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A novel deep learning-based method for damage identification of smart building structures

机译:基于深度学习的新型智能建筑结构损伤识别方法

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摘要

In the past few years, intelligent structural damage identification algorithms based on machine learning techniques have been developed and obtained considerable attentions worldwide, due to the advantages of reliable analysis and high efficiency. However, the performances of existing machine learning-based damage identification methods are heavily dependent on the selected signatures from raw signals. This will cause the fact that the damage identification method, which is the optimal solution for a specific application, may fail to provide the similar performance on other cases. Besides, the feature extraction is a time-consuming task, which may affect the real-time performance in practical applications. To address these problems, this article proposes a novel method based on deep convolutional neural networks to identify and localise damages of building structures equipped with smart control devices. The proposed deep convolutional neural network is capable of automatically extracting high-level features from raw signals or low-level features and optimally selecting the combination of extracted features via a multi-layer fusion to satisfy any damage identification objective. To evaluate the performance of the proposed deep convolutional neural network method, a five-level benchmark building equipped with adaptive smart isolators subjected to the seismic loading is investigated. The result shows that the proposed method has outstanding generalisation capacity and higher identification accuracy than other commonly used machine learning methods. Accordingly, it is deemed as an ideal and effective method for damage identification of smart structures.
机译:在过去的几年中,基于可靠的分析和高效率的优势,基于机器学习技术的智能结构损伤识别算法已经得到了发展,并得到了全世界的广泛关注。但是,现有的基于机器学习的损伤识别方法的性能在很大程度上取决于从原始信号中选择的签名。这将导致这样的事实,即针对特定应用的最佳解决方案-损坏识别方法可能无法在其他情况下提供类似的性能。此外,特征提取是一项耗时的工作,可能会影响实际应用中的实时性能。为了解决这些问题,本文提出了一种基于深度卷积神经网络的新颖方法,用于识别和定位配备智能控制设备的建筑结构的损坏。提出的深度卷积神经网络能够从原始信号或低级特征中自动提取高级特征,并能够通过多层融合来优化选择提取特征的组合,以满足任何损伤识别目标。为了评估所提出的深度卷积神经网络方法的性能,研究了配备有自适应智能隔离器的五层基准建筑物,该建筑物承受地震载荷。结果表明,与其他常用的机器学习方法相比,该方法具有出色的泛化能力和较高的识别精度。因此,它被认为是用于识别智能结构的理想且有效的方法。

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