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基于小波网络的水下机器人故障诊断研究
引用本文:王建国,吴恭兴,万磊,孙玉山,姜大鹏.基于小波网络的水下机器人故障诊断研究[J].船舶工程,2009,31(Z1).
作者姓名:王建国  吴恭兴  万磊  孙玉山  姜大鹏
作者单位:哈尔滨工程大学,水下机器人技术国防科技重点实验室,哈尔滨,150001
基金项目:国家863计划基金资助项目,哈尔滨工程大学基础研究基金资助 
摘    要:由于水下机器人系统的复杂性、不确定性及强非线性等使得对其建模异常困难,采用一种最小调整的小波神经网络对其进行运动建模以获得理想的建模效果.通过该网络的自学习,调节小波函数的伸缩因子与平移因子以及网络连接权值,既能以任意精度逼近函数的整体轮廓,也能捕捉函数的变化细节,使得函数的逼近效果较好.对比模型的输出与实际传感器测量值来生成残差,通过分析残差特性来提取故障诊断判据,进而完成推进器故障诊断.完成了推进器故障诊断的仿真试验,仿真结果验证了该方法的有效性和可行性.

关 键 词:水下机器人  推进器故障  故障诊断  小波神经网络

Study on the fault diagnosis for underwater robots based on wavelet neural network
WANG Jian-guo,WU Gong-xing,WAN Lei,SUN Yu-shan,JIANG Da-peng.Study on the fault diagnosis for underwater robots based on wavelet neural network[J].Ship Engineering,2009,31(Z1).
Authors:WANG Jian-guo  WU Gong-xing  WAN Lei  SUN Yu-shan  JIANG Da-peng
Institution:WANG Jian-guo,WU Gong-xing,WAN Lei,SUN Yu-shan,JIANG Da-peng(State Key Laboratory of Autonomous Underwater Vehicle,Harbin Engineering University,Harbin 150001,China)
Abstract:It is very difficult to model the system because of the complexity,uncertainties and strong nonlinearity of underwater robots.In order to make the modeling perfect,a wavelet neural network based on the least adjustment is applied.The adjustment of the scale factors and shift factors of wavelet and weights of WNN is studied.The WNN has the ability not only to approach the whole figure of a function at high accuracy but also to catch detail changes of the function,which makes the approaching effect preferably...
Keywords:underwater robots  thruster faults  fault diagnosis  wavelet neural network(WNN)  
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