sb.scorecardresearch

Published 00:11 IST, August 28th 2024

IIT Bombay Researchers Discover Secrets of Animal Find Their Home Using Robots

Apart from physical experiments, the researchers also ran computer simulations where the robot's movement mimicked animals.

Reported by: Digital Desk
Follow: Google News Icon
  • share
Using robot, IIT Bombay researchers discover how animals find their way back home
Using robot, IIT Bombay researchers discover how animals find their way back home | Image: Unsplash/ Representative

Mumbai: Researchers at the Indian Institute of Technology Bombay (IIT Bombay) have uncovered how animals find their way back home without getting lost or being late by using a robot that mimics their movements.

Robot Mimics Animal Movements to Study Homing Behavior

This robot is designed to move on its own, much like an animal finding food and then to use light as a guide to return home (homing), the IIT Bombay said in a statement on Tuesday.

In a new study, researchers from the department of physics have used this robot to study the underlying principles of homing by animals.

Exploring the Physics of Active and Living Systems

"The primary goal of our research group was to understand the physics of active and living systems. We achieve this by performing experiments on centimetres-sized self-propelled programmable robots. In simple words, we model these robots to mimic the dynamics of living organisms, both at the individual and collective levels," Dr Nitin Kumar, an assistant professor at the Department of physics, IIT Bombay, said.

Investigating the Impact of Path Deviation on Homing Time

For their study, the researchers wanted to determine the time it took for the robot to return home, with increasing amounts of deviations from its homing path.

It was observed that the reorientation rate, the frequency at which the robot (or an animal) should adjust its direction for successful homing, originated from the degree of randomness in its path.

Discovery of the ‘Optimal Reorientation Rate’

The researchers discovered an 'optimal reorientation rate' for a particular value of randomness beyond which the adverse effects of increased randomness are negated by more frequent reorientations, ultimately ensuring successful homing.

This suggested animals might have evolved to reorient themselves at an optimal rate to efficiently find their way home, regardless of the noise or unpredictability in their environment.

Efficient Homing: Key Observations and Theoretical Validation

"The observation of a finite upper limit on return times indicates that the homing motion is inherently efficient. Our results demonstrated that if animals are always aware of the direction of their home and always correct their course whenever they deviate from the intended direction, they will surely get home within a finite time," Kumar added.

Computer Simulations Support Experimental Findings

Apart from physical experiments, the researchers also ran computer simulations where the robot's movement mimicked animals.

This virtual robot combines active Brownian motion (the random motion of particles in a liquid or gas, caused by collisions with fast-moving atoms or molecules in the fluid) with occasional resets to its orientation to correct its course back towards home.

These simulations matched the experimental results, reinforcing the idea that randomness and reorientation work hand-in-hand to optimise homing.

Application of the Model to Real-World Scenarios

"When we applied this model to the trajectories of a real biological system of a flock of homing pigeons, it showed a good agreement with our theory, validating our hypothesis of enhanced efficiency due to frequent course corrections," Kumar said.

He said in real and more complex systems, the homing cues might be more complicated than a simple uniform gradient towards home, as modelled in this experiment.

Future Research Aims to Expand on Findings

"In our future research, we aim to model these scenarios in our experiment by using a combination of spatiotemporal variations in light intensity and physical obstacles," the assistant professor added.

(With inputs from PTI)

Updated 00:11 IST, August 28th 2024