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Temperature variation effect compensation in impedance-based structural health monitoring using neural networks

机译:使用神经网络的基于阻抗的结构健康监测中的温度变化效应补偿

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In this article, a new method for temperature compensation on the basis of artificial neural networks (ANNs) in impedance-based structural health monitoring (ISHM) has been introduced. ISHM using piezoelectric wafer active sensors (PWAS) has been extensively developed to provide detection of fault in structure. The principle of this method is based on the electromechanical coupling effect of PWAS materials. Any change in structure leads to changes in mechanical impedance of structure. The electrical impedance of PWAS can sense this change by the electromechanical coupling effect of PWAS. Therefore, the difference in this electrical impedance for undamaged and damaged structures can be considered as a damage index to detect the damage in structure. Since physical and mechanical properties of structure also PWAS materials are temperature dependent, so this electrical impedance of PWAS will be affected by temperature changes. Consequently, the variation in environmental or service temperatures can be detected erroneously as damage in ISHM method. In this article, a new method using ANN based on radial basis function (RBF) has been proposed and developed to compensate the temperature effect on the damage index. A steel plate and gas pipe with bolted joints are considered as two case studies for the performance evaluation of the proposed fault detection methodology. Results confirm that the proposed method using the ANN can be effectively utilized to compensate temperature variation for damage detection in different structures.
机译:本文介绍了一种在基于阻抗的结构健康监测(ISHM)中基于人工神经网络(ANN)进行温度补偿的新方法。使用压电晶片有源传感器(PWAS)的ISHM已得到广泛开发,以提供结构故障的检测。该方法的原理是基于PWAS材料的机电耦合效应。结构的任何变化都会导致结构的机械阻抗发生变化。 PWAS的电阻抗可以通过PWAS的机电耦合效应来感知这一变化。因此,对于未损坏和损坏的结构,该电阻抗的差异可被视为检测结构损坏的损坏指数。由于结构的物理和机械性能以及PWAS材料也取决于温度,因此PWAS的电阻抗会受到温度变化的影响。因此,在ISHM方法中,环境或使用温度的变化可能被错误地检测为损坏。在本文中,提出并开发了一种基于径向基函数(RBF)的基于ANN的新方法来补偿温度对损伤指数的影响。带有螺栓连接的钢板和燃气管被认为是对所提出的故障检测方法进行性能评估的两个案例研究。结果证实,所提出的使用人工神经网络的方法可以有效地用于补偿温度变化,以检测不同结构中的损伤。

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