帮助 关于我们

返回检索结果

Design of Fault Detection Observer Based on Hyper Basis Function

查看参考文献18篇

Wen Xin 1 *   Zhang Xingwang 1   Zhu Yaping 2  
文摘 In this paper, we propose the Hyper Basis Function(HBF) neural network on the basis of Radial Basis Function(RBF) neural network. Compared with RBF, HBF neural networks have a more generalized ability with different activation functions. A decision tree algorithm is used to determine the network center. Subsequently, we design an adaptive observer based on HBF neural networks and propose a fault detection and diagnosis method based on the observer for the nonlinear modeling ability of the neural network. Finally, we apply this method to nonlinear systems. The sensitivity and stability of the observer for the failure of the nonlinear systems are proved by simulation, which is beneficial for real-time online fault detection and diagnosis.
来源 Tsinghua Science and Technology ,2015,20(2):200-204 【核心库】
DOI 10.1109/tst.2015.7085633
关键词 observer ; fault detection ; hyper basis function ; neural networks
地址

1. Faculty of Aerospace Engineering, Shenyang Aerospace University, Shenyang, 110136  

2. College Astronautics, Nanjing University of Aeronautics and Astronautics, Nanjing, 210016

语种 英文
文献类型 研究性论文
ISSN 1007-0214
学科 自动化技术、计算机技术
文献收藏号 CSCD:5414852

参考文献 共 18 共1页

1.  Song H. Fault detection approach based on fuzzy observer for uncertain nonlinear systems, (in Chinese). Aerospace Control,2005,23(3):74-78 被引 1    
2.  Zhu X H. Novel observerbased robust fault detection method for nonlinear uncertain systems, (in Chinese). Control Theory & Applications,2013,30(5):644-648 被引 1    
3.  Gao L E. Failure diagnose observer design and simulation for X-type rudder plane of underwater vehicle, (in Chinese). Journal of Projectiles, Rockets, Missiles and Guidance,2008,28(4):222-224 被引 1    
4.  Zarei J. Robust sensor fault detection based on nonlinear unknown input observer. Measurement,2014,48(2):355-367 被引 5    
5.  Wang Z H. Actuator fault detection and isolation for the attitude control system of satellite, (in Chinese). Journal of Harbin Institute of Technology,2013,45(2):72-76 被引 1    
6.  Song Y Q. Fault diagnosis based on RBF neural network observer in flight control system, (in Chinese). Computer Simulation,2010,27(3):85-88 被引 1    
7.  Du Z M. Sensor fault detection and its efficiency analysis in air handling unit using the combined neural networks. Energy and Buildings,2014(72):157-166 被引 1    
8.  Vanini Z N S. Fault detection and isolation of a dual spool gas turbine engine using dynamic neural networks and multiple model approach. Information Sciences,2014(259):234-251 被引 16    
9.  Schwenker F. Three learning phases for radial-basis-function networks. Neural Networks,2001,14(4/5):439-458 被引 34    
10.  Adhyaru D M. State observer design for nonlinear systems using neural network. Applied Soft Computing,2012,12(8):2530-2537 被引 6    
11.  Wu H W. Neural-network-based observers for nonlinear systems, (in Chinese). Journal of Tsinghua University (Science and Technology),2000,40(3):44-47 被引 3    
12.  Valls J M. Using a Mahalanobis-like distance to train radial basis neural networks. Computational Intelligence and Bioinspired Systems,2012,12(8):2530-2537 被引 1    
13.  Vorobyov S A. Hyper radial basis function neural networks for interference cancellation with nonlinear processing of reference signal. Digital Signal Processing,2001,11(3):204-221 被引 2    
14.  Vukovic N. A growing and pruning sequential learning algorithm of hyper basis function neural network for function approximation. Neural Networks,2013,46(10):220-226 被引 6    
15.  Li A J. Decision tree based neural network design, (in Chinese). Journal of Computer Research and Development,2005,2(8):1312-1317 被引 1    
16.  Xu Z C. Design of observers for nonlinear systems based on improved neural-network,(in Chinese). Microcomputer & Its Applications,2011,30(8):76-78 被引 1    
17.  Shaik F A. Real-time implementation of Chebyshev neural network observer for twin rotor control system. Expert Systems with Applications,2011,38(10):13043-13049 被引 7    
18.  Wen X. Method of state observer design and fault detection, (in Chinese). Journal of Beijing University of Aeronautics and Astronautics,1998,24(6):676-679 被引 1    
引证文献 3

1 Zou Deqing UiLog: Improving Log-Based Fault Diagnosis by Log Analysis Journal of Computer Science and Technology,2016,31(5):1038-1052
被引 2

2 刘光明 抗差自适应UKF算法在地基光学跟踪空间目标中的应用 系统工程与电子技术,2018,40(3):623-629
被引 4

显示所有3篇文献

论文科学数据集
PlumX Metrics
相关文献

 作者相关
 关键词相关
 参考文献相关

版权所有 ©2008 中国科学院文献情报中心 制作维护:中国科学院文献情报中心
地址:北京中关村北四环西路33号 邮政编码:100190 联系电话:(010)82627496 E-mail:cscd@mail.las.ac.cn 京ICP备05002861号-4 | 京公网安备11010802043238号