Inversion of TEM measurement data via a quantum particle swarm optimization algorithm with the elite opposition-based learning strategy

Junjun Jiao,Jiulong Cheng, Yuben Liu,Haiyan Yang, Dingrui Tan, Peng Cheng,Yuqi Zhang, Chenglin Jiang,Zhi Chen

COMPUTERS & GEOSCIENCES(2023)

引用 5|浏览4
暂无评分
摘要
The fine interpretation and inversion of transient electromagnetic method measurement data have the problems of nonlinearity, multi-solution, and ill condition. However, the conventional particle swarm optimization (PSO) nonlinear inversion methods suffer from prematurity, slow convergence, and low calculation accuracy. To solve these problems, a quantum PSO (QPSO) algorithm based on the elite opposition-based learning (EOL) strategy is proposed. Firstly, three performances tests of the EOL-QPSO algorithm are carried out with Peaks, Schaffer and Rastrigin functions. The results show that the EOL-QPSO algorithm has excellent solution accuracy, efficient calculation speed and balanced exploitation and exploration capability. Secondly, the conventional PSO algo-rithm and the EOL-QPSO algorithm are used to compare the inversion of the theoretical model and the synthetic data with noise, and combined with Bayesian method, the posterior model probability statistics of the synthetic data are carried out. The research shows that the EOL-QPSO inversion algorithm is improved in terms of calculation accuracy, calculation efficiency, anti-noise performance and exploitation and exploration capability, and it can accurately obtain the posterior estimates of the real model. Finally, the inversion of field-measured data demonstrates that the EOL-PSO inversion method accurately reflects the position of the water -accumulated goaf.
更多
查看译文
关键词
Transient electromagnetic method,Goaf,Quantum particle swarm optimization algorithm,Elite opposition-based learning,Inversion
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要