Publication | Open Access
Improving the performance of genetic algorithms for land-use allocation problems
45
Citations
51
References
2017
Year
Memetic AlgorithmEngineeringGenetic AlgorithmsLand UseIntelligent OptimizationCrossover OperatorsAgricultural EconomicsGenetic AlgorithmSystems EngineeringHybrid Optimization TechniqueUrban PlanningComputer ScienceMulti-objective OptimizationCombinatorial OptimizationSocial SciencesEvolutionary Multimodal OptimizationEvolutionary ProgrammingOperations Research
Multi-objective optimization can be used to solve land-use allocation problems involving multiple conflicting objectives. In this paper, we show how genetic algorithms can be improved in order to effectively and efficiently solve multi-objective land-use allocation problems. Our focus lies on improving crossover and mutation operators of the genetic algorithms. We tested a range of different approaches either based on the literature or proposed for the first time. We applied them to a land-use allocation problem in Switzerland including two conflicting objectives: ensuring compact urban development and reducing the loss of agricultural productivity. We compared all approaches by calculating hypervolumes and by analysing the spread of the produced non-dominated fronts. Our results suggest that a combination of different mutation operators, of which at least one includes spatial heuristics, can help to find well-distributed fronts of non-dominated solutions. The tested modified crossover operators did not significantly improve the results. These findings provide a benchmark for multi-objective optimization of land-use allocation problems with promising prospectives for solving complex spatial planning problems.
| Year | Citations | |
|---|---|---|
Page 1
Page 1