location:Home > 2019 VOL.2 Aug No.4 > Research on Measurement Method of Signal Degradation in Wireless Network Backup Path

2019 VOL.2 Aug No.4

  • Title: Research on Measurement Method of Signal Degradation in Wireless Network Backup Path
  • Name: Sandy Tobias
  • Company: Nelson Marlborough Institute of Technology
  • Abstract:

    Existing signal measurement methods do not explicitly indicate the specific decay path of the originating signal. In order to solve the above problems, a wireless network based backup path signal degradation measurement method is designed. Through the signal sensing module design and measurement signal transmission method, two steps are unified to complete the wireless network environment construction of the backup path signal measurement. On this basis, the three steps of the baseband signal fading frequency determination, the fading measurement channel estimation, and the signal modulation measurement item correction are completed to complete the construction of the new fading measurement method. The design comparison experiment results show that after applying the wireless network-based backup path signal degradation measurement method, the origin signal degradation path is clearly expressed.

  • Keyword: Wireless Network; Path Signal; Fading Detection; Sensing Module; Transmission Mode; Fading Frequency; Measurement Channel; Modul
  • DOI: 10.12250/jpciams2019040126
  • Citation form: Sandy Tobias.Research on Measurement Method of Signal Degradation in Wireless Network Backup Path[J]. Computer Informatization and Mechanical System, 2019, vol. 2, pp. 32-36.
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Tsuruta Institute of Medical Information Technology
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