Operational Research
[ LINMA2491 ]
5.0 crédits ECTS
30.0 h + 22.5 h
2q
Teacher(s) |
Papavasiliou Anthony ;
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Language |
English
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Place of the course |
Louvain-la-Neuve
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Online resources |
> https://icampus.uclouvain.be/claroline/course/index.php?cid=LINMA2491
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Prerequisites |
LINMA1702 (Optimisation methods and models I)
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Main themes |
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Mathematical background (duality, KKT optimality conditions, monotone operators)
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Mathematical programming models and languages
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Applications: finance, logistics, risk management, energy
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Aims |
In reference to the AA standard, this course contributes to the development, acquisition and evaluation of the following learning outcomes:
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AA1.1, AA1.2, AA1.3
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AA2.2, AA2.5
More specifically, at the end of the course students will be able to:
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Use mathematical programming models in order to formulate decision-making problems under uncertainty and develop algorithms for solving these models
Acquired learning:
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Implement decomposition algorithms for solving large-scale optimization problems in two mathematical programming languages: AMPL and/or Mosel
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Identify and implement the most appropriate solution algorithms for specific classes of optimization problems under uncertainty that arise in finance, energy and logistics
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Evaluation methods |
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Written or oral exam, depending on the size of the class
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Course project and/or homework assignments (to be determined)
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Teaching methods |
2 hours of magistral courses per week, and 2 hours of training sections per week. Homeworks and term projects will be evaluated by the instructor and/or the teaching assistant.
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Content |
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Stochastic programming models
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Value of perfect information and the value of the stochastic solution
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The L-shaped method in two and multiple stages
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Multi-cut L-shaped algorithm
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Stochastic dual dynamic programming
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Scenario selection and importance sampling
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Lagrangian relaxation
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Stochastic integer programming
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Monotone operators, proximal point algorithms and progressive hedging
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Bibliography |
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Course notes
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Printouts from textbooks or archived journals will be provided during lectures. The following textbook will be followed closely for most of the course: John Birge, Francois Louveaux, "Introduction to Stochastic Programming"
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Cycle et année d'étude |
> Master [120] in Mathematical Engineering
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Faculty or entity in charge |
> MAP
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