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Hybrid Trajectory Optimization for Autonomous Terrain Traversal of Articulated Tracked Robots

Zhengzhe Xu, Yanbo Chen, Zhuozhu Jian, Junbo Tan, xueqian WANG, bin LIANG

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Abstract

Autonomous terrain traversal of articulated tracked robots can reduce operator cognitive load to enhance task efficiency and facilitate extensive deployment. We present a novel hybrid tra- jectory optimization method aimed at generating efficient, stable, and smooth traversal motions. To achieve this, we develop a planar robot-terrain contact model and divide the robot’s motion into hybrid modes of driving and traversing. By using a generalized coordinate description, the configuration space dimension is re- duced, which facilitates real-time planning. The hybrid trajectory optimization is transcribed into a nonlinear programming problem and divided into subproblems to be solved in a receding-horizon planning fashion. Mode switching is facilitated by associating op- timized motion durations with a predefined traversal sequence. A multi-objective cost function is formulated to further improve the traversal performance. Additionally, map sampling, terrain sim- plification, and tracking controller modules are integrated into the autonomous terrain traversal system. Our approach is validated in simulation and real-world scenarios with the Searcher robotic platform. Comparative experiments with expert operator control and state-of-the-art methods show advantages in terms of time and energy efficiency, stability, and smoothness of motion.

Index terms

Field Robots Autonomous Vehicle Navigation Optimization and Optimal Control