Vehicle lateral control using Machine Learning for automated vehicle
guidance
- URL: http://arxiv.org/abs/2303.08187v1
- Date: Tue, 14 Mar 2023 19:14:24 GMT
- Title: Vehicle lateral control using Machine Learning for automated vehicle
guidance
- Authors: Akash Fogla, Kanish Kumar, Sunnay Saurav, Bishnu ramanujan
- Abstract summary: Uncertainty in decision-making is crucial in the machine learning model used for a safety-critical system.
In this work, we design a vehicle's lateral controller using a machine-learning model.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Uncertainty in decision-making is crucial in the machine learning model used
for a safety-critical system that operates in the real world. Therefore, it is
important to handle uncertainty in a graceful manner for the safe operation of
the CPS. In this work, we design a vehicle's lateral controller using a
machine-learning model. To this end, we train a random forest model that is an
ensemble model and a deep neural network model. Due to the ensemble in the
random forest model, we can predict the confidence/uncertainty in the
prediction. We train our controller on data generated from running the car on
one track in the simulator and tested it on other tracks. Due to prediction in
confidence, we could decide when the controller is less confident in prediction
and takes control if needed. We have two results to share: first, even on a
very small number of labeled data, a very good generalization capability of the
random forest-based regressor in comparison with a deep neural network and
accordingly random forest controller can drive on another similar track, where
the deep neural network-based model fails to drive, and second confidence in
predictions in random forest controller makes it possible to let us know when
the controller is not confident in prediction and likely to fail. By creating a
threshold, it was possible to take control when the controller is not safe and
that is missing in a deep neural network-based controller.
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