Kalman Filter Sensor Fusion for Mecanum Wheeled Automated Guided Vehicle Localization

نویسندگان

  • Sang-Won Yoon
  • Seong-Bae Park
  • Jong Shik Kim
چکیده

The Mecanum automated guided vehicle (AGV), which can move in any direction by using a special wheel structure with a LIMwheel and a diagonally positioned roller, holds considerable promise for the field of industrial electronics. A conventional method for Mecanum AGV localization has certain limitations, such as slip phenomena, because there are variations in the surface of the road and ground friction. Therefore, precise localization is a very important issue for the inevitable slip phenomenon situation. So a sensor fusion technique is developed to cope with this drawback by using the Kalman filter. ENCODER and StarGazer were used for sensor fusion. StarGazer is a position sensor for an image recognition device and always generates some errors due to the limitations of the image recognition device. ENCODER has also errors accumulating over time. On the other hand, there are no moving errors. In this study, we developed a Mecanum AGV prototype system and showed by simulation that we can eliminate the disadvantages of each sensor. We obtained the precise localization of theMecanumAGV in a slip phenomenon situation via sensor fusion using a Kalman filter.

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عنوان ژورنال:
  • J. Sensors

دوره 2015  شماره 

صفحات  -

تاریخ انتشار 2015