School of Computational Science and Engineering, Georgia Institute of Technology, Atlanta, Georgia 30332, USA.
School of Physics, Georgia Institute of Technology, Atlanta, Georgia 30332, USA.
Chaos. 2021 Jan;31(1):013118. doi: 10.1063/5.0033539.
Reconstructions of excitation patterns in cardiac tissue must contend with uncertainties due to model error, observation error, and hidden state variables. The accuracy of these state reconstructions may be improved by efforts to account for each of these sources of uncertainty, in particular, through the incorporation of uncertainty in model specification and model dynamics. To this end, we introduce stochastic modeling methods in the context of ensemble-based data assimilation and state reconstruction for cardiac dynamics in one- and three-dimensional cardiac systems. We propose two classes of methods, one following the canonical stochastic differential equation formalism, and another perturbing the ensemble evolution in the parameter space of the model, which are further characterized according to the details of the models used in the ensemble. The stochastic methods are applied to a simple model of cardiac dynamics with fast-slow time-scale separation, which permits tuning the form of effective stochastic assimilation schemes based on a similar separation of dynamical time scales. We find that the selection of slow or fast time scales in the formulation of stochastic forcing terms can be understood analogously to existing ensemble inflation techniques for accounting for finite-size effects in ensemble Kalman filter methods; however, like existing inflation methods, care must be taken in choosing relevant parameters to avoid over-driving the data assimilation process. In particular, we find that a combination of stochastic processes-analogously to the combination of additive and multiplicative inflation methods-yields improvements to the assimilation error and ensemble spread over these classical methods.
心脏组织的兴奋模式重建必须应对由于模型误差、观测误差和隐藏状态变量而产生的不确定性。通过努力考虑这些不确定性源中的每一个,特别是通过在模型规范和模型动力学中纳入不确定性,可以提高这些状态重建的准确性。为此,我们在基于集合的数据同化和一维及三维心脏系统心脏动力学状态重建的背景下引入了随机建模方法。我们提出了两类方法,一类遵循规范的随机微分方程形式,另一类则在模型参数空间中扰动集合演化,根据集合中使用的模型的详细信息对其进行进一步的特征描述。随机方法应用于具有快-慢时间尺度分离的简单心脏动力学模型,这允许根据类似的动力学时间尺度分离来调整有效的随机同化方案的形式。我们发现,在随机强迫项的表述中选择慢或快时间尺度,可以类比于集合卡尔曼滤波方法中用于解释集合大小效应的现有集合膨胀技术;然而,与现有膨胀方法一样,在选择相关参数时必须小心,以避免过度驱动数据同化过程。特别是,我们发现,随机过程的组合——类似于加性和乘性膨胀方法的组合——可以提高同化误差和集合的扩展,优于这些经典方法。