Parametric Testing of EQTransformer’s Performance against a High-Quality, Manually Picked Catalog for Reliable and Accurate Seismic Phase Picking

Olivia Pita-Sllim, C. Chamberlain, John Townend, E. Warren‐Smith
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Abstract

This study evaluates EQTransformer, a deep learning model, for earthquake detection and phase picking using seismic data from the Southern Alps, New Zealand. Using a robust, independent dataset containing more than 85,000 manual picks from 13 stations spanning almost nine years, we assess EQTransformer’s performance and limitations in a practical application scenario. We investigate key parameters such as overlap and probability threshold and their influences on detection consistency and false positives, respectively. EQTransformer’s probability outputs show a limited correlation with pick accuracy, emphasizing the need for careful interpretation. Our analysis of illustrative signals from three seismic networks highlights challenges of consistently picking first arrivals when reflected or refracted phases are present. We find that an overlap length of 55 s balances detection consistency and computational efficiency, and that a probability threshold of 0.1 balances detection rate and false positives. Our study thus offers insights into EQTransformer’s capabilities and limitations, highlighting the importance of parameter selection for optimal results.
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根据高质量手动选相目录对 EQTransformer 的性能进行参数测试,以实现可靠、准确的地震选相
本研究利用新西兰南阿尔卑斯山的地震数据,对深度学习模型 EQTransformer 进行了地震检测和相位选取评估。我们使用了一个稳健、独立的数据集,其中包含来自 13 个台站的 85,000 多次人工选相,时间跨度近 9 年,评估了 EQTransformer 在实际应用场景中的性能和局限性。我们研究了重叠度和概率阈值等关键参数,以及它们分别对检测一致性和误报率的影响。EQTransformer 的概率输出与拾取精度的相关性有限,这就强调了仔细解释的必要性。我们对来自三个地震台网的示例信号进行了分析,结果凸显了在存在反射或折射相位的情况下始终如一地选取初至信号所面临的挑战。我们发现,55 秒的重叠长度可在检测一致性和计算效率之间取得平衡,而 0.1 的概率阈值可在检测率和误报率之间取得平衡。因此,我们的研究有助于深入了解 EQTransformer 的能力和局限性,突出了参数选择对获得最佳结果的重要性。
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