Department of Computer Science and Information Engineering, National Taiwan University of Science and Technology, Taipei 106335, Taiwan.
Seismological Center of Central Weather Bureau, Taipei 100006, Taiwan.
Sensors (Basel). 2022 Jan 18;22(3):704. doi: 10.3390/s22030704.
Developing on-site earthquake early warning systems has been a challenging problem because of time limitations and the amount of information that can be collected before the warning needs to be issued. A potential solution that could prevent severe disasters is to predict the potential strong motion using the initial P-wave signal and provide warnings before serious ground shaking starts. In practice, the accuracy of prediction is the most critical issue for earthquake early warning systems. Traditional methods use certain criteria, selected through intuition or experience, to make the prediction. However, the criteria thresholds are difficult to select and may significantly affect the prediction accuracy. This paper investigates methods based on artificial intelligence for predicting the greatest earthquake ground motion early, when the P-wave arrives at seismograph stations. A neural network model is built to make the predictions using a small window of the initial P-wave acceleration signal. The model is trained by seismic waves collected from 1991 to 2019 in Taiwan and is evaluated by events in 2020 and 2021. From these evaluations, the proposed scheme significantly outperforms the threshold-based method in terms of its accuracy and average leading time.
开发现场地震预警系统一直是一个具有挑战性的问题,因为在发出预警之前,时间限制和可以收集的信息量都非常有限。一种潜在的解决方案是使用初始 P 波信号来预测潜在的强震,并在严重地面震动开始之前发出警报。在实际应用中,预测的准确性是地震预警系统最关键的问题。传统的方法使用通过直觉或经验选择的某些标准来进行预测。然而,标准阈值很难选择,并且可能会显著影响预测的准确性。本文研究了基于人工智能的方法,以便在 P 波到达地震仪站时尽早预测最大地震地面运动。建立了一个神经网络模型,使用初始 P 波加速度信号的小窗口进行预测。该模型通过 1991 年至 2019 年在台湾收集的地震波进行训练,并通过 2020 年和 2021 年的事件进行评估。从这些评估中可以看出,与基于阈值的方法相比,所提出的方案在准确性和平均提前时间方面都有显著的提高。