ROSYApr 19, 2021

Controlling Pivoting Gait using Graph Model Predictive Control

arXiv:2104.09689v1
Originality Incremental advance
AI Analysis

This work addresses the problem of robust object manipulation for robots, but it is incremental as it builds on existing control methods with mode-switching.

The paper tackles the instability of pivoting gait in robotic object manipulation by proposing a controller that adaptively switches between two gait modes based on external disturbances, achieving stable performance even under disturbances.

Pivoting gait is efficient for manipulating a big and heavy object with relatively small manipulating force, in which a robot iteratively tilts the object, rotates it around the vertex, and then puts it down to the floor. However, pivoting gait can easily fail even with a small external disturbance due to its instability in nature. To cope with this problem, we propose a controller to robustly control the object motion during the pivoting gait by introducing two gait modes, i.e., one is the double-support mode, which can manipulate a relatively light object with faster speed, and the other is the quadruple-support mode, which can manipulate a relatively heavy object with lower speed. To control the pivoting gait, a graph model predictive control is applied taking into account of these two gait modes. By adaptively switching the gait mode according to the applied external disturbance, a robot can stably perform the pivoting gait even if the external disturbance is applied to the object.

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