Quantification of total uncertainty in the physics-informed reconstruction of CVSim-6 physiology.

ArXiv Pub Date : 2024-08-13
Mario De Florio, Zongren Zou, Daniele E Schiavazzi, George Em Karniadakis
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Abstract

When predicting physical phenomena through simulation, quantification of the total uncertainty due to multiple sources is as crucial as making sure the underlying numerical model is accurate. Possible sources include irreducible aleatoric uncertainty due to noise in the data, epistemic uncertainty induced by insufficient data or inadequate parameterization, and model-form uncertainty related to the use of misspecified model equations. In addition, recently proposed approaches provide flexible ways to combine information from data with full or partial satisfaction of equations that typically encode physical principles. Physics-based regularization interacts in nontrivial ways with aleatoric, epistemic and model-form uncertainty and their combination, and a better understanding of this interaction is needed to improve the predictive performance of physics-informed digital twins that operate under real conditions. To better understand this interaction, with a specific focus on biological and physiological models, this study investigates the decomposition of total uncertainty in the estimation of states and parameters of a differential system simulated with MC X-TFC, a new physics-informed approach for uncertainty quantification based on random projections and Monte-Carlo sampling. After an introductory comparison between approaches for physics-informed estimation, MC X-TFC is applied to a six-compartment stiff ODE system, the CVSim-6 model, developed in the context of human physiology. The system is first analyzed by progressively removing data while estimating an increasing number of parameters, and subsequently by investigating total uncertainty under model-form misspecification of non-linear resistance in the pulmonary compartment. In particular, we focus on the interaction between the formulation of the discrepancy term and quantification of model-form uncertainty, and show how additional physics can help in the estimation process. The method demonstrates robustness and efficiency in estimating unknown states and parameters, even with limited, sparse, and noisy data. It also offers great flexibility in integrating data with physics for improved estimation, even in cases of model misspecification.

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对 CVSim-6 生理学物理信息重建中的总不确定性进行量化。
在通过模拟预测物理现象时,量化多种来源造成的总不确定性与确保基础数值模型的准确性同样重要。可能的来源包括由数据噪声引起的不可还原的不确定性、由数据不足或参数化不足引起的认识上的不确定性,以及与使用指定错误的模型方程有关的模型形式上的不确定性。基于物理的正则化与数据不确定性、认识不确定性和模型形式不确定性以及它们之间的结合有非同一般的相互作用,需要更好地理解这种相互作用,以提高在真实条件下运行的物理信息数字双胞胎的预测性能。本研究特别关注生物和生理模型,研究了用 MC X-TFC 模拟的微分系统状态和参数估计中总不确定性的分解,MC X-TFC 是一种基于随机预测和蒙特卡洛采样的新的物理信息不确定性量化方法。MC X-TFC 被应用于一个六室僵化 ODE 系统,即 CVSim-6 模型,该模型是在人体生理学背景下开发的。在对该系统进行分析时,我们在估算越来越多的参数的同时逐步移除数据,并研究了在肺部非线性阻力的模型形式错误规范下的总不确定性。我们特别关注差异项的表述与模型形式不确定性量化之间的相互作用,并展示了附加物理学如何帮助估算过程。该方法在估算未知状态和参数时表现出了稳健性和高效性,即使是在数据有限、稀疏和嘈杂的情况下也是如此。该方法还具有极大的灵活性,可将数据与物理学相结合以改进估算,即使在模型未定义的情况下也是如此。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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