Angular Velocity Prediction of GFSINS Based on BP Neural Network

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Abstract:

Aiming at low precision for traditional angular velocity algorithms in GFSINS, a BP neural network algorithm without complex mathematic computation is put forward to calculate angular velocity. Based on a ten-accelerometer configuration scheme, the accelerometer output, sample interval and fixed position are chosen as input, angular velocity got by lognormal algorithm is chosen as output, and 5000 sample data is trained in the several conditions with different hiding layers, neural cells and training steps. Then a three-layer BP network model with 30 hiding layer neural cells is built. Finally, the angular velocity is predicted in real time by the model. Results show that network has strong adaptive capability and real time, and compared with lognormal algorithm, prediction time is almost equal, but prediction precision of angular velocity is nearly improved by three times.

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Periodical:

Advanced Materials Research (Volumes 452-453)

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846-852

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January 2012

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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[1] WANG Xiao-xu, XUE Hong-xiang, XIA Quan-xi, et al. Design and simulation analysis of gyroscope-free inertial measurement unit. Journal of Chinese Inertial Technology, 16: 154-158(2008).

Google Scholar

[2] CHEN Mu-qing, XU Jiang-ning, LIU Qiang. Design of algebra-based attitude angular velocity algorithm for GFSINS. Journal of Naval University of Engineering, 20: 19-22(2008).

Google Scholar

[3] Kirill. S. Mostov. Design of Accelerometer-based Gyro-Free Navigation Systems. Berkeley: University of California, (2000).

Google Scholar

[4] CAO Yong-hong, ZHANG Hui, MA Tie-hua, et al. Attitude forecast of gyroscope-free SINS based on neural network. Journal of Chinese Inertial Technology, 16: 159-161(2008).

Google Scholar

[5] CHEN Mu-qing, ZHAO Guo-rong, QU Jun-wu. Design of dual attitude angular-rates combined scheme in GFSINS. Journal of Chinese Inertial Technology, 14: 15-19(2006).

Google Scholar

[6] Wilamowski B M,Iplikci S,Kaynak 0,et a1.An algorithm for fast convergence in training neural networks.IEEE Transactions on Neural Networks, 3: 1778-1782(2001).

DOI: 10.1109/ijcnn.2001.938431

Google Scholar

[7] Blackwell William J.A neural network technique for atmospheric compensation and temperature/emissivity separation using LWIR/MWIR hyperspectral data.Algorithms and Technologies for Multispectral, 604-615(2004).

DOI: 10.1117/12.543616

Google Scholar

[8] CAI Zi-xing, XU Guang-you. Artificial Intelligence and neural network. Tsinghua University Press, Beijing (2004).

Google Scholar

[9] Chin Woo Tan, Sungsu Park. Design of accelerometer-based inertial navigation systems. IEEE Transactions on Instrumentation and Measurement. 54: 2520-2530(2005).

DOI: 10.1109/tim.2005.858129

Google Scholar

[10] MENG Song, ZHANG Zhi-jie, FAN Jin-biao, et al. An BP ANN forecast model for aerocraft attitude. Journal of Projectiles, Rockets, Missiles and Guidance. 28: 138-142(2008).

Google Scholar

[11] Xiaoyuan Li, Bin Qi, Lu Wang. A new improved BP neural network algorithm. International Conference on Intelligent Computing Technology and Automation. China, 19-22(2009).

DOI: 10.1109/icicta.2009.12

Google Scholar

[12] Wen Jinwei, Zhao Jiali, Luo Siwei. The improvements of BP neural network learning algorithm. Proceedings of the 2000 International Conference on Signal Processing. 1647-1649(2000).

DOI: 10.1109/icosp.2000.893423

Google Scholar

[13] Cooper, G.R. Spinning projectile with an inviscid liquid payload impregnating porous medi. AIAA Journal. 46: 783-787(2008).

DOI: 10.2514/1.30481

Google Scholar

[14] Yan Q.W., Zhang W., Wu L.F., et al. Measurement of rotation and angular vibration frequencies of spinning projectile in coning motion by a silicon micromachined gyro. IEEE International Conference on Information and Automation. 1018-1022(2009).

DOI: 10.1109/icinfa.2009.5205067

Google Scholar

[15] A.D. Doulamis, N.D. Doulamis, S.D. Kollias. On-line retrainable neural networks: improving the performance of neural networks in image analysis problems. IEEE Transactions on Neural Networks. 11: 137-155(2000).

DOI: 10.1109/72.822517

Google Scholar

[16] Zhen Shi, Di Wang, Changqing Li. A kind of gyroscope free strapdown inertial navigation system using six accelerometers. International Workshop on Modern Science and Technology. Japan, 121-12(2002).

Google Scholar