Online damage quantification suffers from insufficient labeled data that weakens its accuracy. In this context, adopting the domain adaptation on historical labeled data from similar structures/damages or simulated digital twin data to assist the current diagnosis task would be beneficial. However, most domain adaptation methods are designed for classification and cannot efficiently address damage quantification, a regression problem with continuous real-valued labels. This study first proposes a novel domain adaptation method, the Online Fuzzy-set-based Joint Distribution Adaptation for Regression, to address this challenge. By converting the continuous real-valued labels to fuzzy class labels via fuzzy sets, the marginal and conditional distribution discrepancy are simultaneously measured to achieve the domain adaptation for the damage quantification task. Thanks to the superiority of the proposed method, a state-of-the-art online damage quantification framework based on domain adaptation is presented. Finally, the framework has been comprehensively demonstrated with a damaged helicopter panel, in which three types of damage domain adaptations (across different damage locations, across different damage types, and from simulation to experiment) are all conducted, proving the accuracy of damage quantification can be significantly improved in a realistic environment. It is expected that the proposed approach to be applied to the fleet-level digital twin considering the individual differences.
翻译:网上损害量化缺乏足够的标签数据,削弱了其准确性。在这方面,对来自类似结构/损坏或模拟数字双数据的历史标签数据进行域性调整,以帮助目前的诊断任务;然而,大多数领域适应方法都是为分类设计的,无法有效地处理损害量化,这是一个具有连续实际价值标签的回归问题。本研究首先提出一种新的域性适应方法,即在线模糊设置的回归联合分配适应,以应对这一挑战。通过将连续真实价值标签转换为模糊等级标签,同时测量边际和有条件分布差异,以实现损害量化任务的域适应。由于拟议方法的优越性,提出了以领域适应为基础的最先进的网上损害量化框架。最后,与受损的直升机板一起全面展示了该框架,其中进行了三种类型的损害领域调整(跨越不同损害地点,跨越不同的损害类型,从模拟到试验),证明损害量化的准确性可以在现实环境中得到显著改进。预计,在考虑采用单个数字层次时,将采用两种不同的方法。