SYROApr 14, 2021

Towards agrobots: Identification of the yaw dynamics and trajectory tracking of an autonomous tractor

arXiv:2104.06833v16 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the need for more efficient agricultural machinery by improving autonomous tractor control, though it is incremental as it applies existing control methods to this specific domain.

The study tackled trajectory tracking for an autonomous tractor by identifying its yaw dynamics and implementing a model predictive control scheme, achieving Euclidean errors below 40 cm for straight lines and 60 cm for curved trajectories.

More efficient agricultural machinery is needed as agricultural areas become more limited and energy and labor costs increase. To increase their efficiency, trajectory tracking problem of an autonomous tractor, as an agricultural production machine, has been investigated in this study. As a widely used model-based approach, model predictive control is preferred in this paper to control the yaw dynamics of the tractor which can deal with the constraints on the states and the actuators in a system. The yaw dynamics is identified by using nonlinear least squares frequency domain system identification. The speed is controlled by a proportional-integral-derivative controller and a kinematic trajectory controller is used to calculate the desired speed and the desired yaw rate signals for the subsystems in order to minimize the tracking errors in both the longitudinal and transversal directions. The experimental results show the accuracy and the efficiency of the proposed control scheme in which the euclidean error is below $40$ cm for time-based straight line trajectories and $60$ cm for time-based curved line trajectories, respectively.

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