非结构化环境下腿式机器人的地形依赖功率估计

Christopher Allred, Huzeyfe Kocabas, Mario Harper, J. Pusey
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引用次数: 1

摘要

基于步态的有腿机器人为穿越复杂、非结构化或不连续的地形提供了实质性的优势。从而增加了它们在许多实际应用程序中的使用。然而,由于其复杂的运动和动力需求,由于操作时间、范围和有效载荷能力的限制,它们的部署也具有挑战性。预测地形变化对范围和平均功耗的影响对于理解自主和远程操作任务的操作限制至关重要。本研究考察了预测五种独特表面(沥青、混凝土、草地、灌木和雪)的地形相关能源成本的策略。现场实验证明了我们的本体感觉和视觉结合方法(MEP-VP)的有效性。这种混合框架在返回可操作的功率估计之前只需要两秒钟的运动数据。在现场演示中对物理硬件进行了验证。
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Terrain Dependent Power Estimation for Legged Robots in Unstructured Environments
Gait-based legged robots offer substantial advantages for traversing complicated, unstructured, or discontinuous terrain. Thus increasing their use in many real-world applications. However, they are also challenging to deploy due to limitations in operation time, range, and payload capabilities due to their complex locomotion and power needs. Anticipating the impact of terrain transitions on the range and average power consumption is crucial for understanding operational limits in autonomous and teleoperated missions. This study examines strategies for forecasting terrain-dependent energy costs on five unique surfaces (asphalt, concrete, grass, brush, and snow). The field experiments demonstrate the effectiveness of our combined proprioception and vision approach called MEP-VP. This hybrid framework only requires two seconds of motion data before returning actionable power estimates. Validation is conducted on physical hardware in field demonstration.
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