arXiv Open Access 2025

GPU-Accelerated Motion Planning of an Underactuated Forestry Crane in Cluttered Environments

Minh Nhat Vu Gerald Ebmer Alexander Watcher Marc-Philip Ecker Giang Nguyen +1 lainnya
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Abstrak

Autonomous large-scale machine operations require fast, efficient, and collision-free motion planning while addressing unique challenges such as hydraulic actuation limits and underactuated joint dynamics. This paper presents a novel two-step motion planning framework designed for an underactuated forestry crane. The first step employs GPU-accelerated stochastic optimization to rapidly compute a globally shortest collision-free path. The second step refines this path into a dynamically feasible trajectory using a trajectory optimizer that ensures compliance with system dynamics and actuation constraints. The proposed approach is benchmarked against conventional techniques, including RRT-based methods and purely optimization-based approaches. Simulation results demonstrate substantial improvements in computation speed and motion feasibility, making this method highly suitable for complex crane systems.

Topik & Kata Kunci

Penulis (6)

M

Minh Nhat Vu

G

Gerald Ebmer

A

Alexander Watcher

M

Marc-Philip Ecker

G

Giang Nguyen

T

Tobias Glueck

Format Sitasi

Vu, M.N., Ebmer, G., Watcher, A., Ecker, M., Nguyen, G., Glueck, T. (2025). GPU-Accelerated Motion Planning of an Underactuated Forestry Crane in Cluttered Environments. https://arxiv.org/abs/2503.14160

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2025
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en
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arXiv
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