The Robot Wrist Sensor Dynamic Mode Building Method Based on Genetic Wavelet Neural Networks

Article Preview

Abstract:

A kind of new dynamic modeling method is presented based on improved genetic algorithm (IGA) and wavelet neural networks (WNN) and the principle of algorithm is introduced for a new type robot wrist force sensor. The dynamic model of the wrist force sensor is set up according to data of the dynamic calibration, where the structure and parameters of wavelet neural networks of the dynamic model are optimized by genetic algorithm. The results show that the proposed method can overcome the shortcomings of easy convergence to the local minimum points of BP algorithm, and the network complexity, the convergence and the generalization ability are well compromised and the training speed and precision of model are increased.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

389-394

Citation:

Online since:

November 2013

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2014 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

* - Corresponding Author

[1] Yin Ming, Xu Kejun, Dai Xianzhong: Journal of Southeast University vol. 29(1999), pp.103-108. (in Chinese).

Google Scholar

[2] Xu Kejun , Yin Ming: Chinese Journal of Scientific Instrument vol. 20(1999), pp.511-514. (in Chinese).

Google Scholar

[3] Song Aiguo , Wu Jun, Qin Gang: Measurement vol. 40(2007), pp.883-891.

Google Scholar

[4] Yu Dongchuan: China Instrumentation, 2003-07, pp.9-11. (in Chinese).

Google Scholar

[5] Cai Hainan , Zhou Zhaoying , Li Yong , et al: Chinese Journal of Scientific Instrument vol. 19(1998), pp.263-267. (in Chinese).

Google Scholar

[6] Chen Junjie , Lu Jun , Huang Weiyi: Chinese Journal of Scientific Instrument vol. 24(2003), pp.201-204. (in Chinese).

Google Scholar

[7] J. C. Prtra, R. N. Pal: Signal Processing vol. 43(1995), pp.181-195.

Google Scholar

[8] J. C. Prtra: Measurement vol. 22(1997) , pp.113-121.

Google Scholar

[9] J .C. Prtra , G. Panda, R. Baliarsingh: IEEE Trans Instru Meas vol. 63(1994), pp.874-881.

Google Scholar

[10] Zhong Ying , Wang Bingwen: Systems Engineering and Electronics vol. 24(2002), pp.9-11. (in Chinese).

Google Scholar

[12] Liu Qing: Journal of Nanjing Normal University vol. 2(2002), pp.11-15. (in Chinese).

Google Scholar

[13] A. Blanco, M. Delgado, M. C. Pegalajar: International Journal of Approximate Reasoning vol. 23(2000), pp.67-83.

Google Scholar

[14] V. Maniezzo: IEEE Trans on Neural Network vol. 5(1994), pp.39-53.

Google Scholar

[15] D. L. Donoho, I. M. Johnstone: Journal of the American Statistical Association vol. 90(1995), pp.1200-1224.

Google Scholar

[16] X-G Xia: IEEE Trans Signal Processing vol. 46(1998), pp.1558-1570.

Google Scholar

[17] T. D. Bui, G. Chen: IEEE Transactions on Signal Processing vol. 46(1998), pp.3414-3420.

Google Scholar

[18] Jin Jing, Su Yong: Computer Engineering and Applications vol. 18(2005), pp.64-69. (in Chinese).

Google Scholar