Numerical continuation in nonlinear experiments using local Gaussian process regression
Renson, L; Sieber, J; Barton, DAW; et al.Shaw, AD; Neild, SA
Date: 8 August 2019
Journal
Nonlinear Dynamics
Publisher
Springer Verlag
Publisher DOI
Abstract
Control-based continuation (CBC) is a general and systematic method to probe the dy-
namics of nonlinear experiments. In this paper, CBC is combined with a novel continua-
tion algorithm that is robust to experimental noise and enables the tracking of geometric
features of the response surface such as folds. The method uses Gaussian ...
Control-based continuation (CBC) is a general and systematic method to probe the dy-
namics of nonlinear experiments. In this paper, CBC is combined with a novel continua-
tion algorithm that is robust to experimental noise and enables the tracking of geometric
features of the response surface such as folds. The method uses Gaussian process re-
gression to create a local model of the response surface on which standard numerical
continuation algorithms can be applied. The local model evolves as continuation explores
the experimental parameter space, exploiting previously captured data to actively select
the next data points to collect such that they maximise the potential information gain
about the feature of interest. The method is demonstrated experimentally on a nonlin-
ear structure featuring harmonically-coupled modes. Fold points present in the response
surface of the system are followed and reveal the presence of an isola, i.e. a branch of
periodic responses detached from the main resonance peak.
Mathematics and Statistics
Faculty of Environment, Science and Economy
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