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Decentralized modal identification of structures using an adaptive empirical mode decomposition method

机译:使用自适应经验模式分解方法分散模态识别结构

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With recent advancement of robotic technology, mobile wireless devices have made a paradigm shift in cost-effective and faster deployment of sensors towards health monitoring of large-scale infrastructure. A wide range of system identification methods has been developed by the researchers to accurately identify unknown structural parameters from the measured vibration data. However, most of these techniques are suitable only when all key locations of the structure are instrumented. In case of decentralized mobile sensing network where a sensor is autonomously moved from one location to another, only a single sensor is available at a particular time. In this paper, a newer time-frequency analysis method, namely Empirical Mode Decomposition (EMD), is explored and improved to undertake system identification using single channel measurement. Traditional EMD results in significant mode-mixing while analyzing closely-spaced modes and data with measurement noise. In this paper, Time-Varying Filtering based Empirical Mode Decomposition (TVF-EMD) is proposed to perform modal identification using decentralized sensing approach. The proposed method is fully adaptive and suitable for automation since it uses only one channel of data at a time. The proposed method is verified using a suite of numerical, experimental and full-scale studies using wireless sensors in a decentralized manner. (C) 2019 Elsevier Ltd. All rights reserved.
机译:随着近期机器人技术的进步,移动无线设备已经在大型基础设施的健康监测方面取得了成本效益和更快地部署的范式转变。研究人员已经开发了广泛的系统识别方法,以便从测量的振动数据准确地识别未知的结构参数。然而,只有当结构的所有关键位置都是仪器的所有关键位置时,这些技术的大多数才是合适的。在分散的移动感测网络的情况下,传感器自主地从一个位置移动到另一个位置,在特定时间仅提供单个传感器。本文探讨了较新的时频分析方法,即经验模式分解(EMD),并改进了使用单通道测量进行系统识别。传统的EMD导致显着的模式混合,同时分析了具有测量噪声的紧密间隔模式和数据。在本文中,提出了基于时变的滤波的经验模式分解(TVF-EMD)来使用分散的感测方法进行模态标识。该方法是完全自适应的,适用于自动化,因为它一次仅使用一个数据通道。使用无线传感器以分散的方式使用一系列数值,实验和全尺度研究来验证所提出的方法。 (c)2019 Elsevier Ltd.保留所有权利。

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