Author:
Toan Phan Thanh,Tuan Do Van
Abstract
MS-RCPSP is a combinatorial optimization problem that has many practical applications, this problem has been proven to belong to the NP-hard class, the approach to solving this problem is to use algorithms to find approximate solution. This paper proposed a New Adaptive Local Particle Swarm Optimization algorithm for the MS-RCPSP problem. The solution for the class of NP-Hard problems is to find approximate solutions using metaheuristic algorithms. However, most metaheuristic-based algorithms have a weakness that can be fallen into local extreme after a number of evolution generations. In this paper, we adopted a new adaptive nonlinear weight update strategy based on fitness value and new neighborhood topology for Particle Swarm Optimization algorithm, thereby helping to prevent PSO from falling into local extremes. The new algorithm is called AdaL-PSO. A numerical analysis is carried out using iMOPSE benchmark dataset and is compared with some other early algorithms. Results presented suggest the prospect of our proposed algorithm.
Publisher
Publishing House for Science and Technology, Vietnam Academy of Science and Technology (Publications)
Reference36 articles.
1. AfsharN. B. - Multi-skilling in scheduling problems: A review on models, methods and applications, Computers & Industrial Engineering 151 (2021) 107004. https://doi.org/ 10.1016/j.cie.2020.107004.
2. Alirezaei, Mahsa, SeyedT. A. N., SeyedA. A. N. - A bi-objective hybrid optimization algorithm to reduce noise and data dimension in diabetes diagnosis using support vector machines, Expert Systems with Applications 127 (2019) 47-57.
3. Mejia, Oliver Polo, et al. - A new RCPSP variant to schedule research activities in a nuclear laboratory, 47th International Conference on Computers and Industrial Engineering (CIE47), 2017.
4. Blazewicz J., Lenstra J. K., Kan A. - Scheduling subject to resource constraints: Classification and complexity, Discrete Applied Mathematics 5 (1983) 11-24.
5. Myszkowski, Paweł B., Marek E. S., Krzysztof S. - A new benchmark dataset for multi-skill resource-constrained project scheduling problem, Federated Conference on Computer Science and Information Systems (FedCSIS), IEEE, 2015. DOI: 10.15439/2015F273.