Earth, Planets and Space | |
Synthetic analysis of the efficacy of the S-net system in tsunami forecasting | |
Kenji Satake1  Iyan E. Mulia2  | |
[1] Earthquake Research Institute, The University of Tokyo, Tokyo, Japan;Prediction Science Laboratory, RIKEN Cluster for Pioneering Research, Kobe, Japan;Earthquake Research Institute, The University of Tokyo, Tokyo, Japan; | |
关键词: Tsunami; Forecasting; Observing system; S-net; | |
DOI : 10.1186/s40623-021-01368-6 | |
来源: Springer | |
【 摘 要 】
The Seafloor Observation Network for Earthquakes and Tsunamis along the Japan Trench (S-net) is presently the world’s largest network of ocean bottom pressure sensors for real-time tsunami monitoring. This paper analyzes the efficacy of such a vast system in tsunami forecasting through exhaustive synthetic experiments. We consider 1500 hypothetical tsunami scenarios from megathrust earthquakes with magnitudes ranging from Mw 7.7–9.1. We employ a stochastic slip model to emulate heterogeneous slip patterns on specified 240 subfaults over the plate interface of the Japan Trench subduction zone and its vicinity. Subsequently, the associated tsunamis in terms of maximum coastal tsunami heights are evaluated along the 50-m isobath by means of a Green’s function summation. To produce tsunami forecasts, we utilize a tsunami inversion from virtually observed waveforms at the S-net stations. Remarkably, forecasts accuracy of approximately 99% can be achieved using tsunami data within an interval of 3 to 5 min after the earthquake (2-min length), owing to the exceedingly dense observation points. Additionally, we apply an optimization technique to determine the optimal combination of stations with respect to earthquake magnitudes. The results show that the minimum requisite number of stations to maintain the accuracy attained by the existing network configuration decreases from 130 to 90 when the earthquake size increases from Mw 7.7 to 9.1.
【 授权许可】
CC BY
【 预 览 】
Files | Size | Format | View |
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RO202107026301640ZK.pdf | 2845KB | download |