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Towards Population-Based Structural Health Monitoring, Part IV: Heterogeneous Populations, Transfer and Mapping

机译:基于人口的结构健康监测,第四部分:异质人群、转移和测绘

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Population-based structural health monitoring (PBSHM) involves utilising knowledge from one set of structures in a population and applying it to a different set, such that predictions about the health states of each member in the population can be performed and improved. Central ideas behind PBSHM are those of knowledge transfer and mapping. In the context of PBSHM, knowledge transfer involves using information from a structure, defined as a source domain, where labels are known for a given feature, and mapping these onto the unlabelled feature space of a different, target domain structure. If the mapping is successful, a machine learning classifier trained on the transformed source domain data will generalise to the unlabelled target domain data; i.e. a classifier built on one structure will generalise to another, making Structural Heath Monitoring (SHM) cost-effective and applicable to a wide range of challenging industrial scenarios. This process of mapping features and labels across source and target domains is defined as domain adaptation, a subcategory of transfer learning. However, a key assumption in conventional domain adaptation methods is that there is consistency between the feature and label spaces. This means that the features measured from one structure must be the same dimension as the other (i.e. the same number of spectral lines of a transmissibility), and that labels associated with damage locations, classification and assessment, exist on both structures. These consistency constraints can be restrictive, limiting to which types of population domain adaptation can be applied. This paper, therefore, provides a mathematical underpinning for when domain adaptation is possible in a structural dynamics context, with reference to topology of a graphical representation of structures. By defining when conventional domain adaptation is applicable in a structural dynamics setting, approaches are discussed that could overcome these consistency restrictions. This approach provides a general means for performing transfer learning within a PBSHM context for structural dynamics-based features.
机译:基于人群的结构健康监测(PBSHM)涉及利用人群中一组结构的知识,并将其应用于不同的结构,从而可以对人群中每个成员的健康状态进行预测和改进。PBSHM背后的核心思想是知识转移和映射。在PBSHM的上下文中,知识转移涉及使用来自定义为源域的结构的信息,其中给定特征的标签是已知的,并将这些信息映射到另一个目标域结构的未标记特征空间。如果映射成功,根据转换后的源域数据训练的机器学习分类器将推广到未标记的目标域数据;i、 e.基于一种结构的分类器将推广到另一种结构,使结构健康监测(SHM)具有成本效益,并适用于各种具有挑战性的工业场景。这种在源域和目标域之间映射特征和标签的过程被定义为域适应,这是迁移学习的一个子类。然而,传统领域自适应方法的一个关键假设是特征空间和标签空间之间存在一致性。这意味着,从一个结构测量的特征必须与另一个结构的尺寸相同(即,透射率谱线的数量相同),并且两个结构上都存在与损伤位置、分类和评估相关的标签。这些一致性约束可能具有限制性,限制了可以应用哪些类型的群体域适应。因此,本文参考结构图形表示的拓扑结构,为结构动力学背景下何时可能进行域自适应提供了数学基础。通过定义传统领域适应何时适用于结构动力学环境,讨论了可以克服这些一致性限制的方法。这种方法为在基于结构动力学的特征的PBSHM环境中执行迁移学习提供了一种通用方法。

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