AOLGMay 6, 2021

KuraNet: Systems of Coupled Oscillators that Learn to Synchronize

arXiv:2105.02838v116 citations
Originality Incremental advance
AI Analysis

This approach addresses synchronization challenges in physics and systems biology, offering a novel method for adaptive network modeling, though it is incremental in applying deep learning to a known bottleneck.

The paper tackles the problem of synchronizing coupled oscillators under disordered network conditions by introducing KuraNet, a deep-learning-based system that learns optimal coupling functions, and demonstrates its ability to achieve global or cluster synchrony in complex models like the Kuramoto model.

Networks of coupled oscillators are some of the most studied objects in the theory of dynamical systems. Two important areas of current interest are the study of synchrony in highly disordered systems and the modeling of systems with adaptive network structures. Here, we present a single approach to both of these problems in the form of "KuraNet", a deep-learning-based system of coupled oscillators that can learn to synchronize across a distribution of disordered network conditions. The key feature of the model is the replacement of the traditionally static couplings with a coupling function which can learn optimal interactions within heterogeneous oscillator populations. We apply our approach to the eponymous Kuramoto model and demonstrate how KuraNet can learn data-dependent coupling structures that promote either global or cluster synchrony. For example, we show how KuraNet can be used to empirically explore the conditions of global synchrony in analytically impenetrable models with disordered natural frequencies, external field strengths, and interaction delays. In a sequence of cluster synchrony experiments, we further show how KuraNet can function as a data classifier by synchronizing into coherent assemblies. In all cases, we show how KuraNet can generalize to both new data and new network scales, making it easy to work with small systems and form hypotheses about the thermodynamic limit. Our proposed learning-based approach is broadly applicable to arbitrary dynamical systems with wide-ranging relevance to modeling in physics and systems biology.

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