Synopsis

Extending the Kuramoto Model to Arbitrary Dimensions  

Physics 12, s2
The generalized version of a theory describing synchronization in an ensemble shows that coherence arises differently depending on whether the number of dimensions is even or odd.  

Devised in the 1970s to describe synchronization among interacting oscillators, the Kuramoto model has become critical for understanding complex dynamics in systems of interacting entities, such as magnetic dipoles or neurons. Though it has been applied to many disparate fields, the classical version is restricted to interactions that can be described with just two dimensions. By extending the model to three dimensions and more, and by accounting for variation in the tendency of each agent to remain independent, Sarthak Chandra and colleagues at the University of Maryland, College Park, have discovered an unexpected result: The way in which a system achieves coherence—a measure of the degree of synchronization—depends on whether its number of dimensions is even or odd.

In the classical Kuramoto model, the transition to coherence is continuous and begins when the coupling strength between individual components reaches a certain positive threshold. Its 3D generalization, in contrast, shows a sudden, discontinuous transition as soon as the coupling strength rises above zero. When the team extended the model to higher dimensions, they found that all even-dimensional systems show the same behavior as the classical case, while the discontinuous transition occurs for all odd-dimensional systems.

Despite the application of the Kuramoto model to systems as diverse as neural networks, magnetic spins, and consensus-building within societies, its restriction to two dimensions meant that it couldn’t describe some interesting phenomena. By extending the model, Chandra and colleagues have made it more relevant to realistic cases of flocking behavior, like that of animals or drones arranging themselves in 3D space. Future developments will include more variables characterizing the relationship between a given individual and its neighbors, such as distance or relative orientation.

This research is published in Physical Review X.

–Marric Stephens

Marric Stephens is a freelance science writer based in Bristol, UK.


Subject Areas

Complex SystemsInterdisciplinary Physics

Related Articles

Predicting Tipping Points in Complex Systems
Computational Physics

Predicting Tipping Points in Complex Systems

A machine-learning framework predicts when a complex system, such as an ecosystem or a power grid, will undergo a critical transition. Read More »

Network Science Applied to Urban Transportation
Computational Physics

Network Science Applied to Urban Transportation

A simple model based on network theory can reproduce the complex structures seen in urban transportation networks. Read More »

Improving Assessments of Climate Tipping Points
Complex Systems

Improving Assessments of Climate Tipping Points

Statistical properties of fluctuations of certain parameters describing a complex system can reveal when that system is approaching a tipping point. Read More »

More Articles