4.7 Article

An inverse elastic method of crack identification based on sparse strain sensing sheet

期刊

出版社

SAGE PUBLICATIONS LTD
DOI: 10.1177/1475921720939518

关键词

Structural health monitoring; two-dimensional strain sensing sheet; dense and sparse arrays of sensors; crack detection and characterization; indirect sensing; inverse elastostatic problem; phase field finite element method

资金

  1. Princeton Institute for the Science and Technology of Materials (PRISM)
  2. Norman J. Sollenberger Fund
  3. Princeton University School of Engineering and Applied Sciences
  4. USDOT-RITA UTC Program through the Center for Advanced Infrastructure and Transportation (CAIT) at Rutgers University [DTRT12-G-UTC16]

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The aim of this research is to optimize the design of sensor arrays for reliable damage detection over large areas of structures, focusing on reducing the number of sensors while maintaining reliability in crack detection and accuracy in damage localization and quantification. The study utilizes a combination of phase field finite element modeling and inverse elastostatic problem algorithms to determine crack existence, length, and location, with experimental validation showing the accuracy and reliability of indirect sensing.
Reliable damage detection over large areas of structures can be achieved by spatially quasi-continuous structural health monitoring enabled by two-dimensional sensing sheets. They contain dense arrays of short-gauge sensors, which increases the probability to have sensors in direct contact with damage (e.g. crack opening) and thus identify (i.e. detect, localize, and quantify) it at an early stage. This approach in damage identification is called direct sensing. Although the sensing sheet is a reliable and low-cost technology, the overall structural health monitoring system that is using it might become complex due to large number of sensors. Hence, intentional reduction in number of sensors might be desirable. In addition, malfunction of sensors can occur in real-life settings, which results in unintentional reduction in the number of functioning sensors. In both cases, reduction in the number of (functioning) sensors may lead to lack of performance of sensing sheet. Therefore, it is important to explore the performance of sparse arrays of sensors, in the cases where sensors are not necessarily in direct contact with damage (indirect sensing). The aim of this research is to create a method for optimizing the design of arrays of sensors, that is, to find the smallest number of sensors while maintaining a satisfactory reliability of crack detection and accuracy of damage localization and quantification. To achieve that goal, we first built a phase field finite element model of cracked structure verified by the analytical model to determine the crack existence (detection), and then we used the algorithm of inverse elastostatic problem combined with phase field finite element model to determine the crack length (quantification) and location (localization) by minimizing the difference between the sensor measurements and the phase field finite element model results. In addition, we experimentally validated the method by means of a reduced-scale laboratory test and assessed the accuracy and reliability of indirect sensing.

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