Open Access
Issue |
MATEC Web Conf.
Volume 189, 2018
2018 2nd International Conference on Material Engineering and Advanced Manufacturing Technology (MEAMT 2018)
|
|
---|---|---|
Article Number | 06001 | |
Number of page(s) | 6 | |
Section | Factory Manufacturing | |
DOI | https://doi.org/10.1051/matecconf/201818906001 | |
Published online | 10 August 2018 |
- Donoso, Y. and R. Fabregat, Multi-objective optimization in computer networks using metaheuristics (2007), New York (US): Taylor & Francis Group. [Google Scholar]
- Bhattacharya, R. and S. Bandyopadhyay, Solving conflicting bi-objective facility location problem by NSGA II evolutionary algorithm. International Journal of Advanced Manufacturing Technology, (2010). 51(1-4): p. 397–414. [CrossRef] [Google Scholar]
- Deb, K., et al., A fast and elitist multiobjective genetic algorithm: NSGA-II. Evolutionary Computation, IEEE Transactions, (2002). 6(2): p. 182–197. [CrossRef] [Google Scholar]
- Liao, S.H., C.L. Hsieh, and P.J. Lai, An evolutionary approach for multi-objective optimization of the integrated location–inventory distribution network problem in vendor-managed inventory. Expert Systems with Applications, (2011). 38(6): p. 6768–6776. [CrossRef] [Google Scholar]
- Benyoucef, L. and X. Xie, Supply chain design using simulation-based NSGA-II approach. In Multi-objective Evolutionary Optimisation for Product Design and Manufacturing, Springer, (2011): p. 455–491. [CrossRef] [Google Scholar]
- Rezaei, J., & Davoodi, M., Multi-objective models for lot-sizing with supplier selection. International Journal of Production Economics, (2011). 130(1): p. 77–86. [Google Scholar]
- Atoeia, F.B., E. Teimorya, and A.B. Amirib, Designing reliable supply chain network with disruption risk. International Journal of Industrial Engineering Computations, (2013). 4: p. 111–126. [CrossRef] [Google Scholar]
- Hiremath, N.C., S. Sahu, and M.K. Tiwari, Multi objective outbound logistics network design for a manufacturing supply chain. Intelligent Manufacturing, (2013). 24: p. 1071–1084. [CrossRef] [Google Scholar]
- Dzupire, N.C. and Y. Nkansah-gyekye, A Multi-Stage Supply Chain Network Optimization Using Genetic Algorithms. Mathematical Theory and Modeling, (2014). 4(8): p. 18-29. [Google Scholar]
- Nikabadi, M.S. and H. Farahmand, Integrated Supply Chain Model under Uncertainty. . Global Journal of Management Studies and Researches, (2014). 1(3): p. 151–157. [Google Scholar]
- Shahparvari, S., P. Chiniforooshan, and A. Abareshi. Designing an Integrated Multiobjective Supply Chain Network Considering Volume Flexibility. in In Proceedings of the World Congress on Engineering and Computer Science. (2013). San Francisco. [Google Scholar]
- Aydin, R., C.K. Kwong, and P. Ji, Coordination of the closed-loop supply chain for product line design with consideration of remanufactured products. Journal of Cleaner Production, (2015). [Google Scholar]
- Yahia, W.B., et al., A Multi-objective Optimization for Multi-period Planning in Multiitem Cooperative. In M. Haddar et al. (Eds.): Design and Modeling of Mechanical Systems, LNME, (2013): p. 635–643. [CrossRef] [Google Scholar]
- Validi, S., A. Bhattacharya, and P.J. Byrne, A case analysis of a sustainable food supply chain distribution system — A multi-objective approach. International Journal of Production Economics, (2014): p. 1-17. [Google Scholar]
- Bandyopadhyay, S. and R. Bhattacharya, Applying modified NSGA-II for bi-objective supply chain problem. Journal of Intelligent Manufacturing, (2013). 24: p. 707–716. [CrossRef] [Google Scholar]
- Bandyopadhyay, S. and R. Bhattacharya, Solving a tri-objective supply chain problem with modified NSGA-II algorithm. Journal of Manufacturing Systems, (2014). 33: p. 41–50. [CrossRef] [Google Scholar]
- Jia, L., X. Feng, and Z. Guocheng. Solving Multiobjective Bilevel Transportationdistribution Planning Problem by Modified NSGA II. in In Ninth International Conference on Computational Intelligence and Security (2013). [Google Scholar]
- Mastrocinque, E., et al., A Multi-Objective Optimization for Supply Chain Network Using the Bees Algorithm. International Journal of Engineering Business Management, (2013). 5(28): p. 1-11. [CrossRef] [Google Scholar]
- Yuce, B., et al., A multiobjective supply chain optimisation using enhanced Bees Algorithm with adaptive neighbourhood search and site abandonment strategy. Swarm and Evolutionary Computation, (2014). 18: p. 71–82. [CrossRef] [Google Scholar]
- Zhao, F., J. Tang, and Y. Yang, A new Approach based on Ant Colony Optimization (ACO) to Determine the Supply Chain (SC) Design for a Product Mix. Journal of Computers,(2012). 7(3): p. 736–743. [Google Scholar]
- Moncayo-Martínez, L.A. and D.Z. Zhang, Multi-objective ant colony optimisation: A metaheuristic approach to supply chain design. International Journal of Production Economics, (2011). 131(1): p. 407-420. [CrossRef] [Google Scholar]
- Moncayo-Martínez, L.A. and D.Z. Zhang, Optimising safety stock placement and lead time in an assembly supply chain using bi-objective MAX–MIN ant system. Internastional Journal of Production Economics, (2013). 145: p. 18-28. [CrossRef] [Google Scholar]
- Moncayo-Martínez, L.A. and D.Z. Zhang, Multi-objective ant colony optimisation: A metaheuristic approach to supply chain design. International Journal of Production Economics, (2011. 131(1): p. 407–420. [CrossRef] [Google Scholar]
- Yang, X.S. and S. Deb, Cuckoo search via Lévy flights. Nature & Biologically Inspired Computing 2009 NaBIC 2009. World Congress on (2009), 2009: p. 210–214. [CrossRef] [Google Scholar]
- Yang, X.S. and S. Deb, Engineering optimisation by cuckoo search. International Journal of Mathematical Modelling and Numerical Optimisation, (2010). 1(4): p. 330–343. [Google Scholar]
- Civicioglu, P. and E. Besdok, A conceptual comparison of the Cuckoo-search, particle swarm optimization, differential evolution and artificial bee colony algorithms. Artificial Intelligence Review, (2011): p. 1–32. [Google Scholar]
Current usage metrics show cumulative count of Article Views (full-text article views including HTML views, PDF and ePub downloads, according to the available data) and Abstracts Views on Vision4Press platform.
Data correspond to usage on the plateform after 2015. The current usage metrics is available 48-96 hours after online publication and is updated daily on week days.
Initial download of the metrics may take a while.