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Enhancing the performance of an agent-based manufacturing system through learning and forecasting

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Abstract

Agent-based technology has been identified as an important approach for developing next generation manufacturing systems. One of the key techniques needed for implementing such advanced systems will be learning. This paper first discusses learning issues in agent-based manufacturing systems and reviews related approaches, then describes how to enhance the performance of an agent-based manufacturing system through “learning from history” (based on distributed case-based learning and reasoning) and “learning from the future” (through system forecasting simulation). “Learning from history” is used to enhance coordination capabilities by minimizing communication and processing overheads. “Learning from the future” is used to adjust promissory schedules through forecasting simulation, by taking into account the shop floor interactions, production and transportation time. Detailed learning and reasoning mechanisms are described and partial experimental results are presented.

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References

  • Byrne, C. and Edwards, P. (1996) Refinement in Agent Groups. In G. Weiss and S. Sen, Eds., Adaption and Learning in Multi-Agent Systems, Lecture Notes in Artificial Intelligence 1042, Springer-Verlag, pp. 22–39.

  • Cutkosky, M. R., Engelmore, R. S., Fikes, R. E., Genesereth, M. R., Gruber, T. R., Mark, W. S., Tenenbaum, J. M. and Weber, J. C. (1993) PACT: An Experiment in Integrating Concurrent Engineering Systems. IEEE Computer, 26(1), 28–37.

    Google Scholar 

  • Cutosky, M. R., Tenenbaum, J. M. and Glicksman J. (1996) Madefast: Collaborative Engineering over the Internet. Communication of the ACM, 39(9), 78–87.

    Google Scholar 

  • Gaines, B. R., Norrie, D. H., and Lapsley, A. Z. (1995) Mediator: an Intelligent Information System Supporting the Virtual Manufacturing Enterprise, Proceedings of 1995 IEEE International Conference on Systems, Man and Cybernetics, New York, pp. 964–969.

  • Goldman, C. V. and Rosenschein, J. S. (1996) Mutually Supervised Learning in Multi-Agent Systems. In G. Weiss and S. Sen, Eds., Adaptation and Learning in Multi-Agent Systems, Lecture Notes in Artificial Intelligence 1042, Springer-Verlag, pp. 85–96.

  • Grecu, D. and Brown, D. (1996a) Learning to design together. Proceedings of the 1996 AAAI Spring Symposium on Adaption, Co-evolution and Learning in Multiagent Systems, Stanford, CA.

  • Grecu, D. and Brown, D. (1996b) Learning by Single Function Agents during Spring Design. In J. Gero and F. Sudweeks, Eds., Artificial Intelligence in Design '96, Kluwer Academic Publishers, Netherlands.

    Google Scholar 

  • Gu, P. and Maddox, B. (1996) A Framework for Distributed Refinement Learning. In G. Weiss and S. Sen, eds., Adaption and Learning in Multi-Agent System, Lecture Notes in Artificial Intelligence 1042, Springer-Valag, pp. 97–112.

  • Haynes, T. and Sen, S. (1997) Learning Cases to Compliment Rules for Conflict Resolution in Multiagent Systems. International Journal of Human-Computer Studies, Special Issue on Evolution and Learning in Multiagent Systems.

  • Ketter, B. P., Hendler, J. A., Anderson, W. A., and Evett, M. P. (1994) Massively Parrallel Support for Case-Based Planing. IEEE Expert, 9, 8–13.

    Google Scholar 

  • Kwok, A. D. and Norrie, D. H. (1994) A development system for intelligent agent manufacturing software. Integrated Manufacturing Systems, 5(4–5), 64-76.

    Google Scholar 

  • Mataric, M. J. (1994) Reward functions for accelerated learning. Proceedings of the Eleventh International Conference on Machine Learning, San Francisco, CA.

  • Maturana, F. and Norrie, D. (1996) Multi-agent mediator architecture for distributed manufacturing. Journal of Intelligent Manufacturing, 7, 257–270.

    Google Scholar 

  • Maturana F. P. (1997) MetaMorph: An adaptive multi-agent architecture for advanced manufacturing systems. Ph. D. thesis, The University of Calgary.

  • Nagendra Prasad, M. V. and Plaza, E. (1996) Corporate memories as distributed case libraries. Proceedings of the 10th Knowledge Acquisition Workshop, Banff, Canada.

  • Nagendra Prasad, M. V., Lesser, V. R. and Lander, S. E. (1996) Reasoning and retrieval in distributed case bases. Journal of Visual Communication and Image Representation, Special Issue on Digital Libraries 7(1), 74–87.

    Google Scholar 

  • Nagendra Prasad, M. V., Lesser, V. R. and Lander, S. E. (1997) Learning organizational roles for negotiated search in a multi-agent system. Special issue on Evolution and Learning in Multiagent Systems of the International Journal of Human-Computer Studies (IJHCS).

  • Ohko, T., Hiraki, K. and Anzai, Y. (1996) Learning to reduce communication cost on task negotiation. In Adaption and Learning in Multi-Agent Systems, G. Weiss and S. Sen (eds.), Lecture Notes in Artificial Intelligence 1042, Springer-Verlag, pp. 177–190.

  • Park, H., Tenenbaum, J. and Dove, R. (1993) Agile infrastructure for manufacturing systems (AIMS): A vision for transforming the US manufacturing base. Defense Manufacturing Conference.

  • Park, H., Cutkosky, M., Conru, A. and Lee, S.H. (1994) An agent-based approach to concurrent cable harness design. Artificial Intelligence for Engineering Design, Analysis and Manufacturing, 8(1), 45–62.

    Google Scholar 

  • Parunak, H. V. D., Baker, A.D. and Clark, S. J. (1997) The AARIA agent architecture: An example of requirements-driven agent-based system design. Proceedings of the First International Conference on Autonomous Agents, Marina del Rey, CA.

  • Sandholm, T. and Crites, R. (1996) On multi-agent q-learning in a semi-competitive domain. In Adaption and Learning in Multi-Agent Systems, G. Weiss and S. Sen (eds.), Lecture Notes in Artificial Intelligence 1042, Springer-Verlag, pp. 191–205.

  • Shaw, M. J. and Whinston, A. B. (1989) Learning and adaptation in DAI systems. In Distributed Artificial Intelligence, L. Gasser and M. Huhns (eds.), Vol. 2, Pittman Publishing/Morgan Kauffmann Publishers, pp. 413–429.

  • Shen W. and BartheÁs J. P. (1997) An experimental environment for exchanging engineering design knowledge by cognitive agents. In Knowledge Intensive CAD-2, M. Mantyla, S. Finger and T. Tomiyama (eds), Chapman and Hall, pp. 19–38.

  • Shen, W., Xue, D. and Norrie, D. H. (1998) An agent-based manufacturing enterprise infrastructure for distributed integrated intelligent manufacturing systems. Proceedings of the Third International Conference on the Practical Application of Intelligent Agents and Multi-Agents, London, UK, pp. 533–548.

  • Sian, S. (1991) Adaptation based cooperative learning multi-agent systems. In Decentralized AI 2, Y. Demazeau and J.-P. Muller (eds.), Elsevier Science Publishers, Amsterdam, Netherlands, pp. 231–243.

    Google Scholar 

  • Sugawara, T. (1995). Reusing past plans in distributed planning. Proceedings of the First International Conference on Multi-Agent Systems (ICMAS'95), San Francisco, CA, AAAI Press, pp. 360–367.

    Google Scholar 

  • Tan, M. (1993) Multi-agent reinforcement learning: independent vs. cooperative agents. Proceedings of the Tenth International Conference on Machine Learning, pp. 330–337.

  • Watkins, C. and Dayan, P. (1992) Technical note Q-learning. Machine Learning, 8, 279–292.

    Google Scholar 

  • Weiss, G. (1993) Learning to coordinate actions in multiagent systems. Proceeding of the International Joint Conference on Artificial Intelligence (IJCAI'93), San Matco, CA.

  • Wiederhold, G. (1992) Mediators in the architecture of future information systems. IEEE Computer, 25(3), 38–49.

    Google Scholar 

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Shen, W., Maturana, F. & Norrie, D.H. Enhancing the performance of an agent-based manufacturing system through learning and forecasting. Journal of Intelligent Manufacturing 11, 365–380 (2000). https://doi.org/10.1023/A:1008926202597

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