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Wireless and real-time structural damage detection: A novel decentralized method for wireless sensor networks

机译:无线和实时结构损伤检测:一种新型无线传感器网络的分流方法

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摘要

Being an alternative to conventional wired sensors, wireless sensor networks (WSNs) are extensively used in Structural Health Monitoring (SHM) applications. Most of the Structural Damage Detection (SDD) approaches available in the SHM literature are centralized as they require transferring data from all sensors within the network to a single processing unit to evaluate the structural condition. These methods are found predominantly feasible for wired SHM systems; however, transmission and synchronization of huge data sets in WSNs has been found to be arduous. As such, the application of centralized methods with WSNs has been a challenge for engineers. In this paper, the authors are presenting a novel application of 1D Convolutional Neural Networks (1D CNNs) on WSNs for SDD purposes. The SDD is successfully performed completely wireless and real-time under ambient conditions. As a result of this, a decentralized damage detection method suitable for wireless SHM systems is proposed. The proposed method is based on 1D CNNs and it involves training an individual 1D CNN for each wireless sensor in the network in a format where each CNN is assigned to process the locally-available data only, eliminating the need for data transmission and synchronization. The proposed damage detection method operates directly on the raw ambient vibration condition signals without any filtering or preprocessing. Moreover, the proposed approach requires minimal computational time and power since 1D CNNs merge both feature extraction and classification tasks into a single learning block. This ability is prevailingly cost-effective and evidently practical in WSNs considering the hardware systems have been occasionally reported to suffer from limited power supply in these networks. To display the capability and verify the success of the proposed method, large-scale experiments conducted on a laboratory structure equipped with a state-of-the-art WSN are reported. (C) 2018 Elsevier Ltd. All right
机译:作为传统有线传感器的替代方案,无线传感器网络(WSN)广泛用于结构健康监测(SHM)应用中。 SHM文献中可用的大多数结构损伤检测(SDD)方法是集中的,因为它们要求将数据从网络内的所有传感器传输到单个处理单元以评估结构状态。这些方法对于有线SHM系统来说主要是可行的;然而,已发现WSN中的大型数据集的传输和同步是艰巨的。因此,将集中方法应用于WSNS对工程师来说是一项挑战。在本文中,作者在WSN上呈现了对WSN的1D卷积神经网络(1D CNNS)的新颖适用于SDD目的。在环境条件下成功地在完全无线和实时执行SDD。结果,提出了一种适用于无线SHM系统的分散损伤检测方法。所提出的方法基于1D CNN,它涉及以网络中的格式训练网络中的每个无线传感器的单独的1D CNN,其中每个CNN仅被分配用于处理本地可用数据,消除了对数据传输和同步的需求。所提出的损坏检测方法直接在没有任何滤波或预处理的原始环境振动状态信号上运行。此外,所提出的方法需要最小的计算时间和功率,因为​​1D CNN将特征提取和分类任务合并到单个学习块中。考虑到这些网络中的硬件系统,这种能力在WSN中持续成本效益,显然实用,在WSN中遇到了这些网络中的电源有限。为了显示能力并验证所提出的方法的成功,报告了在配备有最先进的WSN的实验室结构上进行的大规模实验。 (c)2018 Elsevier Ltd.一切正确

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