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Active Subspace Uncertainty Quantification for a Polydomain Ferroelectric Phase-Field Model

机译:多域铁电相模型的活跃子空间不确定性量化

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Quantum-informed ferroelectric phase field models capable of predicting material behavior, are necessary for facilitating the development and production of many adaptive structures and intelligent systems. Uncertainty is present in these models, given the quantum scale at which calculations take place. A necessary analysis is to determine how the uncertainty in the response can be attributed to the uncertainty in the model inputs or parameters. A second analysis is to identify active sub spaces within the original parameter space, which quantify directions in which the model response varies most dominantly, thus reducing sampling effort and computational cost. In this investigation, we identify an active subspace for a poly-domain ferroelectric phase-field model. Using the active variables as our independent variables, we then construct a surrogate model and perform Bayesian inference. Once we quantify the uncertainties in the active variables, we obtain uncertainties for the original parameters via an inverse mapping. The analysis provides insight into how active subspace methodologies can be used to reduce computational power needed to perform Bayesian inference on model parameters informed by experimental or simulated data.
机译:能够预测材料行为的量子通知的铁电相模型,是促进许多自适应结构和智能系统的开发和生产所必需的。给出这些模型中存在的不确定性,鉴于计算的量子尺度。必要的分析是确定响应中的不确定性如何归因于模型输入或参数中的不确定性。第二分析是识别原始参数空间内的活动子空间,该空间量化模型响应最大化的方向,从而降低采样工作和计算成本。在本研究中,我们确定了多域铁电相模型的活性子空间。使用活动变量作为我们独立的变量,我们将构建代理模型并执行贝叶斯推断。一旦我们量化了活动变量中的不确定性,我们通过反向映射获得原始参数的不确定性。分析提供了深入了解有效的子空间方法如何用于减少对通过实验或模拟数据通知的模型参数执行贝叶斯推断所需的计算能力。

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