<- Archives UCL - Programme d'études ->



Operational Research [ LINMA2491 ]


5.0 crédits ECTS  30.0 h + 22.5 h   2q 

Teacher(s) Papavasiliou Anthony ;
Language English
Place
of the course
Louvain-la-Neuve
Online resources

> https://icampus.uclouvain.be/claroline/course/index.php?cid=LINMA2491

Prerequisites
  • Fluency in English at the level of course LANGL1330
  • Linear programming , integer programming
  • Familiarity with probability theory
  • Familiarity with math programming languages (AMPL, Mosel)
Main themes
  • Mathematical background (duality, KKT optimality conditions, monotone operators)
  • Mathematical programming models and languages
  • Applications: finance, logistics, risk management, energy
Aims

In reference to the AA standard, this course contributes to the development, acquisition and evaluation of the following learning outcomes:

  • AA1.1, AA1.2, AA1.3
  • AA2.2, AA2.5

At the end of the course, students will be able to:

  • Formulate problems of decision-making under uncertainty as mathematical programs
  • Identify structure in large-scale mathematical programs that enables their decomposition
  • Design algorithms for solving large-scale optimization problems under uncertainty
  • Implement algorithms for solving large-scale optmization problems in AMPL
  • Evaluate the quality of policies for making decisions under uncertainty
Evaluation methods
  • Written exam
  • Course project and regular homework assignments
Teaching methods

2 hours of magistral courses per week, and 2 hours of training sessions per week. Homeworks and term projects will be evaluated by the instructor and/or the teaching assistant.

Content
  • Stochastic programming models
  • Value of perfect information and the value of the stochastic solution
  • The L-shaped method in two and multiple stages
  • Multi-cut L-shaped algorithm
  • Stochastic dual dynamic programming
  • Scenario selection and importance sampling
  • Lagrangian relaxation
  • Stochastic integer programming
  • Monotone operators, proximal point algorithms and progressive hedging
Bibliography
  • Course notes
  • 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"
Cycle et année
d'étude
> Master [120] in Mathematical Engineering
Faculty or entity
in charge
> MAP


<<< Page précédente