Adaptive Lateral Control of Autonomous Trucks
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Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Model builders
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Abstract
Autonomous heavy vehicle control systems depend on a suite of parameters, both
vehicular and environmental, and their performance is directly related to these parameter
values. These parameters often include variables such as the total mass
of the loaded vehicle, lateral and longitudinal tire cornering coefficients, wheelbase
geometry, load distribution, etc. In theory, these parameters are often considered
constant and known. However, in practice, this might not always be the case, especially
in dynamic operating environments of a quarry or mine. Therefore, to ensure
robust and reliable performance, the controller must be adaptive, updating itself
online to continue operating efficiently.
This thesis focuses on the investigation, development, and implementation of different
types of adaptive lateral controllers for autonomous haulage trucks, whose
parameters initially deviate from the true value and are subject to change during
operation. The study focuses on evaluating both direct and indirect approaches to
adaptive control. The direct adaptive controller uses a Lyapunov-based approach
towards adaptation, meanwhile the indirect controller uses Kalman filter-based estimation
methods to estimate unknown system parameters.
Overall, the findings suggest that the indirect adaptive control strategies are more
suitable for autonomous haulage applications. The integration of Kalman filterbased
parameter estimation with model based controllers like LQR resulted in consistent
performance and robustness, and better handling of system uncertainties
compared to direct adaptive approaches.
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Keywords
Adaptive Lateral Control, Autonomous Trucks, Parameter Estimation, Extended Kalman Filter, Unscented Kalman Filter, PID Control, Linear Quadratic Regulator
