Network Modeling of Hurricane Evacuation Using Data-Driven Demand and Incident-Induced Capacity Loss Models

Author:

Zhu Yuan1ORCID,Ozbay Kaan2ORCID,Xie Kun3,Yang Hong3,Morgul Ender Faruk4

Affiliation:

1. Inner Mongolia Center for Transportation Research, Inner Mongolia University, Rm A357c, Transportation Building, Inner Mongolia University South Campus, 49 S Xilin Rd, Hohhot, Inner Mongolia 010020, China

2. C2SMART Center (A Tier 1 USDOT UTC), Department of Civil and Urban Engineering & Center for Urban Science and Progress (CUSP), Tandon School of Engineering, New York University (NYU), 15 MetroTech Center, 6th Floor, Brooklyn 11201, NY, USA

3. Department of Civil & Environmental Engineering, Old Dominion University (ODU), 135 Kaufman Hall, Norfolk 23529, VA, USA

4. Apple Inc. Department of Civil & Urban Engineering, Polytechnic Institute of New York University (NYU-Poly), New York, NY, USA

Abstract

The development of a hurricane evacuation simulation model is a crucial task in emergency management and planning. Two major issues affect the reliability of an evacuation model: one is estimations of evacuation traffic based on socioeconomic characteristics, and the other is capacity change and its influence on evacuation outcome due to traffic incidents in the context of hurricanes. Both issues can impact the effectiveness of emergency planning in terms of evacuation order issuance, and evacuation route planning. The proposed research aims to investigate the demand and supply modeling in the context of hurricane evacuations. This methodology created three scenarios for the New York City (NYC) metropolitan area, including one base and two evacuation scenarios with different levels of traffic demand and capacity uncertainty. Observed volume data prior to Hurricane Sandy is collected to model the response curve of the model, and the empirical incident data under actual evacuation conditions are analyzed and modeled. Then, the modeled incidents are incorporated into the planning model modified for evacuation. Simulation results are sampled and compared with observed sensor-based travel times as well as O-D-based trip times of NYC taxi data. The results show that the introduction of incident frequency and duration models can significantly improve the performance of the evacuation model. The results of this approach imply the importance of traffic incident consideration for hurricane evacuation simulation.

Funder

National Natural Science Foundation of China

Publisher

Hindawi Limited

Subject

Strategy and Management,Computer Science Applications,Mechanical Engineering,Economics and Econometrics,Automotive Engineering

Reference43 articles.

1. Modeling no-notice mass evacuation using a dynamic traffic flow optimization model

2. Evacuation Network Modeling via Dynamic Traffic Assignment with Probabilistic Demand and Capacity Constraints

3. Effects of hurricane irene and sandy in New Jersey: evacuation traffic patterns;J. Li

4. Empirical Evacuation Response Curve during Hurricane Irene in Cape May County, New Jersey

5. Use of feature selection and variable ranking in classification and regression tree evacuee decision model;A. Yazici

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1. Post-Disaster Traffic Micro-Circulation System Design for Traffic Distribution Optimization;Transportation Research Record: Journal of the Transportation Research Board;2024-07-25

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