日本地球惑星科学連合2024年大会

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[E] 口頭発表

セッション記号 A (大気水圏科学) » A-HW 水文・陸水・地下水学・水環境

[A-HW17] Near Surface Investigation and Modeling for Groundwater Resources Assessment and Conservation

2024年5月31日(金) 13:45 〜 15:00 301A (幕張メッセ国際会議場)

コンビーナ:Tsai Jui-Pin(National Taiwan University, Taiwan)、谷口 真人(総合地球環境学研究所)、PINGYU CHANG(Department of Earth Sciences, National Central University )、Yu Hwa-Lung(Taiwan Society of Groundwater resources and hydrogeology)、Chairperson:Shih-Jung Wang(National Central University)、Jui-Pin Tsai(National Taiwan University, Taiwan)

14:15 〜 14:30

[AHW17-03] Applying Deep Learning for Unconsolidated Sediment Classification: An Exploratory Study

*Chun-Wei Huang1、Si Ying - Yau2、Sheng-Sheng Huang3 (1.Ming Chi University of Technology, General Education Center、2.National Taiwan University, Department of Geography、3.Ming Chi University of Technology, Department of Electronic Engineering)

キーワード:Hydrogeology, Groundwater, Artificial Intelligence

Hydrogeological exploration forms the basis for comprehending groundwater distribution. However, manually identifying hydrogeological conditions is both time-consuming and subjective. This study delves into the potential of 1-D Convolutional Neural Networks (1-D CNNs) to capture the geophysical features of unconsolidated sediments. We utilized geo-big data, including Electrical Resistivity (ER), Self-Potential (SP), and Gamma Ray (GR) data in Taiwan. The results demonstrated that our CNN-based model achieved an overall accuracy of 83.14% in identifying gravel, sand, and clay. Nevertheless, the precision and recall in identifying sand need improvement due to limited support in sample size.