Additive noise destroys the random attractor close to bifurcation
classification
🧮 math.DS
math.PR
keywords
noiseadditiveattractorbifurcationclosedestroyspresencerandom
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We provide an example for stabilization by noise. Our approach does not rely on monotonicity arguments due to the presence of higher order differential operators or mixing properties of the system as the noise might be highly degenerate. In the examples a scalar additive noise destroys a high-dimensional random attractor of a PDE on an unbounded domain. In the presence of small noise close to bifurcation all trajectories converge to a single stationary solution.
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