JSAI2020

Presentation information

General Session

General Session » J-13 AI application

[2O5-GS-13] AI application: Civil Engineering

Wed. Jun 10, 2020 3:50 PM - 5:30 PM Room O (jsai2020online-15)

座長:曽我真人(和歌山大学)

5:10 PM - 5:30 PM

[2O5-GS-13-05] Design of ground improvement measures against consolidation settlement via visualizing latent space

〇Shoichi Tsukuni1, Takeshi Yamatoda2 (1. TAKENAKA CIVIL ENGINEERING & CONSTRUCTION CO.,LTD., 2. IDAJ Co.,LTD.)

Keywords:Machine learning, Convolutional Neural Network, Optimal design, Consolidation settlement, Ground improvement

For road embankment on soft clay ground, ground improvement will be implemented to prevent consolidation settlement. Machine learning is performed using the ground improvement pattern and the embankment deformation pattern obtained by the genetic algorithm method. By using two kinds of compounders composed of the obtained convolutional neural network, it is possible to predict the improved pattern and the embankment deformation pattern from the two-dimensional latent space. Next, a two-dimensional latent space is divided into blocks, and a prediction score whose value increases when the improvement effect is high is defined. When the contour of each block of the average improvement pattern and the contour of the prediction score are displayed and compared in a two-dimensional latent space, a ground improvement pattern having a high improvement effect can be easily designed.

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