An Ant Colony Optimization Approach For The Proportionate Multiprocessor Open Shop
Özet
Multiprocessor open shop makes a generalization to classical open shop by allowing parallel machines for the same task. Scheduling of this shop environment to minimize the makespan is a strongly NP-Hard problem. Despite its wide application areas in industry, the research in the field is still limited. In this paper, the proportionate case is considered where a task requires a fixed processing time independent of the job identity. A novel highly efficient solution representation is developed for the problem. An ant colony optimization model based on this representation is proposed with makespan minimization objective. It carries out a random exploration of the solution space and allows to search for good solution characteristics in a less time-consuming way. The algorithm performs full exploitation of search knowledge, and it successfully incorporates problem knowledge. To increase solution quality, a local exploration approach analogous to a local search, is further employed on the solution constructed. The proposed algorithm is tested over 100 benchmark instances from the literature. It outperforms the current state-of-the-art algorithm both in terms of solution quality and computational time. Telif hakları gereğince yayın erişime kapalıdır. Yayın yayıncı tarafından erişime açık ise bağlantılar kısmından ulaşılabilmektedir. 23.09.2021
Kaynak
Journal of Combinatorial OptimizationBağlantı
https://link.springer.com/article/10.1007/s10878-021-00798-yhttps://hdl.handle.net/20.500.12723/3146