Optimization of Brillouin instantaneous frequency measurement using convolutional neural networks

  • 作者:Xiuting Zou, Shaofu Xu, Shujing Li, Weiwen Zou*, and Jianping Chen
  • 摘要:Brillouin instantaneous frequency measurement (B-IFM) is used to measure instantaneous frequencies of an arbitrary signal with high frequency and broad bandwidth. However, the instantaneous frequencies measured using the B-IFM system always suffer from errors due to system defects. To address this, we adopt a convolutional neural network (CNN), which establishes a function mapping between the measured and nominal instantaneous frequencies to obtain more accurate instantaneous frequency, thus, improving the frequency resolution, system sensitivity and dynamic range of the B-IFM. Using the proposed CNN-optimized B-IFM system, the average maximum and root mean square (RMS) errors between the optimized and nominal instantaneous frequencies are less than 26.3 MHz and 15.5 MHz, which is reduced from up to 105.8 MHz and 57.0 MHz. The system sensitivity is increased from 12.1dBm to 7.8 dBm for the 100-MHz frequency error and the dynamic range is larger..
  • 出版源:Optics Letters.