A Novel Particle Swarm Method to Evaluate the Effect of Science and Technology Innovation in Agriculture

Article Preview

Abstract:

The science and technology innovation in agriculture has the essence characteristic of high rentability, agricultural regionalism and the long time lag. The effect evaluation of agricultural science and technology innovation is to seek for the optimal solution, is also the misalignment mapping. This paper constructs the evaluating index system to reflect the innovation effect from system angle, proposes a novel particle swarm method which uses the randomness, the rapidity and the global characteristics to obtain the pheromone distribution, and has the faster velocity of convergence. The effect evaluation of 12 samples shows that the results given by this model are reliable, and this method to evaluate the effect of agricultural science and technology innovation is feasible.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

159-164

Citation:

Online since:

January 2012

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2012 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] B.D. Lin, Assessment of the Theoretical Model on the evaluation Of Agricultural Science and Technology Innovation Ability. Journal of Fujian Agriculture and Forestry University, vol. 13, no. 3 (2010), pp.54-59.

Google Scholar

[2] Y.W. Wei, On Accelerating Agricultural Technological Innovations. Agricultural Science & Technology and Equipment, no. 4 (2011), pp.114-115.

Google Scholar

[3] J.J. Qiao, W. Cao, Y.J. Sun, Performance of technological Innovation in Agriculture based on BP Network. Journal of Science of Teachers' College and University, vol. 28, no. 4 (2008), pp.37-39.

Google Scholar

[4] C.L. Duan, W.D. Xie, A Hybrid Particle Swarm and Ant Colony Algorithm and Its Application on Multiprocessing System Dispatch. Computer Era, no. 9 (2008), pp.47-48.

Google Scholar

[5] X.M. Han, H.Z. Wang, L.M. Wang, The Atmosphere Quality Evaluation Model based on Particle Swarm Optimization. Computer Engineering and Design, vol. 27, no. 24 (2006), pp.4626-4628.

Google Scholar

[6] C.X. Zhi, Z.Y. Liang, A Stochastic Searching Algorithm in Combination with Particle Swarm Optimization Algorithm and Ant Colony Algorithm. Journal of Guangxi Academy of Sciences, vol. 22, no. 4 (2006), pp.231-233.

Google Scholar

[7] L.L. Zhu, Z.P. Yang, H. Yuan, Analysis and Development of Particle Swarm Optimization. Computer Engineering and Applications, vol. 43, no. 5 (2007), pp.24-27.

Google Scholar

[8] W.C. Zhang, K. Kang, Ant Colony and Particle Swarm Optimization Algorithm-based Solution to Multi-mode Resource-constrained Project Scheduling Problem. Computer Engineering and Applications, vol. 43, no. 34 (2007), pp.213-216.

Google Scholar

[9] N. Fan, Q.X. Yun, Particle Swarm Optimization Algorithms and Its Applications. Information Technology, no. 1 (2006), pp.53-56.

Google Scholar