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首页> 外文期刊>International Journal for Numerical Methods in Fluids >Non-intrusive reduced order modelling with least squares fitting on a sparse grid
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Non-intrusive reduced order modelling with least squares fitting on a sparse grid

机译:用最小二乘拟合在稀疏网格上的非侵入性降低阶

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摘要

This paper presents a non-intrusive reduced order model for general, dynamic partial differential equations. Based upon proper orthogonal decomposition (POD) and Smolyak sparse grid collocation, the method first projects the unknowns with full space and time coordinates onto a reduced POD basis. Then we introduce a new least squares fitting procedure to approximate the dynamical transition of the POD coefficients between subsequent time steps, taking only a set of full model solution snapshots as the training data during the construction. Thus, neither the physical details nor further numerical simulations of the original PDE model are required by this methodology, and the level of non-intrusiveness is improved compared with existing reduced order models. Furthermore, we take adaptive measures to address the instability issue arising from reduced order iterations of the POD coefficients. This model can be applied to a wide range of physical and engineering scenarios, and we test it on a couple of problems in fluid dynamics. It is demonstrated that this reduced order approach captures the dominant features of the high-fidelity models with reasonable accuracy while the computation complexity is reduced by several orders of magnitude. Copyright (c) 2016 John Wiley & Sons, Ltd.
机译:本文介绍了一般动态部分微分方程的非侵入性减少阶模型。基于适当的正交分解(POD)和SMOLYAK稀疏网格搭配,该方法首先将具有全部空间和时间的未知数投影到降低的植物上。然后,我们介绍了一种新的最小二乘拟合程序,以近似于在后续时间步长之间的POD系数的动态转变,仅仅是在构造期间作为训练数据的全模型解决方案快照。因此,通过该方法需要原始PDE模型的物理细节和其他数值模拟,与现有的降低的订单模型相比,改善了非侵入性的水平。此外,我们采取自适应措施来解决从POD系数的减少迭代而产生的不稳定问题。该模型可应用于广泛的物理和工程方案,我们在流体动力学中的几个问题上进行测试。据证明,这种减少的订单方法以合理的准确度捕获高保真模型的主导特征,而计算复杂性降低了几个数量级。版权所有(c)2016 John Wiley&Sons,Ltd。

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