Damage identification of steel bridge based on data augmentation and adaptive optimization neural network

Minshui Huang, Jianwei Zhang, Jun Li, Zhihang Deng, Jin Luo
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Abstract

With the advancement of deep learning, data-driven structural damage identification (SDI) has shown considerable development. However, collecting vibration signals related to structural damage poses certain challenges, which can undermine the accuracy of the identification results produced by data-driven SDI methods in scenarios where data is scarce. This paper introduces an innovative approach to bridge SDI in a few-shot context by integrating an adaptive simulated annealing particle swarm optimization-convolutional neural network (ASAPSO-CNN) as the foundational framework, augmented by data enhancement techniques. Firstly, three specific types of noise are introduced to augment the source signals used for training. Subsequently, the source signals and augmented signals are recombined to construct a four-dimensional matrix as the input to the CNN, while defining the damage feature vector as the output. Secondly, a CNN is constructed to establish the mapping relationship between the input and output. Then, an adaptive fitness function is proposed that simultaneously considers the accuracy of SDI, model complexity, and training efficiency. The ASAPSO is employed to adaptively optimize the hyperparameters of the CNN. The proposed method is validated on an experimental model of a three-span continuous beam. It is compared with four other data-driven methods, demonstrating good effectiveness and robustness of SDI under cases of scarce data. Finally, the effectiveness of this SDI method is validated in a real-world case of a steel truss bridge.
基于数据增强和自适应优化神经网络的钢桥损伤识别
随着深度学习的发展,数据驱动的结构损伤识别(SDI)得到了长足的发展。然而,在数据稀缺的情况下,收集与结构损伤相关的振动信号存在一定的挑战,这可能会影响数据驱动的 SDI 方法所产生的识别结果的准确性。本文介绍了一种创新的方法,即通过整合自适应模拟退火粒子群优化-卷积神经网络(ASAPSO-CNN)作为基础框架,并辅以数据增强技术,在少量数据的情况下进行桥梁 SDI 识别。首先,引入三种特定类型的噪声来增强用于训练的源信号。随后,将源信号和增强信号重新组合,构建一个四维矩阵作为 CNN 的输入,同时定义损伤特征向量作为输出。其次,构建 CNN 以建立输入和输出之间的映射关系。然后,提出一种自适应拟合函数,同时考虑 SDI 的准确性、模型复杂性和训练效率。ASAPSO 用于自适应优化 CNN 的超参数。所提出的方法在三跨连续梁的实验模型上进行了验证。它与其他四种数据驱动方法进行了比较,证明了 SDI 在数据稀缺的情况下具有良好的有效性和鲁棒性。最后,在钢桁梁桥的实际案例中验证了 SDI 方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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