arXiv Open Access 2025

Towards Autonomous Wood-Log Grasping with a Forestry Crane: Simulator and Benchmarking

Minh Nhat Vu Alexander Wachter Gerald Ebmer Marc-Philip Ecker Tobias Glück +3 lainnya
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Abstrak

Forestry machines operated in forest production environments face challenges when performing manipulation tasks, especially regarding the complicated dynamics of underactuated crane systems and the heavy weight of logs to be grasped. This study investigates the feasibility of using reinforcement learning for forestry crane manipulators in grasping and lifting heavy wood logs autonomously. We first build a simulator using Mujoco physics engine to create realistic scenarios, including modeling a forestry crane with 8 degrees of freedom from CAD data and wood logs of different sizes. We further implement a velocity controller for autonomous log grasping with deep reinforcement learning using a curriculum strategy. Utilizing our new simulator, the proposed control strategy exhibits a success rate of 96% when grasping logs of different diameters and under random initial configurations of the forestry crane. In addition, reward functions and reinforcement learning baselines are implemented to provide an open-source benchmark for the community in large-scale manipulation tasks. A video with several demonstrations can be seen at https://www.acin.tuwien.ac.at/en/d18a/

Topik & Kata Kunci

Penulis (8)

M

Minh Nhat Vu

A

Alexander Wachter

G

Gerald Ebmer

M

Marc-Philip Ecker

T

Tobias Glück

A

Anh Nguyen

W

Wolfgang Kemmetmueller

A

Andreas Kugi

Format Sitasi

Vu, M.N., Wachter, A., Ebmer, G., Ecker, M., Glück, T., Nguyen, A. et al. (2025). Towards Autonomous Wood-Log Grasping with a Forestry Crane: Simulator and Benchmarking. https://arxiv.org/abs/2502.01304

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Tahun Terbit
2025
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en
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arXiv
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Open Access ✓