Research for Technology in Distributed Manufacturing with Resource Collaboration

Article Preview

Abstract:

An obvious trend for intelligent manufacturing is distributed network manufacturing model. This paper presents a technology of model which based on IMS (Intelligent manufacturing System), that is, with enterprise resource collaboration model to settle collaborative manufacturing among of heterogeneous enterprises. Because of similarities of enterprise resource, the workable resource pool with small world network characteristic is built. On this basis, research for algorithms that can create alliance routes in small world network that have a short length of characteristic path and evident attention of clustering. Depend on capacity vector that be constructed by the enterprise ability attributions and used total of cast on dispatching produce unit in resource pools to seek maximization path characteristic value of the enterprise resource dispatching routes. Thus, the alliance enterprise distributed collaborative manufacturing system can be constructed. Given orders attributions and mechanism of multi-agent system, the collaboration model was constructed and adopt colony Optimization algorithm in small world network to solve route of enterprise alliance and multi-task mechanism among of alliance enterprise. An experiment and analysis was presented to validate the feasibility and effectiveness of the models and the approach.

You might also be interested in these eBooks

Info:

Periodical:

Advanced Materials Research (Volumes 753-755)

Pages:

1875-1881

Citation:

Online since:

August 2013

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2013 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] Huanxin Peng, Guoqing Qi,Andong Shen. Research on accelerating convergence speed of distributed consensus based on directed small world networks [J]. Information and Control, 2012, 10. 3724/SP.J. 1219. 2012. 00401.

Google Scholar

[2] Franceschelli M, Giua A, Seatzu C. Distributed averaging insensor networks based on broadcast gossip algorithms[J]. IEEE Sensors Journal, 2011, 11(3): 808-817.

DOI: 10.1109/jsen.2010.2064295

Google Scholar

[3] Zhang Y, Tian Y P. Consensus of data-sampled multi-agentsystems with random communication delay and packet loss[J]. IEEE Transactions on Automatic Control, 2010, 55(4): 939-943.

DOI: 10.1109/tac.2010.2041612

Google Scholar

[4] Domnori E, Cabri G, Leonardi L. Multi-Agent approach for disaster management. In: Proc. Of the Int'l Conf. on P2P, Parallel, Grid, Cloud and Internet Computing. 2011. 311-316. [doi: 10. 1109/3PGCIC. 2011. 57].

DOI: 10.1109/3pgcic.2011.57

Google Scholar

[5] Chen Y, Wu W. Cooperative electronic attack for groups of unmanned air vehicles based on mmulti-agent simulation and evaluation. IJCSI Int'l Journal of Computer Science Issues, 2012, 9(2): 1-6.

Google Scholar

[6] Yang Xu,Xiang Li,Hong Chang,Yuexing Wang. Effects of complex network characters on the coordination control of large-scale multi-agent system [J]. Journal of Software, 2012, 10. 3724/SP.J. 1001. 2012. 04308.

DOI: 10.3724/sp.j.1001.2012.04308

Google Scholar

[7] Shilong Wang, Wenyan Song etc. Manufacturing resource allocation based on cloud manufacturing[J]. Computer Integrated Manufacturing System, 2012, 1006-5811(2012)07-1396-10.

Google Scholar

[8] Lei Ren, Lin Zhang, Yabin Zhang etc. Resource virtualization in cloud manufacturing [J]. Computer Integrated Manufacturing Systems,2011, 17(3): 511-518.

Google Scholar