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Deep Learning-Based Model Reduction for Distributed Parameter Systems

机译:基于深度学习的分布式参数系统模型约简

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摘要

This paper presents a deep learning-based model reduction method for distributed parameter systems (DPSs). The proposed method includes three phases. In phase I, numerical or experimental data of the spatiotemporal distribution is reduced into low-dimensional representations using the deep auto-encoder (DAE). In phase II, the low-dimensional representations are used to establish the reduced-order model. In phase III, the reduced model is then used to reconstruct the high-dimensional DPS. Experimental studies are conducted to validate the proposed method. The proposed method is compared with the classical proper orthogonal decomposition method and demonstrates better modeling accuracy and efficiency in the experiments.
机译:本文提出了一种基于深度学习的分布式参数系统(DPS)模型简化方法。所提出的方法包括三个阶段。在阶段I中,使用深度自动编码器(DAE)将时空分布的数值或实验数据简化为低维表示。在阶段II中,低维表示用于建立降阶模型。在阶段III中,然后将简化模型用于重构高维DPS。进行实验研究以验证所提出的方法。将该方法与经典的适当正交分解方法进行了比较,并在实验中证明了更好的建模精度和效率。

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