AEnet: Automatic Picking of P-Wave First Arrivals Using Deep Learning
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Tieyuan Zhu | Jian Sun | Gao Yongtao | Chao Guo | Wu Shunchuan | Jian Sun | T. Zhu | Yongtao Gao | Shunchuan Wu | Chao Guo
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