Spiking Neural Networks for Structural Health Monitoring

Sensors (Basel). 2022 Nov 28;22(23):9245. doi: 10.3390/s22239245.

Abstract

This paper presents the first implementation of a spiking neural network (SNN) for the extraction of cepstral coefficients in structural health monitoring (SHM) applications and demonstrates the possibilities of neuromorphic computing in this field. In this regard, we show that spiking neural networks can be effectively used to extract cepstral coefficients as features of vibration signals of structures in their operational conditions. We demonstrate that the neural cepstral coefficients extracted by the network can be successfully used for anomaly detection. To address the power efficiency of sensor nodes, related to both processing and transmission, affecting the applicability of the proposed approach, we implement the algorithm on specialised neuromorphic hardware (Intel ® Loihi architecture) and benchmark the results using numerical and experimental data of degradation in the form of stiffness change of a single degree of freedom system excited by Gaussian white noise. The work is expected to open a new direction of SHM applications towards non-Von Neumann computing through a neuromorphic approach.

Keywords: Loihi; Mahalanobis distance; cepstrum; low-power; neuromorphic; spiking neural network.

MeSH terms

  • Algorithms*
  • Computers
  • Neural Networks, Computer*