Humans are able to outperform robots in terms of robustness, versatility, and learning of new tasks in a wide variety of movements. We hypothesize that highly nonlinear muscle dynamics play a large role in providing inherent stability, which is favorable to learning. While recent advances have been made in applying modern learning techniques to muscle-actuated systems both in simulation as well as in robotics, so far, no detailed analysis has been performed to show the benefits of muscles when learning from scratch. Our study closes this gap and showcases the potential of muscle actuators for core robotics challenges in terms of data-efficiency, hyperparameter sensitivity, and robustness.
翻译:人类在强健、多功能和在各种运动中学习新任务方面能够超越机器人的性能。 我们假设高度非线性肌肉动态在提供内在稳定方面起着重要作用,这有利于学习。 虽然在将现代学习技术应用于模拟和机器人的肌肉活化系统方面最近有所进步,但迄今没有进行详细分析,以显示从零开始学习时肌肉的益处。我们的研究缩小了这一差距,并展示了肌肉驱动器在数据效率、超光谱灵敏度和坚固度方面对核心机器人挑战的潜在作用。