Article ID Journal Published Year Pages File Type
385190 Expert Systems with Applications 2012 12 Pages PDF
Abstract

There are various scheduling problems with resource limitations and constraints in the literature that can be modeled as variations of the Resource Constrained Project Scheduling Problem (RCPSP). This paper proposes a new solution representation and an evolutionary algorithm for solving the RCPSP. The representation scheme is based on an ordered list of events, that are sets of activities that start (or finish) at the same time. The proposed solution methodology, namely SAILS, operates on the event list and relies on a scatter search framework. The latter incorporates an Adaptive Iterated Local Search (AILS), as an improvement method, and integrates an event-list based solution combination method. AILS utilizes new enriched neighborhoods, guides the search via a long term memory and applies an efficient perturbation strategy. Computational results on benchmark instances of the literature indicate that both AILS and SAILS produce consistently high quality solutions, while the best results are derived for most problem data sets.

► New efficient solution representation based on lists of sets of activities (events). ► Event-list based evolutionary algorithm, hybridized with an Adaptive Iterated Local Search. ► New enriched solution neighborhoods, efficient long term memory local search. ► Best results produced for well known benchmarks of literature.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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