Large-Scale Evacuation

Large-Scale Evacuation

Author: Michael K. Lindell

Publisher: CRC Press

Published: 2018-12-07

Total Pages: 346

ISBN-13: 1351645323

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Large-Scale Evacuation introduces the reader to the steps involved in evacuation modelling for towns and cities, from understanding the hazards that can require large-scale evacuations, through understanding how local officials decide to issue evacuation advisories and households decide whether to comply, to transportation simulation and traffic management strategies. The author team has been recognized internationally for their research and consulting experience in the field of evacuations. Collectively, they have 125 years of experience in evacuation, including more than 140 projects for federal and state agencies. The text explains how to model evacuations that use the road transportation network by combining perspectives from social scientists and transportation engineers, fields that have commonly approached evacuation modelling from distinctly different perspectives. In doing so, it offers a step-by-step guide through the key questions needed to model an evacuation and its impacts to the evacuation route system as well as evacuation management strategies for influencing demand and expanding capacity. The authors also demonstrate how to simulate the resulting traffic and evacuation management strategies that can be used to facilitate evacuee movement and reduce unnecessary demand. Case studies, which identify key points to analyze in an evacuation plan, discuss evacuation termination and re-entry, and highlight challenges that someone developing an evacuation plan or model should expect, are also included. This textbook will be of interest to researchers, practitioners, and advanced students.


Emergency Evacuation Planning for Your Workplace

Emergency Evacuation Planning for Your Workplace

Author: Jim Burtles, KLJ, CMLJ, FBCI

Publisher: Rothstein Publishing

Published: 2014-11-21

Total Pages: 343

ISBN-13: 1931332851

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Would your routine office fire drill be able to handle the large-scale chaos of a major disaster? Can you get everyone out safely in the face of a factory fire, explosion, or natural disaster? In Emergency Evacuation Planning for Your Workplace: From Chaos to Life-Saving Solutions, Jim Burtles leads you step-by-step through a planning methodology that saves lives. You can be assured your company will be ready and that everyone will know what to do -- whatever the nature of the emergency. In one practical, easy-to-read resource, Burtles helps you create a comprehensive plan to evacuate people of all ages and health conditions from workplaces such as small offices, skyscrapers, stores, industrial plants, hospitals, college campuses, and more. His carefully constructed methodology leads you through the development of organization-wide plans - ensuring that your procedures align with best practices, relevant regulations, sound governance, and corporate responsibility. His five stages of an Emergency Evacuation Planning (EEP) Lifecycle include: Set up the EEP program – Bring management on board, get executive buy-in and policy approval to proceed. Embed EEP into the corporate culture – Begin your awareness campaign immediately, getting the message out to the community you are serving. Understand the environment – Explore which areas of the organization have emergency plans and which need to be covered in your overall EEP/ Agree upon an EEP strategy – Work closely with people who know the premises to identify threats that could trigger an emergency, and visit and evaluate potential exit points. Develop evacuation procedures – Look at the people, their probable locations, their existing challenges. Determine if you will need one plan or a suite of plans. Exercise and maintain the EEP– Run regular exercises to familiarize everyone with plans and choices – as often as needed to accommodate changing personnel and individual needs. Because this a long-term process, go back to the earlier parts of the cycle and review the plan to keep it current. Thought-provoking discussion questions, real-life case studies and examples, comprehensive index, and detailed glossary facilitate both college and professional instruction. Downloadable resources and tools – practical toolkit full of innovative and field-tested plans, forms, checklists, tips, and tools to support you as you set up effective workplace evacuation procedures. Instructor's Manual available for use by approved adopters in college courses and professional development training.


Discrete Optimization and Agent-Based Simulation for Regional Evacuation Network Design Problem

Discrete Optimization and Agent-Based Simulation for Regional Evacuation Network Design Problem

Author: Xinghua Wang

Publisher:

Published: 2013

Total Pages:

ISBN-13:

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Natural disasters and extreme events are often characterized by their violence and unpredictability, resulting in consequences that in severe cases result in devastating physical and ecological damage as well as countless fatalities. In August 2005, Hurricane Katrina hit the Southern coast of the United States wielding serious weather and storm surges. The brunt of Katrina's force was felt in Louisiana, where the hurricane has been estimated to total more than $108 billion in damage and over 1,800 casualties. Hurricane Rita followed Katrina in September 2005 and further contributed $12 billion in damage and 7 fatalities to the coastal communities of Louisiana and Texas. Prior to making landfall, residents of New Orleans received a voluntary, and then a mandatory, evacuation order in an attempt to encourage people to move themselves out of Hurricane Katrina's predicted destructive path. Consistent with current practice in nearly all states, this evacuation order did not include or convey any information to individuals regarding route selection, shelter availability and assignment, or evacuation timing. This practice leaves the general population free to determine their own routes, destinations and evacuation times independently. Such freedom often results in inefficient and chaotic utilization of the roadways within an evacuation region, quickly creating bottlenecks along evacuation routes that can slow individual egress and lead to significant and potentially dangerous exposure of the evacuees to the impending storm. One way to assist the over-burdened and over-exposed population during extreme event evacuation is to provide an evacuation strategy that gives specific information on individual route selection, evacuation timing and shelter destination assignment derived from effective, strategic pre-planning. For this purpose, we present a mixed integer linear program to devise effective and controlled evacuation networks to be utilized during extreme event egress. To solve our proposed model, we develop a solution methodology based on Benders Decomposition and test its performance through an experimental design using the Central Texas region as our case study area. We show that our solution methods are efficient for large-scale instances of realistic size and that our methods surpass the size and computational limitations currently imposed by more traditional approaches such as branch-and-cut. To further test our model under conditions of uncertain individual choice/behavior, we create an agent-based simulation capable of modeling varying levels of evacuee compliance to the suggested optimal routes and varying degrees of communication between evacuees and between evacuees and the evacuation authority. By providing evacuees with information on when to evacuate, where to evacuate and how to get to their prescribed destination, we are able to observe significant cost and time increases for our case study evacuation scenarios while reducing the potential exposure of evacuees to the hurricane through more efficient network usage. We provide discussion on scenario performance and show the trade-offs and benefits of alternative batch-time evacuation strategies using global and individual effectiveness measures. Through these experiments and the developed methodology, we are able to further motivate the need for a more coordinated and informative approach to extreme event evacuation. The electronic version of this dissertation is accessible from http://hdl.handle.net/1969.1/148251


City Evacuations: An Interdisciplinary Approach

City Evacuations: An Interdisciplinary Approach

Author: John Preston

Publisher: Springer

Published: 2014-08-01

Total Pages: 134

ISBN-13: 3662438771

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Evacuating a city is a complex problem that involves issues of governance, preparedness education, warning, information sharing, population dynamics, resilience and recovery. As natural and anthropogenic threats to cities grow, it is an increasingly pressing problem for policy makers and practitioners. The book is the result of a unique interdisciplinary collaboration between researchers in the physical and social sciences to consider how an interdisciplinary approach can help plan for large scale evacuations. It draws on perspectives from physics, mathematics, organisation theory, economics, sociology and education. Importantly it goes beyond disciplinary boundaries and considers how interdisciplinary methods are necessary to approach a complex problem involving human actors and increasingly complex communications and transportation infrastructures. Using real world case studies and modelling the book considers new approaches to evacuation dynamics. It addresses questions of complexity, not only in terms of theory, but examining the latest challenges for cities and emergency responders. Factors such as social media, information quality and visualisation techniques are examined to consider the ‘new’ dynamics of warning and informing, evacuation and recovery.


Reliable Route Planning for Emergency Evacuation

Reliable Route Planning for Emergency Evacuation

Author: Mukesh Rungta

Publisher:

Published: 2013

Total Pages:

ISBN-13:

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Large scale evacuations are important in the wake of events such as an anticipated strike of a natural disaster or a looming military attack. Planning to evacuate people towards safe areas and effective management of the plan using limited set of resources is, therefore, an integral part of disaster management. Evacuation planning based on deterministic estimate of demand at the source nodes and capacity of the road links yield unsatisfactory result. Recent research publications are addressing the randomness associated with such events using stochastic optimization models. Models considering the inherent uncertainty associated with transportation network facilitate a robust and efficient evacuation plan. In this dissertation, large scale network flow optimization models for both deterministic and stochastic evacuation scenarios are presented with an emphasis on coming up with an effective and reliable evacuation plan. Effective implementation of an evacuation plan in the wake of a limited set of resources demands that a minimum number of paths are selected for loading the evacuation traffic. This objective has eluded the eyes of the research community involved in evacuation planning optimization. Model, solution technique and computational results for this problem is presented that describes the complete evacuation plan comprising of paths, traffic flow and starting schedule. Traffic scenario is often non-deterministic and assumption of a deterministic capacity for the road links would result in poor quality evacuation plan in terms of paths and time required for evacuation. Motivated by the stochastic behavior of the arc capacity, a chance constrained model for bottleneck minimization is proposed that finds the evacuation paths and the traffic flow rate on the paths within a given time bound that would result in minimum traffic congestion. Given the horizon time for evacuation, model selects the evacuation paths and finds flows on the selected paths that result in minimum congestion in the network and finds the reliability of the evacuation plan. Numerical examples are presented and we discuss the effectiveness of the stochastic models in evacuation planning. It is shown that the reliability based evacuation plan is conservative as compared to plans obtained using a deterministic model. Stochastic models guarantee that congestion can be avoided with a confidence level at the cost of increased clearance time. Apart from the random arc capacity, in this dissertation we propose an evacuation planning model where the demand for the number of evacuees is unknown and is subject to uncertainty. Chance constrained approach is used in such situations to enforce the constraints for given level of confidence. We analyze the model for the situation when the probability distribution of the random demand is not known and only partial moments and support information is specified. A distributional robust chance constrained model is proposed for evacuation planning that guarantee the vehicle demand constraints for any probability distribution consistent with the known properties. We find a tight upper bound for the shortfall in evacuating people from the specified target in the given clearance time. Numerical experiments show that the robust approximation method of chance constraints provide excellent results as compared to solution based on approximated distribution and sampling based solution.


Optimization Modeling Approaches to Evacuations of Isolated Communities

Optimization Modeling Approaches to Evacuations of Isolated Communities

Author: Klaas Fiete Krutein

Publisher:

Published: 2022

Total Pages: 0

ISBN-13:

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Isolated communities are particularly vulnerable to disasters caused by natural hazards. In many cases, evacuation is the only option to ensure the population's safety. Isolated communities are becoming increasingly aware of this threat and demand solutions to this problem. However, the large body of existing research on evacuation modeling usually considers environments where populations can evacuate via private vehicles and by using an existing road infrastructure. These models are often not applicable to remote valleys and islands, where road connections can be disrupted or do not exist at all. The use of external resources is therefore essential to evacuate the population. How to systematically evacuate an isolated community through a coordinated fleet of resources has not yet been researched. This dissertation thesis addresses this knowledge gap by designing a new routing problem called the Isolated Community Evacuation Problem (ICEP) that optimally routes recovery resources between evacuation pick-up points and shelter locations to minimize the total evacuation time. The research presents derivations of the initial model for (a) emergency planning and (b) response purposes to give emergency planners and researchers tools to prepare for and react to an evacuation of an isolated community. For (a), a scenario-based two-stage stochastic program with recourse considers different emergency scenarios to select the optimal set of recovery resources to hold available for any evacuation emergency. Furthermore, the dissertation explores efficient structure-based heuristics to solve the problem quickly. For (b), the assumption of certainty over the size of the affected population at the time of evacuation is relaxed. Approaches from robust and rolling-horizon optimization are presented to solve this problem. Moreover, meta-heuristics are explored to solve the problem to optimality while overcoming the complexity of the problem formulation. Finally, an in-depth, real-world case study that was conducted in collaboration with first responders and emergency authorities on Bowen Island in Canada is presented to test and evaluate the applicability of the proposed models. This case study further informed the official evacuation plan of the island. This collaboration demonstrates the potential of full integration of the research approach with local emergency expertise from the affected area and highlights the data requirements that need to be met to maximize the use of the model.


Large-Scale Evacuation Network Model for Transporting Evacuees with Multiple Priorities

Large-Scale Evacuation Network Model for Transporting Evacuees with Multiple Priorities

Author: Hyeong Suk Na

Publisher:

Published: 2015

Total Pages:

ISBN-13:

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There are increasing numbers of natural disasters occurring worldwide, particularly in populated areas. Such events affect a large number of people causing injuries and fatalities. With ever increasing damage being caused by large-scale natural disasters, the need for appropriate evacuation strategies has grown dramatically. Providing rapid medical treatment is of utmost importance in such circumstances. The problem of transporting patients to medical facilities is a subject of research that has been studied to some extent. One of the challenges is to find a strategy that can maximize the number of survivors and minimize the total cost simultaneously under a given set of resources and geographic constraints. However, some existing mathematical programming methodologies cannot be applied effectively to such large-scale problems. In this thesis, two mathematical optimization models are proposed for abating the extensive damage and tragic impact by large-scale natural disasters. First of all, a mathematical optimization model called Triage-Assignment-Transportation (TAT) model is suggested in order to decide on the tactical routing assignment of several classes of evacuation vehicles between staging areas and shelters in the nearby area. The model takes into account the severity level of the evacuees, the evacuation vehicles' capacities, and available resources of each shelter. TAT is a mixed-integer linear programming (MILP) and minimum-cost flow problem. Comprehensive computational experiments are performed to examine the applicability and extensibility of the TAT model. Secondly, a MILP model is addressed to solve the large-scale evacuation network problem with multi-priorities evacuees, multiple vehicle types, and multiple candidate shelters. An exact solution approach based on modified Benders' decomposition is proposed for seeking relevant evacuation routes. A geographical methodology for a more realistic initial parameter setting is developed by employing spatial analysis techniques of a GIS. The objective is to minimize the total evacuation cost and to maximize the number of survivors simultaneously. In the first stage, the proposed model identifies the number and location of shelters and strategy to allocate evacuation vehicles. The subproblem in the second stage determines initial stock and distribution of medical resources. To validate the proposed model, the solutions are compared with solutions derived from two solution approaches, linear programming relaxation and branch-and-cut algorithm. Finally, results from comprehensive computational experiments are examined to determine applicability and extensibility of the proposed model. The two evacuation models for large-scale natural disasters can offer insight to decision makers about the number of staging areas, evacuation vehicles, and medical resources that are required to complete a large-scale evacuation based on the estimated number of evacuees. In addition, we believe that our proposed model can serve as the centerpiece for a disaster evacuation assignment decision support system. This would involve comprehensive collaboration with LSNDs evacuation management experts to develop a system to satisfy their needs. The electronic version of this dissertation is accessible from http://hdl.handle.net/1969.1/152810