Greedy Randomised Adaptive Search Procedure (GRASP) is one of the best-known metaheuristics to solve complex combinatorial optimisation problems (COPs). This paper proposes two extensions of the typical GRASP framework. On the one hand, applying biased randomisation techniques during the solution construction phase enhances the efficiency of the GRASP solving approach compared to the traditional use of a restricted candidate list. On the other hand, the inclusion of simulation at certain points of the GRASP framework constitutes an efficient simulation–optimisation approach that allows to solve stochastic versions of COPs. To show the effectiveness of these GRASP improvements and extensions, tests are run with both deterministic and stochastic problem settings related to flow shop scheduling, vehicle routing, and facility location.

Ferone, D., Gruler, A., Festa, P., Juan, A. (2019). Enhancing and extending the classical GRASP framework with biased randomisation and simulation. JOURNAL OF THE OPERATIONAL RESEARCH SOCIETY, 70(8), 1362-1375 [10.1080/01605682.2018.1494527].

Enhancing and extending the classical GRASP framework with biased randomisation and simulation

Ferone, D;
2019

Abstract

Greedy Randomised Adaptive Search Procedure (GRASP) is one of the best-known metaheuristics to solve complex combinatorial optimisation problems (COPs). This paper proposes two extensions of the typical GRASP framework. On the one hand, applying biased randomisation techniques during the solution construction phase enhances the efficiency of the GRASP solving approach compared to the traditional use of a restricted candidate list. On the other hand, the inclusion of simulation at certain points of the GRASP framework constitutes an efficient simulation–optimisation approach that allows to solve stochastic versions of COPs. To show the effectiveness of these GRASP improvements and extensions, tests are run with both deterministic and stochastic problem settings related to flow shop scheduling, vehicle routing, and facility location.
Articolo in rivista - Articolo scientifico
biased randomisation; combinatorial optimisation; GRASP; simheuristics; stochastic optimisation;
biased randomisation; combinatorial optimisation; GRASP; simheuristics; stochastic optimisation; Management Information Systems; Strategy and Management1409 Tourism, Leisure and Hospitality Management; Management Science and Operations Research; Marketing
English
17-ott-2018
2019
70
8
1362
1375
none
Ferone, D., Gruler, A., Festa, P., Juan, A. (2019). Enhancing and extending the classical GRASP framework with biased randomisation and simulation. JOURNAL OF THE OPERATIONAL RESEARCH SOCIETY, 70(8), 1362-1375 [10.1080/01605682.2018.1494527].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/219614
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