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INVERSE UNCERTAINTY QUANTIFICATION OF A CELL MODEL USING A GAUSSIAN PROCESS METAMODEL

机译:使用高斯过程元模型的逆不确定性量化细胞模型

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In order to accurately describe the mechanics of red blood cells (RBCs) and resulting fluid dynamics, a cell-resolved blood flow fluid solver is required. The parameters of the material model for the RBC membranes are carefully tuned to reproduce the behavior of real cells under various experimental conditions. In this work, uncertainty in the parameters of the material model for RBCs used in a model for RBC suspensions was estimated with Inverse Uncertainty Quantification (IUQ) using Bayesian Annealed Sequential Importance Sampling (BASIS). Due to the relatively high computational cost of the model, a Gaussian Process regression metamodel was trained in order to feasibly draw the large number of samples required to obtain an accurate posterior distribution estimate. Additionally, the identifiability of the model parameters was estimated using Sobol sensitivity indices. The elongation index of simulated RBCs in a perfect sheared environment was the model prediction used to calibrate model parameters. The results show good identifiability of the parameter defining the tensile properties of the cell membrane and viscosity ratio, and poor identifiability of the parameter defining the response of the cell surface while undergoing bending. This suggests that the latter should be identified using a different quantity of interest. Overall, the model outputs with the optimal values of the parameters obtained using the Gaussian Process metamodel match better or close to the measurements than the results with the parameters' values obtained with the original model. Therefore, we can conclude that it is a valid method to decrease the computational cost of IUQ of the model.
机译:为了准确描述红细胞(RBC)的机制并产生流体动力学,需要一种细胞分辨的血流流体求解器。仔细调整RBC膜的材料模型的参数以在各种实验条件下再现真实细胞的行为。在这项工作中,使用贝叶斯退火的顺序重视抽样(基础),估计了RBC悬浮液模型中使用的RBC的RBC的材料模型参数的不确定性。由于该模型的计算成本相对较高,训练了高斯工艺回归元模型,以便对获得准确的后分布估计所需的大量样品进行训练。另外,使用Sobol敏感性指数估计了模型参数的可识别性。在完美剪切环境中模拟RBC的伸长指数是用于校准模型参数的模型预测。结果表明,定义细胞膜的拉伸性能和粘度比的参数的良好可识别性,并且在经历弯曲时定义细胞表面响应的参数的可辨性差。这表明后者应该用不同数量的兴趣识别。总的来说,使用高斯过程元模型获得的参数的最佳值的模型输出比使用原始模型获得的参数值更好地或接近测量结果。因此,我们可以得出结论,降低模型IUQ的计算成本的有效方法。

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