course-details-portlet

IØ8403 - Stochastic Optimization

About

Examination arrangement

Examination arrangement: Assignment
Grade: Passed / Not Passed

Evaluation Weighting Duration Grade deviation Examination aids
Assignment 100/100

Course content

The course is an introduction to stochastic optimization. The course will cover the following topics:

  • Motivation for stochastic optimization: why does uncertainty matter?
  • Different modeling approaches, with a particular focus on recourse models
  • Theoretical properties of recourse models
  • Solution algorithms, among which: Benders' decomposition (L-shaped), stochastic dual dynamic programming (SDDP), and dual decomposition
  • Scenario generation
  • Applications of stochastic optimization (with a focus on energy)

Learning outcome

Position and function within the study programme:

The course is designed for PhD students of the Department of Industrial Economics and Technology Management (IØT) and other departments who work with theoretical and practical optimization problems in different branches of industry and services with substantial uncertainty about problem data and other elements of problem formulation. The course is built upon optimization courses in IØT's master programme and knowledge of probability theory.

The course will convey the following knowledge: The theoretical foundation necessary for formulation, analysis and solution of stochastic programming problems and relevant applications; The knowledge necessary to conduct research in the field of optimization under uncertainty.

The course will develop the following skills: modeling and solving practical problems as a stochastic optimization model.

Other important learning objectives: Recognize when explicit modeling of uncertainty is important; Validating models by using stability tests.

Learning methods and activities

Lectures and non-obligatory exercises. The course can be given in form of intensive lectures with several hours per day, several days per week, during a limited number of weeks in the semester.

Required previous knowledge

Master of Science in Industrial Economics and Technology Management, or similar.

Course materials

Given at the beginning of the semester.

Credit reductions

Course code Reduction From To
IØ8401 5.0 AUTUMN 2023
More on the course

No

Facts

Version: 1
Credits:  5.0 SP
Study level: Doctoral degree level

Coursework

Term no.: 1
Teaching semester:  AUTUMN 2024

Language of instruction: English

Location: Trondheim

Subject area(s)
  • Managerial Economics, Finance and Operations Research
  • Industrial Economics and Technology Management
  • Business Economics
  • Operations Research
Contact information
Course coordinator: Lecturer(s):

Department with academic responsibility
Department of Industrial Economics and Technology Management

Examination

Examination arrangement: Assignment

Term Status code Evaluation Weighting Examination aids Date Time Examination system Room *
Autumn ORD Assignment 100/100 INSPERA
Room Building Number of candidates
  • * The location (room) for a written examination is published 3 days before examination date. If more than one room is listed, you will find your room at Studentweb.
Examination

For more information regarding registration for examination and examination procedures, see "Innsida - Exams"

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