Chaotic itinerancy within the coupled dynamics between a physical body and neural oscillator networks.

Chaotic itinerancy is a phenomenon in which the state of a nonlinear dynamical system spontaneously explores and attracts certain states in a state space. From this perspective, the diverse behavior of animals and its spontaneous transitions lead to a complex coupled dynamical system, including a ph...

Full description

Bibliographic Details
Main Authors: Jihoon Park, Hiroki Mori, Yuji Okuyama, Minoru Asada
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5552128?pdf=render
id doaj-89f87588921e4ab282f82e0140f0e6eb
record_format Article
spelling doaj-89f87588921e4ab282f82e0140f0e6eb2020-11-25T02:47:07ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-01128e018251810.1371/journal.pone.0182518Chaotic itinerancy within the coupled dynamics between a physical body and neural oscillator networks.Jihoon ParkHiroki MoriYuji OkuyamaMinoru AsadaChaotic itinerancy is a phenomenon in which the state of a nonlinear dynamical system spontaneously explores and attracts certain states in a state space. From this perspective, the diverse behavior of animals and its spontaneous transitions lead to a complex coupled dynamical system, including a physical body and a brain. Herein, a series of simulations using different types of non-linear oscillator networks (i.e., regular, small-world, scale-free, random) with a musculoskeletal model (i.e., a snake-like robot) as a physical body are conducted to understand how the chaotic itinerancy of bodily behavior emerges from the coupled dynamics between the body and the brain. A behavior analysis (behavior clustering) and network analysis for the classified behavior are then applied. The former consists of feature vector extraction from the motions and classification of the movement patterns that emerged from the coupled dynamics. The network structures behind the classified movement patterns are revealed by estimating the "information networks" different from the given non-linear oscillator networks based on the transfer entropy which finds the information flow among neurons. The experimental results show that: (1) the number of movement patterns and their duration depend on the sensor ratio to control the balance of strength between the body and the brain dynamics and on the type of the given non-linear oscillator networks; and (2) two kinds of information networks are found behind two kinds movement patterns with different durations by utilizing the complex network measures, clustering coefficient and the shortest path length with a negative and a positive relationship with the duration periods of movement patterns. The current results seem promising for a future extension of the method to a more complicated body and environment. Several requirements are also discussed.http://europepmc.org/articles/PMC5552128?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Jihoon Park
Hiroki Mori
Yuji Okuyama
Minoru Asada
spellingShingle Jihoon Park
Hiroki Mori
Yuji Okuyama
Minoru Asada
Chaotic itinerancy within the coupled dynamics between a physical body and neural oscillator networks.
PLoS ONE
author_facet Jihoon Park
Hiroki Mori
Yuji Okuyama
Minoru Asada
author_sort Jihoon Park
title Chaotic itinerancy within the coupled dynamics between a physical body and neural oscillator networks.
title_short Chaotic itinerancy within the coupled dynamics between a physical body and neural oscillator networks.
title_full Chaotic itinerancy within the coupled dynamics between a physical body and neural oscillator networks.
title_fullStr Chaotic itinerancy within the coupled dynamics between a physical body and neural oscillator networks.
title_full_unstemmed Chaotic itinerancy within the coupled dynamics between a physical body and neural oscillator networks.
title_sort chaotic itinerancy within the coupled dynamics between a physical body and neural oscillator networks.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description Chaotic itinerancy is a phenomenon in which the state of a nonlinear dynamical system spontaneously explores and attracts certain states in a state space. From this perspective, the diverse behavior of animals and its spontaneous transitions lead to a complex coupled dynamical system, including a physical body and a brain. Herein, a series of simulations using different types of non-linear oscillator networks (i.e., regular, small-world, scale-free, random) with a musculoskeletal model (i.e., a snake-like robot) as a physical body are conducted to understand how the chaotic itinerancy of bodily behavior emerges from the coupled dynamics between the body and the brain. A behavior analysis (behavior clustering) and network analysis for the classified behavior are then applied. The former consists of feature vector extraction from the motions and classification of the movement patterns that emerged from the coupled dynamics. The network structures behind the classified movement patterns are revealed by estimating the "information networks" different from the given non-linear oscillator networks based on the transfer entropy which finds the information flow among neurons. The experimental results show that: (1) the number of movement patterns and their duration depend on the sensor ratio to control the balance of strength between the body and the brain dynamics and on the type of the given non-linear oscillator networks; and (2) two kinds of information networks are found behind two kinds movement patterns with different durations by utilizing the complex network measures, clustering coefficient and the shortest path length with a negative and a positive relationship with the duration periods of movement patterns. The current results seem promising for a future extension of the method to a more complicated body and environment. Several requirements are also discussed.
url http://europepmc.org/articles/PMC5552128?pdf=render
work_keys_str_mv AT jihoonpark chaoticitinerancywithinthecoupleddynamicsbetweenaphysicalbodyandneuraloscillatornetworks
AT hirokimori chaoticitinerancywithinthecoupleddynamicsbetweenaphysicalbodyandneuraloscillatornetworks
AT yujiokuyama chaoticitinerancywithinthecoupleddynamicsbetweenaphysicalbodyandneuraloscillatornetworks
AT minoruasada chaoticitinerancywithinthecoupleddynamicsbetweenaphysicalbodyandneuraloscillatornetworks
_version_ 1724754418493030400