将智能引入结构健康监测的边缘。Z24 桥案例研究

IF 5.2 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Open Journal of the Industrial Electronics Society Pub Date : 2024-07-26 DOI:10.1109/OJIES.2024.3434341
Ali Dabbous;Riccardo Berta;Matteo Fresta;Hadi Ballout;Luca Lazzaroni;Francesco Bellotti
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引用次数: 0

摘要

由于基础设施的重要性和老化,结构健康监测(SHM)是土木工程的关键。我们认为,在大规模复杂工业系统中应用前沿的数据驱动方法可能是有益的,尤其是在准确性和响应速度方面。一个基本步骤是确定从振动原始信号中提取有意义信息的最佳工具。为此,我们研究了文献中出现的两种卷积神经网络架构,即 WaveNet 和 MINImally RandOm Convolutional KErnel Transform (MiniRocket),用于从时间序列中高效提取特征。测试平台是 Z24 桥梁渐进损伤测试分类数据集。结果表明,基于 WaveNet 的模型达到了最先进的性能,同时还缩小了模型尺寸,降低了计算复杂度。事实证明,WaveNet 非常适合直接在时域中解释桥梁振动波形,而无需任何特定的预处理。另一方面,MiniRocket 在配置简便性(只需调整两个超参数)、整体训练效率和模型大小方面表现出色,是一种有价值的灵活替代方案(例如,用于快速原型开发)。因此,我们的主要进展是识别和描述可用于不同 SHM 任务的高效特征提取方法。我们在两个嵌入式平台上对模型的性能进行了评估,提出了一种智能传感器系统,由本地中枢收集来自惯性传感器群的信号,并在现场推断出损坏评估结果,使桥梁能够自我评估其健康状况,而无需借助连接或云计算资源。
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Bringing Intelligence to the Edge for Structural Health Monitoring: The Case Study of the Z24 Bridge
Structural health monitoring (SHM) is key in civil engineering because of the importance and the aging of the infrastructure. We argue that applying leading-edge, data-driven methods of large-scale complex industrial systems may be beneficial, particularly for accuracy and responsiveness. A fundamental step concerns the identification of the best tools to extract meaningful information from the vibrational raw signals. To this end, we study the application of two convolutional neural network architectures that have emerged in the literature for efficient feature extraction from time series, namely WaveNet and MINImally RandOm Convolutional KErnel Transform (MiniRocket). The test bench is the Z24 bridge progressive damage test classification dataset. Results show that a model based on WaveNet reaches state-of-the-art performance, also reducing model size and computational complexity. WaveNet proves perfectly suited to interpret the bridge vibration waveforms directly in the time domain, without any specific preprocessing. On the other hand, MiniRocket excels for ease of configuration (only two hyperparameters are to be tweaked), overall training efficiency, and model size, lending itself as a valuable agile alternative (e.g., for rapid prototyping). Our main advancement is, thus, the identification and characterization of highly effective feature extraction methods, employable in different SHM tasks. We have assessed the performance of the models on two embedded platforms, proposing a smart sensor system where a local hub collects the signals from a constellation of inertial sensors and infers damage assessment onsite, allowing the bridge to self-assess its health state without resorting to connectivity nor cloud resources.
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来源期刊
IEEE Open Journal of the Industrial Electronics Society
IEEE Open Journal of the Industrial Electronics Society ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
10.80
自引率
2.40%
发文量
33
审稿时长
12 weeks
期刊介绍: The IEEE Open Journal of the Industrial Electronics Society is dedicated to advancing information-intensive, knowledge-based automation, and digitalization, aiming to enhance various industrial and infrastructural ecosystems including energy, mobility, health, and home/building infrastructure. Encompassing a range of techniques leveraging data and information acquisition, analysis, manipulation, and distribution, the journal strives to achieve greater flexibility, efficiency, effectiveness, reliability, and security within digitalized and networked environments. Our scope provides a platform for discourse and dissemination of the latest developments in numerous research and innovation areas. These include electrical components and systems, smart grids, industrial cyber-physical systems, motion control, robotics and mechatronics, sensors and actuators, factory and building communication and automation, industrial digitalization, flexible and reconfigurable manufacturing, assistant systems, industrial applications of artificial intelligence and data science, as well as the implementation of machine learning, artificial neural networks, and fuzzy logic. Additionally, we explore human factors in digitalized and networked ecosystems. Join us in exploring and shaping the future of industrial electronics and digitalization.
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