Multiobjective Land Use Optimisation using Evolutionary Algorithms
نویسنده
چکیده
Acknowledgements Many thanks to the following people: To my supervisors Anders Barfod, Flemming Skov and Thiemo Krink for inspiring me to do this work and for the supervision i received during the process. To Rasmus Kjaer Ursem and Rene Thomsen from the EVALife Group for comments on the report and for linux and latex support when things got rough. To my girlfriend Tina and our children Anton and Kaisa for supporting me during the work.
منابع مشابه
Comparing Evolutionary Strategies on a Biobjective Cultural Algorithm
Evolutionary algorithms have been widely used to solve large and complex optimisation problems. Cultural algorithms (CAs) are evolutionary algorithms that have been used to solve both single and, to a less extent, multiobjective optimisation problems. In order to solve these optimisation problems, CAs make use of different strategies such as normative knowledge, historical knowledge, circumstan...
متن کاملCombining Hybrid Metaheuristics and Populations for the Multiobjective Optimisation of Space Allocation Problems
Some recent successful techniques to solve multiobjective optimisation problems are based on variants of evolutionary algorithms and use recombination and self-adaptation to evolve the population. We present an approach that incorporates a population of solutions into a hybrid metaheuristic with no recombination. The population is evolved using self-adaptation, a mutation operator and an inform...
متن کاملPreferences and their application in evolutionary multiobjective optimization
The paper describes a new preference method and its use in multiobjective optimisation. These preferences are developed with a goal to reduce the cognitive overload associated with the relative importance of a certain criterion within a multiobjective design environment involving large numbers of objectives. Their successful integration with several genetic algorithm–based design search and opt...
متن کاملAgent-based Evolutionary Multiobjective Optimisation
This work presents a new evolutionary approach to searching for a global solution (in the Pareto sense) to multiobjective optimisation problem. Novelty of the method proposed consists in the application of an evolutionary multi-agent system (EMAS) instead of classical evolutionary algorithms. Decentralisation of the evolution process in EMAS allows for intensive exploration of the search space,...
متن کاملEvolutionary Population Dynamics and Multi-Objective Optimisation Problems
Problems for which many objective functions are to be simultaneously optimised are widely encountered in science and industry. These multiobjective problems have also been the subject of intensive investigation and development recently for metaheuristic search algorithms such as ant colony optimisation, particle swarm optimisation and extremal optimisation. In this chapter, a unifying framework...
متن کامل