A SWARM Based Approach in Saving Flood Survivors

Authors

  • Chowdhury DR Dept. of Computer Science & Application University of North Bengal Siliguri, West Bengal, India
  • Bose S Delhi Public School, Siliguri BidyaBharati Foundation Siliguri, West Bengal, India

Keywords:

Artificial Intelligence, Ant Colony Optimization (ACO), Boids; Foraging, Motorized Inflatable Rescue Boats, Swarm Intelligence, Stigmery, Component, Formatting, Style, Styling, Insert

Abstract

Swarm intelligence (SI) is a branch of artificial intelligence that has evolved based on the collective behavior of social insect colonies and other animal societies that have decentralized mode of work control. It is the collective behaviour (intelligence) exhibited by many individual elements for carrying out a common work that coordinate among them using a decentralized control and self-organization both in natural and artificial system. This paper proposes an optimized algorithm based on swarm intelligence algorithms to save people who are stuck in flood in the minimum time when the number of motorized inflatable rescue boats available is comparatively less to the number of people stuck in flood.

Author Biography

Bose S, Delhi Public School, Siliguri BidyaBharati Foundation Siliguri, West Bengal, India

Swarm intelligence (SI) is a branch of artificial intelligence that has evolved based on the collective behavior of social insect colonies and other animal societies that have decentralized mode of work control. It is the collective behaviour (intelligence) exhibited by many individual elements for carrying out a common work that coordinate among them using a decentralized control and self-organization both in natural and artificial system. This paper proposes an optimized algorithm based on swarm intelligence algorithms to save people who are stuck in flood in the minimum time when the number of motorized inflatable rescue boats available is comparatively less to the number of people stuck in flood.

References

http://en.wikipedia.org/wiki/Swarm_intelligence

http://staff.washington.edu/paymana/swarm/ krin k_01.pdf

http://www.scholarpedia.org/article/Swarm_intell igence

Wang Jian – qun, Guoxu-yang, "Application of particle swarm optimization in flood optimal control of reservoir group", 2010 IEEE Fifth International Conference on Bio-Inspired Computing: Theories and Applications (BIC-TA), pp. 856 – 859, 23-26 Sept. 2010

M.Janga Reddy and S.Adarsh, "Overtopping Probability Constrained Optimal Design of Composite Channels Using Swarm Intelligence Technique", http://www.academia.edu

Meraji S.H., Afshar M.H., Afshar A., "Optimal design of flood control systems using particle swarm optimisationalgorithm",International J. Industrial Eng. And Production Management(IJIE), Vol. 19 , No. 8-1, pp. 41 To 53, 2008.

Wei Huang and XingNan Zhang, "Projection Pursuit Flood DisasterClassification Assessment Method Based on Multi-Swarm Cooperative Particle Swarm Optimization", Journal of Water Resource and Protection, Vol. 3 No. 6, pp. 415-420. , 2011.

https://www.ncdps.gov/Index2.cfm?a=000003, 0 00010, 000023, 000487, 000597, 001741, 001751

http://en.wikipedia.org/wiki/Ant_colony_optimization_algorithms

www2.fiit.stuba.sk/~pospichal/prednaskaEA_STU…/antcolonyA1.ppt

Morten Goodwin, Ole ChristofferGranmo and JaziarRadianti, "Escape planning in realistic fire scenarios with Ant Colony Optimisation", Springer Science.

http://en.wikipedia.org/wiki/Artificial_bee_colony_ algorithm

Downloads

Published

2015-02-28

How to Cite

[1]
D. R. Chowdhury and S. Bose, “A SWARM Based Approach in Saving Flood Survivors”, Int. J. Comp. Sci. Eng., vol. 3, no. 1, pp. 36–42, Feb. 2015.