020, vol. 23, issue 4, 13
Abstract:
The housing sector is an important part of every community. It directly affects people, constitutes a major share of the building market, and shapes the community. Meanwhile, the increase of developments in hazard-prone areas along with the intensification of extreme events has amplified the potential for disaster-induced losses. Consequently, housing recovery is of vital importance to the overall restoration of a community. In this relation, recovery models can help with devising data-driven policies that can better identify pre-disaster mitigation needs and post-disaster recovery priorities by predicting the possible outcomes of different plans. Although several recovery models have been proposed, there are still gaps in the understanding of how decisions made by individuals and different entities interact to output the recovery. Additionally, integrating spatial aspects of recovery is a missing key in many models. The current research proposes a spatial model for simulation and prediction of homeowners’ recovery decisions through incorporating recovery drivers that could capture interactions of individual, communal, and organizational decisions. RecovUS is a spatial agent-based model for which all the input data can be obtained from publicly available data sources. The model is presented using the data on the recovery of Staten Island, New York, after Hurricane Sandy in 2012. The results confirm that the combination of internal, interactive, and external drivers of recovery affect households’ decisions and shape the progress of recovery.
Keywords: Disaster Recovery; Recovery Modeling; Agent-Based Modeling; Perceived Community (search for similar items in EconPapers)
Date: 2020-10-31
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Persistent link: https://EconPapers.repec.org/RePEc:jas:jasssj:2020-37-3
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