论文标题

关于结构健康监测领域适应的统计统计

On statistic alignment for domain adaptation in structural health monitoring

论文作者

Poole, Jack, Gardner, Paul, Dervilis, Nikolaos, Bull, Lawrence, Worden, Keith

论文摘要

结构健康监测(SHM)的实际应用通常受标签数据的可用性限制。转移学习 - 特别是以域适应(DA)的形式 - 通过推断与特征空间对齐的映射来利用物理或数值结构群体的信息的可能性。典型的DA方法依赖于非参数距离指标,这些指标需要足够的数据才能执行密度估计。此外,这些方法可能容易在类失衡下的性能下降。为了解决这些问题,讨论了统计统一(SA),并演示了如何使这些方法使阶级失衡的鲁棒性,包括一种特殊的类不平衡案例,称为部分DA方案。在数值案例研究中,SA被证明可以促进损伤定位,而没有目标标签,表现优于其他最先进的DA方法。然后证明它能够使真实异构种群,Z24和KW51桥的特征空间对齐,仅使用KW51桥的220个样品。最后,在知识转移需要更复杂映射的情况下,SA被证明是至关重要的预处理工具,从而提高了已建立的DA方法的性能。

The practical application of structural health monitoring (SHM) is often limited by the availability of labelled data. Transfer learning - specifically in the form of domain adaptation (DA) - gives rise to the possibility of leveraging information from a population of physical or numerical structures, by inferring a mapping that aligns the feature spaces. Typical DA methods rely on nonparametric distance metrics, which require sufficient data to perform density estimation. In addition, these methods can be prone to performance degradation under class imbalance. To address these issues, statistic alignment (SA) is discussed, with a demonstration of how these methods can be made robust to class imbalance, including a special case of class imbalance called a partial DA scenario. SA is demonstrated to facilitate damage localisation with no target labels in a numerical case study, outperforming other state-of-the-art DA methods. It is then shown to be capable of aligning the feature spaces of a real heterogeneous population, the Z24 and KW51 bridges, with only 220 samples used from the KW51 bridge. Finally, in scenarios where more complex mappings are required for knowledge transfer, SA is shown to be a vital pre-processing tool, increasing the performance of established DA methods.

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