Zero Latency for Emergencies: A Machine Learning based Approach to Quantify Impact of Construction Projects on Emergency Response in Urban Settings
Zhengbo Zou, Semiha Ergan

TL;DR
This paper introduces a machine learning approach to predict how ongoing construction projects affect emergency response times in urban areas, using city data to cluster zones and forecast response delays.
Contribution
It presents a novel method combining zone signature analysis, clustering, and supervised learning to quantify construction impacts on emergency response times.
Findings
Effective zone clustering based on construction signatures.
Accurate prediction of emergency response times using machine learning.
First quantitative assessment of construction impact on emergency response.
Abstract
Continuous construction and rehabilitation in urban settings have unavoidable impacts on arrival times of first responders to emergency locations. Current research efforts on emergency response assessments focus on case studies, where specific periods (e.g., super storm Sandy) of emergency response times are analyzed. Simulation based studies that aim to evaluate response times in relation to various constraints/fleet sizes also exist. However, they do not analyze how specific changes (e.g., new and ongoing construction projects) in urban settings impact emergency response times of first responders. This paper aims to fill the gap and proposes a novel approach to predict the expected emergency response time for a given location using the fabric of zones regarding construction activities. This approach relies on historical records of emergency response and construction permits issued by…
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Taxonomy
TopicsEvacuation and Crowd Dynamics · Underground infrastructure and sustainability · Facility Location and Emergency Management
