Dr. Lizheng Deng | Forecasting | Best Researcher Award

Dr. Lizheng Deng | Forecasting | Best Researcher Award

Dr. Lizheng Deng, Tsinghua University, China

Dr. Lizheng Deng, born in September 1994 in Anhui Province, China, is a postdoctoral researcher at the School of Safety Science, Institute of Public Safety Research, Tsinghua University in Beijing. He holds a Ph.D. in Safety Science and Engineering from Tsinghua University, where his dissertation focused on landslide subsurface deformation behavior using acoustic emission (AE) monitoring under the mentorship of Professor Hongyong Yuan. His academic journey also includes visiting research stints at Loughborough University in the UK and Montanuniversitaet Leoben in Austria. Dr. Deng’s research centers on geotechnical monitoring, particularly leveraging acoustic emission technologies and artificial intelligence to assess and predict subsurface deformation in geological settings. His work during his Ph.D. led to the development of an innovative AE waveguide array, now employed in landslide monitoring projects across multiple provinces in China. In his postdoctoral research, he continues to explore the dynamics of granular material–metal structure interactions and the associated AE mechanisms, with the support of the Beijing Natural Science Foundation and China Postdoctoral Science Foundation.

Professional Profile:

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ORCID

Summary of Suitability for the Research for Best Researcher Award 

Dr. Lizheng Deng stands out as a highly suitable candidate for the Research for Best Researcher Award based on his impressive academic and research trajectory, international collaborations, and impactful contributions to geotechnical monitoring using Acoustic Emission (AE) and Artificial Intelligence (AI). With a Ph.D. from Tsinghua University and postdoctoral research at the same prestigious institution, Dr. Deng has made significant advancements in landslide subsurface deformation behavior monitoring, a critical area for disaster risk reduction. His innovations, such as the AE array and AI-integrated early warning models, are not only academically recognized—published in top-tier journals like Engineering Geology and Landslides—but also applied nationwide, directly influencing public safety via China’s GeoCloud monitoring system. Funded by leading scientific foundations and supported by multiple government ministries, Dr. Deng’s research is both cutting-edge and socially impactful, embodying the excellence and real-world application expected of a recipient of this award.

🎓 Education

  • PhD in Safety Science and Engineering (09/2017 – 06/2022)
    Tsinghua University, Beijing, China 🇨🇳
    Dissertation: “Research on Landslide Subsurface Deformation Behaviour Using Acoustic Emission Monitoring”
    👨‍🏫 Supervisor: Prof. Hongyong Yuan (Chang Jiang Scholars)

  • Visiting PhD Student (02/2020 – 08/2020)
    Loughborough University, UK 🇬🇧
    👨‍🏫 Supervisors: Prof. Neil Dixon, Alister Smith

  • B.E. in Safety Engineering (09/2013 – 06/2017)
    China University of Mining and Technology, Beijing
    Thesis: Roof control methods in hard rock mining >700m
    👨‍🏫 Supervisor: Prof. Yueping Qin, Prof. Nikolaus A. Sifferlinger

  • Visiting Student (02/2017 – 05/2017)
    Montanuniversitaet Leoben, Austria 🇦🇹
    👨‍🏫 Supervisor: Prof. Nikolaus A. Sifferlinger

💼 Work Experience

  • Postdoctoral Researcher (07/2022 – present)
    School of Safety Science, Institute of Public Safety Research, Tsinghua University
    🧪 Focus: Acoustic emission (AE) from granular material-metal interactions

🏆 Achievements & Contributions

  • 🔬 Innovated AE Array Monitoring Technology
    Used in landslide early warning systems across 20+ sites in 8 provinces in China.
    👉 Integrated with AI for landslide deformation modeling and risk prediction.

  • 🛠 Field Implementation & Tech Adoption
    AE monitoring tech adopted by:

    • Ministry of Natural Resources (MNR)

    • China’s Geological Hazard Monitoring System (GeoCloud)

  • 📚 Publications in top journals

    • Engineering Geology

    • Landslides

    • Measurement

🥇 Awards & Honors

  • 🧾 “Certificate of Universal Instrumentation for Geological Hazard Monitoring” – Ministry of Natural Resources, China

  • 🙌 Letter of Appreciation – Recognizing real-world impact of his monitoring tech

  • 💰 Funded by:

    • Beijing Natural Science Foundation

    • China Postdoctoral Science Foundation

    • Ministry of Industry and Information Technology of China

    • Ministry of Natural Resources of China

Publication Top Notes:

Spatio-Temporal Deformation Prediction of Large Landslides in the Three Gorges Reservoir Area Based on Time-Series Graph Convolutional Network Model

Acoustic emission behavior generated from active waveguide during shearing process

Noise Cancellation Method Based on TVF-EMD with Bayesian Parameter Optimization

Automatic classification of landslide kinematics using acoustic emission measurements and machine learning

Machine learning prediction of landslide deformation behaviour using acoustic emission and rainfall measurements

Experimental Investigation on Integrated Subsurface Monitoring of Soil Slope Using Acoustic Emission and Mechanical Measurement

Correlation between Acoustic Emission Behaviour and Dynamics Model during Three-Stage Deformation Process of Soil Landslide

On Image Fusion of Ground Surface Vibration for Mapping and Locating Underground Pipeline Leakage: An Experimental Investigation

Dr. Mehrdad Kaveh | Forecasting | Best Researcher Award

Dr. Mehrdad Kaveh | Forecasting | Best Researcher Award

Dr. Mehrdad Kaveh, K. N. Toosi University of Technology, Iran

Mehrdad Kaveh is a highly qualified expert in Surveying Engineering (GIS), holding a Ph.D. and M.Sc. from K.N. Toosi University of Technology, along with a B.Sc. from Babol Noshirvani University of Technology. His academic achievements include outstanding GPAs throughout his educational journey. He has contributed significantly to the field through several conference papers focusing on topics like landslide risk zoning, healthcare GIS, and urban transportation networks. With extensive teaching experience, Mehrdad has instructed ArcGIS and Optimization Algorithms at various universities, demonstrating his proficiency in GIS software and algorithmic optimization. His research spans diverse areas such as crisis management, machine learning implementation, SAR image processing, and spatial database design in Java. Proficient in ArcGIS, QGIS, GAMS, and programming languages like Matlab, Java, Python, and SQL, Mehrdad Kaveh combines academic excellence with practical skills in spatial analysis, optimization, and deep learning applications in environmental modeling.

Professional Profile:

ORCID

 

Education:

  • Ph.D. in Surveying Engineering (GIS), K.N. Toosi University of Technology, GPA: 19.21
  • M.Sc. in Surveying Engineering (GIS), K.N. Toosi University of Technology, GPA: 18.14
  • B.Sc. in Surveying Engineering, Babol Noshirvani University of Technology, GPA: 16.00

Teaching Experience:

  • Instructor of ArcGIS software at various universities.
  • Teaching Assistant and Lecturer in Surveying courses.
  • Instructor of Optimization Algorithms.
  • Instructor of Machine Learning Algorithms.
  • Lecturer for undergraduate and graduate entrance exam courses.

Research and Practical Experience:

  • Application of GIS and RS in crisis management and urban planning.
  • Health GIS and healthcare network management.
  • GIS and multi-criteria decision analysis.
  • Simulation and implementation of machine learning and meta-heuristic algorithms.
  • Feature selection and classification of SAR images (image processing).
  • Multi-objective optimization problems simulation and implementation.
  • Design of spatial databases in Java.
  • Air pollution modeling using deep learning algorithms.

Skills:

  • Software Proficiency: ArcGIS, QGIS, GAMS, AutoCAD, Land, Microsoft Office
  • Programming Languages: Matlab, Java, Python, SQL Server

Publication top Notes:

 

A crossover-based multi-objective discrete particle swarm optimization model for solving multi-modal routing problems

TDMBBO: a novel three-dimensional migration model of biogeography-based optimization (case study: facility planning and benchmark problems)

Optimal Band Selection Using Evolutionary Machine Learning to Improve the Accuracy of Hyper-spectral Images Classification: a Novel Migration-Based Particle Swarm Optimization

Predicting PM10 Concentrations Using Evolutionary Deep Neural Network and Satellite-Derived Aerosol Optical Depth

Application of Meta-Heuristic Algorithms for Training Neural Networks and Deep Learning Architectures: A Comprehensive Review