In this paper, we present a novel control architecture for the online adaptation of bipedal locomotion on inclined obstacles. In particular, we introduce a novel, cost-effective, and versatile foot sensor to detect the proximity of the robot's feet to the ground (bump sensor). By employing this sensor, feedback controllers are implemented to reduce the impact forces during the transition of the swing to stance phase or steeping on inclined unseen obstacles. Compared to conventional sensors based on contact reaction force, this sensor detects the distance to the ground or obstacles before the foot touches the obstacle and therefore provides predictive information to anticipate the obstacles. The controller of the proposed bump sensor interacts with another admittance controller to adjust leg length. The walking experiments show successful locomotion on the unseen inclined obstacle without reducing the locomotion speed with a slope angle of 12. Foot position error causes a hard impact with the ground as a consequence of accumulative error caused by links and connections' deflection (which is manufactured by university tools). The proposed framework drastically reduces the feet' impact with the ground.
翻译:在本文中,我们展示了一种新型的控制结构,用于在线调整斜面障碍上的双双乳动动脉。特别是,我们引入了一种新型的、成本效益高的和多功能的脚感应器,以探测机器人脚与地面的距离(跳动感应器)。通过使用这个感应器,可以实施反馈控制器,以减少在摇摆向姿势阶段过渡期间的冲击力,或倾斜于倾斜的无形障碍。与基于接触反应力的常规感应器相比,这个感应器检测到与地面的距离,或脚触碰障碍之前的障碍,从而提供预测信息以预测障碍。拟议的冲击感应器的控制器与另一个感应器进行互动,以调整腿长度。行走实验显示,在看不见的偏移障碍上成功地移动,而不会以12的斜角降低动速度。脚姿势错误对地面造成硬性影响,这是由连接和偏移(由大学工具制造的)造成的累积错误的结果。拟议框架极大地降低了脚部与地面的冲击。