ChangU Kim;Bukun Son;Minhyeong Lee;Hyelim Choi;Seokhyun Hong;Minsung Kang;Jihyun Moon;Dongmok Kim;Dongjun Lee
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引用次数: 0
Abstract
We propose a novel real-time excavation trajectory modulation framework on a slope for an autonomous excavator with a low-level digital kinematic control as common for hydraulic industrial excavators. Excavation on a slope is challenging because of a higher risk of slips and rollovers. To deal with this, we propose a real-time excavation trajectory modulation framework based on slope tangential/normal force ratio $\mu$ and zero moment point $\xi$. The slip and rollover prevention conditions are incorporated in a single linear inequality using the same fractional structure in $\mu$ and $\xi$ with the common denominator. However, due to the adoption of the low-level digital kinematic control, this prevention requires the prediction of the excavation force at the next timestamp, and, for this, we develop a data-driven excavation force difference prediction model utilizing a deep learning architecture, Transformer. The remaining error of this prediction is then addressed by using the technique of robust optimization with box uncertainty of the developed excavation force difference model. Our proposed framework is validated experimentally with our customized scaled-down excavator.
期刊介绍:
The scope of this journal is to publish peer-reviewed articles that provide a timely and concise account of innovative research ideas and application results, reporting significant theoretical findings and application case studies in areas of robotics and automation.