日本地球惑星科学連合2019年大会

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セッション記号 M (領域外・複数領域) » M-IS ジョイント

[M-IS12] 津波堆積物

2019年5月30日(木) 10:45 〜 12:15 コンベンションホールB (2F)

コンビーナ:千葉 崇(秋田県立大学生物資源科学部)、篠崎 鉄哉(筑波大学アイソトープ環境動態研究センター)、石村 大輔(首都大学東京大学院都市環境科学研究科地理学教室)、座長:篠崎 鉄哉(筑波大学アイソトープ環境動態研究センター)

10:45 〜 11:00

[MIS12-07] Inverse modeling of Tsunami deposit using Deep Learning Neural Network

*Rimali Mitra1Hajime Naruse1 (1.Kyoto University, Graduate School of Science)

キーワード:Tsunami Deposits, Inverse Modeling, Machine Learning

Tsunami is one of the most catastrophic disasters along coastal zones, and tsunami deposits are layers of sediment formed by hydrodynamic activities of tsunami. These event deposits provide clues to estimate the recurrence intervals and relative magnitude of prehistoric tsunamis that serve as a tool for future tsunami hazard evaluation. Towards the quantitative assessment of hydraulic conditions of tsunamis from deposits, this study applies the inverse model using deep learning neural network (DNN) for tsunami deposit. In order to conduct machine learning of DNN, forward model calculation was repeated at random initial flow conditions (e.g. maximum inundation height, flow velocity, concentration, etc.) to produce artificial training data sets which represent depositional characteristics such as thickness and grain-size distribution. The model serves as the modified version of previously proposed FITTNUSS model, which incorporates nonuniform and unsteady transport of suspended sediment and also turbulent mixing. Then, DNN was trained for establishing the inverse model on the basis of artificial data sets. SGD (Stochastic gradient descent) is used as an optimizer for this DNN model. Tests using artificial data sets successfully indicated that the established DNN can reconstruct the original flow conditions from the characteristics of deposits. Finally, the model was applied to natural data sets taken from the 2011 Tohoku-Oki Tsunami deposit. The deep learning neural network showed promising result for natural data sets. Comparing to existing inverse models, deep learning neural network enables the inversion to employ a forward model that requires higher computational costs, and to avoid a local optimum. The further applicability and validation of this method will be checked with other parameters, and natural data set from different field visits in future endeavour.