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Autores principales: Panta, Kundan, Deng, Hankun, DeLattre, Micah, Cheng, Bo
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2502.07282
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author Panta, Kundan
Deng, Hankun
DeLattre, Micah
Cheng, Bo
author_facet Panta, Kundan
Deng, Hankun
DeLattre, Micah
Cheng, Bo
contents Fish use their lateral lines to sense flows and pressure gradients, enabling them to detect nearby objects and organisms. Towards replicating this capability, we demonstrated successful leader-follower formation swimming using flow pressure sensing in our undulatory robotic fish ($μ$Bot/MUBot). The follower $μ$Bot is equipped at its head with bilateral pressure sensors to detect signals excited by both its own and the leader's movements. First, using experiments with static formations between an undulating leader and a stationary follower, we determined the formation that resulted in strong pressure variations measured by the follower. This formation was then selected as the desired formation in free swimming for obtaining an expert policy. Next, a long short-term memory neural network was used as the control policy that maps the pressure signals along with the robot motor commands and the Euler angles (measured by the onboard IMU) to the steering command. The policy was trained to imitate the expert policy using behavior cloning and Dataset Aggregation (DAgger). The results show that with merely two bilateral pressure sensors and less than one hour of training data, the follower effectively tracked the leader within distances of up to 200 mm (= 1 body length) while swimming at speeds of 155 mm/s (= 0.8 body lengths/s). This work highlights the potential of fish-inspired robots to effectively navigate fluid environments and achieve formation swimming through the use of flow pressure feedback.
format Preprint
id arxiv_https___arxiv_org_abs_2502_07282
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Leader-follower formation enabled by pressure sensing in free-swimming undulatory robotic fish
Panta, Kundan
Deng, Hankun
DeLattre, Micah
Cheng, Bo
Robotics
Fish use their lateral lines to sense flows and pressure gradients, enabling them to detect nearby objects and organisms. Towards replicating this capability, we demonstrated successful leader-follower formation swimming using flow pressure sensing in our undulatory robotic fish ($μ$Bot/MUBot). The follower $μ$Bot is equipped at its head with bilateral pressure sensors to detect signals excited by both its own and the leader's movements. First, using experiments with static formations between an undulating leader and a stationary follower, we determined the formation that resulted in strong pressure variations measured by the follower. This formation was then selected as the desired formation in free swimming for obtaining an expert policy. Next, a long short-term memory neural network was used as the control policy that maps the pressure signals along with the robot motor commands and the Euler angles (measured by the onboard IMU) to the steering command. The policy was trained to imitate the expert policy using behavior cloning and Dataset Aggregation (DAgger). The results show that with merely two bilateral pressure sensors and less than one hour of training data, the follower effectively tracked the leader within distances of up to 200 mm (= 1 body length) while swimming at speeds of 155 mm/s (= 0.8 body lengths/s). This work highlights the potential of fish-inspired robots to effectively navigate fluid environments and achieve formation swimming through the use of flow pressure feedback.
title Leader-follower formation enabled by pressure sensing in free-swimming undulatory robotic fish
topic Robotics
url https://arxiv.org/abs/2502.07282