Position estimation of autonomous guided vehicle
This thesis presents the development and application of a sensor fusion algorithm in positioning. The theoretical background behind the algorithm is based on the extended Kalman filter. By merging information from different sensors such as the Differential Global Positioning System (DGPS), rate g...
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格式: | Theses and Dissertations |
出版: |
2008
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在線閱讀: | http://hdl.handle.net/10356/4296 |
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機構: | Nanyang Technological University |
總結: | This thesis presents the development and application of a sensor fusion algorithm in
positioning. The theoretical background behind the algorithm is based on the extended
Kalman filter. By merging information from different sensors such as the Differential
Global Positioning System (DGPS), rate gyroscope and odometers, the filter is able to
predict optimally the position and orientation of a 2-wheel steerable vehicle. In the
filter, an enhanced kinematic process or vehicle model that accounts for the side slips
experienced at the vehicle wheels is employed. These slip parameters that conform to
the angles between the actual translated and pointed directions of the vehicle tires can
affect the accuracy and consistency of the estimation system. Comparison between the
enhanced model and another (without the slip consideration and based on pure
kinematics) indicates improvements in the estimations as well as the orientation rate
innovations with the slip compensation. |
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