Applied Sciences (Mar 2024)

Environmental Interference Suppression by Hybrid Segmentation Algorithm for Open-Area Electromagnetic Capability Testing

  • Shun Yang,
  • Shuai Chen,
  • Fan Zhang,
  • Xiaqing Yang,
  • Jun Shi,
  • Xiaoling Zhang

DOI
https://doi.org/10.3390/app14072703
Journal volume & issue
Vol. 14, no. 7
p. 2703

Abstract

Read online

Compared with electromagnetic compatibility (EMC) testing in anechoic rooms, open-area EMC testing takes advantage of in situ and engine running status measurement but suffers from non-negligible external electromagnetic interference. This paper proposes a novel environmental interference suppression method (named the EMC environmental interference suppression algorithm (E2ISA)) that separates signals from backgrounds via image segmentation and recognizes the near–far site signal via a group of time-varying features based on the difference in the near-site EM radiative characteristic. We find that the proposed E2ISA method, which combines the deep learning segmentation network with the classical recognition methods, is able to suppress environmental interference signals accurately. The experiment results show that the accuracy of E2ISA reaches up to 95% in the face of VHF (Very High Frequency) EMC testing tasks.

Keywords