cs.AI updates on arXiv.org 09月03日
可学习加权混合自动编码器提升高维物理系统表征学习
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本文提出一种可学习加权混合自动编码器,结合奇异值分解与深度自动编码器,克服高维物理系统表征学习的Kolmogorov障碍,显著提升模型泛化性能,并应用于多尺度PDE系统的代理建模。

arXiv:2410.18148v4 Announce Type: replace-cross Abstract: Representation learning for high-dimensional, complex physical systems aims to identify a low-dimensional intrinsic latent space, which is crucial for reduced-order modeling and modal analysis. To overcome the well-known Kolmogorov barrier, deep autoencoders (AEs) have been introduced in recent years, but they often suffer from poor convergence behavior as the rank of the latent space increases. To address this issue, we propose the learnable weighted hybrid autoencoder, a hybrid approach that combines the strengths of singular value decomposition (SVD) with deep autoencoders through a learnable weighted framework. We find that the introduction of learnable weighting parameters is essential -- without them, the resulting model would either collapse into a standard POD or fail to exhibit the desired convergence behavior. Interestingly, we empirically find that our trained model has a sharpness thousands of times smaller compared to other models. Our experiments on classical chaotic PDE systems, including the 1D Kuramoto-Sivashinsky and forced isotropic turbulence datasets, demonstrate that our approach significantly improves generalization performance compared to several competing methods. Additionally, when combining with time series modeling techniques (e.g., Koopman operator, LSTM), the proposed technique offers significant improvements for surrogate modeling of high-dimensional multi-scale PDE systems.

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高维物理系统 表征学习 混合自动编码器 Kolmogorov障碍 PDE系统
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