Study on Task Allocation Model of Forest Fire Fighting

Article Preview

Abstract:

Firefighting task allocation is the core of the forest fire fighting programs. Making use of information entropy method, combined with the fire brigades, fire fighting capability, difficulty and other factors, an analysis in the priority under the conditions of multiple fire sites and fire lines is made, so as to build up fire fighting mission efficient matrix and determine the optimal allocation scheme by using ant colony algorithm. The practice shows that this task allocation model for forest fire fighting under multiple fire sites situation is feasible and practical.

You might also be interested in these eBooks

Info:

Periodical:

Advanced Materials Research (Volumes 457-458)

Pages:

1129-1136

Citation:

Online since:

January 2012

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2012 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] Randall M H, Steve W J, Scott W P, et al. A distributed software environment for aerospace product development. AIAA-99-1360(1999).

Google Scholar

[2] Zhang H M, Xiong G L. Multidisciplinary design , simulation platform and the key technology of Web. Computer Integrated Manufacturing Systems-CMS, vol. (8): , pp.704-709, (2003).

Google Scholar

[3] Zhang H, Luo X. Current research situation and prospect of ant colony optimization algorithm. Information and Control, vol. (3), pp.318-324, (2004).

Google Scholar

[4] Kolonay R M. Functional requirement for next generation engineering analysis and design integration environments/Soo lew skim, (2005).

Google Scholar

[5] Chen X, Lo S W. Research on grid task allocation algorithm based on Ant Algorithm. Computer Technology and Development, vol. (3), pp.98-100, (2006).

Google Scholar

[6] Zhang J, Hu X M, Lo Y X. Ant colony optimization. Beijing: Tsinghua University Press, (2007).

Google Scholar

[7] Liao M, Chen Z J, Zhou R. Design and Simulation of Multi-UAV Collaborative task allocation based on MAS. Journal of System Simulation, vol. (10), pp.2313-2317, (2007).

Google Scholar

[8] Huo X H, Zhu H Y, Shen L C. Study on decision models for multi-target attack of group-craft cooperative air combat. Journal of System Simulation, vol. (9), pp.2573-2576, (2006).

Google Scholar

[9] Yang X Z, Ju C W, He Y. Simulation of sensor management system based on the effectiveness function. Journal of System Simulation, vol. (2), pp.251-253, (2003).

Google Scholar

[10] Liu X. Research on sensor management. Xi'an: Northwestern Polytechnical University, (2000).

Google Scholar

[11] Xu J P, Wu W. Theory and method of multi-attribute decision making. Beijing: Qinghua University Press. (2006).

Google Scholar

[12] Ikki Ohmukai, Hideaki Takeda. 2003. Social Scheduler: A Proposal of Collaborative Personal Task Management/IEEE, WIC International Conference on Web Intelligence(0-7695-1932-6), (2003). USA: IEEE.

DOI: 10.1109/wi.2003.1241292

Google Scholar

[13] Dorigo M, Caro G D, Gambardella L M. Ant algorithms for discrete optimization. Artificial Life(S1064-5462), vol. (2), pp.137-172, (1999).

DOI: 10.1162/106454699568728

Google Scholar

[14] Duan H B. Ant colony algorithm and its application. Beijing: Science Press. (2005).

Google Scholar