Understanding intraventricular hemodynamics requires compact and physically interpretable representations of the underlying flow structures, as characteristic flow patterns are closely associated with cardiovascular conditions and can support early detection of cardiac deterioration. Conventional visualization of velocity or pressure fields, however, provides limited insight into the coherent mechanisms driving these dynamics. Reduced-order modeling techniques, like Proper Orthogonal Decomposition (POD) and Autoencoder (AE) architectures, offer powerful alternatives to extract dominant flow features from complex datasets. This study systematically compares POD with several AE variants (Linear, Nonlinear, Convolutional, and Variational) using left ventricular flow fields obtained from computational fluid dynamics simulations. We show that, for a suitably chosen latent dimension, AEs produce modes that become nearly orthogonal and qualitatively resemble POD modes that capture a given percentage of kinetic energy. As the number of latent modes increases, AE modes progressively lose orthogonality, leading to linear dependence, spatial redundancy, and the appearance of repeated modes with substantial high-frequency content. This degradation reduces interpretability and introduces noise-like components into AE-based reduced-order models, potentially complicating their integration with physics-based formulations or neural-network surrogates. The extent of interpretability loss varies across the AEs, with nonlinear, convolutional, and variational models exhibiting distinct behaviors in orthogonality preservation and feature localization. Overall, the results indicate that AEs can reproduce POD-like coherent structures under specific latent-space configurations, while highlighting the need for careful mode selection to ensure physically meaningful representations of cardiac flow dynamics.
翻译:理解心室内血流动力学需要建立对底层流动结构的紧凑且物理可解释的表征,因为特征性流动模式与心血管状态密切相关,并能支持心脏功能恶化的早期检测。然而,传统的速度场或压力场可视化方法对驱动这些动力学的相干机制提供的洞见有限。降阶建模技术,如本征正交分解(POD)与自编码器(AE)架构,为从复杂数据集中提取主导流动特征提供了强有力的替代方案。本研究利用计算流体动力学模拟获得的左心室流场,系统比较了POD与多种AE变体(线性、非线性、卷积及变分自编码器)。我们证明,在适当选择潜在维度的情况下,AE生成的模态会变得近乎正交,且在定性上类似于捕获特定百分比动能的POD模态。随着潜在模态数量的增加,AE模态逐渐丧失正交性,导致线性相关性、空间冗余性以及出现具有显著高频成分的重复模态。这种退化降低了可解释性,并将类噪声成分引入基于AE的降阶模型,可能使其与基于物理的公式或神经网络代理模型的集成复杂化。可解释性损失的程度在不同AE模型间存在差异,非线性、卷积及变分模型在正交性保持和特征定位方面表现出不同的行为。总体而言,结果表明AE在特定的潜在空间配置下能够复现类POD的相干结构,同时强调了需要谨慎选择模态以确保获得具有物理意义的心脏血流动力学表征。