结构工程
机械阻抗
人工神经网络
螺栓连接
电阻抗
工程类
结构健康监测
反向传播
传感器
材料科学
有限元法
人工智能
计算机科学
电气工程
作者
Umakanta Meher,Sudhanshu K. Mishra,Mohammed Rabius Sunny
摘要
A detection technique to quantify the degree of bolt looseness in metallic bolted structure using electro-mechanical impedance signatures is proposed. A bolted joint connection of two steel plates and a stiffener is taken as the specimen to be monitored. Loosening of the bolted joints is considered as the damage present in the structure. At first, the electro-mechanical responses at two piezoelectric transducer locations are measured experimentally for the undamaged and damaged state of the structure. Damage scenarios with single as well as multiple degrees of bolt looseness are considered. Damage features based on root mean square deviation (RMSD) and correlation coefficient (CC) of conductance with respect to the healthy state conductance are extracted. A single hidden layer backpropagation artificial neural network has been trained for detection of bolt looseness from the damage features. Acceptability of the proposed multiple damage detection technique has been observed through few test cases.
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