Module Leader
Lecturers
Prof. Garth Wells and Prof. Geoff Parks
Timing and Structure
Michaelmas Term. 13 lectures + 3 coursework sessions. Assessment: 100% coursework. Lectures will be recorded.
Prerequisites
3M1
Aims
The aims of the course are to:
- Teach some of the basic optimisation methods used to tackle difficult, real-world optimisation problems.
- Teach means of assessing the tractability of nonlinear optimisation problems.
- Develop an appreciation of practical issues associated with the implementation of optimisation methods.
- Provide experience in applying such methods on challenging problems and in assessing and comparing the performance of different algorithms.
Objectives
As specific objectives, by the end of the course students should be able to:
- Understand the basic mathematics underlying linear and convex optimisation.
- Be able to write and benchmark simple algorithms to solve a convex optimisation problem.
- Understand the technique of Markov-Chain Monte Carlo simulation, and apply it to solve a Travelling Salesman Problem.
- Understand the ways in which different heuristic and stochastic optimisation methods work and the circumstances in which they are likely to perform well or badly.
- Understand the principles of multiobjective optimization and the benefits of approaching real-world optimisation problems from a multiobjective perspective.
Content
- Introduction (what is Practical Optimisation?)
- Approximately solving Ax=b (various methods of norm minimization of residuals that lead to LP or convex problems)
- Geometry of polyhedral and convex sets (review of the simplex method; introduction to algorithmic complexity)
- Duality theory and its applications
- Unconstrained optimisation
- Important convex relaxations in cardinality problems
- Circumstances in which 'methods of last resort' are needed
- Simulated Annealing: basic concepts, solution representation and generation, the annealing schedule, enhancements and modifications
- Genetic Algorithms: basic concepts, solution representation, selection, crossover, mutation
- Tabu Search: basic concepts, solution representation, local search, intensification, diversification
- Multiobjective Optimization: archiving, multiobjective simulated annealing, multiobjective genetic algorithms
- Case Study: multiobjective optimization of pressurised water reactor reload cores
Coursework
Coursework |
Format |
Due date & marks |
---|---|---|
Coursework activity #1: Investigation of a moderate size Linear Regression problem with various norm and regularization approximations Learning objective:
|
Individual report anonymously marked |
Deadline: 8th December 2023 [30/60] |
Coursework activity #2: Investigation of the performance of two stochastic optimization methods on a hard problem Learning objective:
|
Individual report anonymously marked |
Deadline: 16th January 2024 [30/60] |
Booklists
Please refer to the Booklist for Part IIB Courses for references to this module, this can be found on the associated Moodle course.
Examination Guidelines
Please refer to Form & conduct of the examinations.
UK-SPEC
This syllabus contributes to the following areas of the UK-SPEC standard:
Toggle display of UK-SPEC areas.
Intellectual Abilities
Knowledge and Understanding
Practical skills
Engineering Analysis (E)
Underpinning Science and Mathematics and associated engineering disciplines
Practical skills
Engineering Analysis (E)
Underpinning Science and Mathematics and associated engineering disciplines
Underpinning Science and Mathematics and associated engineering disciplines
Last modified: 30/05/2023 15:35