论文标题

通过对抗性学习,建筑物之间的知识转移以进行地震损伤诊断

Knowledge Transfer between Buildings for Seismic Damage Diagnosis through Adversarial Learning

论文作者

Xu, Susu, Noh, Hae Young

论文摘要

地震后自动化的结构损伤诊断对于提高灾难反应和康复的效率很重要。在使用机器学习或统计模型的传统数据驱动框架中,通常使用监督学习来构建结构性损害诊断模型。监督的学习需要历史结构响应数据和相应的损害状态(即标签),以了解特定于建筑物的损害诊断模型。但是,在地震后场景中,经常在受影响区域的许多建筑物中使用带有标签的历史数据。这使得很难构建损伤诊断模型。此外,直接使用来自其他建筑物的历史数据来构建目标建筑物的损坏诊断模型将导致结果不准确。这是因为每个建筑物都有独特的物理属性,因此具有独特的数据分布。为此,我们引入了一个新的框架,以将从其他建筑物中学到的模型转移到目标建筑物中的结构性损害状态,而无需任何标签。该框架基于一种对抗域的适应方法,该方法提取了来自不同建筑物的数据的域不变特征表示。特征提取功能以对抗性方式进行训练,从而确保提取的特征分布对结构的变化具有鲁棒性,同时可以预测损害状态。随着提取的域不变特征表示,数据分布在不同建筑物之间变得一致。我们在从多个建筑结构中收集的数值模拟和现场数据上评估了我们的框架,这表现优于最先进的基准方法。

Automated structural damage diagnosis after earthquakes is important for improving the efficiency of disaster response and rehabilitation. In conventional data-driven frameworks which use machine learning or statistical models, structural damage diagnosis models are often constructed using supervised learning. The supervised learning requires historical structural response data and corresponding damage states (i.e., labels) for each building to learn the building-specific damage diagnosis model. However, in post-earthquake scenarios, historical data with labels are often not available for many buildings in the affected area. This makes it difficult to construct a damage diagnosis model. Further, directly using the historical data from other buildings to construct a damage diagnosis model for the target building would lead to inaccurate results. This is because each building has unique physical properties and thus unique data distribution. To this end, we introduce a new framework to transfer the model learned from other buildings to diagnose structural damage states in the target building without any labels. This framework is based on an adversarial domain adaptation approach that extracts domain-invariant feature representations of data from different buildings. The feature extraction function is trained in an adversarial way, which ensures that the extracted feature distributions are robust to changes in structures while being predictive of the damage states. With the extracted domain-invariant feature representations, the data distributions become consistent across different buildings. We evaluate our framework on both numerical simulation and field data collected from multiple building structures, which outperforms the state-of-the-art benchmark methods.

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