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arxiv: 1701.05920 · v2 · pith:ZNLOG7KTnew · submitted 2017-01-20 · 🧮 math.PR

Averaging principle for one dimensional stochastic Burgers equation

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keywords equationslowcomponentaveragedaveragingburgersconvergescorresponding
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In this paper, we consider the averaging principle for one dimensional stochastic Burgers equation with slow and fast time-scales. Under some suitable conditions, we show that the slow component strongly converges to the solution of the corresponding averaged equation. Meanwhile, when there is no noise in the slow component equation, we also prove that the slow component weakly converges to the solution of the corresponding averaged equation with the order of convergence $1-r$, for any $0<r<1$.

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