Online Dynamic Modeling of Ubiquitous Sensor based Embedded Robot Systems using Kalman Filter Algorithm

This paper presents Kalman filter based system modeling algorithm for autonomous robot systems. State of the robot system is measured using embedded sensor systems and then carried to a host computer via ubiquitous sensor network (USN). We settle a linear state-space motion equation for unknown robot system dynamics and modify a popular Kalman filter algorithm in deriving suitable parameter estimation mechanism. To represent time-delay nature due to network media in system modeling, we construct an augmented state-space model which is mainly composed of original state and estimated parameter vectors. We conduct real-time experiment to test our proposed estimation algorithm where speed state of the constructed robot is used as system observation.

[1]  Kyungran Kang,et al.  USS Monitor: A Monitoring System for Collaborative Ubiquitous Computing Environment , 2007, IEEE Transactions on Consumer Electronics.

[2]  Panos J. Antsaklis,et al.  On the model-based control of networked systems , 2003, Autom..

[3]  Tai C Yang,et al.  Networked control system: a brief survey , 2006 .

[4]  Biao Huang,et al.  A new method for stabilization of networked control systems with random delays , 2005, Proceedings of the 2005, American Control Conference, 2005..

[5]  Y. Tipsuwan,et al.  Control methodologies in networked control systems , 2003 .

[6]  Ji-Young Kwak Ubiquitous Services System Based on SIP , 2007, IEEE Transactions on Consumer Electronics.