An Efficient Hybrid of Continuous Ant Colony Optimization and Weighted Crossover Genetic Algorithm for Optimal Solution
Abstract
Keywords
Full Text:
PDFReferences
Elbeltagi, E., Hegazy, T. and Grierson, D., 2005. Comparison among five evolutionary-based optimization algorithms. Advanced engineering informatics, 19(1), pp.43-53.
Gao, S., Zhang, Z. and Cao, C., 2010. A Novel Ant Colony Genetic Hybrid Algorithm. JSW, 5(11), pp.1179-1186.
Aravindh, S., 2012. Hybrid of Ant Colony Optimization and Genetic Algorithm for Shortest Path in Wireless Mesh Networks. Journal of Global Research in Computer Science, 3(1), pp.31-34.
Kovárık, O., 2006. Ant colony optimization for continuous problems (Doctoral dissertation, Msc. Thesis, Dept. of Electrical Engineering, University of Czech Technical).
Aidov, A. and Dulikravich, G.S., 2009. Modified Continuous Ant Colony Algorithm. In 2nd International Congress of Serbian Society of Mechanics, Serbia.
Devi, S.S. and Dhinakaran, S., 2013. Cross over and Mutation operations in GA-Genetic Algorithm. International Journal of computer and Organization Trends, 3(4).
Kaya, Y. and Uyar, M., 2011. A novel crossover operator for genetic algorithms: Ring crossover. arXiv preprint arXiv:1105.0355.
Mitras, B. and Aboo, A.K., Hybrid of Genetic Algorithm and Continuous Ant Colony Optimization for Optimum Solution.
Tuncer, A. and Yildirim, M., 2012. Dynamic path planning of mobile robots with improved genetic algorithm. Computers & Electrical Engineering, 38(6), pp.1564-1572.
Ciornei, I. and Kyriakides, E., 2012. Hybrid ant colony-genetic algorithm (GAAPI) for global continuous optimization. IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics), 42(1), pp.234-245.
Ladkany, G.S. and Trabia, M.B., 2012. A genetic algorithm with weighted average normally-distributed arithmetic crossover and twinkling. Applied Mathematics, 3(10), p.1220.
Socha, K. and Blum, C., 2007. An ant colony optimization algorithm for continuous optimization: application to feed-forward neural network training. Neural Computing and Applications, 16(3), pp.235-247.
Moradi, M.H. and Abedini, M., 2012. A combination of genetic algorithm and particle swarm optimization for optimal DG location and sizing in distribution systems. International Journal of Electrical Power & Energy Systems, 34(1), pp.66-74.
Angelova, M. and Pencheva, T., 2011. Tuning genetic algorithm parameters to improve convergence time. International Journal of Chemical Engineering, 2011.
Roberge, V., Tarbouchi, M. and Labonté, G., 2013. Comparison of parallel genetic algorithm and particle swarm optimization for real-time UAV path planning. IEEE Transactions on Industrial Informatics, 9(1), pp.132-141.
Whitley, D., 2014. An executable model of a simple genetic algorithm. Foundations of genetic algorithms, 2(1519), pp.45-62.
Angelova, M., Atanassov, K. and Pencheva, T., 2012. Purposeful model parameters genesis in simple genetic algorithms. Computers & Mathematics with Applications, 64(3), pp.221-228.
Sivanandam, S.N. and Deepa, S.N., 2007. Introduction to genetic algorithms. Springer Science & Business Media.
Deep, K. and Thakur, M., 2007. A new crossover operator for real coded genetic algorithms. Applied mathematics and computation, 188(1), pp.895-911.
Dorigo, M., 2006. Ant colony optimization-artificial ants as a computational intelligence technique. IEEE computational intelligence magazine, 1(4), pp.28-39.
Refbacks
- There are currently no refbacks.
This work is licensed under a Creative Commons Attribution 3.0 License.