日本地球惑星科学連合2015年大会

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インターナショナルセッション(口頭発表)

セッション記号 S (固体地球科学) » S-SS 地震学

[S-SS01] Exploring our limits in understanding earthquakes and improving our knowledge -CSEP Experiment in Japan-

2015年5月24日(日) 16:15 〜 18:00 102B (1F)

コンビーナ:*鶴岡 弘(東京大学地震研究所)、Danijel Schorlemmer(GFZ German Research Centre for Geosciences)、平田 直(東京大学地震研究所)、座長:庄 建倉(統計数理研究所)、石辺 岳男(東京大学地震研究所)

17:00 〜 17:15

[SSS01-11] Assessment of optimal short-term earthquake forecasts based on ULF seismo-magnetic data

*Peng Han1Katsumi Hattori1Jiancang Zhuang2 (1.Graduate School of Science, Chiba University、2.Institute of Statistical Mathematics, Tokyo, Japan)

キーワード:ULF seismo-magnetic phenomena, Molchan's error diagram, optimal short-term earthquake forecast

Our previous statistical studies have indicated that the ULF seismo-magnetic phenomena contain precursory information and can be useful in short-term forecasting of sizable earthquakes. In practice, for given series of precursory signals and related earthquake events, the efficiency of forecast is a function of the leading time of alarms (Δ) and the length of alarm window (L). To find out the best prediction strategies, Molchan’s error diagram has been employed. The same as our previous study, we utilized geomagnetic data and earthquake events registered in Kakioka (KAK), Japan during 2001-2010. Ratios of observed energy to modeled background are applied to indentify precursory signals. A modified area skill score, which measures the area between actual prediction curve and random prediction line, is introduced to assess the efficiency of different prediction strategies. The results indicate that ULF magnetic data at KAK contains higher precursory information when Δ is around 1 week and L is less than 4 days or Δ is 13-14 days and L is less than 1 week; the optimal strategy of short-term forecasts is: Δ =8 days and L =1 day. The methodology proposed in this study could help to evaluate the prediction policy and find out the optimal solution of other different measurements for short-term earthquake forecasting.