用于结构健康监测的新型碳纤维智能层电阻层析成像系统

Xiaoyu Zhang, Zhuo-qiu Li, S. Zhu
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引用次数: 5

摘要

基于碳纤维智能层(CFSL)的功能特性和导电性,研制了一种用于现场结构健康监测的新型CFSL电阻层析成像(ERT)系统。采用适当的Tikhonov正则化原理和改进的Newton-Raphson(MNR)算法求解ERT逆问题。通过虚拟实验对其有效性进行了评价。利用ERT系统获得了CFSL传感器的电阻率分布图像,该图像数据来源于虚拟实验。结果表明,在张力作用下,CFSL传感器的电阻率增大。其高电阻率区分布在结构的高应力应变区。其电阻率分布反映了结构应力/应变状态。利用智能层的功能特点和ERT技术,实现全域SHM是可行的。
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A novel electrical resistance tomography system of carbon fiber smart layer for structural health monitoring
Based on the function character and conductivity of carbon fiber smart layer(CFSL), A novel electrical resistance tomography (ERT) system of CFSL had been developed for whole field structural health monitoring (SHM). The apposite Tikhonov regularization principle and modified Newton-Raphson(MNR) algorithm were adopted to solve the ERT inverse problem. Its effectiveness was evaluated using virtual experimental. The resistivity distribution image of CFSL sensor had been obtained from the ERT system, which data came form the virtual experimental. The result showed that the electrical resistivity of CFSL sensor increases under tension. Its high-resistivity area was distributed in the high stress/strain area of the structure. Its resistivity distribution indicated structural stress/strain condition. It is feasibility to whole field SHM using the function character of smart layer and ERT technology.
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