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Optimal combination of spatial basis functions for the model reduction of nonlinear distributed parameter systems

机译:空间基函数的最佳组合,用于非线性分布参数系统的模型简化

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Spectral methods are among the most extensively used techniques for model reduction of distributed parameter systems in various fields, including fluid dynamics, quantum mechanics, heat conduction, and weather prediction. However, the model dimension is not minimized for a given desired accuracy because of general spatial basis functions. New spatial basis functions are obtained by linear combination of general spatial basis functions in spectral method, whereas the basis function transformation matrix is derived from straightforward optimization techniques. After the expansion and truncation of spa tial basis functions, the present spatial basis functions can provide a lower dimensional and more precise ordinary differential equation system to approximate the dynamics of the systems. The numerical example shows the feasibility and effectiveness of the optimal combination of spectral basis functions for model reduction of nonlinear distributed parameter systems.
机译:光谱方法是在各个领域中用于分布式参数系统模型简化的最广泛使用的技术,包括流体动力学,量子力学,热传导和天气预报。但是,由于一般的空间基函数,对于给定的所需精度,模型尺寸并未最小化。通过频谱方法中一般空间基函数的线性组合可以获得新的空间基函数,而基函数变换矩阵则是从简单的优化技术中得出的。在空间基函数的扩展和截断之后,当前的空间基函数可以提供较低维数和更精确的常微分方程组,以近似系统的动力学。数值算例说明了将频谱基函数最佳组合用于非线性分布参数系统模型简化的可行性和有效性。

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