Abstract
The success of a business, especially a multi-site extended enterprise, depends on the good management of all its distributed resources. It is difficult for a company to be successful if it does not have a reliable and optimal management of resources by avoiding overstocking of certain resources on a site Sitem ∈ E, and at the same time, the sub-storing of the same resources on another site Sitep ∈ E. In both cases, there is a lack of profit. In this paper, we will try to resolve this situation, by the proposal of an architecture based on the cooperative multi-agent systems paradigm combined with the Contract-Net protocol. We bring in an intelligent agent whose role is to warn in advance and for each item itemi ∈ Sitem, the coming of breakdowns and stock excesses by balancing the level of inter-site availability by a flow of resources of the same itemi by calling on the other E sites whose levels are in over-storage or under-storage.
Publisher
Engineering, Technology & Applied Science Research
Reference12 articles.
1. K. V. Kavitha, V. V. Suthan, “Dynamic load balancing in cloud based multimedia system with genetic algorithm”, 2016 International Conference on Inventive Computation Technologies, Coimbatore, India, August 26-27, 2016
2. A. Benaouda, N. Zerhouni, C. Varnier, “Spare part management for e-maintenance platform”, in: IEEE :Mechatronics and Robotics, Vol. 3, pp 1152-1157, IEEE, 2004
3. A. Benaouda, N. Zerhouni, C. Varnier, “Une approche multi-agents coopératifs pour la gestion des ressources matérielles dans un contexte multi-sites de e-manufacturing”, 6e Conference Francophone de MOdelisation et SIMulation, Rabat, Morocco, April 3-5, 2006 (in French)
4. X. Nan, Y. He, L. Guan, “Optimal resource allocation for multimedia cloud based on queuing model”, 2011 IEEE 13th International Workshop on Multimedia Signal Processing, Hangzhou, China, October 17-19, 2011
5. N. Benmoussa, M. Fakhouri Amr, S. Ahriz, K. Mansouri, E. Illoussamen, “Outlining a model of an intelligent decision support system based on multiagents”, Engineering, Technology & Applied Science Research, Vol. 8, No. 3, pp. 2937–2942, 2018