基于生成对抗网络与随机森林组合模型的地震与地脉动区分研究

刘赫奕1,2,宋晋东1,2,李山有1,2

振动与冲击 ›› 2022, Vol. 41 ›› Issue (15) : 312-324.

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振动与冲击 ›› 2022, Vol. 41 ›› Issue (15) : 312-324.
论文

基于生成对抗网络与随机森林组合模型的地震与地脉动区分研究

  • 刘赫奕1,2,宋晋东1,2,李山有1,2
作者信息 +

Discrimination of earthquake and microtremor based on generative adversarial network and random forest combination model

  • LIU Heyi1,2, SONG Jindong1,2, LI Shanyou1,2
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文章历史 +

摘要

地震事件识别是地震监测业务的基础性工作,特别是随着大规模地震台站建设、海量地震数据汇聚以及地震预警的发展,从连续波形记录中自动区分地震与地脉动噪声显得更加重要。本文以准确识别地震事件为目标,提出了一种基于生成对抗网络与随机森林的地震事件识别组合模型,该模型先利用生成对抗网络提取波形信号特征、再利用随机森林基于提取的波形信号特征将地震事件识别转化为地震与地脉动的分类问题。地震与地脉动各5378条数据的测试集研究结果表明,该模型对地震事件与地脉动的分类准确率均可以达到99%以上,地震事件识别率比较传统的长短时窗方法(STA/LTA,short term averaging/long term averaging)提高了23.56个百分点,表明该模型可以从地脉动中准确识别地震事件,并在地震监测与地震预警中具有应用前景。
关键词:生成对抗网络;随机森林;地震;地脉动;地震预警

Abstract

Seismic event discrimination is one of the basic tasks of earthquake monitoring. Especially with the construction of large-scale seismic stations, the accumulation of massive seismic data and the development of earthquake early warning (EEW), it is more important to distinguish earthquakes accurately and automatically from continuous waveform records. To accurately discriminating seismic events, this paper proposes a combined model for seismic event discrimination based on a generative adversarial network (GAN) and a Random Forest (RF). The model first uses a GAN to extract the waveform features, and then uses a random forest to transform the seismic event discrimination into the classification problem of earthquakes and microtremor based on the extracted waveform features. The results of the testing set which has 5378 data of earthquakes and microtremor show that, the classification accuracy of the combined model for classifying seismic events and microtremor can reach more than 99%, and the results has increased by 23.56% compared with the STA/LTA (short term averaging/long term averaging) algorithm, which proves that the model can accurately identify seismic events from microtremor and has application prospects in earthquake monitoring and EEW.
Key words: Generative adversarial network; Random Forest; Earthquake; Microtremor; Earthquake early warning

关键词

生成对抗网络 / 随机森林 / 地震 / 地脉动 / 地震预警

Key words

Generative adversarial network / Random Forest / Earthquake / Microtremor / Earthquake early warning

引用本文

导出引用
刘赫奕1,2,宋晋东1,2,李山有1,2. 基于生成对抗网络与随机森林组合模型的地震与地脉动区分研究[J]. 振动与冲击, 2022, 41(15): 312-324
LIU Heyi1,2, SONG Jindong1,2, LI Shanyou1,2. Discrimination of earthquake and microtremor based on generative adversarial network and random forest combination model[J]. Journal of Vibration and Shock, 2022, 41(15): 312-324

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