有限监测数据下结构状态识别的深度学习算法

Tong Zhang, Ying Wang
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引用次数: 13

摘要

为了获取基础设施资产的实际状况并更有效地对其进行管理,人们对结构健康监测(SHM)进行了广泛的研究,特别是使用数据驱动方法的研究。近年来,深度学习成为包括SHM在内的许多应用领域的研究热点。它们的性能在很大程度上依赖于训练数据的质量和数量,无论是实验还是数值上获得的。由于时间和费用的限制,现场或实验室测试数据通常受到结构条件变化的限制,而数值模拟数据的质量则取决于专家的建模技能。因此,在训练数据有限的情况下,深度学习算法的实际性能需要研究,并且需要开发生成更多训练数据的替代方法。在这项工作中,我们开发了一种新的一维卷积神经网络(1D-CNN)用于结构状态识别。通过实验室案例研究来评估该算法的性能。建造了钢沃伦桁架桥结构,并安装了加速度计和冲击锤。进行了7种不同场景下的振动试验,每种场景有5个重复试验数据。算法使用不同数量的训练数据(每个场景从一个测试数据到四个测试数据)进行训练。结果表明,在至少3次重复试验数据下,工况识别结果是可靠的。为了克服监测数据有限的挑战,我们提出了生成对抗网络(gan)的潜在应用,以生成更可靠的训练数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Algorithms for Structural Condition Identification with Limited Monitoring Data
To obtain actual conditions of infrastructure assets and manage them more efficiently, extensive research efforts have been placed on structural health monitoring (SHM), especially those using data-driven methods. Recently, deep learning becomes a research hotspot in many application areas, including the SHM domain. Their performance largely relies on the quality and quantity of the training data, obtained either experimentally or numerically. Due to the time and expense restraints, field or laboratory test data are normally limited by the variation of structural conditions, while the quality of numerical simulation data is subjective to experts' modelling skills. Therefore, the actual performance of deep learning algorithms with limited training data needs to be studied, and the alternative ways to generate more training data need to be developed. In this work, we develop a new one-Dimensional Convolutional Neural Network (1D-CNN) for structural condition identification. A laboratory case study is conducted to evaluate the performance of the algorithm. A steel Warren truss bridge structure is constructed and instrumented with accelerometers and impact hammer. The vibration tests under seven different scenarios are conducted, and each scenario has five repeated test data. The algorithm is trained with different quantities of training data (from one test data to four test data for each scenario). The results show that condition identification results become reliable with at least three repeated test data. To overcome the challenge of limited monitoring data, we propose the potential application of Generative Adversarial Networks (GANs) to generate more reliable training data.
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