School of Engineering and Information Technology, University of New South Wales, Canberra, ACT, 2600, Australia.
Whitney Laboratory for Marine Bioscience, Department of Biology, University of Florida, Gainesville, FL, 332611, USA.
Sci Rep. 2021 Jan 18;11(1):1691. doi: 10.1038/s41598-021-81124-8.
Fish adaption behaviors in complex environments are of great importance in improving the performance of underwater vehicles. This work presents a numerical study of the adaption behaviors of self-propelled fish in complex environments by developing a numerical framework of deep learning and immersed boundary-lattice Boltzmann method (IB-LBM). In this framework, the fish swimming in a viscous incompressible flow is simulated with an IB-LBM which is validated by conducting two benchmark problems including a uniform flow over a stationary cylinder and a self-propelled anguilliform swimming in a quiescent flow. Furthermore, a deep recurrent Q-network (DRQN) is incorporated with the IB-LBM to train the fish model to adapt its motion to optimally achieve a specific task, such as prey capture, rheotaxis and Kármán gaiting. Compared to existing learning models for fish, this work incorporates the fish position, velocity and acceleration into the state space in the DRQN; and it considers the amplitude and frequency action spaces as well as the historical effects. This framework makes use of the high computational efficiency of the IB-LBM which is of crucial importance for the effective coupling with learning algorithms. Applications of the proposed numerical framework in point-to-point swimming in quiescent flow and position holding both in a uniform stream and a Kármán vortex street demonstrate the strategies used to adapt to different situations.
鱼类在复杂环境中的适应行为对于提高水下航行器的性能非常重要。本工作通过开发深度学习和浸入边界-格子玻尔兹曼方法(IB-LBM)的数值框架,对复杂环境中自推进鱼类的适应行为进行了数值研究。在该框架中,通过 IB-LBM 模拟鱼类在粘性不可压缩流中的游动,通过对两个基准问题(包括静止圆柱上的均匀流和静止流中自主推进的鳗鲡游动)的验证,证明了该方法的有效性。此外,将深度递归 Q 网络(DRQN)与 IB-LBM 相结合,训练鱼类模型以自适应运动,从而最优地完成特定任务,如捕食、趋流性和卡门步态。与现有的鱼类学习模型相比,本工作将鱼类的位置、速度和加速度纳入 DRQN 的状态空间,并考虑了幅度和频率动作空间以及历史效应。该框架利用了 IB-LBM 的高效计算效率,这对于与学习算法的有效耦合至关重要。在静止流中的点对点游动和在均匀流和卡门涡街中的位置保持中的应用展示了适应不同情况的策略。