• Title of article

    Distributed observers for pose estimation in the presence of inertial sensory soft faults

  • Author/Authors

    Sadeghzadeh-Nokhodberiz، نويسنده , , Nargess and Poshtan، نويسنده , , Javad and Wagner، نويسنده , , Achim and Nordheimer، نويسنده , , Eugen and Badreddin، نويسنده , , Essameddin Badreddin، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2014
  • Pages
    13
  • From page
    1307
  • To page
    1319
  • Abstract
    Distributed Particle-Kalman Filter based observers are designed in this paper for inertial sensors (gyroscope and accelerometer) soft faults (biases and drifts) and rigid body pose estimation. The observers fuse inertial sensors with Photogrammetric camera. Linear and angular accelerations as unknown inputs of velocity and attitude rate dynamics, respectively, along with sensory biases and drifts are modeled and augmented to the moving body state parameters. To reduce the complexity of the high dimensional and nonlinear model, the graph theoretic tearing technique (structural decomposition) is employed to decompose the system to smaller observable subsystems. Separate interacting observers are designed for the subsystems which are interacted through well-defined interfaces. Kalman Filters are employed for linear ones and a Modified Particle Filter for a nonlinear non-Gaussian subsystem which includes imperfect attitude rate dynamics is proposed. The main idea behind the proposed Modified Particle Filtering approach is to engage both system and measurement models in the particle generation process. Experimental results based on data from a 3D MEMS IMU and a 3D camera system are used to demonstrate the efficiency of the method.
  • Keywords
    sensor fusion , Large scale systems , particle filtering , photogrammetry , Kalman filtering , MEMS IMU , Sensor fault diagnosis , Vision based navigation , System decomposition , Pose estimation
  • Journal title
    ISA TRANSACTIONS
  • Serial Year
    2014
  • Journal title
    ISA TRANSACTIONS
  • Record number

    2383473