Jianfeng Gu, Chunyan Xiang, Jin Luo, Minshui Huang, Hexu Liu, Chang Sun, Yuhou Yang
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引用次数: 0
摘要
本研究提出了一种考虑环境温度变化的新型结构损伤识别方法。在该方法中,基于归一化模态柔性的指数(nMFBI)和自回归(AR)系数相结合形成了 nMFBI-AR 混合指数,并利用卷积神经网络(CNN)对损伤进行定位和量化。此外,在训练数据集中不考虑环境温度变化和测量噪声的影响,这在实际工程中是可取的。为了验证所提方法的有效性,首先对简单支撑梁的数值结构进行了研究,并通过与 nMFBI 和 AR 指数进行比较,评估了 nMFBI-AR 指数的性能。然后,通过一个三层框架的测试模型和一个连续刚架桥的实际工程实例进一步验证了所提出的方法。结果表明,虽然测试数据集仅考虑了环境温度变化和测量噪声的影响,但该方法在定位和量化结构损伤方面的性能最佳,误差小于 16%,前景可观。此外,本文还为基于时频混合信息的损伤指数研究提供了指导和新思路。
Structural damage identification under ambient temperature variations based on CNN and normalized modal flexibility-autoregressive coefficients hybrid index
This study proposes a novel method to identify structural damage considering ambient temperature variations. In this method, the normalized modal flexibility based index (nMFBI) and autoregressive (AR) coefficients are combined to form the nMFBI-AR hybrid index, and convolutional neural networks (CNN) are exploited to locate and quantify the damage. Moreover, the effects of ambient temperature variations and measurement noise are not considered in the training dataset, which is preferable in practical engineering. To verify the effectiveness of the proposed method, firstly, a numerical structure of a simply supported beam is investigated, and the performance of the nMFBI-AR index is evaluated by making a comparison with the nMFBI and AR indexes. Then, the proposed method is further verified by a test model of a three-story frame and a practical engineering example of a continuous rigid frame bridge. The results demonstrate that although the influence of ambient temperature variations and measurement noise are only considered in the test datasets, this approach has the best performance in locating and quantifying structural damage, and the errors are less than 16%, which is promising. In addition, this paper provides a guideline and a new idea for the study of damage index based on time-frequency hybrid information.