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International Journal of Earth & Environmental Sciences Volume 3 (2019), Article ID 3:IJEES-158, 24 pages
https://doi.org/10.15344/2456-351X/2018/158
Review Article
Special Issue: Geotechnology
Deep Underground Engineering and The Use of Artificial Intelligence Techniques

L. Ribeiro e Sousa1,*, Tiago Miranda2, R. L. Sousa3 and J. Tinoco2

1University of Tongji, Shanghai & SKL-GDUE of CUMTB, Beijing, China
2ISISE, Institute of Science and Innovation for Bio-Sustainability (IB-S), Department of Civil Engineering, University of Minho, Guimarães, Portugal
3Khalifa University of Science and Technology, Abu Dhabi, UAE
Dr. L. Ribeiro e Sousa, University of Tongji, Shanghai & SKL-GDUE of CUMTB, Beijing, China, Tel: +86 13683553486; E-mail: sousa-scu@hotmail.com
20 August 2018; 19 November 2018; 21 November 2018
Sousa LR, Miranda T, Sousa RL, Tinoco J (2018) Deep Underground Engineering and the Use of Artificial Intelligence Techniques. Int J Earth Environ Sci 3: 158. doi: https://doi.org/10.15344/2456-351X/2018/158

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