Structural Health Monitoring Based on Electrical Impedance of a Carbon Nanotube Neuron

Author:

Kang In Pil1,Lee Jong Won2,Choi Gyeong Rak3,Jung Joo Yung3,Hwang Sung Ho4,Choi Yeon Sun4,Yoon Kwang Joon1,Schulz Mark J.5

Affiliation:

1. Konkuk University

2. Korea Institute of Machinery and Materials

3. Korea Institute of Industrial Technology

4. Sungkyunkwan University

5. University of Cincinnati

Abstract

This paper introduces a new sensor design based on a carbon nanotube structural neuron for structural health monitoring applications. The carbon nanotube neuron is a thin and narrow polymer film sensor that is bonded or deposited onto a structure. The electrochemical impedance (resistance and capacitance) of the neuron changes due to deterioration of the structure where the neuron is located. A network of the long carbon nanotube neurons can form a structural neural system to provide large area coverage and an assurance of the operational health of a structure without the need for actuators and complex wave propagation analyses that are used with other SHM methods. The neural system can also reduce the cost of health monitoring by using biomimetic signal processing to minimize the number of channels of data acquisition needed to detect damage. The carbon nanotube neuron is lightweight and easily applied to the structural surface, and there is no stress concentration, no piezoelectrics, no amplifier, and no storage of high frequency waveforms. The carbon nanotube neuron is expected to find applications in detecting damage and corrosion in large complex structures including composite and metallic aircraft and rotorcraft, bridges, and almost any type of structure with almost no penalty to the structure.

Publisher

Trans Tech Publications, Ltd.

Subject

Mechanical Engineering,Mechanics of Materials,General Materials Science

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