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A new look at proper orthogonal decomposition

机译:重新审视适当的正交分解

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摘要

We investigate some basic properties of the proper orthogonal decomposition (POD) method as it is applied to data compression and model reduction of finite dimensional nonlinear systems. First we provide an analysis of the errors involved in solving a nonlinear ODE initial value problem using a POD reduced order model. Then we study the effects of small perturbations in the ensemble of data from which the POD reduced order model is constructed on the reduced order model. We explain why in some applications this sensitivity is a concern while in others it is not. We also provide an analysis of computational complexity of solving an ODE initial value problem and study the computational savings obtained by using a POD reduced order model. We provide several examples to illustrate our theoretical results. [References: 29]
机译:我们研究了适当的正交分解(POD)方法的一些基本属性,该方法被用于有限维非线性系统的数据压缩和模型归约。首先,我们提供了使用POD降阶模型解决非线性ODE初值问题所涉及的误差的分析。然后,我们研究了数据的整体中小扰动的影响,从这些数据中,POD降阶模型是在降阶模型上构建的。我们解释了为什么在某些应用中需要考虑这种敏感性,而在其他应用中则不需要。我们还提供了解决ODE初值问题的计算复杂度的分析,并研究了使用POD降阶模型获得的计算节省。我们提供了一些例子来说明我们的理论结果。 [参考:29]

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