Quantifying human mobility resilience to extreme events using geo-located social media data

Springer Science and Business Media LLC - Tập 8 - Trang 1-15 - 2019
Kamol Chandra Roy1, Manuel Cebrian2, Samiul Hasan1
1Department of Civil, Environmental, and Construction Engineering, University of Central Florida, Orlando, USA
2Media Laboratory, Massachusetts Institute of Technology, Cambridge, USA

Tóm tắt

Mobility is one of the fundamental requirements of human life with significant societal impacts including productivity, economy, social wellbeing, adaptation to a changing climate, and so on. Although human movements follow specific patterns during normal periods, there are limited studies on how such patterns change due to extreme events. To quantify the impacts of an extreme event to human movements, we introduce the concept of mobility resilience which is defined as the ability of a mobility system to manage shocks and return to a steady state in response to an extreme event. We present a method to detect extreme events from geo-located movement data and to measure mobility resilience and transient loss of resilience due to those events. Applying this method, we measure resilience metrics from geo-located social media data for multiple types of disasters occurred all over the world. Quantifying mobility resilience may help us to assess the higher-order socio-economic impacts of extreme events and guide policies towards developing resilient infrastructures as well as a nation’s overall disaster resilience strategies.

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