For underactuated robots working in complex environments, an important objective is to drive all variables (particularly for unactuated end-effectors) to move along the specific path and restrict positions/velocities to avoid obstacles, rather than using only point-to-point control. Unfortunately, most path planning methods are only suitable to fully actuated systems or depend on linearized models. The main motivations of our work are to directly fulfill motion constraints and achieve path following for both actuated and unactuated states (e.g., payload swing of cranes) when lacking effective control inputs. To this end, this article presents a new time-optimal trajectory planning-based motion control method for general underactuated robots. By constructing auxiliary signals (in Cartesian space) to express all actuated/unactuated variables (in joint space), their position/velocity constraints are converted into some convex/nonconvex inequalities related to a to-be-optimized path parameter and its derivatives. Then, an optimization algorithm is constructed to solve the available path parameter and derive a group of time-optimal trajectories for actuated states. As we know, this is the first study to ensure path following and necessary full-state constraints for actuated/unactuated states. Then, a tradeoff among path-constrained motions, time optimization, and state constraints is achieved together. This article takes the rotary crane as an example and provides detailed analysis of calculating desired trajectories based on the proposed planning frame, whose effectiveness is also verified through hardware experiments.
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http://dx.doi.org/10.1109/TCYB.2024.3361880 | DOI Listing |
Proc IEEE RAS EMBS Int Conf Biomed Robot Biomechatron
September 2024
Department of Biology, Northeastern University, Boston, MA, USA.
Manipulating flexible and underactuated objects, such as a whip, remains a significant challenge in robotics. Remarkably, humans can skillfully manipulate such objects to achieve tasks, ranging from hitting distant targets to extinguishing a cigarette's in someone's mouth with the tip of a whip. This study explored this problem by constructing and modeling a 25-degree-of-freedom whip.
View Article and Find Full Text PDFBioinspir Biomim
December 2024
Changsha University of Science and Technology, No. 960, Section 2, Wanjiali South Road, Muyun Street, Tianxin District, Changsha, China, Changsha, 410114, CHINA.
This paper presents the design of an underactuated adaptive humanoid Manipulator (UAHM) featuring a link-spring telescopic rod-slide mechanism, which is capable of basic human-like grasping functions. Initially, the mechanical structure of the UAHM is introduced, with a detailed exposition of its transmission mode, finger architecture, and overall configuration. Subsequently, the kinematic and static models of the UAHM are delineated, elucidating the relationship between the phalangeal contact forces, contact positions, and bending angles during both fingertip and envelope grasping.
View Article and Find Full Text PDFSci Robot
December 2024
Division of Engineering and Applied Science, California Institute of Technology, Pasadena, CA 91125, USA.
The ability of a robot to plan complex behaviors with real-time computation, rather than adhering to predesigned or offline-learned routines, alleviates the need for specialized algorithms or training for each problem instance. Monte Carlo tree search is a powerful planning algorithm that strategically explores simulated future possibilities, but it requires a discrete problem representation that is irreconcilable with the continuous dynamics of the physical world. We present Spectral Expansion Tree Search (SETS), a real-time, tree-based planner that uses the spectrum of the locally linearized system to construct a low-complexity and approximately equivalent discrete representation of the continuous world.
View Article and Find Full Text PDFFront Robot AI
November 2024
RITMO Centre for Interdisciplinary Studies in Rhythm, Time and Motion, University of Oslo, Oslo, Norway.
This paper investigates the potential of the intrinsically motivated reinforcement learning (IMRL) approach for robotic drumming. For this purpose, we implemented an IMRL-based algorithm for a drumming robot called , an underactuated two-DoF robotic arm with flexible grippers. Two ZRob robots were instructed to play rhythmic patterns derived from MIDI files.
View Article and Find Full Text PDFAppl Bionics Biomech
May 2024
School of Mechatronic Engineering and Automation, Shanghai University, Shanghai 200444, China.
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