Title :
Stochastic parameters identification and localization of mobile robots
Author_Institution :
Dept. of Syst. Eng., King Fahd Univ. of Pet. & Miner., Dhahran, Saudi Arabia
Abstract :
In this paper, a stochastic estimation algorithm based on a hybrid Genetic-Hidden Markov Models (GHMMs) technique is presented, with an application to nonlinear dynamic parameters identification and localization of a wheeled mobile robot. The stochastic kinematic and dynamic models of the robot and environment are introduced in order to take into account inherent uncertainties of the robot´s dynamics and sensory measurements. The identification algorithm is then developed for the resulting nonlinear doubly stochastic model in a framework based on Hidden Markov Models technique. The robot state is estimated using a genetic optimization of the maximum likelihood solution. Implementation issues related to GHMMs are provided along with simulation results. Comparisons are performed and discussed with the Extended Kalman Filter for the parameters identification and state estimation problem.
Keywords :
Kalman filters; genetic algorithms; hidden Markov models; maximum likelihood estimation; mobile robots; parameter estimation; robot dynamics; extended Kalman filter; genetic optimization; hybrid genetic-hidden Markov model; maximum likelihood solution; mobile robot; nonlinear dynamic parameters identification; robot dynamics; sensory measurement; state estimation; stochastic dynamic model; stochastic kinematic model; stochastic parameters identification; Hidden Markov models; Mobile robots; Noise; Robot sensing systems; Wheels; Zinc; Extended Kalman Filter; Genetic Algorithms; Hidden Markov Models; Stochastic Parameters Identification; Wheeled Mobile Robots;
Conference_Titel :
Robotic and Sensors Environments (ROSE), 2010 IEEE International Workshop on
Conference_Location :
Phoenix, AZ
Print_ISBN :
978-1-4244-7147-8
DOI :
10.1109/ROSE.2010.5675346