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Towards Population-Based Structural Health Monitoring, Part II: Heterogeneous Populations and Structures as Graphs

机译:走向基于人口的结构健康监测,第二部分:异构人群和结构作为图形

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Information about the expected variation in the normal condition and various damage states of a structure is crucial in structural health monitoring. In an ideal case, the behaviour associated with each possible type of damage would be known and classification would be possible. However, it is not realistic to obtain data for every possible damage state in an individual structure. Examining a population of structures gives a much larger pool of data to work with. Machine learning can then potentially allow inferences across the population using algorithms from transfer learning. The degree of similarity between structures determines the level of possible knowledge transfer between different structures. It is also useful to quantify in which ways two structures are similar, and where these similarities lie. This information determines whether or not certain the transfer learning approaches are applicable in a given situation. It is therefore necessary to develop a method for analysing the similarities between structures. First, it must be decided which properties of the structure to use when measuring the similarity. For example, comparing 3D CAD models or Finite Element models is not a suitable approach, since these contain a lot of irrelevant information. It is better to abstract this information into a form that contains only the relevant information. This paper proposes Irreducible Element (IE) models, which are designed to capture the features that are crucial in determining whether or not transfer learning is possible. This information is then converted into an Attributed Graph (AG). The Attributed Graph for a structure contains the same information as the Irreducible Element model; however, the graph carries this information as a list of attributes attached to nodes. Organising the information in this manner makes it easier for graph-matching algorithms to perform a comparison between two structures. This comparison can then be used to generate a measure of similarity between the two structures and determine the most appropriate transfer learning method.
机译:关于正常情况下预期变化的信息和结构的各种损伤状态在结构健康监测中至关重要。在理想情况下,与每个可能类型的损坏相关的行为是已知的,并且可以进行分类。然而,在各个结构中获得每个可能的损坏状态的数据是不现实的。检查结构群体提供更大的数据池。然后,机器学习可以允许使用从转移学习的算法跨越人口的推论。结构之间的相似性决定了不同结构之间可能的知识转移的水平。量化两种结构类似的方式也是有用的,以及这些相似之处的位置。该信息确定是否在给定情况下适用传输学习方法。因此,有必要开发一种用于分析结构之间的相似性的方法。首先,必须决定测量相似性时使用的结构的属性。例如,比较3D CAD模型或有限元模型不是合适的方法,因为这些包含大量无关的信息。最好将此信息摘要仅包含相关信息的表单。本文提出了不可缩小的元件(IE)模型,其旨在捕获在确定是否可以传输学习时至关重要的特征。然后将该信息转换为属性图(AG)。结构的归属图包含与不可缩小的元素模型相同的信息;但是,该图形将此信息作为附加到节点的属性列表。以这种方式组织信息使得图形匹配算法更容易执行两个结构之间的比较。然后,该比较可以用于生成两个结构之间的相似性的度量,并确定最合适的转移学习方法。

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