Designing a pulsed eddy current sensing set-up for cast iron thickness assessment

Nalika Ulapane, Linh V. Nguyen, J. V. Miró, A. Alempijevic, G. Dissanayake
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引用次数: 19

Abstract

Pulsed Eddy Current (PEC) sensors possess proven functionality in measuring ferromagnetic material thickness. However, most commercial PEC service providers as well as researchers have investigated and claim functionality of sensors on homogeneous structural steels (steel grade Q235 for example). In this paper, we present design steps for a PEC sensing set-up to measure thickness of cast iron, which is unlike steel, is a highly inhomogeneous and non-linear ferromagnetic material. The setup includes a PEC sensor, sensor excitation and reception circuits, and a unique signal processing method. The signal processing method yields a signal feature which behaves as a function of thickness. The signal feature has a desirable characteristic of being lowly influenced by lift-off. Experimental results show that the set-up is usable for Non-destructive Evaluation (NDE) applications such as cast iron water pipe assessment.
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铸铁厚度评估用脉冲涡流传感装置的设计
脉冲涡流(PEC)传感器在测量铁磁材料厚度方面具有成熟的功能。然而,大多数商业PEC服务提供商和研究人员已经调查并声称传感器在均质结构钢(例如钢级Q235)上的功能。在本文中,我们提出了一个PEC传感装置的设计步骤,以测量铸铁的厚度,它不像钢,是一种高度不均匀和非线性的铁磁材料。该装置包括一个PEC传感器、传感器激励和接收电路,以及一种独特的信号处理方法。该信号处理方法产生的信号特征表现为厚度的函数。该信号特性具有受发射影响较小的理想特性。实验结果表明,该装置可用于铸铁水管的无损检测。
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