Abstract
Fluctuations in demand patterns and products’ mixes, driven by continuous changes in customer requirements, are inducing significant changes on the operations of manufacturing organisations. How to respond to such changes rapidly and at minimum cost constitutes a major challenge for manufacturers. The DIMS project (Dynamically Integrated Manufacturing Systems) has developed an agent-based approach that enables manufacturing systems to be modelled using multi-agent systems such that optimal and timely responses to changes are generated from the interactions taking place within the multi-agents systems. This approach also incorporates a distributed discrete event simulation mechanism that enables ‘what-if’ system configurations that have been generated through agent interactions to be evaluated dynamically for system restructure. This paper presents the approach with particular focus on the distributed simulation mechanism.
Similar content being viewed by others
References
Akanle O. M., Zhang D. Z. (2008) Agent-based model for optimising supply chain configurations. International Journal of Production Economics 115(2): 444–460
Anosike, A. I. (2005). Agent-based modelling, simulation and control of dynamically integrated manufacturing systems. PhD thesis, University of Exeter.
Anosike A. I., Zhang D. Z. (2009) An agent-based approach for integrating manufacturing operations. International Journal of Production Economics 121(2): 333–352
Babiceanu R. F., Chen F. F. (2006) Development and applications of holonic manufacturing systems: A survey. Journal of Intelligent Manufacturing 17(1): 111–131
Baker, A. D., Parunak, H. V. D., & Erol, K. (1997). Manufacturing over the Internet and into your living room: Perspectives from the AARIA project. TR208-08-97, ECECS Dept.
Burmeister, B. (1996). Models and methodology for agent-oriented analysis and design. In K. Fischer (Ed.), Working notes of the KI’96 workshop on agent-oriented programming and distributed systems (DFKI Document D-96-06).
Duffie N. A., Prabhu V. V. (1994) Real-time distributed scheduling of heterarchical manufacturing systems. Journal of Manufacturing Systems 13(2): 94–107
Goh W. T., Zhang Z. (2003) An intelligent and adaptive modelling and configuration approach to manufacturing systems control. Journal of Materials Processing Technology 139: 103–109
Kowalski, R., & Fariba, S. (1996). Towards a unified agent architecture that combines rationality and reactivity. In D. Pedreschi, C. Zaniolo (Eds.), Proceedings of the international workshop on logic in databases LID-96 (pp. 137–149). LNCS 1154.
Lim M. K., Zhang Z., Goh W. T. (2009) An iterative agent bidding mechanism for responsive manufacturing. Engineering Applications of Artificial Intelligence 22(7): 1068–1079
Okino, N. (1989). Bionic manufacturing systems—modelon-based approach. In The proceedings of the CAM-I 18th annual international conference (pp. 485–492). New Orleans, Louisiana: Computer-Aided Manufacturing—International Inc.
Parunak, H. V. D. (1998). Practical and industrial applications of agent-based system. Industrial Technology Institute, http://www.agents.umbc.edu/papers/apps98.pdf, Accessed 5 Oct 2006.
Penya, Y. K., Bratoukhine, A., & Sauter, T. (2003). Agent-driven distributed manufacturing model for mass customization. Integrated Computer-Aided Engineering (ICAE), vol. 10(2). IOS Press, Amsterdam.
Ryu K., Son Y., Jung M. (2003) Modelling and specifications of dynamic agents in fractal manufacturing systems. Computers in Industry 52: 161–182
Shen W., Norrie D. H. et al (1998) An agent-based approach for manufacturing enterprise integration and supply chain management. In: Jacucci G. (Ed.) Globalisation of manufacturing in the digital communications era of the 21st Century: Innovation, agility, and the virtual enterprise. Kluwer, Dordrecht, pp 579–590
Swafford P. M., Ghosh S., Murphy N. (2006) The antecedents of supply chain agility of a firm: Scale development and model testing. Journal of Operations Management 24: 170–188
Tehrani N. N. H., Sugimura N., Iwamura K., Tanimizu Y. (2010) Multi agent architecture for dynamic incremental process planning in the flexible manufacturing system. Journal of Intelligent Manufacturing v(4): 487–499
Van Brussel H., Wyns J., Valckanaers P., Bongaerts L., Peeters P. (1998) Reference architecture for holonic manufacturing systems, PROSA. Computers in Industry 37: 255–274
Wang S. L., Xia H., Liu F., Tao G. B., Zhang Z. (2002) Agent-based modelling and mapping of a manufacturing system. Journal of Materials Processing Technology 129(1–3): 518–523
Warnecke H. J. (1992) The fractal company. Springer, Berlin, Germany
Witten I. H., Frank E. (2000) Data mining: Practical machine learning tools and techniques with Java implementations. Morgan Kaufmann Publishers, London
Wooldridge M., Jennings N. R. (1995) Intelligent agents: Theory and practice. The Knowledge Engineering Review 10(2): 115–152
Zhang, D. Z. (2010). Towards theory building in agile manufacturing strategy: Case studies of an agility taxonomy. International Journal of Production Economics. doi:10.1016/j.ijpe.2010.08.010.
Zhang D. Z., Anosike A. I., Lim M. K. (2007) Dynamically integrated manufacturing systems (DIMS)—A multi-agent approach. IEEE Transactions on Systems, Man and Cybernetics, Part A: Systems and Humans 37(5): 824–850
Zhang D. Z., Sharifi H. (2007) Towards theory building in agile manufacturing strategy—A taxonomical approach. IEEE Transactions on Engineering Management 54(2): 351–370
Zhang T., Zhang D. Z. (2007) An agent-based simulation of consumer purchase decisions and decoy effect. Journal of Business Research 60(8): 911–922
Zhang Z., Anosike A. I., Ankle O. M., Lim M. K. (2006) An agent-based approach for e-manufacturing and supply chain integration. Computers and Industrial Engineering 51: 343–360
Author information
Authors and Affiliations
Corresponding author
Rights and permissions
About this article
Cite this article
Zhang, D.Z., Anosike, A.I. Modelling and simulation of dynamically integrated manufacturing systems. J Intell Manuf 23, 2367–2382 (2012). https://doi.org/10.1007/s10845-010-0494-0
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s10845-010-0494-0