Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Onboard Evolution of Understandable Swarm Behaviors

View through CrossRef
Designing the individual robot rules that give rise to desired emergent swarm behaviors is difficult. The common method of running evolutionary algorithms off‐line to automatically discover controllers in simulation suffers from two disadvantages: the generation of controllers is not situated in the swarm and so cannot be performed in the wild, and the evolved controllers are often opaque and hard to understand. A swarm of robots with considerable on‐board processing power is used to move the evolutionary process into the swarm, providing a potential route to continuously generating swarm behaviors adapted to the environments and tasks at hand. By making the evolved controllers human‐understandable using behavior trees, the controllers can be queried, explained, and even improved by a human user. A swarm system capable of evolving and executing fit controllers entirely onboard physical robots in less than 15 min is demonstrated. One of the evolved controllers is then analyzed to explain its functionality. With the insights gained, a significant performance improvement in the evolved controller is engineered.
Title: Onboard Evolution of Understandable Swarm Behaviors
Description:
Designing the individual robot rules that give rise to desired emergent swarm behaviors is difficult.
The common method of running evolutionary algorithms off‐line to automatically discover controllers in simulation suffers from two disadvantages: the generation of controllers is not situated in the swarm and so cannot be performed in the wild, and the evolved controllers are often opaque and hard to understand.
A swarm of robots with considerable on‐board processing power is used to move the evolutionary process into the swarm, providing a potential route to continuously generating swarm behaviors adapted to the environments and tasks at hand.
By making the evolved controllers human‐understandable using behavior trees, the controllers can be queried, explained, and even improved by a human user.
A swarm system capable of evolving and executing fit controllers entirely onboard physical robots in less than 15 min is demonstrated.
One of the evolved controllers is then analyzed to explain its functionality.
With the insights gained, a significant performance improvement in the evolved controller is engineered.

Related Results

The Wakayama earthquake swarm in Japan
The Wakayama earthquake swarm in Japan
Abstract An earthquake swarm in the Wakayama prefecture, Japan, is known as the most active and persistent swarm, with ~ 100,000 earthquakes occurring during the 2003–2020 ...
Design of an integrated e-Telecom system for improving telecom systems on ships
Design of an integrated e-Telecom system for improving telecom systems on ships
Abstract The advancement of communication technologies including satellites has been conducive to the ever-evolving ship management. The increasing needs for the accident p...
Swarm A and C Accelerometer - data analysis and scientific outcome
Swarm A and C Accelerometer - data analysis and scientific outcome
The ESA Swarm mission was launched in November 2013, and it consists of a constellation of three identical satellites. The main mission objective is to model and analyze the geomag...
Model independence in swarm robotics
Model independence in swarm robotics
PurposeThe purpose of this paper is to examine and illustrate the development of a methodology for generating swarms using lossless flocking.Design/methodology/approachA general me...
The source scaling of swarm-genic slow slip events
The source scaling of swarm-genic slow slip events
<p>Slow slip events (SSEs) are slow fault ruptures that do not excite detectable seismic waves although they are often accompanied by some forms of seismic strain rel...
Quantum Behaved Particle Swarm Optimization Algorithm Based on Artificial Fish Swarm
Quantum Behaved Particle Swarm Optimization Algorithm Based on Artificial Fish Swarm
Quantum behaved particle swarm algorithm is a new intelligent optimization algorithm; the algorithm has less parameters and is easily implemented. In view of the existing quantum b...
Analysis of Ionospheric VTEC Retrieved from Multi-Instrument Observations
Analysis of Ionospheric VTEC Retrieved from Multi-Instrument Observations
This study examines the Vertical Total Electron Content (VTEC) estimation performance of multi-instruments on a global scale during different ionospheric conditions. For this purpo...
The Drought Events over the Amazon River Basin from 2003 to 2020 Detected by GRACE/GRACE-FO and Swarm Satellites
The Drought Events over the Amazon River Basin from 2003 to 2020 Detected by GRACE/GRACE-FO and Swarm Satellites
The climate anomaly in the Amazon River basin (ARB) has a very important influence on global climate change and has always been the focus of scientists from all over the world. To ...

Back to Top