Efficient navigation of a robotic fish swimming across the vortical flow field

IF 2.5 3区 工程技术
Hao-dong Feng, De-han Yuan, Jia-le Miao, Jie You, Yue Wang, Yi Zhu, Di-xia Fan
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引用次数: 0

Abstract

Navigating efficiently across vortical flow fields presents a significant challenge in various robotic applications. The dynamic and unsteady nature of vortical flows often disturbs the control of underwater robots, complicating their operation in hydrodynamic environments. Conventional control methods, which depend on accurate modeling, fail in these settings due to the complexity of fluid-structure interactions (FSI) caused by unsteady hydrodynamics. This study proposes a deep reinforcement learning (DRL) algorithm, trained in a data-driven manner, to enable efficient navigation of a robotic fish swimming across vortical flows. Our proposed algorithm incorporates the LSTM architecture and uses several recent consecutive observations as the state to address the issue of partial observation, often due to sensor limitations. We present a numerical study of navigation within a Kármán vortex street created by placing a stationary cylinder in a uniform flow, utilizing the immersed boundary-lattice Boltzmann method (IB-LBM). The aim is to train the robotic fish to discover efficient navigation policies, enabling it to reach a designated target point across the Kármán vortex street from various initial positions. After training, the fish demonstrates the ability to rapidly reach the target from different initial positions, showcasing the effectiveness and robustness of our proposed algorithm. Analysis of the results reveals that the robotic fish can leverage velocity gains and pressure differences induced by the vortices to reach the target, underscoring the potential of our proposed algorithm in enhancing navigation in complex hydrodynamic environments.

在垂直流场中游泳的机器鱼的有效导航
在各种机器人应用中,如何有效地在垂直流场中导航是一个重大的挑战。涡流的动态和非定常特性经常干扰水下机器人的控制,使其在水动力环境中的操作复杂化。由于非定常流体力学引起的流固耦合(FSI)的复杂性,依赖于精确建模的传统控制方法在这些情况下失效。本研究提出了一种深度强化学习(DRL)算法,该算法以数据驱动的方式进行训练,以实现在垂直气流中游泳的机器鱼的有效导航。我们提出的算法结合了LSTM架构,并使用最近的几个连续观测作为状态来解决部分观测的问题,通常是由于传感器的限制。我们提出了一个数值研究导航在Kármán涡旋街通过放置一个固定的圆柱体在一个均匀的流动,利用浸入边界晶格玻尔兹曼方法(IB-LBM)。目的是训练机器鱼发现有效的导航策略,使其能够从不同的初始位置到达Kármán漩涡街的指定目标点。经过训练,鱼显示了从不同初始位置快速到达目标的能力,证明了本文算法的有效性和鲁棒性。分析结果表明,机器鱼可以利用涡旋引起的速度增益和压力差来达到目标,强调了我们提出的算法在复杂水动力环境中增强导航的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
自引率
12.00%
发文量
2374
审稿时长
4.6 months
期刊介绍: Journal of Hydrodynamics is devoted to the publication of original theoretical, computational and experimental contributions to the all aspects of hydrodynamics. It covers advances in the naval architecture and ocean engineering, marine and ocean engineering, environmental engineering, water conservancy and hydropower engineering, energy exploration, chemical engineering, biological and biomedical engineering etc.
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