CafkNet: GNN-Empowered Forward Kinematic Modeling for Cable-Driven Parallel Robots
Cable-driven parallel robots (CDPRs) have gained significant attention due to their promising advantages. When deploying CDPRs in practice, the kinematic modeling is a key question. Unlike serial robots, CDPRs have a simple inverse kinematics problem but a complex forward kinematics (FK) issue. So,...
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Zusammenfassung: | Cable-driven parallel robots (CDPRs) have gained significant attention due to
their promising advantages. When deploying CDPRs in practice, the kinematic
modeling is a key question. Unlike serial robots, CDPRs have a simple inverse
kinematics problem but a complex forward kinematics (FK) issue. So, the
development of accurate and efficient FK solvers has been a prominent research
focus in CDPR applications. By observing the topology within CDPRs, in this
paper, we propose a graph-based representation to model CDPRs and introduce
CafkNet, a fast and general FK solving method, leveraging Graph Neural Network
(GNN) to learn the topological structure and yield the real FK solutions with
superior generality, high accuracy, and low time cost. CafkNet is extensively
tested on 3D and 2D CDPRs in different configurations, both in simulators and
real scenarios. The results demonstrate its ability to learn CDPRs' internal
topology and accurately solve the FK problem. Then, the zero-shot
generalization from one configuration to another is validated. Also, the
sim2real gap can be bridged by CafkNet using both simulation and real-world
data. To the best of our knowledge, it is the first study that employs the GNN
to solve the FK problem for CDPRs. |
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DOI: | 10.48550/arxiv.2402.18420 |