Probabilistic algorithm and training rule for a new identification and control kernel application to robotics systems

  • A. Khoukhi*
  • *Corresponding author for this work

Research output: Contribution to conferencePaperpeer-review

Abstract

A stochastic program is developed for adaptive control and identification of industrial design applications. Our program is executed at two levels: a stochastic trajectory planner (STP) in the first place then an on-line trajectory follower (OTF) based on the complete stochastic dynamic model of the process. The modelization is first done in the deterministic case based on the Lagrangien formalism. This gives the stochastic model of the process. This study is applied to a case study of mobile robots agents. The mobility of the robot is besides considered; first a static mobility is given. Then we consider a dynamic mobility. After that the mobility is randomized and taken as an output of our dynamic system. Our program is one of identification of the doubly stochastic process of hidden Markov chaines minimizing the function of information of Kullback-Leibler. The convergence and the consistence of functions of parameters evaluation as well as simulations on the case of the SARAH robot are given to demonstrate the efficiency of our algorithms.

Original languageEnglish
Pages129-134
Number of pages6
StatePublished - 2000

Keywords

  • Dynamic mobility
  • Dynamic navigation
  • Identification and stochastic control
  • Information of kullback-leibler

ASJC Scopus subject areas

  • Mechanical Engineering

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