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.
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        UPCOMING SEMINARS,
          Seminars start at 5:00 pm at the Fields Institute, 222 College Street, 
          Room 230
           
         
          May 2, 2006 --Energy Markets: Theory and Practice.
            
            Speakers: 
            Peter J. Vincent, Manager Quantitative Analysis, Risk Services, 
            Ontario Power Generation
            Introduction to Energy Markets
            This talk gives an overview of the basic principles that govern energy 
            markets, and discuss the characteristics and interaction of load, 
            transmission and generation.
            
            Hans J.H. Tuenter, Senior Model Developer, Planning & Analysis, 
            Ontario Power Generation
            Mathematical models in Energy Markets. 
            This talk gives an overview of the different mathematical models and 
            techniques that are being used in energy markets.
            
            Matt Davison, Associate professor of Applied Mathematics and 
            Faculty of Science Scholar at the University of Western Ontario.
            Valuation and Optimal Control of Energy Assets. 
            This talk represents joint work with Matt Thompson and Henning Rasmussen. 
            I will discuss the ways in which real options theory can be used both 
            to value and to determine optimal control strategies for real energy 
            generation assets. After motivating the analysis and developing a 
            general framework for analyzing such assets, we will look at the particular 
            challenges of optimizing three particular assets -- a thermal (coal 
            fired) power plant, a pump storage hydroelectric unit, and a natural 
            gas storage facility. I will close by discussing current work on extending 
            these ideas to other energy assets. 
            
          
           
        PAST SEMINARS
        April 4, 2006
         
          Workshop on IMRT Radiation Therapy Treatment Planning: 
            Target Uncertainties, Computational Challenges and Beyond
            Eva Lee (Georgia Tech)
            Large-Scale Optimization Strategies for Optimal Cancer Treatment 
            Design
            and 
            Joseph Deasy (Washington University)
            Computational challenges in radiation oncology 
        
        March 7, 2006
         
          Daniel E. Rivera, Department of Chemical and Materials Engineering, 
            Arizona State University
            "Plant-Friendly" System Identification: A Challenge for 
            the Process Industries
          Dynamic modeling is a critical task to many problems in the areas 
            of simulation, prediction, and control of process systems. Most industrial 
            plants are either too complex, or the underlying processes too poorly 
            understood, to be adequately modeled using first principles. A sensible 
            approach, then, is to estimate dynamical models from data generated 
            through well-designed experiments; this is the problem of system identification. 
            Certain industries, such as petrochemicals and refining, rely almost 
            exclusively on system identification as the principal means for obtaining 
            the dynamic models necessary to design advanced control systems.
          The term "plant-friendly" system identification has been 
            used within the chemical process control community in reference to 
            the broad-based goal of accomplishing informative identification testing 
            while meeting the demands of industrial practice. In the formulation 
            developed in this talk, a priori knowledge available to the engineer 
            is used to specify a frequency spectrum for a multisine input signal. 
            An optimization problem is then solved which seeks to find the optimal 
            phases of the multisine signal (and additionally, the Fourier coefficients 
            in frequency bands not specified by the user) that directly minimize 
            friendliness criteria such as crest factor. The optimization problem 
            is solved in the presence of explicit time-domain constraints on upper/lower 
            limits and rate of change in either (or both) input and output signals. 
            Such a constrained time-domain formulation is appealing to process 
            control engineers, who tend to think more in terms of maintaining 
            high/low limits, move size constraints, and test duration during identification 
            testing, and less in terms of norm criteria that are typically used 
            in the classical optimal experimental design formulations.
          The optimization-based framework developed in this talk is illustrated 
            with an application to a high-purity distillation column, a demanding 
            nonlinear and multivariable process system. The paper concludes with 
            a discussion of identification test monitoring as an important novel 
            paradigm for accomplishing plant-friendly identification.
          and
          Hans D. Mittelmann, Department of Mathematics and Statistics, 
            Arizona State University
            State-of-the-Art in the Solution of Control-Related Nonlinear Optimization 
            Problems 
          We start by giving an overview of some of our activities related 
            to the computational solution of a range of optimization problems, 
            including a leading web-based guide to software and its performance 
            and a major installation of free web-based solvers.
           Then we sketch two classes of problems from our recent research, 
            PDE constrained optimization as it arises in the control of PDEs and 
            system identification problems. The first class gives rise to very 
            large and sparse nonlinear optimization problems that still challenge 
            state-of-the art algorithms including commercial products.
           The second class of problems are system identification problems 
            including those suitable for data-centric estimation and control. 
            At first we will address the solution of the crest-factor optimization 
            problems described in the previous lecture, then we will introduce 
            a novel optimization formulation which has facilitated the application 
            of MoD (Model-on-Demand) type of control for process systems. For 
            all problems considered formulations in the modeling language AMPL 
            are utilized and we sketch some exemplarily.
        
        February 7, 2006
         
          Jorge Nocedal, McCormick School of Engineering and Applied 
            Science, Northwestern University 
            New Developments in Nonlinear Optimization
          In the last 5 years, the field of nonlinear optimization has grown 
            and evolved at a rapid pace. We now have a much better understanding 
            of constrained optimization at both the algorithmic and theoretical 
            levels. This talk reviews these recent developments.
          Nonlinear optimization is also expanding in new directions, guided 
            by applications in financial engineering, integrated circuit design, 
            and wireless communications. In all these areas it is important to 
            solve optimization problems with complementarity constraints. These 
            problems pose challenging theoretical and algorithmic challenges, 
            which will be discussed in this talk. Some recent successful applications 
            will be presented.
          and
          Kankar Bhattacharya, University of Waterloo
            New NLP problems for Power System Analysis and Operation in Competitive 
            Electricity Markets
          This presentation discusses in detail several novel applications 
            of NLP to the analysis and operation of power grids in the context 
            of competitive electricity markets. In particular, various new NLP 
            models designed and developed for dispatch and clearing of power networks 
            and their associated markets are presented, emphasizing their unique 
            characteristics, such as the introduction and handling of implicit 
            constraints and the use of heuristics to transform the optimization 
            problem into an NLP problem, which exploit the particular characteristics 
            of these optimization problems so that they can be solved more efficiently. 
            These optimization problems are compared with respect to more classical 
            models currently being used by industry to highlight their unique 
            characteristics and challenges.
        
         
        December 6, 2005
         
          John Birge, University of Chicago
            Research Challenges and Opportunities for Optimization in the Energy 
            Sector
          The energy sector presents multiple opportunities for optimization 
            applications while also presenting numerous challenges. This talk 
            will focus on these issues for electricity markets with an emphasis 
            on common characteristics in other energy markets: high volatility, 
            dynamic and distributed decision making, estimation difficulties, 
            limited storage capacity, and significant fixed costs. 
            
            The talk will consider the impact of these factors on optimization 
            models, current methods to address these issues, and directions for 
            further research.
          and
          Samer Takriti, IBM
             Stochastic Programming Applications in Deregulated Energy Markets
          Until the early 1990s, the US electric power utilities were fully 
            regulated with captive customers and controlled tariffs. However, 
            the deregulation of the energy market, which began in 1992 with the 
            Energy Policy Act, changed market dynamics by opening the transmission 
            system and creating hubs for trading energy. As a result, most utilities 
            were faced with increased competition and opportunities. In this talk, 
            we discuss energy markets and associated uncertainties from the point 
            view of a power producer. We then discuss two problems, namely the 
            unit commitment problem and the problem of selecting bids in the next-day 
            energy market, which we model as mixed-integer stochastic programs. 
            We present numerical results for work with two energy clients. 
        
        
        November 1, 2005
         
          Natalia Alexandrov, NASA Langley Lab.
            Managing models in simulation based design optimization
            
            Advances in numerical modeling and computational power enable increasingly 
            accurate simulation of physical and engineering phenomena. However, 
            the enormous cost of repeated high-fidelity simulations, such as the 
            Navier-Stokes equations or those based on fine computational meshes, 
            makes the use of high-fidelity models impractical in the context of 
            single-discipline or multidisciplinary design optimization.
          Approximation and model management optimization (AMMO) combines the 
            use of general variable-fidelity models with analytically substantiated 
            algorithms to improve tractability of design with high-fidelity, expensive 
            models while preserving provable convergence properties. While in 
            demonstrations to-date AMMO has produced significant savings as compared 
            to algorithms that use a single-fidelity model, these savings are 
            highly dependent on the non-local properties of the lower-fidelity 
            models. In this talk, we discuss the attempts to detect these properties 
            and use them to speed up algorithms where the model quality is uncertain.
            --
            David Zingg, University of Toronto
            Topics in Aerodynamic Shape Optimization
            
            This presentation will focus on two important topics in aerodynamic 
            shape optimization. First, a comparison of a gradient-based and a 
            gradient-free strategy will be presented for several single-point, 
            multi-point, and multi-objective aerodynamic optimization problems. 
            The gradient is computed using the discrete-adjoint approach. The 
            two algorithms use the same geometry parameterization and produce 
            identical flow solutions for a given parameterization; consequently 
            the two design spaces are identical. The objective is to assess the 
            dependence of the relative cost of the two approaches on the nature 
            of the problem, the number of design variables, and the degree of 
            convergence required. The results indicate that the genetic algorithm 
            is better suited to preliminary design, while the gradient-based algorithm 
            is more appropriate for detailed design.
            
            The second portion of the presentation will focus on airfoil optimization 
            under variable operating conditions. Examples will be shown to demonstrate 
            that it is difficult to pose a multi-point optimization problem a 
            priori and that the feedback from the optimization can lead to better 
            problem specification. A technique will be presented to automatically 
            select sampling points and their weights in order to achieve desired 
            performance over a range of operating conditions, in this case constant 
            drag over a range of Mach numbers. The results provide insight both 
            in formulating and in solving multi-point aerodynamic optimization 
            problems.
          
        
        October 4, 2005
         
          Ellis Johnson, Georgia Institute of Technology, Atlanta GA
            Imposing Station Purity using Station Decomposition
          Fleet assignment models are used by many airlines to assign aircraft 
            to flights in a schedule to maximize profit [Abara 1986, Hane et al 
            1995]. A major airline reported that the use of the fleet assignment 
            model increased annual profits by more than $100 million [www.informs.org, 
            2002] a year over three years. The results of fleet assignment models 
            affect subsequent planning, marketing and operational processes within 
            the airline. Anticipating these processes and developing solutions 
            favorable to them can further increase the benefits of fleet assignment 
            models. We develop fleet assignment solutions that increase planning 
            flexibility and reduce cost by imposing station purity, limiting the 
            number of fleet types allowed to serve each airport in the schedule 
            [Smith and Johnson 2005]. Imposing station purity on the fleet assignment 
            model can limit aircraft dispersion in the network and make solutions 
            more robust relative to crew planning, maintenance planning and operations. 
          
          Because imposition of station purity constraints can significantly 
            increase computational difficulty, we develop a solution approach, 
            station decomposition, which takes advantage of airline network structure. 
            Station decomposition is an instance of Dantzig-Wolfe decomposition 
            and uses a column generation approach to solving the fleet assignment 
            problem. We further improve the performance of station decomposition 
            by developing a primal-dual method that increases solution quality 
            and reduces running times. This method can be applied generally within 
            the Dantzig-Wolfe decomposition framework to speed convergence. It 
            avoids "instability of the duals" and minimizes the "tailing" 
            effect. 
          Station decomposition solutions can be highly fractional causing 
            excessive running times in the branch-and-bound phase. We develop 
            a "fix, price, and unfix" heuristic to efficiently find 
            integer solutions to the fleet assignment problem. 
          Station purity can provide benefits to airlines by reducing planned 
            crew costs, maintenance costs, and the impact of operational disruptions. 
            We show that purity can provide compelling benefits (up to $29 million 
            per year) to airlines based on reduced maintenance costs alone. Benefits 
            associated with reduced crew costs are estimated at $100 million per 
            year, giving $129 million per year increased profit. We would expect 
            additional savings in operations. 
          References:
            Abara, J. (1989), "Applying Integer Linear Programming to the 
            Fleet Assignment Problem" Interfaces 19 pp. 20-28.
            Hane, C. A., C. Barnhart, E. L. Johnson, R. E. Marsten, G. L. Nemhauser, 
            G. Sigismondi (1995), "The Fleet Assignment Problem: Solving 
            a Large-scale Integer Program" Mathematical Programming 70 pp. 
            211-232. 
            http://www.informs.org/Press/EDELMAN02.html
            Smith, B. C., E. L. Johnson (2005), "Robust Airline Fleet Assignment: 
            Imposing Station Purity using Station Decomposition", submitted
          
          and 
           Stefan Karisch, Carmen Systems, Montreal QC
            Applying Optimization in the Airline Industry
            
            What does it take to successfully apply optimization in the airline 
            industry and build a company around it? I will try to answer this 
            and related questions in my presentation and use Carmen Systems as 
            an example. Carmen develops and implements resource management and 
            optimization solutions for demanding transportation operations. 
            Clients include five of the ten largest airlines in the world, namely 
            Air France, British Airways, Delta Air Lines, Lufthansa, Northwest 
            Airlines, and Deutsche Bahn (German Railways), one of the largest 
            passenger transportation companies in the world.
          
        
         
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