Time-dependent Low-rank Approximation Method for Solving Parametric Dynamical Systems

来源 :第八届工业与应用数学国际大会 | 被引量 : 0次 | 上传用户:ljhhck123
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  This talk concerns a low-rank approximation method for the model reduction of non-linear parametric dynamical systems.The proposed approach combines the construction of a time dependent reduced space in which the full model is projected to derive the reduced dynamical system that takes into account the basis dynamic through a modified flux.Here,the reduced space basis is selected in a greedy fashion among a snapshot in parameter of the solution trajectories using a posteriori error estimate.
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