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首页> 外文期刊>Journal of Process Control >New spatial basis functions for the model reduction of nonlinear distributed parameter systems
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New spatial basis functions for the model reduction of nonlinear distributed parameter systems

机译:非线性分布参数系统模型简化的新空间基础函数

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摘要

The selection of spatial basis functions is important for the model reduction of nonlinear distributed parameter systems (DPSs). Such a selection will significantly affect the accuracy and efficiency of modeling. The current study proposes new spatial orthogonal basis functions for the model reduction of nonlinear DPSs. Each new spatial basis function is a linear combination of the orthogonal eigenfunctions of such systems. The basis function transformation matrix is obtained using the balanced truncation method, which results in a straightforward derivation of the transformation matrix and low computation cost. This performance is proven theoretically. A numerical example is used to demonstrate the effectiveness of the proposed method.
机译:空间基础函数的选择对于减少非线性分布参数系统(DPS)的模型很重要。这样的选择将显着影响建模的准确性和效率。当前的研究提出了一种新的空间正交基函数,用于非线性DPS的模型简化。每个新的空间基础函数都是此类系统正交本征函数的线性组合。使用平衡截断法获得基函数变换矩阵,这导致变换矩阵的直接推导和较低的计算成本。该性能在理论上得到了证明。数值例子说明了所提方法的有效性。

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