Dr. Zepeng Liu | Fault Diagnosis | Best researcher Award
Dr. Zepeng Liu is a distinguished academic and researcher in the field of renewable energy, holds a PhD in Biosystems Engineering from Kangwon National University, South Korea. His academic journey has been marked by a profound dedication to advancing solar energy technologies, specifically in solar thermal harvesting and its integration into agricultural and architectural applications.
Professional Profiles:
Dr. Zepeng Liu
Institute School of Engineering, Newcastle University, UK Position Lecturer in Electrification
Working Experience:
2023/09-Present Lecturer in Electrification at Newcastle University, UK 2020/12-2023/09 Research Associate in Advanced Manufacturing Systems Condition Monitoring, University of Sheffield, UK 2020/5-2020/8 Research Associate, University of Manchester, UK
Education Background:
2017/1-2021/2: Ph.D. in Electrical & Electronic Engineering, University of Manchester, UK 2015/9–2016/9 MSc in Power Systems Engineering, University College London, UK 2013/9–2015/6 BEng in Electrical Engineering & Electronics, University of Liverpool, UK
Research Interests:
Data-Driven Modelling:
Nonlinear system modelling in the frequency domain
Machine and statistical learning, Neural networks
Sparse representation and nonlinear filtering
Modelling and analysis for complex systems:
Advanced manufacturing
Condition monitoring and fault detection of wind turbine systems and components
Structural health monitoring
Smart structures and systems
Application of machine learning to machinery fault diagnosis
Research Experience:
Dr. Liu has extensive experience in research projects involving advanced manufacturing, condition monitoring, fault diagnosis, and machine learning applications. Notable achievements include developing online monitoring systems for cutting tool condition monitoring and fault diagnosis, and creating novel algorithms for real-time CMFD in large slow-speed pitch systems.
Teaching Experience:
Dr. Liu has been a Teaching Assistant for various MSc courses at the University of Manchester since 2016. Additionally, he supervises PhD students and undergraduate/postgraduate projects.
Professional Activities and Recognitions:
Review Editor of Frontiers in Robotics and AI Reviewer for learned journals in various science and engineering subject areas
Grant Application Experience:
Participation in grant applications for projects related to wind turbine condition assessment and machine-tool condition monitoring.
Selected Publications:
Dr. Liu has contributed to several high-impact journal papers and conference papers focusing on fault detection, condition monitoring, and machine learning applications in various fields including wind turbine systems, cutting tools, and vibration analysis.
This summary highlights Dr. Liu’s extensive academic background, research contributions, teaching experience, and involvement in professional activities and grant applications.
📊 Citation Metrics (Google Scholar):
- Citations by: All – 721, Since 2018 – 716
- h-index: All – 9, Since 2018 – 8
- i10 index: All – 8, Since 2018 – 7
Publications Top Note :
A review of failure modes, condition monitoring and fault diagnosis methods for large-scale wind turbine bearings paper published in 2020 cite by 348
Vibration analysis for large-scale wind turbine blade bearing fault detection with an empirical wavelet thresholding method paper published in 2020 citr by 109
Fault Diagnosis of Industrial Wind Turbine Blade Bearing using Acoustic Emission Analysis paper published in 2020 cite by 92
paper published in 2020 cite by 37
Naturally damaged wind turbine blade bearing fault detection using novel iterative nonlinear filter and morphological analysis paper published in 2019 cite by 36
Acoustic Emission Analysis for Wind Turbine Blade Bearing Fault Detection Under Time-Varying Low-Speed and Heavy Blade Load Conditions paper published in 2021 cite by 33
Constrained sintering and electrical properties of BNT–BKT lead-free piezoceramic thick films paper published in 2016 cite by 12
paper published in 2016 cite by 11
paper published in 2022 cite by 9
paper published in 2022 cite by 8