バイオグラフィー
Wang Zhigang, a PhD holder from Beijing University of Technology, is an expert in disaster prevention and mitigation for underground structures that traverse active fracture zones. He has an impressive publication record, including 10 papers as the first or corresponding author, with 4 SCI papers (RMRE, ES, ksce, etc.) and 4 EI papers (Journal of Geotechnical Engineering and Journal of Civil Engineering, etc.).
The candidate's extensive experience and expertise in research and academia are highlighted by their leadership and contributions to multiple successful research projects, including two National Key Research and Development Programmes, two National Natural Science Foundations of China, and several university-enterprise cooperation projects.
研究の興味
Disaster prevention and mitigation for tunnels crossing active fault zones
Editor
仕事内容
Doctor
Beijing University of Technology
Faculty of Architecture, Civil And Transportation Engineering
China
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