3.8 Proceedings Paper

Improvement of Lane Keeping Assistance ADAS Function utilizing a Kalman Filter Prediction of Delayed Position States

出版社

IEEE
DOI: 10.1109/iccve45908.2019.8964916

关键词

lane keeping control; lane tracking model; Kalman filter; sensor delay

资金

  1. COMET K2 - Competence Centers for Excellent Technologies Programme of the Austrian Federal Ministry for Transport, Innovation and Technology (bmvit)
  2. Austrian Federal Ministry of Science, Research and Economy (bmwfw)
  3. Austrian Research Promotion Agency (FFG)
  4. Province of Styria
  5. Styrian Business Promotion Agency (SFG)
  6. AVL List GmbH
  7. MAGNA S MYR Engineering AG Co KG
  8. Institute of Automation and Control at the Technical University of Graz

向作者/读者索取更多资源

In designing and implementing control systems, converting simulation based results to real life systems is often not straightforward and may need adaptation of the control approach to achieve similar performance levels to the simulation results. Such adaptations are usually required due to the fact that sensors and actuators have a number of imperfections such as delays, offsets and inherent noise processes. Here, such a problem in relation to the development of a lane keeping control algorithm is presented. An in-house developed lane keeping controller based on a high-fidelity simulation environment was planned to be transferred to a real demonstrator test vehicle. First tests showed significantly deteriorated and unstable performance results of the corresponding controller, which was due to sensor delays and actuator imperfections. After the diagnosis of the problem, an approach to mitigate these issues was undertaken by predicting the delayed sensor data utilizing a linear Kalman filter and an a-priori predictor. The Kalman filter and a-priori predictor design approach is based on a discrete-time version of the lane tracking model. The approach and the corresponding results were demonstrated using simulation and real vehicle implementation results that were evaluated in real driving conditions.

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