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A machine-learning approach for damage detection in aircraft structures using self-powered sensor data
Sensors and Smart Structures Technologies for Civil, Mechanical, and Aerospace Systems 2017 (2017)
  • Hadi Salehi, Michigan State University
  • Saptarshi das, Michigan State University
  • Shantanu Chakrabartty, Washington University in St. Louis
  • Subir Biswas, Michigan State University
  • Rigoberto Burgueño, Michigan State University
Abstract
This study proposes a novel strategy for damage identification in aircraft structures. The strategy was evaluated based on the simulation of the binary data generated from self-powered wireless sensors employing a pulse switching architecture. The energy-aware pulse switching communication protocol uses single pulses instead of multi-bit packets for information delivery resulting in discrete binary data. A system employing this energy-efficient technology requires dealing with time-delayed binary data due to the management of power budgets for sensing and communication. This paper presents an intelligent machine-learning framework based on combination of the low-rank matrix decomposition and pattern recognition (PR) methods. Further, data fusion is employed as part of the machine-learning framework to take into account the effect of data time delay on its interpretation. Simulated time-delayed binary data from self-powered sensors was used to determine damage indicator variables. Performance and accuracy of the damage detection strategy was examined and tested for the case of an aircraft horizontal stabilizer. Damage states were simulated on a finite element model by reducing stiffness in a region of the stabilizer’s skin. The proposed strategy shows satisfactory performance to identify the presence and location of the damage, even with noisy and incomplete data. It is concluded that PR is a promising machine-learning algorithm for damage detection for time-delayed binary data from novel self-powered wireless sensors.
Publication Date
April, 2017
DOI
https://doi.org/10.1117/12.2260118
Citation Information
Hadi Salehi, Saptarshi das, Shantanu Chakrabartty, Subir Biswas, et al.. "A machine-learning approach for damage detection in aircraft structures using self-powered sensor data" Sensors and Smart Structures Technologies for Civil, Mechanical, and Aerospace Systems 2017 (2017)
Available at: http://works.bepress.com/hsalehi/27/