日本地球惑星科学連合2019年大会

講演情報

[E] 口頭発表

セッション記号 H (地球人間圏科学) » H-CG 地球人間圏科学複合領域・一般

[H-CG27] 混濁流:発生源から堆積物・地形形成まで

2019年5月27日(月) 09:00 〜 10:30 301B (3F)

コンビーナ:横川 美和(大阪工業大学情報科学部)、成瀬 元(京都大学大学院理学研究科)、泉 典洋(北海道大学大学院工学研究院)、池原 研(産業技術総合研究所地質情報研究部門)、座長:横川 美和(大阪工業大学)、泉 典洋(北海道大学)

09:00 〜 09:15

[HCG27-01] Inverse analysis of turbidity currents using two dimensional shallow water model

*成瀬 元1 (1.京都大学大学院理学研究科)

キーワード:sediment gravity flow、turbidite、inverse analysis、machine learning

Quantitative reconstruction of flow properties from turbidites is a long-standing problem in deep-sea sedimentology. If this is realized, magnitudes of past hazardous events may be estimated from geologic records containing seismo-(tsunami-)generated turbidites. Also, entire geometry of turbidite reservoir can be inferred by flow reconstruction. Thus, inverse analysis of turbidity currents contributes to disaster-risk assessment, and is of economic importance. Here we propose a new methodology to reconstruct flow properties of turbidity currents from three-dimensional geometry of deposits. In this method, a two-dimensional shallow-water model of turbidity currents was employed as the forward model. Numerical simulation was repeated to obtain horizontal distribution of thickness of turbidites under various initial conditions, and then this synthetic data set was used for supervised training of a deep-learning neural network (DNN). After the training phase finished, DNN properly estimated initial conditions of turbidity currents (e.g. initial flow height, velocity, etc.) from artificial test data set that was also produced from the forward model. To summarize, the machine learning produced the inverse model of turbidity currents that can estimate paleo-hydraulic conditions from synthetic or ancient turbidites. In previous methods, the computational cost of two dimensional model was too high to be employed as the forward model for turbidite inversion. On the other hand, our methodology can reconstruct initial conditions of turbidity currents instantaneously. Although production of the training data set requires 1000s times repetition of calculation, the problem of calculation efficiency can be easily solved by using PC cluster. In future study, it is expected to apply the new methodology to actual turbidites measured in 3D seismic profiles or by high-resolution sampling on modern sea floor.