Inertial navigation systems for mobile robots
Date
1995-06Source Title
IEEE Transactions on Robotics and Automation
Print ISSN
1042-296X
Electronic ISSN
2374-958X
Publisher
Institute of Electrical and Electronics Engineers
Volume
11
Issue
3
Pages
328 - 342
Language
English
Type
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Abstract
A low-cost solid-state inertial navigation system
(INS) for mobile robotics applications is described. Error models
for the inertial sensors are generated and included in an Extended
Kalman Filter (EKF) for estimating the position and orientation
of a moving robot vehicle. Two Merent solid-state gyroscopes
have been evaluated for estimating the orientation of the robot.
Performance of the gyroscopes with error models is compared to
the performance when the error models are excluded from the
system. The results demonstrate that without error compensation,
the error in orientation is between 5-15"/min but can be improved
at least by a factor of 5 if an adequate error model is supplied.
Siar error models have been developed for each axis of a solid-state triaxial accelerometer and for a conducting-bubble tilt sensor which may also be used as a low-cost accelerometer. Linear
position estimation with information from accelerometers and tilt sensors is more susceptible to errors due to the double integration
process involved in estimating position. With the system described
here, the position drift rate is 1-8 cds, depending on the frequency
of acceleration changes. An integrated inertial platform
consisting of three gyroscopes, a triaxial accelerometer and two
tilt sensors is described. Results from tests of this platform on a large outdoor mobile robot system are described and compared to
the results obtained from the robot's own radar-based guidance
system. Like all inertial systems, the platform requires additional
information from some absolute position-sensing mechanism to
overcome long-term drift. However, the results show that with
careful and detailed modeling of error sources, low-cost inertial
sensing systems can provide valuable orientation and position
information particularly for outdoor mobile robot applications.
Keywords
Inertial navigationMobile robots
Robot sensing systems
Accelerometers
Vehicles
Gyroscopes
Sensor phenomena and characterization
Solid state circuits
Error compensation
Solid modeling