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              Fields Industrial Optimization Seminar 
                    2007-08
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               Supported by 
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            The inaugural meeting of the Fields Industrial Optimization Seminar 
              took place on November 2, 2004. This series will meet once a month, 
              on the first Tuesday, in the early evening. Each meeting will comprise 
              two related lectures on a topic in optimization; typically, one 
              speaker will be a university-based research and the other from the 
              private or government sector.We welcome the participation of everyone 
              in the academic or industrial community with an interest in optimization 
              -- theory or practice, expert or student.  
            Please subscribe to the Fields mail list 
              to be informed of upcoming seminars. 
              ================================================= 
             
            SEMINARS  
            Seminars start at 5:00 pm at the Fields Institute, 222 College 
              Street, Room 230 
            
               
                | Tuesday, June 3, 2008 | 
                 
                   Amy Cohn, University of Michigan 
                    "Optimized" Airline Plans and Operational Realities 
                     
                     
                    This talk will investigate the role of Operations Research 
                    in airline planning and, in particular, investigate the link 
                    between an airline plan and its operational robustness. I 
                    will provide a brief review of the airline schedule planning 
                    process, discuss the relationship between a planned airline 
                    schedule and its operational performance, highlight sources 
                    of delay propagation, and describe methods for improving robustness 
                    in the planning process and for recovering from disruptions 
                    during day-of-operations.  
                   and 
                  Timothy Jacobs, American Airlines (Past-President 
                    of AGIFORS, the Airline Group of IFORS)  
                    Integrating O&D Passenger Effects into the Airline 
                    Scheduling Process  
                    
                  This paper presents an overview of the fleet assignment, 
                    schedule development and revenue management processes airlines 
                    typically use to develop, fleet and manage the seat inventory 
                    of their schedule. In addition, this paper presents a methodology 
                    for incorporating O&D network and pricing effects into 
                    the fleet assignment process. To illustrate the O&D fleeting 
                    concept and its benefits, we apply this concept to a typical 
                    schedule planning scenario at American Airlines and a Demand 
                    Driven Dispatch (D3) scenario where near-term fleeting changes 
                    improve the match between O&D passenger demand and available 
                    aircraft capacity close to the day of departure for American 
                    Eagle Airlines. 
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                | Tuesday, May 6, 2008 | 
                
                   C.T. Kelly, North Carolina State University 
                    Optimal Design of Municipal Water Supply Portfolios with 
                    Implicit Filtering 
                  In this talk we describe an optimal design problem for a 
                    portfolio of water rights, leases, and options in the Southwestern 
                    Unites States. The design is based on a Monte Carlo model 
                    of rainfall and demand. The design parameters encode the government's 
                    response to demand and expected supply. The stochastic model 
                    implies that the objective function, the cost of a city's 
                    water supply for a year, is a discontinuous function of the 
                    design parameters. Constraints on reliability and conditional 
                    value at risk can only be tested when the simulation is complete 
                    and are not given by explicit formulae. We show how the implicit 
                    filtering method can solve the problem and exploit our knowledge 
                    of the size of the noise.  
                  and 
                  Amr El-Bakry, EXXON  
                    Optimization in the Oil and Gas Industry: the Models and 
                    the Challenges 
                  Although optimization has been used extensively in refineries 
                    since the 1950's, its use in other areas of the oil and gas 
                    industry such as exploration, development, drilling, and production 
                    has been relatively limited. Recent developments in optimization 
                    technology and the increasing complexity in the above-mentioned 
                    activities led to a renewed interest in optimization as an 
                    analysis and decision-support tool. 
                  In this talk I will give an overview of the challenging optimization 
                    problems facing the current and the future oil and gas exploration 
                    and production activities. The resulting models cover almost 
                    all areas of optimization technology, from continuous to combinatorial, 
                    from linear to nonlinear and from deterministic to stochastic. 
                    I will conclude the talk with few comments for those who are 
                    aspiring to pursue careers as industrial mathematicians. 
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                | Tuesday, April 1, 2008 | 
                
                   Bartosz Protas, McMaster University 
                    Adjoint-Based Optimization in Fluid Mechanics: Theory, 
                    Computations and Industrial Applications 
                  In this presentation we review solution methods for a class 
                    of equality constrained optimization problems in fluid dynamics 
                    governed by partial differential equations such as the Navier-Stokes 
                    equation and other conservation equations. We show how such 
                    PDE-constrained optimization problems can be efficiently solved 
                    using a gradient-based approach. Since the control variable 
                    in such problems is usually continuous, the main challenge 
                    consists in determining the gradient of the cost functional 
                    with respect to such infinite-dimensional control, and we 
                    demonstrate that this can be done conveniently by solving 
                    a suitably-defined adjoint PDE system. We emphasize, in particular, 
                    problems described by PDEs defined on variable domains, whose 
                    treatment necessitates the use of specialized techniques, 
                    such as the shape-differential calculus. Application of the 
                    presented approach to a number of classical problems in fluid 
                    mechanics and thermodynamics will be discussed, including 
                    optimal control for drag reduction, optimal state estimation 
                    and optimization of interfacial phenomena (the Stefan problem). 
                    We will conclude by presenting some industrial applications 
                    concerning optimization of advanced welding techniques in 
                    automotive industry. 
                  and 
                  Saroja Polavarapu, Environment Canada 
                    Four-dimensional variational assimilation in the context 
                    of weather prediction 
                     
                    Data assimilation involves combining observations with computer 
                    model output to obtain a consistent, evolving 3-dimensional 
                    picture of the atmosphere. This process is used at operational 
                    weather forecasting centres to produce initial conditions 
                    for launching weather forecasts.  
                  The mathematics of data assimilation is from estimation theory, 
                    but in practice, there are many unique challenges and constraints 
                    to contend with. Weather forecasting models simulate an ever 
                    increasing number of nonlinear atmospheric processes, and 
                    are very large-- with state space of dimension 10 to 100 million. 
                    Such models require the fastest and largest supercomputers 
                    in order to produce timely forecasts. At the same time, while 
                    millions of observations are collected and distributed globally, 
                    this is an order of magnitude smaller than the state vector. 
                     
                    Therefore, there are also too few observations to compute 
                    the forecast error statistics needed for data assimilation. 
                    Approximations are 
                    thus necessary, and where possible, knowledge of atmospheric 
                    dynamics provides guidance. This talk will provide an overview 
                    of the 
                    atmospheric data assimilation problem in the context of global 
                    numerical weather prediction and will focus on the four-dimensional 
                    variational assimilation technique which is operational at 
                    Environment Canada. 
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                | Tuesday, March 11, 2008 | 
                
                   Jan Modersitzki, McMaster University 
                    Numerical Methods for Image Registration 
                  Image registration is one of the most challenging tasks within 
                    digital imaging. Given two images R and T, one is looking 
                    for a transformation y such that a deformed version T(y(x)) 
                    of T is similar to R. The problem arises, for example, when 
                    images taken from different objects, perspectives, times, 
                    or devices need to be compared or fused.  
                    Image registration, and in particular medical image registration, 
                    has been subject to extensive studies in the past years. Its 
                    versatile and important applications have attracted researchers 
                    from various branches. In this talk, we not only give an overview 
                    on some new 
                    and exiting approaches but also point out some of the computational 
                    challenges associated with these approaches. Moreover, we 
                    explain why variational based methods to image registration 
                    naturally lead to large scaled and challenging optimization 
                    problems. We 
                    present various instructive examples and real life applications. 
                   
                  and 
                  Vladimir Pekar, Philips Research North America 
                    Image Registration in Radiation Therapy Planning  
                  The changes in a patients anatomy during the course 
                    of fractionated radiotherapy lead to uncertainties in radiation 
                    delivery. This limits the treatment efficacy and can cause 
                    severe side effects. The aim of adaptive image-guided radiation 
                    therapy (IGRT) is to minimize these uncertainties through 
                    the use of additional imaging studies (including multi-modal 
                    imaging), which allows for highly individualized radiation 
                    treatment plans. In doing so, deviations from the treatment 
                    plan can be detected at an early stage to correctively adjust 
                    the plan parameters. Image registration is the key technological 
                    component for successful implementation of IGRT. 
                    In this talk, we will review and discuss several classes of 
                    image registration methods and their applications in radiation 
                    therapy planning. A comparative presentation of voxel-based, 
                    model-based, and feature-based registration methods will be 
                    given. Illustrative examples using real clinical data will 
                    also be presented. 
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                | Tuesday, February 5, 2008 | 
                
                   John W. Chinneck, Carleton University 
                    The Maximum Feasible Subsystem Problem and Applications 
                  Given an infeasible set of linear constraints, the Maximum 
                    Feasible Subsystem Problem (MaxFS) consists of finding the 
                    largest cardinality feasible subset of the constraints. A 
                    wide variety of algorithms for the solution of this problem 
                    have been proposed in recent years. These solution algorithms 
                    will be summarized, and applications in areas as diverse as 
                    machine learning, statistics, computational biology, digital 
                    video broadcasting, etc. will be described. 
                   
                  and 
                  Mauricio G. C. Resende, Lead Member of Technical Staff, 
                    Algorithms & Optimization Research Department 
                    AT&T Labs Research 
                    Some combinatorial optimization problems arising in telecommunications 
                     
                  Combinatorial optimization problems are abundant in the telecommunications 
                    industry and the successful solution of these problems has 
                    played an important role in telecommunications and its widespread 
                    use. Optimization arises in problems as varied as planning 
                    and design of optical and wireless networks, routing, restoration, 
                    network survivability, e-commerce, and search engine design. 
                    In this talk, we report on five problems that we have recently 
                    come across while working at an industrial research center 
                    of a large communications services company. The focus of our 
                    research is on developing heuristics to find good-quality 
                    solutions for these problems. 
                  Telephone migration occurs when an organization upgrades 
                    to a newer phone switch (PBX) and needs to move all the phones 
                    using the old switch to the new one. PBX switches implement 
                    many features in which groups of phones can interact. One 
                    example is the "multi-line hunt group" where up 
                    to 100 phones are placed in a cycle and any call coming into 
                    any phone in the group will cycle through the group until 
                    it is answered. Another example is "call pickup" 
                    where any phone in the group can answer any call made to other 
                    phones in the group. Given a number of periods in which to 
                    migrate the phones and a maximum number of phones that can 
                    be moved per period, we want to complete the migration process 
                    in the time horizon while minimizing the disruption to the 
                    features provided by the switches. 
                  Traffic migration occurs when traffic is to be moved from 
                    an outdated network to a new one. At each time period, a node 
                    in the old network is decommissioned and deloaded. i.e. all 
                    traffic coming into it or going out of it is moved to a given 
                    node in the new network. After a few nodes have been decommissioned, 
                    there will be some traffic in the old network, some traffic 
                    in the new network, and some traffic between the two networks 
                    for which temporary capacity will have to be provided. The 
                    objective is to minimize this capacity by determining the 
                    order in which the old nodes are decommissioned. 
                  The Internet is divided into many routing domains, called 
                    autonomous systems. An autonomous system, or simply AS, is 
                    a network that consists of routers and links connecting the 
                    routers. These ASes interact to control and deliver Internet 
                    Protocol (IP) traffic. They typically fall under the administration 
                    of a single institution, such as a company, a university, 
                    or a service provider. Intra-domain traffic engineering aims 
                    to make more efficient use of network resources within an 
                    AS. Interior Gateway Protocols such as OSPF (Open Shortest 
                    Path First) are commonly used to select the paths along which 
                    traffic is routed within an AS. These routing protocols direct 
                    traffic based on link weights assigned by the network operator. 
                    Each router in the AS computes shortest paths and creates 
                    destination tables used to direct each packet to the next 
                    router on the path to its final destination. Given a set of 
                    traffic demands between origin-destination pairs, the "OSPF 
                    weight setting problem" consists in determining weights 
                    to be assigned to the links so as to optimize a cost function, 
                    typically associated with a network congestion measure. 
                  It is also the role of the routing protocol to specify how 
                    the network should react to changes in the network topology, 
                    such as arc or router failures. In such situations, IP traffic 
                    is re-routed through the shortest paths not of one or more 
                    "pipes", where pipes can have different capacities 
                    and costs. We consider a survivable IP network design problem, 
                    where we need to assign OSPF weights and select a subset of 
                    pipes to assign to each arc, aiming to produce efficient OSPF-routed 
                    networks with minimum total "pipe" cost needed to 
                    route 
                    the required demand and handle any single arc or router failure. 
                   
                  In the optimal node placement problem for path disjoint network 
                    monitoring we wish to carry out end-to-end network performance 
                    measurements between each of a given set of target nodes and 
                    pairs of measurement nodes, under the constraint that the 
                    pair of paths from each measurement node to the corresponding 
                    target node are node disjoint. Arbitrary routes are disallowed 
                    and we are constrained to obey standard network routing policies, 
                    such as OSPF. The objective is to find the smallest cardinality 
                    set of measurement nodes.  
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                | Tuesday, December 4, 2007 | 
                
                   Peter Sturdza, Desktop Aeronautics, Palo Alto, CA 
                    Design Optimization of a Supersonic Natural Laminar Flow 
                    Business Jet 
                    Few aircraft are specifically designed to emphasize passive 
                    laminar flow at the preliminary design stage. The Aerion natural 
                    laminar flow supersonic business jet concept requires just 
                    that. This paper discusses some details of the unique technology 
                    developed for the design of Aerions revolutionary jet. 
                    An overview of the laminar flow features of the configuration 
                    are presented, along with a summary of the design-oriented 
                    transition prediction methodology used for aerodynamic design 
                    of the airplane. Results from aerodynamic shape optimizations 
                    of the business jet and of a new high Reynolds number supersonic 
                    laminar flow experiment are also presented. 
                   
                  and 
                  Sivakumaran Nadarajah, Department of Mechanical Engineering, 
                    McGill University 
                    Pushing the Limits of Optimum Shape Design for Unsteady 
                    FlowsIn the past decade, aerodynamic shape optimization 
                    has been the focus of attention due largely to advanced algorithms 
                    that have allowed researchers to calculate gradients cheaply 
                    and efficiently. The majority of work in aerodynamic shape 
                    optimization has focused on the design of aerospace vehicles 
                    in a steady flow environment. Investigators have applied these 
                    advanced design algorithms, particularly the adjoint method, 
                    to numerous problems, ranging from the design of two-dimensional 
                    airfoils to full aircraft configurations to decrease drag, 
                    increase range, and reduce sonic boom. Researchers have tackled 
                    these problems using many different numerical schemes on both 
                    structured and unstructured grids. 
                  Unlike fixed wing aircraft, helicopter rotors and turbomachinery 
                    blades operate in an unsteady flow and are constantly subjected 
                    to unsteady loads. The flight envelope of a helicopter rotor 
                    is set by the compressibility effects experienced by the advancing 
                    rotor blade and by the dynamic stall of the retreating blade. 
                    As the helicopter forward flight speed increases, local supersonic 
                    zones that terminate at a shock wave develop on the advancing 
                    side, while at the retreating phase, the blade's velocity 
                    relative to the air decreases and the blade approaches the 
                    stall angle. This causes significant flow separation to occur 
                    on the upper surface of the blade, which in turn produces 
                    a loss in lift. All these issues have to be carefully taken 
                    into consideration to fully appreciate the performance of 
                    helicopter rotor blades. 
                  Despite the recent efforts in ameliorating existing steady 
                    flow aerodynamic shape optimization algorithms, there is a 
                    considerable need to develop innovative and cost-effective 
                    optimal control techniques as well as new schemes for the 
                    design of aerodynamic surfaces subjected to unsteady loads. 
                    The goal is to push the limits on both the development of 
                    new schemes for the solution of unsteady flows as well as 
                    new algorithms for the design of aerodynamic shapes subject 
                    to unsteady loads. 
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                | Tuesday, November 13, 2007 | 
                Andras Prekopa, Rutcor, Rutgers Center for Operations 
                  Research 
                   Optimization Methods in Valuation of Financial Derivatives 
                  and Financial Planning
Valuation of financial derivatives and financial planning 
                    are two different directions in mathematical finance. Both 
                    use optimization methods and we present a few recent models 
                    and methodologies in both directions. Dynamic programming 
                    problems are formulated for the valuation of the Bermudan 
                    and American put and call, dividend paying options under the 
                    Black-Scholes-Merton model for the asset price process. The 
                    models are solved by formulas that are numerically evaluated. 
                    Under more general conditions, the problem to approximate 
                    the price of a derivative, by the use of lower and upper bounds, 
                    is formulated as a special case of the classical moment problem. 
                    The probability distribution of the asset price is unknown 
                    but moment information is assumed to be available. Formulas, 
                    as well as specially designed algorithms provide us with the 
                    approximating values. Finally, we present recent results on 
                    the use of VaR, CVaR and CVAR risk measures in optimal portfolio 
                    composition problems. 
                  and 
                  Reha Tutuncu, Goldman Sachs 
                    Optimization and Quantitative Portfolio Management 
                  Optimization models and methods are central elements of quantitative 
                    equity portfolio management platforms. They serve as sophisticated 
                    tools for transfering the excess return ideas generated through 
                    research and testing into portfolios that best represent these 
                    ideas. In addition to the standard mean-variance optimization 
                    models that are adjusted for trading costs, we will discuss 
                    topics such as multi-portfolio optimization (optimizing multiple 
                    portfolios simultaneously while minimizing the joint market 
                    impact costs) and multi-period portfolio selection. 
                   
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                | Tuesday, October 2, 2007 | 
                
                   Eva K. Lee, Director 
                    Center for Operations Research in Medicine and HealthCare 
                     
                    School of Industrial and Systems Engineering, Georgia Institute 
                    of Technology 
                    and  
                    Department of Radiation Oncology  
                    School of Medicine  
                    Emory University  
                   
                   Robust Optimization to Accommodate Effects of Systematic 
                    Treatment Uncertainties 
                     
                    Efficient and reliable IMRT treatment planning is challenging 
                    even when using only a single frozen-in-time CT scan of anatomic 
                    structures. The challenge is intensified in 4-D treatment 
                    planning, which is based on highly expanded imaging datasets 
                    that provide views of structure shape and position shifts 
                    over time. Incorporating these expanded datasets into the 
                    treatment planning process has the potential to yield better 
                    treatment plans, but at the same time results in models and 
                    optimization problems that are several magnitudes larger than 
                    those associated with traditional single-time-period planning. 
                    And along with the increase in problem size, there are additional 
                    sources of uncertainty and error (e.g., uncertainties in breathing 
                    trajectories, errors in organ contour outlining related to 
                    the increased number of images). Treatment planning methods 
                    must therefore be developed that can accommodate the increased 
                    problem size, and at the same time compensate for the errors 
                    and uncertainties. 
                  In this talk, we describe various mathematical models for 
                    such robust and large-scale planning methods. Their mathematical 
                    complexity will be analyzed, and theoretical results will 
                    be described. We will demonstrate that our methods allow a 
                    reduction in mean dose to normal tissue, and in some cases, 
                    higher dose to tumor volume. 
                  and 
                  Timothy Craig, Princess Margaret Hospital 
                    Accuracy in Radiation Therapy: Current Achievements, Future 
                    Solutions 
                  Recent technical innovations in radiation therapy such as 
                    intensity modulated radiation therapy (IMRT) and image-guided 
                    radiation therapy (IGRT) provide the ability to deliver a 
                    high dose of radiation that conforms to the shape of a tumour 
                    while also avoiding healthy tissue. To ensure that the high 
                    radiation dose is localized on the tumour, great accuracy 
                    is required for treatment delivery. In addition, treatment 
                    must be designed to be robust to residual uncertainties in 
                    the treatment process. 
                  This talk will briefly introduce the basics of radiation 
                    therapy and highlight some of the recent developments and 
                    technical challenges in patient care taking place at Princess 
                    Margaret Hospital. 
                   
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