Algorithms for Large-Scale Nonlinearly Constrained Optimization
Lead Research Organisation:
University of Oxford
Department Name: Computer Science
Abstract
The solution of large-scale nonlinear optimization-- minimization ormaximization - problems lies at the heart of scientificcomputation. Structures take up positions of minimal constrainedpotential energy, investors aim to maximize profit while controllingrisk, public utilities run transmission networks to satisfy demand atleast cost, and pharmaceutical companies desire minimal drug doses totarget pathogens. All of these problems are large either because themathematical model involves many parameters or because they are actuallyfinite discretisations of some continuous problem for which thevariables are functions.The purpose of this grant application is to support the design, analysisand development of new algorithms for nonlinear optimization that areparticularly aimed at the large-scale case.We shall focus on methods which attempt to improve simplified (cheaper) approximations of the actual (complicated) problem.Such a procedure may be applied recursively, and the mostsuccessful ideas in this vein are known as sequential quadraticprogramming (SQP). Our research is directed on ways to improve onSQP particularly when the underlying problem is large, and indeedparticularly in the case where SQP itself may be too expensive tocontemplate. The end goal of our research is to produce high-quality, publicly available software as part of the GALAHAD library.
Organisations
People |
ORCID iD |
| Nicholas Ian Mark Gould (Principal Investigator) |
Publications
Dollar H
(2010)
Preconditioning Saddle-Point Systems with Applications in Optimization
in SIAM Journal on Scientific Computing
Gould N
(2010)
Spectral Analysis of Saddle Point Matrices with Indefinite Leading Blocks
in SIAM Journal on Matrix Analysis and Applications
Gould N
(2013)
Trajectory-following methods for large-scale degenerate convex quadratic programming
in Mathematical Programming Computation
Cartis C
(2009)
Trust-region and other regularisations of linear least-squares problems
in BIT Numerical Mathematics
| Description | We have designed, analysed and implemented a variety of novel algorithms for solving nonlinear optimization (minimization or maximization) problems. Such problems arise throught science, engineering, economics and planning, and are at the heart of human enterprise. |
| Exploitation Route | The essential algorithms we have developed form part of GALAHAD, our library of packages for solving nonlinear optimization problems. The theoretical implications are available to all via our publications, and have moved forward our understanding of how optimization methods work. |
| Sectors | Aerospace Defence and Marine Chemicals Construction Digital/Communication/Information Technologies (including Software) Education Electronics Energy Environment Manufacturing including Industrial Biotechology Pharmaceuticals and Medical Biotechnology Retail Transport Other |
| URL | http://www.numerical.rl.ac.uk/people/nimg/ |
| Description | The open source optimization packages GALAHAD and CUTEst have been dowloaded by a variety of academic and commercial organisations. |
| First Year Of Impact | 2005 |
| Sector | Aerospace, Defence and Marine,Chemicals,Construction,Education,Energy,Transport,Other |
| Impact Types | Economic |
| Title | GALAHAD |
| Description | A library of packages for nonlinear optimization |
| Type Of Technology | Software |
| Year Produced | 2006 |
| Open Source License? | Yes |
| Impact | Downloaded more than 1000 times |
| URL | http://www.galahad.rl.ac.uk/ |