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首页> 外文期刊>Journal of the Mechanics and Physics of Solids >Inference of deformation mechanisms and constitutive response of soft material surrogates of biological tissue by full-field characterization and data-driven variational system identification
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Inference of deformation mechanisms and constitutive response of soft material surrogates of biological tissue by full-field characterization and data-driven variational system identification

机译:通过全场表征和数据驱动变分系统识别的生物组织软材料替代品的变形机制和组成响应的推理

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摘要

We present a novel, fully three-dimensional approach to soft material characterization and constitutive modeling with relevance to soft biological tissue. Our approach leverages recent advances in experimental techniques and data-driven computation. The experimental component of this approach involves in situ mechanical loading in a magnetic field (using MRI), yielding the entire deformation tensor field throughout the specimen regardless of the possible irregularities in its three-dimensional shape. Characterization can therefore be accomplished with data at a reduced number of deformation states. We refer to this experimental technique as MR-u. Its combination with powerful approaches to inverse modeling, specifically methods of model inference, would open the door to insightful mechanical characterization for soft materials. In recent computational advances that answer this need, we have developed new, data-driven inverse techniques to infer the model that best explains the physics governing observed phenomena from a spectrum of admissible ones, while maintaining parsimony of representation. This approach is referred to as Variational System Identification (VSI). In this communication, we apply the MR-u approach to characterize soft polymers regarding them as surrogates of soft biological tissue, and using VSI, we infer the physically best-suited and parsimonious mathematical models of their mechanical response. We demonstrate the performance of our methods in the face of noisy data with physical constraints that challenge the identification of mathematical models, while attaining high accuracy in the predicted response of the inferred models.
机译:我们提出了一种新颖,全三维方法,具有与软生物组织相关的软材料表征和本构型建模。我们的方法利用了最近的实验技术和数据驱动计算的进步。该方法的实验组分涉及在磁场(使用MRI)中的原位机械加载,而在整个样本中产生整个变形张量场,而不管其三维形状的可能不规则。因此,可以以减少数量的变形状态来实现表征的特征。我们将这种实验技术称为MR-U.它与强大的反转建模方法的组合,特别是模型推理的方法,将打开大门以对软材料进行富有洞察力的机械表征。在最近回答这种需求的计算进步中,我们开发了新的数据驱动的逆技术,以推断最能解释从可允许的概念范围的观察到现象的物理学的模型,同时保持表示的分析。该方法被称为变分系统识别(VSI)。在这种通信中,我们应用MR-U方法,以表征有关软化的软聚合物,作为软生物组织的替代品,并使用VSI,我们推断出机械反应的物理最适合和令人垂涎的数学模型。我们在面对嘈杂的数据中展示了我们的方法的性能,具有挑战数学模型的识别的物理限制,同时在预测模型的预测响应中获得高精度。

著录项

  • 来源
    《Journal of the Mechanics and Physics of Solids》 |2021年第8期|104474.1-104474.21|共21页
  • 作者单位

    Mechanical Engineering University of Michigan United States of America;

    Mechanical Engineering University of Michigan United States of America;

    Mechanical Engineering University of Michigan United States of America Biomedical Engineering University of Michigan United States of America Macromolecular Science and Engineering University of Michigan United States of America;

    Mechanical Engineering University of Michigan United States of America Mathematics University of Michigan United States of America Michigan Institute for Computational Discovery & Engineering University of Michigan United States of America;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Machine learning; Inverse modeling; Physics-constrained optimization; Constitutive Modeling; Experimental characterization;

    机译:机器学习;逆建模;物理限制优化;本构型建模;实验表征;

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