AIP Publishing LLC
AIP Publishing LLC
  • pubs.aip.org
  • AIP
  • AIP China
  • University Science Books
  • Resources
    • Researchers
    • Librarians
    • Publishing Partners
    • Topical Portfolios
    • Commercial Partners
  • Publications

    Find the Right Journal

    Explore the AIP Publishing collection by title, topic, impact, citations, and more.
    Browse Journals

    Latest Content

    Read about the newest discoveries and developments in the physical sciences.
    See What's New

    Publications

    • Journals
    • Books
    • Physics Today
    • AIP Conference Proceedings
    • Scilight
    • Find the Right Journal
    • Latest Content
  • About
    • About Us
    • News and Announcements
    • Careers
    • Events
    • Leadership
    • Contact
  • pubs.aip.org
  • AIP
  • AIP China
  • University Science Books

Robotics-based Study Provides Insight into Predator-Prey Interactions

  • July 18, 2017
  • Chaos
  • News
Share:

Robotic and real fish square up in an attempt to further understand predator-prey interactions

From the Journal: Chaos

WASHINGTON, D.C., July 18, 2017 — Researchers have recently gained advanced understanding of a variety of processes through the information-theoretic concept of transfer entropy. Today, scientists are able to explain coupled dynamical systems like functional connective patterns in the brain and climate patterns all around the globe. Researchers from New York University’s department of mechanical and aerospace engineering in Brooklyn found this method to hold great promise for advancing our understanding of animal behavior, particularly related to predator-prey interactions. 

A research team led by New York University professor Maurizio Porfiri put forth a robotics-based study to control information flow in predator-prey interactions, as well as test the validity of transfer entropy when attempting to understand causal influences of the system. They report their findings this week in the journal Chaos, from AIP Publishing. 

Specifically, the team studied the behavioral response of a zebrafish subjected to a fear-evoking robotic stimulus, modeled after the morpho-physiology of a red tiger oscar fish. They programmed the robotic threats to actuate along specific trajectories establishing a controlled, one-directional information flow. The predator motion in this interaction was independent of the response of the prey. 

“Something which is really important from our community point of view is to be able to merge robotics and dynamical systems to address questions in animal behavior,” Porfiri said. 

As expected by the researchers, transfer entropy was able to isolate the causal relationship underlying experimental observations, and they were able to show a one-directional informational flow from the stimulus to the zebrafish. 

Expanding on their validation of transfer entropy in the controlled robotics-based setup, the research team studied interactions between a zebrafish and a live red tiger oscar fish (whose response to the zebrafish could not be controlled). Unlike the robotics-based interaction, transfer entropy did not overly identify a direction of information flow in the presence of a live predator. So not only was the zebrafish influenced by the predator, but also the predator reacted to the zebrafish, in a two-directional interaction. 

“We are able, from raw data, to understand that both the predator and the prey modify their behavior once one is in the presence of each other,” Porfiri said. 

To provide some biological basis for the observed difference in information flow, Porfiri and his group studied the specific reactions of the predator in response to the presence of the prey. Although their experimental setup could not fully replicate the habitat of the red tiger oscar fish, they observed basic behavioral reactions observed in the wild, verifying the fish’s natural hunting instincts still played a role in their reactions. 

Although there is still more to understand regarding the behavior of prey and predators, the researchers demonstrated the validity of transfer entropy to discover a cause-and-effect process, which has important implications in science and engineering. This is especially interesting from the perspective of the many potential ways robotics can help us understand how species share and use information.

###

For More Information:
Julia Majors
media@aip.org
301-209-3090
@AIPPhysicsNews

Article Title

Information theory and robotics meet to study predator-prey interactions

Authors

Daniele Neri, Tommaso Ruberto, Gabrielle Cord-Cruz and Maurizio Porfiri

Author Affiliations

New York University


Chaos

Chaos is devoted to increasing the understanding of nonlinear phenomena in all disciplines and describing their manifestations in a manner comprehensible to researchers from a broad spectrum of disciplines.

http://chaos.aip.org

Share:
  • Giant Charge Reversal Observed For the First Time
  • Pulses of Electrons Manipulate Nanomagnets and Store Information

Keep Up With AIP Publishing

Sign up for the AIP newsletter to receive the latest news and information from AIP Publishing.
Sign Up

AIP PUBLISHING

1305 Walt Whitman Road,
Suite 110
Melville, NY 11747
(516) 576-2200

Resources

  • Researchers
  • Librarians
  • Publishing Partners
  • Commercial Partners

About

  • About Us
  • Careers 
  • Leadership

Support

  • Contact Us
  • Terms Of Use
  • Privacy Policy

© 2025 AIP Publishing LLC
  • 𝕏