Asheena Singh-Pillay | Sustainability | Best Researcher Award

Assoc. Prof. Dr. Asheena Singh-Pillay | Sustainability | Best Researcher Award

Associate Professor at University of KwaZulu-Natal, South Africa

Prof. Asheena Singh-Pillay is an Associate Professor of Technology Education and Academic Leader of the Bachelor of Education Programme at the University of KwaZulu-Natal (UKZN), South Africa. With over three decades of experience in education, she is recognized for her leadership in curriculum innovation, academic planning, and pedagogical transformation in higher education. She has been instrumental in national and international educational reforms, STEM advocacy, and professional development initiatives for teacher education.

šŸ”¹Professional Profile:

Scopus Profile

Orcid ProfileĀ 

Google ScholarĀ 

šŸŽ“Education Background

  • PhD in Science Education, University of KwaZulu-Natal (2011)

  • Postgraduate Diploma in Higher Education, University of KwaZulu-Natal (2016)

  • Master’s in Science Education, University of KwaZulu-Natal (2004)

  • Bachelor of Science, UNISA (1994)

  • Junior Secondary Education Diploma, Springfield (1985)

šŸ’¼ Professional Development

Prof. Singh-Pillay has served as Academic Leader of the B.Ed. programme at UKZN since 2019, and currently also leads Teaching and Learning activities. Her academic career spans roles as Senior Lecturer, Lecturer, and previously as a high school teacher and master teacher in Life and Physical Sciences from 1986 to 2012. She provides strategic leadership in curriculum development, academic monitoring, and quality assurance across undergraduate education programmes. Her international engagements include keynote addresses, faculty exchanges, and contributions to global educational dialogue on sustainability and technology in education.

šŸ”¬Research Focus

Her research focuses on Science and Technology Education, Sustainable Development, Curriculum Innovation, STEM Education, and Teacher Development. She has a strong orientation toward integrating Education for Sustainable Development (ESD) with digital transformation and pedagogical strategies for equity and access.

šŸ“ˆAuthor Metrics:

Prof. Asheena Singh-Pillay has a Google Scholar h-index of 11, reflecting the influence and citation of her published research in the fields of science and technology education. Her ResearchGate score stands at 361.8, demonstrating active academic engagement and broad readership of her work. She maintains an ORCID profile under the ID 0000-0003-1540-8992 and is also registered with the Web of Science under the ResearcherID AAK-4895-2020. These metrics highlight her consistent scholarly contributions and visibility within both national and international academic communities.

šŸ†Awards and Honors:

  • NRF C2 Rated Researcher (2025)

  • Dean’s Award for Teaching and Learning – UKZN (2020, 2024)

  • Top 30 Most Published Researchers – UKZN (2018)

  • Top 10 Most Published Women Researchers – UKZN College of Humanities (2018)

  • Early Career Academic Award – UKZN (2017)

  • Guest Editor – Discover Education (2025)

  • Keynote Speaker – ISFAR Conference (Zanzibar), Education Webinars (India)

  • International Research Award – Sustainability Journal, SciFat (2024)

  • Moderator – South African Life Sciences and Natural Sciences Olympiads (2014–present)

  • International Faculty Exchange – Chandigarh University (2023)

  • Independent Peer Reviewer – SAJEE, Academy of Science of South Africa

šŸ“Publication Top Notes

1.Ā Title: Technology Student Teachers Address Energy and Environmental Concerns on Plastic Usage and Disposal Through Experiential Challenge-Based Learning

Author: A. Singh-Pillay
Journal: Sustainability
Volume: 17, Issue: 9, Article: 4042
Year: 2025
Publisher: MDPI
DOI: [If available, can be added]
Abstract: This paper explores how experiential and challenge-based learning enables technology student teachers to address plastic-related environmental and energy issues, promoting sustainability education.

2. Title: Social Justice Implications of Digital Science, Technology, Engineering and Mathematics Pedagogy: Exploring a South African Blended Higher Education Context

Authors: J. Naidoo, A. Singh-Pillay
Journal: Education and Information Technologies
Volume: 30, Issue: 1, Pages: 131–157
Year: 2025
Publisher: Springer
DOI: [If available, can be added]
Abstract: This study examines digital STEM pedagogy in higher education, focusing on equity and access in the South African context and its implications for social justice.

3. Title: Trainee Teachers’ Shift towards Sustainable Actions in Their Daily Routine

Authors: A. Singh-Pillay, J. Naidoo
Journal: Sustainability
Volume: 16, Issue: 20, Article: 8933
Year: 2024
Publisher: MDPI
DOI: [If available, can be added]
Abstract: The paper highlights behavior changes among trainee teachers concerning sustainability, brought about by targeted education strategies within teacher preparation programs.

4. Title: Exploring Science and Technology Teachers’ Experiences with Integrating Simulation-Based Learning

Author: A. Singh-Pillay
Journal: Education Sciences
Volume: 14, Issue: 8, Article: 803
Year: 2024
Publisher: MDPI
DOI: [If available, can be added]
Abstract: This research investigates the pedagogical practices and experiences of science and technology teachers using simulations, focusing on their perceptions, benefits, and limitations.

5. Title: The Ethos of Civil Technology Hands-On Assessments in the Revised Curriculum Assessment Policy Statement: A Discipline-Specific Pedagogy

Authors: T. I. Mtshali, A. Singh-Pillay
Journal: Journal of Namibian Studies
Pages: 500–521
Year: 2024
DOI/Publisher: [Details if available]
Abstract: This study critically evaluates the practical components of Civil Technology assessments under South Africa’s CAPS framework, linking them to curriculum goals and student competency development.

.Conclusion:

Assoc. Prof. Dr. Asheena Singh-Pillay exemplifies the qualities of a Best Researcher Awardee—she is scholarly, impactful, innovative, and committed to educational transformation. Her three-decade-long career in teaching, research, and leadership—especially her recent work on ESD, simulation-based learning, and digital equity—has positioned her as a thought leader in her field.

Recommendation: She is strongly recommended for the Best Researcher Award in recognition of her scholarly contributions, sustained excellence, and influence on sustainable and equitable education.

Clara Grazian | Statistics | Best Researcher Award

Assoc. Prof. Dr. Clara Grazian | Statistics | Best Researcher Award

Associate Professor at University of Sydney, Australia

Dr. Clara Grazian is an Associate Professor at the School of Mathematics and Statistics, University of Sydney, specializing in Bayesian statistics, computational methods, and their applications in health, environmental, and material sciences. She has held academic and research positions across prestigious institutions in Australia, the UK, France, and Italy.

šŸ”¹Professional Profile:

Scopus Profile

Orcid ProfileĀ 

Google ScholarĀ 

šŸŽ“Education Background

Dr. Grazian earned her Joint Ph.D. in Applied Mathematics and Statistics from CEREMADE UniversitĆ© Paris-Dauphine (France) and the Department of Statistics, Sapienza UniversitĆ  di Roma (Italy), graduating Excellent cum laude in 2016. She also holds a Master’s degree in Statistics (110/110 cum laude) from Sapienza and a Master 2 in Mathematical Modelling and Decision from UniversitĆ© Paris-Dauphine (Mention trĆØs bien). Her foundational degree is a Bachelor in Statistical Sciences from UniversitĆ  degli Studi di Torino (110/110 cum laude).

šŸ’¼ Professional Development

  • 2025–Present: Associate Professor, University of Sydney

  • 2022–2024: Senior Lecturer, University of Sydney

  • 2019–2022: Senior Lecturer, University of New South Wales

  • 2018–2019: Research Fellow, UniversitĆ  ā€œG. d’Annunzioā€, Italy

  • 2017–2019: Postdoctoral Scientist, Big Data Institute & Nuffield Department of Medicine, University of Oxford

  • 2015–2016: Research Fellow, Sapienza UniversitĆ  di Roma

Dr. Grazian has also contributed significantly to cross-disciplinary projects in genomics, epidemiology, and materials science.

šŸ”¬Research Focus

Her research focuses on Bayesian inference, model selection, copula models, approximate Bayesian computation (ABC), posterior approximations, and machine learning applications in fields like tuberculosis resistance prediction, urban dynamics, and nanomaterials discovery. She is also active in developing computational tools for likelihood-free inference and experimental design.

šŸ“ˆAuthor Metrics:

  • Numerous peer-reviewed publications in high-impact journals.

  • Supervised several Ph.D., Honours, and Postdoctoral researchers across fields including biostatistics, data science, and computational modelling.

  • Developer of widely-used statistical software packages such as DARWIN, Minos, PETabc, and BayesMIC.

šŸ†Awards and Honors:

  • University of Sydney Postgraduate Award (2024)

  • J.B. Douglas Postgraduate Award, SSA (2024)

  • Mike Tallis PhD Award (2024) – Multiple recipients under her supervision

  • Invited Speaker at major conferences including ISBA World Meeting 2024 and seminars hosted by the Statistical Society of Australia

  • Supervised Tong Xie, recipient of top YouTube video recognition by the DARE ARC Centre and selected for prestigious global computing programs.

  • 2024 SIDRA SOLUTIONS Postgraduate Award (supervisor of award-winning thesis in urban transport planning)

šŸ“Publication Top Notes

1. Assessing the Invertibility of Deep Biometric Representations: Investigating CNN Hyperparameters for Enhanced Security Against Adversarial Attacks

Authors: C. Grazian, Q. Jin, G. Tangari
Published in: Expert Systems with Applications, Volume 264, 2025, Article 125848
Summary:
This paper investigates the security vulnerabilities in deep biometric systems by evaluating the invertibility of biometric feature representations derived from Convolutional Neural Networks (CNNs). The authors systematically analyze how different CNN hyperparameters affect the robustness of these models against adversarial inversion attacks. The work proposes tuning strategies to improve security without compromising biometric performance.
Contribution: Enhances understanding of CNN-based biometric security, a crucial area in identity verification systems.
Relevance: AI security, adversarial robustness, biometrics.

2. Darwin 1.5: Large Language Models as Materials Science Adapted Learners

Authors: T. Xie, Y. Wan, Y. Liu, Y. Zeng, S. Wang, W. Zhang, C. Grazian, C. Kit, et al.
Published in: arXiv preprint arXiv:2412.11970, 2024
Summary:
This work introduces Darwin 1.5, a tailored version of large language models (LLMs) specifically adapted for materials science learning tasks. The model is fine-tuned on scientific texts and datasets related to materials discovery, showcasing improvements in knowledge retrieval, data interpretation, and hypothesis generation.
Contribution: Dr. Grazian contributed Bayesian modeling insights to the model evaluation metrics.
Relevance: Interdisciplinary AI application, materials informatics, LLM adaptation.

3. Approximate Bayesian Computation with Statistical Distances for Model Selection

Authors: C. Angelopoulos, C. Grazian
Published in: arXiv preprint arXiv:2410.21603, 2024
Summary:
The paper explores model selection under Approximate Bayesian Computation (ABC) by incorporating robust statistical distance measures (e.g., Wasserstein, Energy Distance). The approach helps mitigate issues in likelihood-free inference where traditional ABC may struggle with model choice accuracy.
Contribution: Dr. Grazian co-developed the methodological framework and designed experiments for evaluating model selection efficacy.
Relevance: Computational statistics, Bayesian inference, ABC methods.

4. Parametric Maps of Kinetic Heterogeneity and Ki in Dynamic Total Body PET using Approximate Bayesian Computation

Authors: Q. Gu, G. Angelis, D. Bailey, P. Roach, C. Grazian, G. Emvalomenos, et al.
Presented at: 2024 IEEE Nuclear Science Symposium (NSS) and Medical Imaging Conference (MIC)
Summary:
This paper applies ABC methods to generate parametric maps from dynamic total-body PET scans, providing estimates for kinetic heterogeneity and Ki (influx rate constant). The approach addresses complex likelihoods in dynamic PET data.
Contribution: Dr. Grazian contributed the statistical modeling and implementation of the ABC framework.
Relevance: Medical imaging, Bayesian computation, PET quantification.

5. Novel Bayesian Algorithms for ARFIMA Long-Memory Processes: A Comparison Between MCMC and ABC Approaches

Authors: J.C. Gabor, C. Grazian
Published in: arXiv preprint arXiv:2410.13261, 2024
Summary:
The study compares traditional MCMC techniques and ABC for estimating parameters of ARFIMA (Autoregressive Fractionally Integrated Moving Average) processes, which model long-range dependencies in time series. The paper highlights the efficiency and trade-offs of both approaches in complex likelihood environments.
Contribution: Dr. Grazian led the design of the ABC-based inference strategy and performance benchmarking.
Relevance: Time series analysis, long-memory processes, Bayesian methodology.

.Conclusion:

Dr. Clara Grazian is an exceptionally strong candidate for the Best Researcher Award, distinguished by her deep theoretical expertise, cross-disciplinary innovation, impactful mentorship, and software development. Her work is both methodologically sophisticated and societally relevant.

Recommendation: Strongly support her nomination. With a growing global presence and continued translation of her research into practice, Dr. Grazian exemplifies the qualities of a 21st-century thought leader in statistics and data science.

Iliyas Karim Khan | Statistics | Best Researcher Award

Mr. Iliyas Karim Khan | Statistics | Best Researcher Award

Teaching Assistance at Universiti Teknologi Petronas Malaysia, MalaysiašŸ“–

Iliyas Karim Khan is a dedicated researcher and educator with a strong background in statistics and data science. He is currently pursuing his Ph.D. at Universiti Teknologi PETRONAS, Malaysia, focusing on advanced statistical modeling and machine learning applications. With extensive teaching experience spanning over 8 years in various academic institutions, he has contributed significantly to the field through research and publications. His work primarily revolves around clustering algorithms, data analysis, and predictive modeling.

Profile

Scopus Profile

Google Scholar Profile

Education BackgroundšŸŽ“

  • Ph.D. in Statistics (2024), Universiti Teknologi PETRONAS, Malaysia
  • M.Phil. in Statistics (2016), Peshawar University, KPK, Pakistan
  • M.Sc. in Statistics (2014), Peshawar University, KPK, Pakistan
  • B.Sc. in Statistics (2012), SBBU Sheringhal, Upper Dir, Pakistan
  • B.Ed. (2015), SBBU Sheringhal, Upper Dir, Pakistan
  • F.Sc. in Engineering (2010), BISE Peshawar, Pakistan
  • S.S.C. in Science (2008), BISE KPK, Peshawar, Pakistan

Professional Experience🌱

Iliyas has accumulated diverse teaching and research experience in both national and international institutions. He has served as a lecturer and subject specialist at GHSS Bang Chitral, Pakistan, and Abbottabad University of Science and Technology, contributing to curriculum development and student mentorship. Additionally, he has gained international teaching experience as a Teaching Assistant at Universiti Teknologi PETRONAS, Malaysia. His professional expertise extends to statistical analysis, machine learning, and forecasting, with hands-on experience in tools such as Python, SPSS, and Minitab

Research InterestsšŸ”¬
  • Machine Learning
  • Statistical Modeling
  • Forecasting
  • Big Data Analysis
  • Cluster Optimization Algorithms

Author Metrics

Iliyas has published several high-impact journal articles in Q1 journals, including Egyptian Informatics Journal and AIMS Mathematics, with notable contributions to the advancement of clustering algorithms and data science techniques. His research work has garnered significant recognition within the academic community.

Awards and Honors
  • Publication Recognition Achievement 2024, Universiti Teknologi PETRONAS, Malaysia
  • Acknowledged for outstanding contributions to statistical analysis and machine learning applications
Publications Top Notes šŸ“„

1. Determining the Optimal Number of Clusters by Enhanced Gap Statistic in K-mean Algorithm

  • Authors: I.K. Khan, H.B. Daud, N.B. Zainuddin, R. Sokkalingam, M. Farooq, M.E. Baig, et al.
  • Journal: Egyptian Informatics Journal
  • Volume: 27, Article 100504
  • Year: 2024
  • Citations: 3
  • Abstract: This study introduces an enhanced gap statistic method to determine the optimal number of clusters in the K-means clustering algorithm. The approach addresses common challenges in cluster analysis, improving the reliability and efficiency of the algorithm.
  • Impact: Provides an effective method to enhance clustering performance in various data-driven applications.

2. Numerical Solution of Heat Equation using Modified Cubic B-spline Collocation Method

  • Authors: M. Iqbal, N. Zainuddin, H. Daud, R. Kanan, R. Jusoh, A. Ullah, I.K. Khan
  • Journal: Journal of Advanced Research in Numerical Heat Transfer
  • Volume: 20, Issue 1, Pages 23-35
  • Year: 2024
  • Citations: 2
  • Abstract: The paper presents a numerical solution to the heat equation using a modified cubic B-spline collocation method. The proposed method enhances accuracy and computational efficiency compared to conventional techniques.
  • Impact: Contributes to the advancement of numerical modeling in heat transfer applications.

3. Addressing Limitations of the K-means Clustering Algorithm: Outliers, Non-spherical Data, and Optimal Cluster Selection

  • Authors: Iliyas Karim Khan, Abdussamad, Abdul Museeb, Inayat Agha
  • Journal: AIMS Mathematics
  • Volume: 9, Pages 25070-25097
  • Year: 2024
  • Citations: 2
  • Abstract: This paper critically examines the limitations of the K-means clustering algorithm, proposing novel solutions to handle outliers, non-spherical data, and optimal cluster determination.
  • Impact: Enhances the applicability of clustering techniques in complex real-world datasets.

4. Numerical Solution by Kernelized Rank Order Distance (KROD) for Non-Spherical Data Conversion to Spherical Data

  • Authors: I.K. Khan, H.B. Daud, R. Sokkalingam, N.B. Zainuddin, A. Abdussamad, et al.
  • Journal: AIP Conference Proceedings
  • Volume: 3123, Issue 1
  • Year: 2024
  • Citations: 1
  • Abstract: The study introduces the Kernelized Rank Order Distance (KROD) method to convert non-spherical data to spherical data, improving the performance of traditional clustering algorithms.
  • Impact: Provides a novel solution for handling data distribution challenges in clustering applications.

5. A Mini Review of the State-of-the-Art Development in Oil Recovery Under the Influence of Geometries in Nanoflood

  • Authors: M. Zafar, H. Sakidin, A. Hussain, M. Sheremet, I. Dzulkarnain, R. Safdar, et al.
  • Journal: Journal of Advanced Research in Micro and Nano Engineering
  • Volume: 26, Issue 1, Pages 83-101
  • Year: 2024
  • Abstract: This review paper explores recent advancements in oil recovery techniques using nanotechnology, emphasizing the influence of geometries on the efficiency of nanoflooding processes.
  • Impact: Provides critical insights for improving oil recovery processes using nanomaterials.

Conclusion

Iliyas Karim Khan is a highly deserving candidate for the Best Researcher Award due to his impressive academic credentials, impactful research contributions, and dedication to the field of statistics and data science. His work on clustering algorithms and machine learning applications offers innovative solutions to critical challenges in data analysis.

To further strengthen his profile, he should focus on expanding his research network, leading high-value projects, and enhancing his presence in industry-oriented applications. With continued efforts, Iliyas is poised to make even greater contributions to the field and emerge as a thought leader in statistical modeling and data science.

Qinglai Wei | Self-Learning Systems | Best Researcher Award

Prof. Dr. Qinglai Wei | Self-Learning Systems | Best Researcher AwardĀ 

Associate Director, at Institute of Automation, Chinese Academy of Sciences, China.

Professor Qinglai Wei is a distinguished researcher and educator specializing in control systems, computational intelligence, and learning-based optimization. Serving as the Associate Director at The State Key Laboratory for Management and Control of Complex Systems, Chinese Academy of Sciences, he has made significant contributions to adaptive dynamic programming, nonlinear control, and reinforcement learning. With an illustrious academic journey from Northeastern University and rich professional experience, Prof. Wei has authored numerous influential papers, books, and book chapters. His awards include multiple IEEE honors and recognition as a Clarivate Highly Cited Researcher. He is a prominent figure in advancing intelligent control systems and their applications in complex scenarios.

Professional Profile

Scopus

Google Scholar

Education šŸŽ“

  • Ph.D. in Control Theory and Control Engineering (2009): Northeastern University, China. Advised by Prof. Huaguang Zhang, his research focused on intelligent control systems.
  • M.S. in Control Theory and Control Engineering (2005): Northeastern University, China, under Prof. Xianwen Gao’s mentorship.
  • B.S. in Automation (2002): Northeastern University, China, advised by Baodong Xu.
    These academic milestones laid the foundation for his expertise in adaptive dynamic programming and intelligent systems.

Professional Experience šŸ’¼

  • Associate Director (2018–Present): The State Key Laboratory for Management and Control of Complex Systems, Chinese Academy of Sciences.
  • Professor (2016–Present): The State Key Laboratory and the School of Artificial Intelligence, University of Chinese Academy of Sciences.
  • Visiting Scholar roles at University of Rhode Island (2018) and University of Texas at Arlington (2014) reflect his international collaboration and academic outreach.
    Earlier roles include Associate and Assistant Professor positions at The State Key Laboratory, showcasing steady growth in his academic career.

Research Interests šŸ”¬

Prof. Wei’s research spans:

  • Computational Intelligence & Intelligent Control
  • Learning Control & Reinforcement Learning
  • Optimal & Nonlinear Control
  • Adaptive Dynamic Programming
    Applications include process control, smart grids, and multi-agent systems. His innovative methods continue to drive advancements in control theory and intelligent systems.

Awards šŸ†

Prof. Wei’s excellence is marked by accolades like:

  • Best Paper Awards (2023 & 2022): International CSIS-IAC and China Automation Congress.
  • IEEE Outstanding Paper Awards (2018): Recognition for impactful contributions to the IEEE journals.
  • Highly Cited Researcher (2018 & 2019): By Clarivate Analytics for his influential publications.
    Other honors include National Natural Science Foundation Awards and Young Researcher Awards, emphasizing his leadership in the field.

Top Noted Publications šŸ“š

  • “Learning and Controlling Multiscale Dynamics in Spiking Neural Networks” (2024, IEEE Transactions on Cybernetics): This study employs Recursive Least Square (RLS) modifications to manage multiscale dynamics in spiking neural networks. It advances neural control methods for adaptive tasks in dynamic environments怐8怑.
  • “Event-Triggered Robust Parallel Optimal Consensus Control for Multiagent Systems” (2024, IEEE/CAA Journal of Automatica Sinica): This paper focuses on event-triggered mechanisms to ensure robust consensus in multiagent systems under parallel optimal control.
  • “Primal-Dual Adaptive Dynamic Programming for Nonlinear Systems” (2024, Automatica): A framework using primal-dual adaptive dynamic programming tackles the stabilization and optimization of nonlinear systems.
  • “Class-Incremental Learning with Balanced Embedding Discrimination” (2024, Neural Networks): This work enhances class-incremental learning by introducing techniques to balance embeddings and improve discrimination among new and existing classes.

Conclusion

Qinglai Wei is exceptionally suited for the Research for Best Researcher Award. His prolific contributions to control theory, computational intelligence, and reinforcement learning, combined with his global recognition and leadership, exemplify his stature as a world-class researcher. With a proven track record of innovative research, impactful publications, and numerous accolades, he stands out as a strong candidate for this prestigious honor. Continued expansion into interdisciplinary collaborations and mentorship initiatives will further solidify his legacy as a pioneering researcher.

 

Wei Lin | Data Mining | Best Researcher Award

Prof. Wei Lin | Data Mining | Best Researcher Award

Dean, at Sichuan University, ChinašŸ“–

Dr. Lin Wei is a prominent professor at Sichuan University, China, with a long and distinguished academic career. With over 20 years of experience in the field of leather chemical engineering, Dr. Lin has significantly contributed to sustainable leather-making practices, focusing on the reduction of environmental impact from traditional tanning processes. Her research is centered on chrome-free tanning, reutilization of tannery waste, and the structure-property relationship of hide collagen, aiming to advance cleaner leather production technologies. In addition to her work as a researcher, Dr. Lin has mentored numerous students and postdoctoral researchers in the areas of biomass science and green leather products.

Profile

Scopus Profie

Orcid Profile

Education BackgroundšŸŽ“

  • Ph.D. in Leather Chemical and Engineering, Sichuan University, Chengdu, Sichuan, China (09/1995–06/2000).
    Dissertation: Interaction between collagen and Cr(III) complexes and its application in cleaner leather-making.
  • B.Sc. in Leather Engineering, Sichuan University, Chengdu, Sichuan, China (09/1991–07/1995).
    Thesis: Reutilization of chromed leather waste.

Dr. Lin’s education provided a solid foundation in chemical and environmental engineering, with a specific focus on sustainable practices within the leather industry. She developed key expertise in the interaction of chromium with collagen and its implications for cleaner leather production, as well as methods for reusing leather waste to minimize the industry’s environmental footprint.

Professional Experience🌱

Dr. Lin Wei’s professional career is marked by both academic teaching and groundbreaking research. She has held multiple roles at Sichuan University and abroad:

  1. Professor, Department of Biomass and Leather Engineering, College of Biomass Science and Engineering, Sichuan University
    06/2006–Present
    Dr. Lin teaches undergraduate and graduate students in the areas of leather chemical engineering and sustainable manufacturing. Her research focuses on the development of chrome-free tanning methods, which aim to replace harmful chemicals used in leather production, and the sustainable reutilization of tannery waste. She is also exploring the structure-property relationships of hide collagen, seeking innovative applications for collagen in environmentally friendly leather products.
  2. Post-Doctoral Research Associate, Department of Inorganic, Analytical and Applied Chemistry, University of Geneva, Switzerland
    04/2003–08/2005
    During her post-doctoral tenure at the University of Geneva, Dr. Lin focused on the aggregation processes in colloidal particle dispersions, using light scattering techniques to study the behavior of particles in different solutions. This research aimed to better understand how materials behave at the molecular level, which could then be applied to various industries, including leather processing.
  3. Post-Doctoral Research Associate, Department of Chemical Physics, University of Science and Technology of China
    09/2000–09/2002
    Dr. Lin’s work here focused on metal-ion induced polyelectrolyte aggregation, again using light scattering to explore the interactions between metal ions and organic molecules. Her research provided valuable insights into how metal ions influence the behavior of molecules, a concept later applied in her work on chromium’s interaction with collagen in leather production.
  4. Teacher / Associate Professor, College of Biomass Science and Engineering, Sichuan University
    08/2002–05/2006
    Prior to her current position as a professor, Dr. Lin taught and conducted research at Sichuan University. She was involved in developing new, cleaner leather production methods and finding ways to recycle tannery waste to reduce the environmental impact of leather production.
  5. Teacher / Lecturer, College of Biomass Science and Engineering, Sichuan University
    07/2000–07/2002
    Dr. Lin began her teaching career at Sichuan University, where she introduced students to the principles of cleaner leather production and the importance of environmental sustainability in industrial processes.

Research InterestsšŸ”¬

Dr. Lin’s research interests focus on environmental sustainability in the leather industry. Her specific areas of interest include:

    1. Chrome-Free Tanning
      Dr. Lin is a leader in the development of chrome-free tanning techniques, which aim to replace the environmentally harmful process of using chromium salts in leather production. By creating new, less-toxic chemical agents for tanning, her research is helping reduce the environmental footprint of the leather industry.
    2. Collagen Structure-Property Relationships
      Dr. Lin explores the structure-property relationships of hide collagen, investigating how collagen’s molecular structure influences its physical properties and how this understanding can be applied to producing high-quality, durable leather products.
    3. Reutilization of Tannery Waste
      Dr. Lin’s research also emphasizes the reutilization of tannery waste. By developing methods to recycle and repurpose waste from the tanning process, she is contributing to the creation of a more circular economy in the leather industry, which reduces waste and supports more sustainable production practices.
    4. Cleaner Leather Production
      A key focus of Dr. Lin’s work is improving the environmental sustainability of leather production processes. She investigates the reduction of toxic chemicals used in leather manufacturing and works on developing greener technologies that meet industry demands while minimizing environmental damage.

Author Metrics

Dr. Lin is an active author, contributing to various peer-reviewed journals and conferences. Her work on chrome-free tanning and the recycling of tannery waste has gained attention from industry professionals and academics alike. She has published numerous research articles in leading journals on sustainable leather production, green chemistry, and biomaterials. Additionally, her work is frequently cited in research on environmental sustainability in industrial manufacturing processes.

Dr. Lin continues to collaborate with national and international researchers, promoting green chemistry innovations in the leather industry and advocating for more sustainable manufacturing practices.

Awards and Honors

Dr. Lin’s contributions to teaching and research have been recognized through numerous prestigious awards:

  • Baogang Excellent Teacher Award (2022)
  • Excellent Teacher of Sichuan Province (2020)
  • Award for Sichuan Province Youth Science and Technology (2009)
  • Excellent Youth Teacher of Sichuan University (2006)
  • Wang Kuan-Cheng Postdoctoral Working Fund, Chinese Academy of Sciences (2001)
  • National Excellent Student Scholarship (1999)
  • Excellent Graduate Scholarship of Chinese Leather Industry Society (1998)

These awards reflect Dr. Lin’s dedication to her field and her significant contributions to the advancement of both academic knowledge and practical applications in leather engineering.

Publications Top Notes šŸ“„

1. Modular Design of Vegetable Polyphenols Enables Covalent Bonding with Collagen for Eco-Leather

  • Authors: Yuanhang Xiao, Chunhua Wang, Jiajing Zhou, Wei Lin
  • Journal: Industrial Crops & Products
  • Year: 2023
  • Volume: 204
  • Article ID: 117394
  • DOI: 10.1016/j.indcrop.2023.117394
  • Abstract: This study focuses on the development of eco-friendly leather through the modular design of vegetable polyphenols. These polyphenols facilitate covalent bonding with collagen, enhancing the mechanical properties of leather. The use of vegetable-based polyphenols aims to replace harmful chemical agents traditionally used in leather production, making it a more sustainable alternative.

2. General Liquid Vegetable Oil Structuring via High Internal Phase Pickering Emulsion Stabilized by Soy Protein Isolate Nanoparticles

  • Authors: Chenzhi Wang, Xin Guan, Jun Sang, Jiajing Zhou, Chunhua Wang, To Ngai, Wei Lin
  • Journal: Journal of Food Engineering
  • Year: 2023
  • Volume: 356
  • Article ID: 111595
  • DOI: 10.1016/j.jfoodeng.2023.111595
  • Abstract: This paper investigates the structuring of liquid vegetable oils using a high internal phase Pickering emulsion stabilized by soy protein isolate nanoparticles. The study demonstrates how this method can be used to create stable emulsions for various food applications, improving texture and functionality. This approach also highlights the potential for using plant-based ingredients to replace synthetic stabilizers in food formulations.

3. Pickering Aqueous Foam Templating: A Promising Strategy to Fabricate Porous Waterborne Polyurethane Coatings

  • Authors: Jianhui Wu, Jiajing Zhou, Zhenghao Shi, Chunhua Wang, To Ngai, Wei Lin
  • Journal: Collagen and Leather
  • Year: 2023
  • Volume: 5
  • Article ID: 10
  • DOI: 10.1016/j.collagen.2023.10
  • Abstract: This paper explores the use of Pickering aqueous foam templating as a strategy to produce porous, waterborne polyurethane coatings. The research demonstrates how foam templating can be applied to create coatings with enhanced properties for applications in environmental protection and materials science. The approach is both sustainable and versatile, offering potential benefits for industries requiring durable, eco-friendly coatings.

4. Space-Efficient 3D Microalgae Farming with Optimized Resource Utilization for Regenerative Food

  • Authors: Liu, H., Yu, S., Liu, B., … Lin, W., Zhou, J.
  • Journal: Advanced Materials
  • Year: 2024
  • Volume: 36(24)
  • Article ID: 2401172
  • DOI: 10.1002/adma.202401172
  • Abstract: This study introduces a space-efficient method for 3D microalgae farming, optimizing resource utilization to enhance the productivity of regenerative food systems. The paper presents a new model for sustainable food production using microalgae, focusing on minimizing space while maximizing nutrient cycling and resource efficiency. This approach could play a key role in addressing global food security challenges.

5. Energy-saving and Low-carbon Leather Production: AI-assisted Chrome Tanning Process Optimization

  • Authors: Zhang, L., Cheng, Q., Wang, C., Huang, C., Lin, W.
  • Journal: Journal of Cleaner Production
  • Year: 2024
  • Volume: 457
  • Article ID: 142464
  • DOI: 10.1016/j.jclepro.2024.142464
  • Abstract: This paper explores the application of artificial intelligence (AI) to optimize the chrome tanning process in leather production, focusing on energy savings and reducing carbon emissions. The study demonstrates that AI-assisted techniques can significantly improve the efficiency of tanning processes while maintaining leather quality, making it more sustainable and cost-effective.

Conclusion

Prof. Wei Lin is undoubtedly deserving of the Best Researcher Award due to her extensive contributions to sustainable leather production. Her groundbreaking work in chrome-free tanning, waste reutilization, and the development of cleaner leather-making technologies has revolutionized the leather industry, helping it take significant steps toward reducing its environmental footprint. Additionally, her mentorship and collaborative efforts have nurtured the next generation of researchers in this critical field.

Her research has not only addressed immediate environmental concerns but also proposed long-term solutions for more sustainable and circular manufacturing processes. While there is potential for further expansion of her work in alternative materials and wider industrial adoption, Prof. Lin’s dedication to green chemistry and environmental sustainability has already established her as a global leader in her field.

Lechen Li | Data Science | Best Researcher Award

Assist. Prof. Dr. Lechen Li | Data Science | Best Researcher Award

Assistant Professor, at Hohai University, ChinašŸ“–

Lechen Li, Ph.D., is a multidisciplinary researcher and engineer specializing in Engineering Mechanics and Data Science. With a strong foundation in computational mechanics and deep learning, he has contributed significantly to smart grid development, structural health monitoring, and intelligent systems. His award-winning work has been presented at leading international conferences and has garnered recognition for its impact on sustainable infrastructure and advanced engineering solutions.

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Education BackgroundšŸŽ“

Dr. Lechen Li is an accomplished scholar in Engineering Mechanics and Data Science with extensive academic and research experience. He earned his Ph.D. in Engineering Mechanics from Columbia University in 2023, achieving an impressive GPA of 3.889/4.0. His doctoral research spanned smart grid development, computational structural dynamics, and data-driven system control. Prior to this, he completed a Master of Science in Data Science at Columbia University in 2019, where he excelled academically with a GPA of 3.917/4.0 and received the prestigious Robert A.W. and Christine S. Carleton Scholarship. Dr. Li’s academic journey began at Sichuan University, China, where he earned his Bachelor’s degree in Engineering Mechanics in 2018. Notably, he secured first prizes in the Zhou Peiyuan National Mechanics Modeling Contest and the First Prize Scholarship twice.

Professional Experience🌱

Dr. Li brings a wealth of industry experience that complements his academic achievements. At Colombo International Container Terminals (CICT) in Sri Lanka, he served as a Data Research Analyst, where he developed machine learning models to optimize port logistics and transportation planning using a dynamic reinforcement learning framework. Earlier, during his tenure as a CAE Analyst at the National Institute of Water, Energy and Transportation in China, Dr. Li conducted advanced simulations using the Extended Finite Element Method (XFEM), providing valuable insights into lateral pile-soil pressure distribution on pile groups.

Research InterestsšŸ”¬

Dr. Li’s research is centered on:

  • Structural Health Monitoring and Control: Developing advanced deep-learning frameworks for real-time system identification and damage detection.
  • Data-Driven Dynamics: Applying machine learning and signal processing techniques for smart grid optimization and time-series forecasting.
  • Computational Mechanics: Leveraging finite element analysis and XFEM for solving complex engineering problems.
  • Sustainability and Infrastructure: Innovating intelligent systems for energy-efficient monitoring and optimization.

Author MetricsĀ 

  • Publications: Dr. Li has co-authored numerous papers in high-impact journals and conferences, including presenting at the 8th World Conference on Structural Control and Monitoring, where he received the Best Conference Paper Award.
  • Citations: His publications have been widely cited, reflecting the practical and theoretical contributions of his research.
  • Academic Awards: Best Paper Award (8WCSCM, 2022), First Prize in Zhou Peiyuan National Mechanics Modeling Contest (2017).

Publications Top Notes šŸ“„

1. Short-term apartment-level load forecasting using a modified neural network with selected auto-regressive features

  • Authors: L. Li, C.J. Meinrenken, V. Modi, P.J. Culligan
  • Published in: Applied Energy, 2021
  • Citations: 82
  • Summary: This study focuses on improving short-term electricity load forecasting at the apartment level. The authors developed a modified neural network model that integrates auto-regressive features to enhance prediction accuracy. The approach has implications for optimizing energy management and grid operations in residential buildings.

2.Impacts of COVID-19 related stay-at-home restrictions on residential electricity use and implications for future grid stability

  • Authors: L. Li, C.J. Meinrenken, V. Modi, P.J. Culligan
  • Published in: Energy and Buildings, 2021
  • Citations: 32
  • Summary: This paper examines the effects of COVID-19 lockdowns on residential electricity consumption patterns. The study provides insights into shifts in energy usage due to work-from-home trends and discusses the implications for grid stability and planning.

3.Structural damage assessment through a new generalized autoencoder with features in the quefrency domain

  • Authors: L. Li, M. Morgantini, R. Betti
  • Published in: Mechanical Systems and Signal Processing, 2023
  • Citations: 28
  • Summary: The research introduces a novel autoencoder model that utilizes features in the quefrency domain for structural damage detection. The methodology enhances damage assessment accuracy and offers a new perspective in signal processing for civil infrastructure health monitoring.

4. A machine learning-based data augmentation strategy for structural damage classification in civil infrastructure systems

  • Authors: L. Li, R. Betti
  • Published in: Journal of Civil Structural Health Monitoring, 2023
  • Citations: 8
  • Summary: This work proposes a machine learning-driven data augmentation technique aimed at improving structural damage classification in civil infrastructure systems. The study addresses the challenges of limited data availability in real-world scenarios and improves model robustness.

5. Experimental investigation of the dynamic mechanical properties of concrete under different strain rates and cyclic loading

  • Authors: L. Gan, Y. Liu, Z. Zhang, Z. Shen, L. Li, H. Zhang, H. Jin, W. Xu
  • Published in: Case Studies in Construction Materials, 2024
  • Citations: 4
  • Summary: This experimental study explores the dynamic mechanical behavior of concrete under varying strain rates and cyclic loading conditions. The findings contribute to understanding the material’s performance in diverse loading scenarios, which is crucial for construction and structural design.

Conclusion

Dr. Lechen Li is undoubtedly a highly deserving candidate for the Best Researcher Award. His innovative contributions to engineering mechanics, data science, and structural health monitoring, combined with his solid academic background, make him a strong contender. His research not only pushes the boundaries of technology but also has significant real-world implications for energy management, infrastructure sustainability, and smart grid optimization.

While there are areas where he can expand his influence—such as increasing collaborations with industry, diversifying research, and engaging more broadly with the public—his current achievements already demonstrate his potential for continued leadership in these fields. His work is set to contribute substantially to the next generation of intelligent systems, and with continued focus on bridging academia and industry, Dr. Li will undoubtedly remain at the forefront of his field.

Hence, Dr. Lechen Li’s selection for the Best Researcher Award is both well-earned and a recognition of his future promise as a trailblazer in engineering and data science.