Towards resilient cities: A hybrid simulation framework for risk mitigation through data driven decision making
David Carraminana, Ana M. Bernardos, Juan A. Besada, Jose R. Casar

TL;DR
This paper introduces a hybrid simulation framework for urban risk mitigation that models cities as complex adaptive systems, integrating agent-based and network-based approaches to support decision making with explainable, layered indicators.
Contribution
It presents a novel hybrid simulation framework that combines agent-based and network models, layered indicators, and reusability features for improved urban risk analysis and decision support.
Findings
Framework enables multi-level impact analysis
Supports rapid scenario simulation
Provides explainable, data-driven decision metrics
Abstract
Providing a comprehensive view of the city operation and offering useful metrics for decision making is a well known challenge for urban risk analysis systems. Existing systems are, in many cases, generalizations of previous domain specific tools and or methodologies that may not cover all urban interdependencies and makes it difficult to have homogeneous indicators. In order to overcome this limitation while seeking for effective support to decision makers, this article introduces a novel hybrid simulation framework for risk mitigation. The framework is built on a proposed city concept that considers urban space as a Complex Adaptive System composed by interconnected Critical Infrastructures. In this concept, a Social System, which models daily patterns and social interactions of the citizens in the Urban Landscape, drives the CIs demand to configure the full city picture. The…
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