Developing hybrid intelligent location optimisers for spatial modelling in GIS


Click here to start


Table of Contents

Developing hybrid intelligent location optimisers for spatial modelling in GIS

Contents

Background

Location optimisation

Cont’d

BUT !

What’s wrong with what exists already?

Objectives

Algorithm development

The Structure of a Genetic Algorithm

The structure of a Simulated Annealing Algorithm

Benchmark test

Rosing data set

PPT Slide

Algorithm building process 1 - Traditional optimisation approach -

Algorithm building process 2 - Hybrid intelligent optimisation techniques -

Optimal centres location map

Optimal solution for various p-median problems

PPT Slide

Summary of test 1 (Rosing data)

PPT Slide

Optimal solutions and computational performances

50 centres

PPT Slide

Summary of test 2 (Leeds-Bradford ED 2315 points)

Cont’d

Cont’d

Conclusions

Further research works

Authors: Young Hoon Kim and Stan Openshaw

Email:
pgky@geog.leeds.ac.uk
stan@geog.leeds.ac.uk

Home Page:
http://www.geog.leeds.ac.uk/pgrads/y.kim/
http://www.geog.leeds.ac.uk/staff/s.openshaw/