Multi Population Hybrid Genetic Algorithms for University Course Timetabling
Mostra/ Apri
Data
2012Autore
Shahvali Kohshori, Meysam
Shirani Liri, Mehrnaz
Metadata
Mostra tutti i dati dell'itemAbstract
University course timetabling is one of the important and time consuming issues that each
University is involved with at the beginning of each university year. This problem is in class
of NP-hard problem and is very difficult to solve by classic algorithms. Therefore
optimization techniques are used to solve them and produce optimal or almost optimal
feasible solutions instead of exact solutions. Genetic algorithms, because of their
multidirectional search property, are considered as an efficient approach for solving this
type of problems. In this paper three new hybrid genetic algorithms for solving the
university course timetabling problem (UCTP) are proposed: FGARI, FGASA and FGATS. In
the proposed algorithms, fuzzy logic is used to measure violation of soft constraints in fitness
function to deal with inherent uncertainty and vagueness involved in real life data. Also,
randomized iterative local search, simulated annealing and tabu search are applied,
respectively, to improve exploitive search ability and prevent genetic algorithm to be trapped
in local optimum. The experimental results indicate that the proposed algorithms are able to
produce promising results for the UCTP.
Collections
- 2012 fascicula1 nr2 [19]