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                  THE 
                  FIELDS INSTITUTE FOR RESEARCH IN MATHEMATICAL SCIENCES 
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                        2013-14 
                          Fields  
                Industrial Optimization Seminar 
                at 5:00 p.m. 
                          at 
                          the Fields Institute, 222 College St., Toronto  
                          Map 
                          to Fields  
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            The inaugural meeting of the Fields Industrial Optimization Seminar 
              took place on November 2, 2004. The seminar meets in the early evening 
              of the first Tuesday of each month. Each meeting is comprised of 
              two related lectures on a topic in optimization; typically, one 
              speaker is a university-based researcher and the other is from the 
              private or government sector. The series welcomes 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. 
               
              The Fields Institute makes a video record of this seminar through 
              FieldsLive. If you make a presentation 
              to the Seminar, the Institute will be video-recording the presentation 
              and will make the video record 
              available to the public.  
            
            
               
                |  Past 
                  2013-14 Seminars  | 
               
               
                | May 20 | 
                 
                   5:00 p.m. 
                    Thomas Adams, McMaster University 
                    Green power plants of the future (slides) 
                   
                   
                    Although it is possible to capture CO2 emissions from state-of-the-art 
                      natural gas and coal power plants, it is extremely expensive 
                      and energy intensive to do so. Instead, future green power 
                      plants will produce electricity without combustion in air 
                      such that CO2 capture is considerably easier by design. 
                      One promising possibility is a solid oxide fuel cell power 
                      plant integrated with compressed air energy storage. This 
                      proposed system has the capability to achieve 100% carbon 
                      capture while raising or lowering the power output according 
                      to demand. However, in order to make the system work efficiently 
                      and economically, a rolling horizon optimization (RHO) control 
                      strategy can be applied. The RHO determines the amount of 
                      energy to store or release in real time by considering information 
                      such as the current state of the system, current and predicted 
                      prices of electricity, and current and predicted electricity 
                      demands from the grid. The RHO can be modified to achieve 
                      either performance or economic objectives, with very different 
                      results in behaviour. Overall, the system is quite successful 
                      at meeting both environmental and grid performance objectives 
                      with only small price premiums over the status quo. 
                     
                   
                  6:00 p.m. 
                    Adam Warren, National Renewable Energy Laboratory 
                    REOpt: Renewable Energy Integration and Optimization  
                   
                   
                    REopt is an energy planning platform offering concurrent,multiple 
                      technology integration and optimization capabilities to 
                      help clients meet their cost savings and energy performance 
                      goals. The REopt platform provides techno-economic decision 
                      support for project screening and energy asset operation. 
                      REopt employs an integrated approach to optimizing the energy 
                      costs of a site by considering electricity and thermal consumption, 
                      resource availability, and complex tariff structures , incentives, 
                      and interconnection limitations.Formulated as a mixed integer 
                      linear program, REopt recommends an optimally-sized mix 
                      of conventional and renewable energy, and energy storage 
                      technologies; estimates the net present value associated 
                      with implementing those technologies; and provides the cost-optimal 
                      dispatch strategy for operating them at maximum economic 
                      efficiency. 
                   
                  
                    
                   
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                | March 
                  4 | 
                 
                   5:00 p.m. 
                    Adrian Nachman, University of Toronto 
                    A Variational Problem Arising in Conductivity Imaging from 
                    Interior Measurements 
                   
                    Imaging electric conductivity of tissue is both desirable 
                      and challenging. The classical Electric Impedance Tomography 
                      Problem seeks to determine the conductivity from measurements 
                      of voltages and currents at the boundary; it has spurred 
                      deep and far-reaching mathematical developments. The ill-posedness 
                      of the problem is now well understood, and places severe 
                      limitations on the resolution that can be achieved. We will 
                      discuss one approach to overcome these limitations: using 
                      interior current density data obtainable by a method pioneered 
                      by Joy, Scott and Henkelmann at the University of Toronto 
                      which makes use of Magnetic Resonance Imagers in a novel 
                      way. 
                    We only require knowledge of the magnitude |J| of one current 
                      for a given voltage f on the boundary. We show that the 
                      corresponding electric potential is the unique solution 
                      of a constrained minimization problem with respect to a 
                      weighted total variation functional defined in terms of 
                      the physical data. Working with the dual variational problem 
                      leads naturally to an alternating split Bregman algorithm, 
                      for which we prove convergence. The dual problem also turns 
                      out to yield a novel method to recover the full vector field 
                      J from knowledge of its magnitude, and of the voltage f 
                      on the boundary. Time permitting, we will discuss the corresponding 
                      problem for anisotropic conductivities. 
                    The results presented are from joint work with Nicholas 
                      Hoell, Robert Jerrard, Amir Moradifam, Alexandru Tamasan 
                      and Alexander Timonov. Experimental results are joint work 
                      with Nahla Elsaid, Michael Joy, Weijing Ma, and Tim DeMonte. 
                   
                  
                     
                  6:00 p.m. 
                    Douglas C. White, Emerson Process Management  
                    Process Plant Optimization in Real Time: Energy and Environmental 
                    Interactions 
                   
                    Many industrial plants produce products worth millions 
                      of dollars per day and continuous financial optimization 
                      of their operations is obviously attractive. Applications 
                      of real time optimization technology in the process industries 
                      have been attempted for at least the last fifty years; sometimes 
                      successfully, sometimes not. In this presentation there 
                      will be a short review of the history of these attempts 
                      and some of the lessons learned. With the global increase 
                      in energy costs and environmental regulations, a current 
                      focus is real time optimization of the very complex energy 
                      systems in these large industrial sites and the associated 
                      environmental impact. Optimization has to fit within the 
                      overall control hierarchy and structure at the site which 
                      creates special system requirements. The problem structure, 
                      issues and current status of these applications is presented 
                      as well as open questions that are topics for future developments. 
                   
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                 December 
                  3, 2013 
                   
                    
                   
                  Click for full size  | 
                 
                   Laura Sanita, University of Waterloo (slides) 
                    Finding small stabilizers for unstable graphs 
                   
                    A vertex v of a graph G is called inessential if there 
                      exists a maximum matching in G that exposes v. G is said 
                      to be stable if the set of its inessential vertices forms 
                      a stable set. Stable graphs play a key role in network bargaining 
                      games where we are given a set of players represented as 
                      vertices of a graph G, and a set of possible deals between 
                      players represented by the edges of G. Kleinberg and Tardos 
                      [STOC 08] defined the notion of a balanced outcome 
                      for a network bargaining game, and proved that a balanced 
                      outcome exists if and only if the correspondent graph G 
                      is stable. This connection motivates the optimization problem 
                      of finding a minimum cardinality stabilizer of a given unstable 
                      graph G, that is a subset of edges F such that G \ F is 
                      stable. In this talk we prove some structural results about 
                      this problem and develop efficient approximation algorithms 
                      for sparse graphs. Joint work with A. Bock, K. Chandrasekaran, 
                      J. Koenemann, and B. Peis. 
                     
                   
                  Ritchie (Yeqi) He, Royal Bank of Canada 
                    An Improved Model for Calculation of Debt Specific Risk 
                    VaR with Tail Fitting 
                   
                    Initially introduced in the 1996 Amendment of Basel Accord, 
                      the specific (or spread) risk of a debt portfolio (DSR) 
                      is the risk due to changes of idiosyncratic credit spreads 
                      (bond spreads or CDS spreads) related to individual entities. 
                      Financial institutions are allowed to use internal models 
                      to calculate the Value-at-Risk (VaR) of DSR. Internal models 
                      usually calculate portfolio DSR PnL based on an assumption 
                      that idiosyncratic credit spreads follow a tractable closed-form 
                      joint distribution such as multi-variate normal or student's 
                      t-distribution. This assumption may not give a satisfactory 
                      approximation to the joint distribution because the marginal 
                      distribution of idiosyncratic credit spreads usually has 
                      fat tails. To better model fat tails, we propose an improved 
                      Monte Carlo-based model to calculate the DSR VaR. In the 
                      proposed model, the marginal distribution is modeled by 
                      a normal kernel distribution with Pareto tails, and the 
                      dependence structure of idiosyncratic credit spreads are 
                      captured by a student's t copula. For Pareto tails, the 
                      calibration of shape parameters and scale parameters involves 
                      a series of density fitting problems, which are solved by 
                      the maximum likelihood estimation. Numerical results show 
                      that, the proposed model is capable to generate more accurate 
                      distributions, and consequently the quality of estimation 
                      of the DSR VaR is improved.  
                     Joint work with Meng Han, Royal Bank of Canada. 
                     
                   
                   Please click here for Dr. He's presentation 
                     
                   
                     
                    
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                   September 24, 2013 
                     
                   
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                3:15 
                  - 4:05 p.m. 
                  Jonathan Briggs (Canada Pension Plan Investment Board) 
                  Video of talk 
                  A Portfolio Construction Toolkit 
                   
                     In the practitioner world, the value of portfolio construction 
                      is often viewed with skepticism - a skepticism born of an 
                      honest assessment of the dubious forecasting power of the 
                      inputs and the opacity of the process. Despite all our wonderful 
                      mathematical gymnastics, if we dont know the nature 
                      what is consumed, how can we possibly truthfully convey 
                      the nature of what we create? Now suppose we knew the distributions, 
                      the dynamics, the Information Ratio (IR) and the interrelationships 
                      between a multifactor model and its returns, and further 
                      we could disentangle each twist and turn of the raw factors 
                      as they are transformed into trades and holdings? Well, 
                      then maybe we really could demonstrate the value of portfolio 
                      construction.  
                   
                  _____________ 
                    4:05 - 4:55 p.m. 
                    Bogie Ozdemir (Sun Life Financial Group) Video 
                    of talk 
                    Capital and Business Mix Optimization 
                   
                    Basel III amounts to a climate change in the banking industry. 
                      It increased the capital requirements significantly - especially 
                      for certain businesses (most notably Capital Markets) and 
                      decreased the acceptable forms of capital. Capital has become 
                      a scarce resource under Basel III, putting significant downward 
                      pressure on ROE. In this new environment, banks will need 
                      to change their business mixes, exit or shrink capital heavy 
                      businesses and adjust their operating models, while meeting 
                      income targets. During this course correction their ROE 
                      and Income Targets will be challenged further as some re-balancing 
                      of operating models may compromise short term income to 
                      improve ROE in future years. Subject to more onerous capital 
                      requirements under Basel III banks will need to increase 
                      the efficiency of capital utilization and place greater 
                      emphasis on optimizing capital allocation and business mix 
                      across their operations. In this presentation, we will discuss 
                      how to establish an optimization framework incorporating 
                      both economic and regulatory capital.  
                     
                   
                   
                   
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