Visual-Based Forklift Learning System Enabling Zero-Shot Sim2Real Without Real-World Data
Forklifts are used extensively in various industrial settings and are in high demand for automation. In particular, counterbalance forklifts are highly versatile and employed in diverse scenarios. However, efforts to automate these processes are lacking, primarily owing to the absence of a safe and...
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Zusammenfassung: | Forklifts are used extensively in various industrial settings and are in high
demand for automation. In particular, counterbalance forklifts are highly
versatile and employed in diverse scenarios. However, efforts to automate these
processes are lacking, primarily owing to the absence of a safe and
performance-verifiable development environment. This study proposes a learning
system that combines a photorealistic digital learning environment with a
1/14-scale robotic forklift environment to address this challenge. Inspired by
the training-based learning approach adopted by forklift operators, we employ
an end-to-end vision-based deep reinforcement learning approach. The learning
is conducted in a digitalized environment created from CAD data, making it safe
and eliminating the need for real-world data. In addition, we safely validate
the method in a physical setting utilizing a 1/14-scale robotic forklift with a
configuration similar to that of a real forklift. We achieved a 60% success
rate in pallet loading tasks in real experiments using a robotic forklift. Our
approach demonstrates zero-shot sim2real with a simple method that does not
require heuristic additions. This learning-based approach is considered a first
step towards the automation of counterbalance forklifts. |
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DOI: | 10.48550/arxiv.2412.11503 |