IJSTR

International Journal of Scientific & Technology Research

Home Contact Us
ARCHIVES
ISSN 2277-8616











 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

IJSTR >> 



International Journal of Scientific & Technology Research  
International Journal of Scientific & Technology Research

Website: http://www.ijstr.org

ISSN 2277-8616



Application of ACO/PSO approaches in Agriculture and Social Network Fields-- A Generic Perspective

[Full Text]

 

AUTHOR(S)

N.Anitha, Dr.R.Devi Priya

 

KEYWORDS

Ant Colony Optimization, Particle Swarm Optimization, Social Network and Agriculture.

 

ABSTRACT

In recent years, evolutionary optimization algorithmsare used in different domains like medical, business analysis, engineering, agriculture, social network etc. Due to scarcity of resources in agriculture, the farmers need an optimized framework to make proper decisions. Similarly in social networks, there is a need to mine meaningful insight of data among massive dataset and also needs an effective solution for security and privacy of data. In order toprovide solutions for the above issues in those fields, many researchers have widely used evolutionary algorithms. This paper provides a generic review of Ant Colony Optimization (ACO), Particle Swarm Optimization (PSO) and its practice in the field of agriculture and social network. For that, this work integrates various author’s findings for the benefit of new researchers to get astate-of-the-artin ACO and PSO techniques and their applications.

 

REFERENCES

[1] Alaiso, S, Backman, J & Visala, A, 2013, 'Ant Colony Optimization for Scheduling of Agricultural Contracting Work', IFAC Proceedings Volumes, vol. 46, no. 18, pp. 133-137.
[2] Asghari, S & Azadi, K, 2017, 'A reliable path between target users and clients in social networks using an inverted ant colony optimization algorithm', Karbala International Journal of Modern Science, vol. 3, no. 3, pp. 143-152.
[3] Chen, Y & Qiu, X, 2013, 'Detecting Community Structures in Social Networks with Particle Swarm Optimization', Proceedings of the Frontiers in Internet Technologies, pp. 266-275
[4] Fu, Q, Wang, Z & Jiang, Q, 2010, 'Delineating soil nutrient management zones based on fuzzy clustering optimized by PSO', Mathematical and Computer
[5] Fu, X, Li, A, Wang, L & Ji, C, 2011, 'Short-term scheduling of cascade reservoirs using an immune algorithm-based particle swarm optimization', Computers & Mathematics with Applications, vol. 62, no. 6, pp. 2463-2471.
[6] Hasni, A, Taibi, R, Draoui, B & Boulard, T, 2011, 'Optimization of Greenhouse Climate Model Parameters Using Particle Swarm Optimization and Genetic Algorithms', Energy Procedia, vol. 6, no., pp. 371-380.
[7] Kumar, A, Patidar, V, Khazanchi, D & Saini, P, 2016, 'Optimizing Feature Selection Using Particle Swarm Optimization and Utilizing Ventral Sides of Leaves for Plant Leaf Classification', Procedia Computer Science, vol. 89, no., pp. 324-332.
[8] Nguyen, DCH, Dandy, G, Maier, H & Ascough, J 2016. 'Improved Ant Colony Optimization for Optimal Crop and Irrigation Water Allocation by Incorporating Domain Knowledge'.
[9] Sanadhya, S & Singh, S, 2015, 'Trust Calculation with Ant Colony Optimization in Online Social Networks', Procedia Computer Science, vol. 54, no., pp. 186-195.
[10] Wasid, M & Kant, V, 2015, 'A Particle Swarm Approach to Collaborative Filtering based Recommender Systems through Fuzzy Features', Procedia Computer Science, vol. 54, no., pp. 440-448.
[11] Yang, W-S & Weng, S-X 2012. 'Application of the Ant Colony Optimization Algorithm to the Influence-Maximization Problem'.