Zhiping WangZonggang LiGuangqing XiaHuifeng KangBin LiQingquan LiLixin Zheng
We propose utilizing an attention mechanism and deep neural networks to develop a hydrodynamic identification model, integrated with a time-triggered nonlinear model predictive controller (ENMPC) for precise trajectory tracking of a robotic fish. A central pattern generator (CPG) network was employed to design a synergistic gait controller for the robotic fish that could coordinate its pectoral fins and flexible body/caudal fins to enable multimodal motion. We derived a nonlinear map between the driving parameters and the thrust/torque of the robotic fish using a computational fluid dynamics (CFD) simulation dataset. The attention mechanism was applied to incorporate laminar flow effects and construct a hydrodynamic identification model based on a bidirectional long short-term memory (Bi-LSTM) network. This identification model serves as the foundation for learning a control transformation model that operates as its inverse. Finally, event-triggered nonlinear model predictive constraints were adjusted to account for external disturbances and thereby ensure the convergence of robotic fish tracking errors while minimizing computational costs.
Sophie KleckerBassem HichriPeter Plapper
Chao ZhouMin TanZhiqiang CaoShuo WangDouglas CreightonNong GuSaeid Nahavandi
Junzhi YuJun YuanZhengxing WuMin Tan
Juan F. GuerraRamón García-HernándezMiguel A. Llama