Matching Model for Scattering Collaborative Logistics Business

Article Preview

Abstract:

The mutual discovery of collaborative business between companies has great impacts on the efficiency and cost of collaborative logistics.This paper deals with the discovery method by data matching of collaborative transportation business. A match model is proposed to enable the collaborative transportation business to match automatically. The match between shipments and vehicles depends on the matching of operation dates, the origin and destination, type and amount of goods, size of goods. The detailed match corresponding algorithm is developed. A toolkit was developed based on web data to validate the algorithm. It is indicated that this model and the toolkit decreases search effort of partners on looking for their interested business and improves the efficiency of using business data.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

6500-6505

Citation:

Online since:

May 2014

Authors:

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2014 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

* - Corresponding Author

[1] Jean-François Audy, Sophie D'Amours, Nadia Lehoux, et al.: IFIP Advances in Information and Communication Technology, Vol. 336(2010), pp.537-544.

Google Scholar

[2] Audy, J., S. D'amours, N. Lehoux, M. Rönnqvist, in: International workshop on supply chain models for shared resourcemanagement, (2010).

Google Scholar

[3] Canhong LIN, K.L. Choy, H.Y. Lam, etal. in: 2012 Proceedings of PICMET '12: Technology Management for Emerging Technologies, (2012).

Google Scholar

[4] Chong Wu, David Barnes: Journal of Purchasing and Supply Management, Vol. 17(2011), pp.256-274.

Google Scholar

[5] Xinyang Deng , Yong Hu , Yong Deng : Expert Systems with Applications, Vol. 41 (2014), pp.156-167.

Google Scholar

[6] Song Tingxin, Huang Biqing, Wei Chunmei: Computer Integrated Manufacturing Systems, Vol. 14(2008), pp.588-594.

Google Scholar

[7] Guan Hua, Liao Mingchao, Tong Xiaojun, etal.: Journal of Wuhan Polytechnic University, Vol. 31 (2012), pp.47-51.

Google Scholar

[8] Pan Xuwei, Li Zebiao, Zhu Xiyong, etal.: Journal of Library Science in China, Vol. 35(2009), pp.41-48.

Google Scholar

[9] Tracy A. Jenkin, Yolande E. Chan, David B. Skillicorn, etal.: Decision Sciences, Volume 44 Number 6, 2013, 1021-1057.

Google Scholar

[10] Yue Peng , Gong Jianya, Di Liping, etal.: Geoinformatica, Vol. 15(2011), pp.273-303.

Google Scholar

[11] Robin Doss, Gang Li, Vicky Mak, etal.: Computer Networks, Vol. 54(2010), pp.2383-2399.

Google Scholar

[12] Cao Jiuxin, Qin Yi, Zhang Song, etal.: Journal of Southeast University , Vol. 28(2012), pp.292-298.

Google Scholar