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An adaptive particle filter for mobile robot fault diagnosis 被引量:1

An adaptive particle filter for mobile robot fault diagnosis
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摘要 An adaptive particle filter for fault diagnosis of dead-reckoning system was presented, which applied a general framework to integrate rule-based domain knowledge into particle filter. Domain knowledge was exploited to constrain the state space to certain subset. The state space was adjusted by setting the transition matrix. Firstly, the monitored mobile robot and its kinematics models, measurement models and fault models were given. Then, 5 kinds of planar movement states of the robot were estimated with driving speeds of left and right side. After that, the possible (or detectable) fault modes were obtained to modify the transitional probability. There are two typical advantages of this method, i.e. particles will never be drawn from hopeless area of the state space, and the particle number is reduced. An adaptive particle filter for fault diagnosis of dead-reckoning system was presented, which applied a general framework to integrate rule-based domain knowledge into particle filter. Domain knowledge was exploited to constrain the state space to certain subset. The state space was adjusted by setting the transition matrix. Firstly, the monitored mobile robot and its kinematics models, measurement models and fault models were given. Then, 5 kinds of planar movement states of the robot were estimated with driving speeds of left and right Side. After that, the possible (or detectable) fault modes were obtained to modify the transitional probability. There are two typical advantages of this method, i.e. particles will never be drawn from hopeless area of the state space, and the particle number is reduced.
出处 《Journal of Central South University of Technology》 EI 2006年第6期689-693,共5页 中南工业大学学报(英文版)
基金 Project(60234030) supported by the National Natural Science Foundation of China
关键词 轮式移动机器人 故障诊断 质点滤波器法 自适应 mobile robot fault diagnosis particle filter adaptive
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  • 1VERMA V, LANGFORD J, SIMMONS R. Non-parametric fault identification for space rovers [ C ]//Proc of the 6 th Int Symposium on Artificial Intelligence, Robotics and Automation in Space. [ s. l.]:[s.n. ] ,2001.
  • 2GORDON N, SALMOND D, EWING C. Bayesian state estimation for tracking and guidance using the bootstrap filter [ J ]. J of Guidance Control and Dynamics, 1995,18(6): 1434 - 1443.
  • 3RUBIN D. Comment on ' The calculation of posterior distributions by data augmentation' by TANNER M A WONG W H [ J ]. J of the American Statistical Association, 1987,82:543- 546.
  • 4GILKS W R, BERZUINI C. Following a moving target-monte carlo inference for dynamic Bayesian models [ J] . J of the Royal Statistical Society B ,2001,63( 1 ): 127 - 146.
  • 5CLAPP T C. December statistical methods for the processing of communiaations data [D].Cambridge,UK:University of Cambridge,2000.
  • 6PITT M, SHEPHARD N.Filtering via simulation:Auxiliary particle filters [ J ]. J of the American Statistical Association, 1999,94 (446):590 - 599.
  • 7HIGUCHI T. Monte Carlo filtering using genetics algorithm operators [J]. J of Statistical Computation and Simulation, 1997,59(1): 1 - 23.
  • 8GORDON N,SALMOND D,SMITH A F M.Novel approach to nonlinear/non-Gaussian Bayesian state estimation [ J ]. IEEE proceedings-F, 1993,140(2): 107 - 113.
  • 9CRISAN D, DOUCET A. A survey of convergence results on particle filtering methods for practitioners [ J ]. IEEE Trans on Signal Processing, 2002,50(3): 736 - 746.
  • 10CASELLA G, ROBERT C. Rao-Blackwellisation of sampling schemes [ J] . Biometrika ,1996,83(1) : 81-94.

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