Menglin Dai | Resources | Best Researcher Award

Dr. Menglin Dai | Resources | Best Researcher Award

Dr. Menglin Dai, Resources at Peking University, China

Menglin Dai is a researcher specializing in applied computer vision for stock modeling, currently working as a postdoctoral researcher at Peking University. Menglin earned a PhD from the University of Sheffield, focusing on characterizing English residential housing using street view imagery and deep learning techniques. Their doctoral research involved developing deep learning models to automatically recognize building components and generate detailed building models, contributing to large-scale urban environment datasets. Menglin also holds a Master of Engineering (Hons.) degree in Civil Engineering from the University of Sheffield, where they graduated with distinction. Their academic and professional experience spans urban built environment modeling, structural engineering research, and hydraulic modeling. Menglin has contributed to several peer-reviewed journal articles and conferences, and serves as a reviewer for multiple scientific journals. They possess strong technical skills in programming and data analysis, including Python, Matlab, and various machine learning libraries.

Professional Profile:

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Summary of Suitability for Best Researcher Award

Dr. Menglin Dai has demonstrated exceptional academic and research capabilities in the field of applied computer vision and sustainable urban infrastructure modeling. His doctoral work at the University of Sheffield focused on leveraging deep learning techniques to characterize English residential housing stock using street-view imagery, a novel and impactful contribution to the fields of civil engineering, data science, and urban planning. His postdoctoral research at Peking University further extends this work, incorporating advanced machine learning techniques to develop high-resolution models of built environment material stock, with international applications such as the Danish Built Environment Stock Model and contributions to the Global Secondary Resource Stocks Report.

🎓 Education

  • PhD in Applied Computer Vision for Stock Modelling
    University of Sheffield, UK (Sept 2018 – Mar 2023)
    Thesis: Characterising English Residential Housing Using Street View Capture and Deep Learning Techniques
    (Supervisors: Dr. Danielle Densley Tingley & Prof. Martin Mayfield-Tulip)

  • Master of Engineering (Hons.) in Civil Engineering (Distinction)
    University of Sheffield, UK (Sept 2013 – July 2017)
    Dissertation: The Effect of Connectors Behaviour on Cold-formed Steel Structural Elements
    (Supervised by Dr. Jurgen Becque)
    Awarded: Faculty Undergraduate Scholarship, Sheffield Undergraduate Research Experience (SURE) bursary, Sheffield Graduate Award

  • Foundation Year in Science and Engineering (Distinction)
    Sheffield International College, UK (Dec 2012 – Aug 2013)

💼 Work Experience & Research

  • Postdoctoral Researcher – High-Resolution Built Environment Stock Modelling
    Peking University, China (Mar 2023 – Present)
    • Developed ML methods for high-resolution building material stock characterization
    • Contributed to ‘Global Secondary Resource Stocks Report’ and Danish Built Environment Stock Model
    • Session chair, ISIE SEM/AP 2024 conference

  • PhD Researcher – Residential Building Feature Characterisation
    University of Sheffield, UK (Sept 2018 – Mar 2023)
    • Developed deep learning models for building component recognition from urban images
    • Automated LoD3-level building model generation from point cloud data

  • Researcher – Connector Behaviour on Structural Elements
    University of Sheffield, UK (June 2016 – May 2017)
    • Experimental and finite element modeling of cold-formed steel structural connectors
    • Developed post-processing algorithms for digital image correlation (DIC)

  • Graduate Teaching Assistant
    University of Sheffield, UK (Oct 2018 – June 2022)
    • Assisted tutorials and exam marking for engineering sustainability courses

  • Hydraulic Modeller Internship/Graduate Program
    RPS Group, UK (2016 & 2017)
    • Built hydraulic city models, site surveys, and data communication

🏆 Achievements & Awards

  • 🏅 Sheffield Graduate Award

  • 🎓 Faculty Undergraduate Scholarship for Academic Achievement

  • 🔬 Sheffield Undergraduate Research Experience (SURE) bursary

  • 🥇 Gold Duke of Edinburgh Award

  • 🎸 Level 10 Amateur Guitar Certificate

  • 🏔 Mount Kilimanjaro Certificate of Completion

  • 🚗 Driving License (China)

Publication Top Notes:

Residential building facade segmentation in the urban environment Cited: 66
A scalable data collection, characterization, and accounting framework for urban material stocks Cited: 51
Estimating energy consumption of residential buildings at scale with drive-by image capture Cited: 24
Component-level residential building material stock characterization using computer vision techniques Cited: 9
Scalable residential building geometry characterisation using vehicle-mounted camera system Cited: 7

Conclusion

Dr. Menglin Dai is an outstanding candidate for the Best Researcher Award, reflecting academic distinction, technical innovation, and global relevance. His pioneering work in AI-driven urban stock modeling, his high-impact publications, and his commitment to advancing research on sustainable built environments make him highly deserving of this recognition. Awarding Dr. Dai would honor not only his individual excellence but also highlight the future of data-driven sustainable development.

Filimon Mgandu | Agriculture | Best Researcher Award

Dr . Filimon Mgandu | Agriculture | Best Researcher Award

Lecturer College of Business Education Tanzania

Filimon Abel Mgandu, an Assistant Lecturer from Dodoma, Tanzania, is highly skilled in mathematical modeling, informatics, and education. With a strong academic background and a passion for research, he has contributed significantly to his field, receiving multiple awards and publishing numerous papers in prestigious journals.

profile

Scopus

Education 🎓

Filimon completed his M.Sc. in Mathematical Modelling (2017-2019) with a GPA of 4.3/5.0 from the University of Dar es Salaam. He also holds a B.Sc. in Education (Informatics and Mathematics) from Sokoine University of Agriculture (2013-2016), achieving a GPA of 4.4/5.0. His earlier education includes an Advanced Certificate of Secondary Education from Njombe Secondary School and a Certificate of Secondary Education from Kidamali Secondary School.

Experience 💼

Since 2019, Filimon has been an Assistant Lecturer at the College of Business Education, where he lectures, supervises projects, conducts research, and provides consultancy services. Previously, he served as a Teaching Assistant at East Coast Secondary (2016-2017) and Agnes Trust Secondary (2013-2013), where he taught mathematics and computer studies.

Research Interests 🔍

Filimon’s research interests encompass machine learning, data science, statistics and probability theories, and mathematical modeling. He aims to leverage these fields to solve complex problems across various sectors including economy, education, environment, health, agriculture, science, and technology.

Awards 🏆

Filimon has received several accolades, including a Research Award from the Ministry of Agriculture under the TANIPAC project in 2021, the Mwalimu Julius Nyerere Memorial Scholarship Award (2019 and 2017) from the Bank of Tanzania, and the title of Overall Best Final Year Student in B.Sc. Education from Sokoine University of Agriculture in 2016.

Publications Top Notes📚

2024: Global sensitivity analysis and optimal control of Typhoid fever transmission dynamics. Mathematical Modelling and Analysis, 29(1), pp.141-160. DOI: 10.3846/mma.2024.17859

2023: Optimal control and cost effectiveness analysis of contamination associated with aflatoxins in maize kernels, livestock and humans. Results in Control and Optimization, 13(100313). DOI: 10.1016/j.rico.2023.100313

2023: Mathematical model to assess the impacts of aflatoxin contamination in crops, livestock and humans. Scientific African. DOI: 10.1016/j.sciaf.2023.e01980

2022: Mathematical models for aflatoxin contamination in crops, livestock and humans: A review. Commun. Math. Biol. Neurosci., Article ID 116. DOI: 10.3145/ijmsc.2020.03.03

2020: Trend analysis and forecasting of water level in Mtera dam using exponential smoothing. Int. J. Math. Sci. Comput, 4, pp.26-34. DOI: 10.5815/ijmsc.2020.04.03