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Transfer learning of chaotic systems

Yali Guo, Han Zhang, Liang Wang, Huawei Fan, Jinghua Xiao, Xingang Wang

2021Chaos An Interdisciplinary Journal of Nonlinear Science19 citationsDOIOpen Access PDF

Abstract

Can a neural network trained by the time series of system A be used to predict the evolution of system B? This problem, knowing as transfer learning in a broad sense, is of great importance in machine learning and data mining yet has not been addressed for chaotic systems. Here, we investigate transfer learning of chaotic systems from the perspective of synchronization-based state inference, in which a reservoir computer trained by chaotic system A is used to infer the unmeasured variables of chaotic system B, while A is different from B in either parameter or dynamics. It is found that if systems A and B are different in parameter, the reservoir computer can be well synchronized to system B. However, if systems A and B are different in dynamics, the reservoir computer fails to synchronize with system B in general. Knowledge transfer along a chain of coupled reservoir computers is also studied, and it is found that, although the reservoir computers are trained by different systems, the unmeasured variables of the driving system can be successfully inferred by the remote reservoir computer. Finally, by an experiment of chaotic pendulum, we demonstrate that the knowledge learned from the modeling system can be transferred and used to predict the evolution of the experimental system.

Topics & Concepts

Reservoir computingChaoticComputer scienceArtificial neural networkArtificial intelligencePerspective (graphical)Transfer of learningTransfer (computing)State (computer science)Chaotic systemsSeries (stratigraphy)State variableMachine learningSystems modelingTransfer functionControl theory (sociology)Control engineeringComplex systemKey (lock)Dynamical system (definition)Stability (learning theory)Time seriesInformation transferNeural Networks and Reservoir ComputingModel Reduction and Neural NetworksAdvanced Memory and Neural Computing
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