水下无人系统学报 (Dec 2022)

Parameter Adaptive Sampling Inversion of Underwater Acoustic Go-back Channel Model Based on Bayes-MCMC

  • Gang ZHAO,
  • Nai-wei SUN,
  • Shen SHEN,
  • Yi-xin YANG

DOI
https://doi.org/10.11993/j.issn.2096-3920.2022-0041
Journal volume & issue
Vol. 30, no. 6
pp. 774 – 786

Abstract

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High-confidence underwater acoustic go-back channel modeling is an essential part of the study of target echo simulation and plays an important role in the development of underwater operation equipment. Based on the classical channel model and reasonable assumptions, an analytical model of an underwater acoustic go-back channel is established. Using the Bayes-MCMC inversion algorithm as the core, the characteristics of the inversion problem of underwater acoustic channel parameters were analyzed, and the Metropolis-Hastings adaptive single-dimension serial sampling algorithm was designed to realize efficient channel model parameter inversion based on echo signals. The results of the simulation and measured data show that the proposed adaptive sampling inversion method has good consistency and convergence and has good engineering application prospects in underwater operation equipment simulation tests.

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