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Issue title: Towards the Transition from Supply Chain to Alliance and Supply Networks: Concepts, Models and Methodologies
Guest editors: Charu Chandra
Article type: Research Article
Authors: Sheremetov, Leonida; b; * | Rocha-Mier, Luisc
Affiliations: [a] Research Program in Applied Mathematics and Computer Science, Mexican Petroleum Institute, Av. Eje Central Lazaro Cardenas Norte, 152, Col. San Bartolo Atepehuacan, Mexico DF, CP 07730. E-mail: sher@imp.mx | [b] St. Petersburg Institute for Informatics and Automation of the Russian Academy of Sciences 39, 14th Line, St. Petersburg, 199178, Russia | [c] Polytechnic University of Pachuca Carretera Pachuca-Cd. Sahagún, km 20, Ex-Hacienda de Santa Bárbara, Municipio de Zempoala, Hidalgo, CP 43841, Mexico. E-mail: luisenrique.rocha@sas.com
Correspondence: [*] Corresponding author: L. Sheremetov, Research Program in Applied Mathematics and Computer Science, Mexican Petroleum Institute, Av. Eje Central Lazaro Cardenas Norte, 152, Col. San Bartolo Atepehuacan, Mexico DF, CP 07730. Tel.: +52 55 9175 7546, Fax: +52 55 9175 7463; E-mail: sher@imp.mx.
Abstract: The supply chain network optimization is a difficult problem to solve in the context of distributed (information across different members) and dynamic (changes in the structure and content of the information) environment with multidisciplinary decisions. In this paper, we address this problem from a dynamic optimization of local decisions point of view, to ensure a global optimum for the supply chain performance. This is done under the frameworks of Collective Intelligence (COIN) theory and Multi-Agent Systems (MAS). By COIN, we mean a large MAS where there is no centralized control and communication, but also, where there is a global task to complete: the global supply chain network optimization. The proposed model focuses on the interactions at local and global levels between agents in order to improve the overall supply chain business process behavior. Besides, collective learning consists of adapting the local behavior of each agent (micro-learning) to the optimization of the behavior globally (macro-learning). Reinforcement learning algorithms are used at the local level, while generalization of the Q-neural algorithm is proposed to optimize the global behavior. The model is implemented within the multiagent framework for supply chain modeling and optimization over JADE agent platform. Experimental results are discussed.
Keywords: Supply chain network, multiagent system, optimization, collective intelligence, simulation
DOI: 10.3233/HSM-2008-27104
Journal: Human Systems Management, vol. 27, no. 1, pp. 31-47, 2008
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