These fish-inspired robots can synchronize their movements without any outside control. Based on the simple production and detection of LED light, the robotic collective exhibits complex self-organized behaviors, including aggregation, dispersion and circle formation. Credit: Self-organizing Systems Research Group

Schools of fish exhibit complex, synchronized behaviors that help them find food, migrate and evade predators. No one fish or team of fish coordinates these movements nor do fish communicate with each other about what to do next. Rather, these collective behaviors emerge from so-called implicit coordination—individual fish making decisions based on what they see their neighbors doing.

This type of decentralized, autonomous self-organization and coordination has long fascinated scientists, especially in the field of robotics.

Now, a team of researchers at the Harvard John A. Paulson School of Engineering and Applied Sciences (SEAS) and the Wyss Institute for Biologically Inspired Engineering have developed fish-inspired robots that can synchronize their movements like a real school of fish, without any external control. It is the first time researchers have demonstrated complex 3-D with implicit coordination in .

"Robots are often deployed in areas that are inaccessible or dangerous to humans, areas where human intervention might not even be possible," said Florian Berlinger, a Ph.D. Candidate at SEAS and Wyss and first author of the paper. "In these situations, it really benefits you to have a highly autonomous robot swarm that is self-sufficient. By using implicit rules and 3-D , we were able to create a system that has a high degree of autonomy and flexibility underwater where things like GPS and WiFi are not accessible."

Credit: Berlinger et al., Sci Robot. 6, eabd8668 (2021)

The research is published in Science Robotics.

The fish-inspired robotic swarm, dubbed Blueswarm, was created in the lab of Radhika Nagpal, the Fred Kavli Professor of Computer Science at SEAS and Associate Faculty Member at the Wyss Institute. Nagpal's lab is a pioneer in self-organizing systems, from their 1,000 robot Kilobot swarm to their termite-inspired robotic construction crew.

However, most previous robotic swarms operated in two-dimensional space. Three-dimensional spaces, like air and water, pose significant challenges to sensing and locomotion.

Video showing all Blueswarm schooling behaviors, including circle formation, collectively searching for and gathering around a target, self-organizing across space, and self-organizing throughout time. Credit: Berlinger et al., Sci Robot. 6, eabd8668 (2021)

To overcome these challenges, the researchers developed a vision-based coordination system in their fish robots based on blue LED lights. Each underwater robot, called a Bluebot, is equipped with two cameras and three LED lights. The on-board, fish-lens cameras detect the LEDs of neighboring Bluebots and use a custom algorithm to determine their distance, direction and heading. Based on the simple production and detection of LED , the researchers demonstrated that the Blueswarm could exhibit complex self-organized behaviors, including aggregation, dispersion and circle formation.

A Blueswarm intermingling with real fish. Credit: Berlinger et al., Sci Robot. 6, eabd8668 (2021)

"Each Bluebot implicitly reacts to its neighbors' positions," said Berlinger. "So, if we want the robots to aggregate, then each Bluebot will calculate the position of each of its neighbors and move towards the center. If we want the robots to disperse, the Bluebots do the opposite. If we want them to swim as a school in a circle, they are programmed to follow lights directly in front of them in a clockwise direction. "

The researchers also simulated a simple search mission with a red light in the tank. Using the dispersion algorithm, the Bluebots spread out across the tank until one comes close enough to the light source to detect it. Once the robot detects the light, its LEDs begin to flash, which triggers the aggregation algorithm in the rest of the school. From there, all the Bluebots aggregate around the signaling .

Key components of a Bluebot include four oscillating fins that enable agile maneuvers and two omnidirectional cameras that detect the blue-light LEDs of neighbors. Credit: Berlinger et al., Sci Robot. 6, eabd8668 (2021)

"Our results with Blueswarm represent a in the investigation of underwater self-organized collective behaviors," said Nagpal. "Insights from this research will help us develop future miniature underwater swarms that can perform environmental monitoring and search in visually-rich but fragile environments like coral reefs. This research also paves a way to better understand schools, by synthetically recreating their behavior."

More information: F. Berlinger el al., "Implicit coordination for 3D underwater collective behaviors in a fish-inspired robot swarm," Science Robotics (2021). robotics.sciencemag.org/lookup … /scirobotics.abd8668

Journal information: Science Robotics