JSAI2020

Presentation information

General Session

General Session » J-13 AI application

[1N4-GS-13] AI application: Machine learning and application (1)

Tue. Jun 9, 2020 3:20 PM - 5:00 PM Room N (jsai2020online-14)

座長:市川嘉裕(奈良工業高等専門学校)

3:40 PM - 4:00 PM

[1N4-GS-13-02] Development of temperature prediction method for supercritical geothermal resources using neural networks

〇Yosuke Kobayashi1, Kazuya Ishitsuka2, Toru Mogi3, Koichi Suzuki4, Norihiro Watanabe5, Yusuke Yamaya5, Kyosuke Okamoto5, Hiroshi Asanuma5, Tatsuya Kaziwara6, Ken Sugimoto6, Ryoichi Saito6, Koji Nagano1 (1. Muroran Institute of Technology, 2. Kyoto University, 3. Tokyo Institute of Technology, 4. Hokkaido University, 5. National Institute of Advanced Industrial Science and Technology, 6. Geothermal Engineering Co., Ltd.)

Keywords:supercritical geothermal resources, temperature prediction , neural networks

We propose an subsurface temperature structure prediction model using a neural network with the aim of predicting a distribution of a supercritical geothermal resources. In our proposed model, three-dimensional coordinates, specific resistance by magnetotelluric, D95, gravity anomaly value, and mineral isograds were calculated from measurement data as input features. This model training procedure was applied to the Kakkonda geothermal field, Japan. As a result of evaluation using actual measurement data, the RMSE was shown 39.3 ℃ when optimized input features.

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