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Efficient collective swimming by harnessing vortices through deep reinforcement learning

机译:通过深度强化学习利用涡流进行高效集体游泳

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摘要

Fish in schooling formations navigate complex flow fields replete with mechanical energy in the vortex wakes of their companions. Their schooling behavior has been associated with evolutionary advantages including energy savings, yet the underlying physical mechanisms remain unknown. We show that fish can improve their sustained propulsive efficiency by placing themselves in appropriate locations in the wake of other swimmers and intercepting judiciously their shed vortices. This swimming strategy leads to collective energy savings and is revealed through a combination of high-fidelity flow simulations with a deep reinforcement learning (RL) algorithm. The RL algorithm relies on a policy defined by deep, recurrent neural nets, with long–short-term memory cells, that are essential for capturing the unsteadiness of the two-way interactions between the fish and the vortical flow field. Surprisingly, we find that swimming in-line with a leader is not associated with energetic benefits for the follower. Instead, “smart swimmer(s)” place themselves at off-center positions, with respect to the axis of the leader(s) and deform their body to synchronize with the momentum of the oncoming vortices, thus enhancing their swimming efficiency at no cost to the leader(s). The results confirm that fish may harvest energy deposited in vortices and support the conjecture that swimming in formation is energetically advantageous. Moreover, this study demonstrates that deep RL can produce navigation algorithms for complex unsteady and vortical flow fields, with promising implications for energy savings in autonomous robotic swarms.
机译:在鱼群中的鱼在复杂的流场中航行,在其同伴的涡流尾流中充满了机械能。他们的上学行为与包括节能在内的进化优势相关联,但其潜在的物理机制仍然未知。我们证明了鱼类可以通过将自己置于其他游泳者身后的适当位置并明智地拦截其脱落的涡流来提高其持续的推进效率。这种游泳策略可以节省大量能源,并通过高保真流量模拟与深度强化学习(RL)算法的结合来揭示。 RL算法依赖于由深层递归神经网络定义的策略,该策略具有长期短期记忆单元,对于捕获鱼类与涡流场之间双向相互作用的不稳定性至关重要。令人惊讶的是,我们发现与领导者一起在线游泳与跟随者的精力充沛的收益无关。取而代之的是,“聪明的游泳者”将自己置于相对于引导者的轴心偏心的位置,并使他们的身体变形以与即将来临的漩涡的动量保持同步,从而免费提高游泳效率给领导者。结果证实,鱼可以收获沉积在涡流中的能量,并支持这样的推测:在地层中游泳在能量上是有利的。此外,这项研究表明,深层RL可以为复杂的非定常和旋涡流场产生导航算法,对自主机器人群的节能具有潜在的启示。

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