Publication | Closed Access
INS/GPS integrated navigation for wheeled agricultural robot based on sigma-point Kalman Filter
18
Citations
11
References
2008
Year
Unknown Venue
State EstimationInertial Navigation SystemAutomatic NavigationEngineeringWheeled Agricultural RobotLocation EstimationOdometryMechatronicsField RoboticsVehicle LocalizationSigma-point Kalman FilterNumerical RobustKinematicsIns/gps Integrated NavigationDifferential Wheeled RobotRoboticsAutonomous Navigation
This paper describes a numerical robust and computational efficient square-root central difference Kalman filter (SRCDKF) and put it into the application of state estimation of Inertial Navigation System (INS)/GPS integrated navigation for wheeled agricultural robot to overcome the flaws exist in EKF (Extended Kalman Filter). A standard INS mechanization with quaternion form attitude expression is introduced and a GPS antenna position compensated observation model is used. Based on the model above, both EKF and SRCDKF are implemented, and their performances are compared through simulation under several situations. Results indicate that the SRCDKF is much more robust and superior than EKF in the existence of large initial heading errors, short period of GPS outrage and low-cost IMU (Inertial Measurement Unit). It based a good foundation for the accurate and robust control of the agricultural robot.
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