drawing on recent progress in machine learning and statistical dimensionality reduction. The
method rests on the assumption that the nonlinear system behaves linearly when lifted into a
high (or infinite) dimensional feature space where balanced truncation may be carried out
implicitly. This leads to a nonlinear reduction map which can be combined with a
representation of the system belonging to a reproducing kernel Hilbert space to give a …