Dr. Xi Tianyu is a professor and doctoral supervisor at the Northeastern University School of Architecture, specializing in sustainable architecture, architectural technology, and green living. He has led over 10 national and provincial research projects, published more than 50 papers, and holds three authorized patents. He has contributed to national and industry standards, authored textbooks, and received multiple awards for teaching and research excellence. Dr. Xi is actively involved in several professional committees, including the China Urban Science Research Association and the China Engineering Construction Standardization Association, and is a member of international organizations such as ISIAQ and AIJ.
Dr. Xi Tianyu is a highly accomplished researcher in sustainable architecture, with extensive contributions to green building technologies, energy conservation, and thermal comfort optimization. His leadership in over 10 national and provincial research projects, along with 50+ published papers and multiple patents, demonstrates his strong research impact. His involvement in national standards development, textbook authorship, and architectural design competitions further highlights his influence in academia and industry. Given his outstanding research, academic leadership, and numerous accolades, Dr. Xi Tianyu is a highly suitable candidate for the Best Researcher Award.
📚 Education & Work Experience
🎓 Doctor of Engineering 🏫 Professor & Doctoral Supervisor at Northeastern University School of Architecture
🏆 Achievements
🔬 Led 10+ research projects (national, provincial, and local), including:
🇨🇳 National Natural Science Foundation Key Project sub-projects
🎯 National Natural Science Foundation Youth Fund
📄 Published 50+ research papers 📜 3 authorized patents 📘 Co-authored 5 national & industry standards 📖 Contributed to 2 textbooks & authored 1 book (funded by National Publishing Fund)
🎨 Guided 10+ international & domestic architectural design competitions, winning: 🥇 Gu Yu Cup First Prize 🏅 AIM Cup Special Prize 🥉 China Habitat Environment Design Annual Award Bronze Award (2023)
🎖️ Awards & Honors
🏆 Northeastern University Teaching Achievement Awards:
🥇 First Prize (2024)
🥈 Second Prize (2022) 🎓 Excellent Teaching Plan Award 📜 Excellent Homework Guide Award 📖 Excellent Paper Award (Chinese Higher Education Architecture Teaching Guidance Committee)
Publication Top Notes:
Analysis of the Characteristics of Heat Island Intensity Based on Local Climate Zones in the Transitional Season of Shenyang
Optimization of Residential Indoor Thermal Environment by Passive Design and Mechanical Ventilation in Tropical Savanna Climate Zone in Nigeria, Africa
A preliminary study of multidimensional semantic evaluation of outdoor thermal comfort in Chinese
Preliminary Research on Outdoor Thermal Comfort Evaluation in Severe Cold Regions by Machine Learning
A Review of Thermal Comfort Evaluation and Improvement in Urban Outdoor Spaces
Peng Zhi is a Ph.D. candidate in Computer Science at Lanzhou University, China, specializing in computer vision, deep learning, and autonomous driving. He earned his Bachelor’s and Master’s degrees in Computer Science and Technology from Lanzhou University in 2017 and 2020, respectively. His research focuses on LiDAR-camera fusion, 3D object detection, and AI applications in intelligent transportation systems. He has published several high-impact papers in renowned journals and conferences, contributing to advancements in autonomous vehicle perception and artificial intelligence. Additionally, he has co-authored the book Theories and Practices of Self-Driving Vehicles, further solidifying his expertise in the field.
Summary of Suitability for the Best Researcher Award
Peng Zhi is a strong candidate for the Best Researcher Award, given his innovative contributions to computer vision, deep learning, and autonomous driving. As a Ph.D. candidate at Lanzhou University, he has been actively involved in research that enhances LiDAR-based 3D object detection, cross-domain generalization, and deep learning applications in autonomous systems.
🎓 Education
Ph.D. in Computer Application Technology (2021 – Present) Lanzhou University, Lanzhou, China
Master’s in Computer System Architecture (2017 – 2020) Lanzhou University, Lanzhou, China
Bachelor’s in Computer Science and Technology (2013 – 2017) Lanzhou University, Lanzhou, China
Conducts advanced research in computer vision, deep learning, and autonomous driving
Publishes in top-tier journals and conferences
Develops LiDAR and camera fusion models for 3D object detection
🏆 Achievements & Contributions
Published Multiple Research Papers 📄 in top journals and conferences, including Tsinghua Science and Technology, Electronic Research Archive, and IEEE ITSC
Author of a Book on Self-Driving Vehicles 📘 Theories and Practices of Self-Driving Vehicles (Elsevier, 2022)
Developed DefDeN Model 🤖 A deformable denoising-based LiDAR and camera feature fusion model for 3D object detection
Research on Autonomous Driving 🚗 Focused on boundary distribution estimation and cross-domain generalization for LiDAR-based 3D object detection
🏅 Awards & Honors
Best Paper Award 🏆 at an International Conference on Intelligent Transportation Systems (ITSC)
Outstanding Researcher Award 🎖️ at Lanzhou University for contributions to AI and autonomous driving
National Scholarship 🏅 for academic excellence in computer science and AI research
Publication Top Notes:
Cross-Domain Generalization for LiDAR-Based 3D Object Detection in Infrastructure and Vehicle Environments
Dr. Jany Shabu, Sathyabama Institute of Science & Technology, India
Dr. S.L. Jany Shabu is an accomplished Associate Professor in the Department of Computer Science Engineering at Sathyabama Institute of Science and Technology, Chennai, Tamil Nadu, India. With a Ph.D. in Image Fusion, her research focuses on multimodal image fusion using intelligent optimization techniques, particularly in the context of brain tumor detection. Dr. Shabu has a strong academic background, holding both M.Tech and MS degrees in Information Technology, and has published extensively, with 58 papers indexed in Scopus and four in WoS. She has received multiple accolades for her contributions to research and education, including cash awards for publishing in high-impact journals and the prestigious NPTEL Discipline Star Certificate. As an active member of the National Institute for Technical Training and Skill Development, Dr. Shabu is dedicated to advancing the field of computer science through her research, teaching, and professional engagement. Her innovative projects, including a Safety Stick for Elders, and her patents in smart traffic control and gesture-based systems, exemplify her commitment to leveraging technology for societal benefit. She has also authored several books on machine learning, cloud computing, and data analytics, further solidifying her reputation as a thought leader in her field. With a robust online presence, including profiles on ORCID and Scopus, Dr. Shabu continues to contribute to academic excellence and innovation in computer science.
Dr. S.L. Jany Shabu is a commendable candidate for the Best Researcher Award, recognized for her significant contributions to computer science engineering and her innovative research in image fusion and optimization techniques.
Education 🎓
Ph.D. in Image Fusion Sathyabama Institute of Science and Technology Thesis Title: Multimodal Image Fusion using Intelligent Optimization Techniques with Brain Tumor Detection
M.Tech (IT) in Information Technology Sathyabama Institute of Science and Technology Graduated with First Class
M.S. (IT) in Information Technology Manonmaniam Sundaranar University Graduated with First Class
Work Experience 💼
Current Position: Associate Professor, Computer Science Engineering Sathyabama Institute of Science and Technology
Achievements 🌟
Seed Funding: Project Title: Safety Stick for Elders Amount: ₹300,000 Period: Oct 2021 – June 2022 Role: Co Principal Investigator
Patent Holder:
SMART TRAFFIC CONTROL SYSTEM USING IOT BASED MONITORING SYSTEM Application No: 201741038384 – Published
GARMENT STEAMER MANAGEMENT SYSTEM Application No: 367890-001 – Published
GESTURE BASED ELECTRONIC GADGET OPERATING SYSTEM Application No: 202341088351 A – Published
Reviewer:
Journal of Scientific Research and Reports
Journal of Pharmaceutical Research International
International Conference on Computational Intelligence, Networks & Security
Book Chapter for CRC PRESS Taylor & Francis Group
Awards and Honors 🏆
Cash Award for Publishing Paper in High Impact WOS Journal Sathyabama Institute of Science and Technology (Teachers Day 2022 & 2024)
NPTEL Discipline Star Certificate
Disciplinarian Award Sathyabama Institute of Science & Technology, Chennai
Publication Top Notes:
DeepExuDetectNet: Diabetic retinopathy diagnosis: Blood vessel segmentation and exudates disease detection in fundus images
A swarm intelligence optimization for lung cancer detection from RNA-seq gene expression data using convolutional neural networks
A novel framework for entertainment robots in personalized elderly care using adaptive emotional resonance technologies
An Improved Adaptive Neuro-fuzzy Inference Framework for Lung Cancer Detection and Prediction on Internet of Medical Things Platform
Rainfall prediction using machine learning techniques
Dr. Akmal Jahan Mohamed Abdul Cader, South Eastern University, Sri Lanka.
Dr. Akmal Jahan Mohamed Abdul Cader is a distinguished academic and researcher currently serving as a Senior Lecturer in Computer Science at the South Eastern University of Sri Lanka. With extensive experience in higher education, he is a Visiting Research Fellow at QUT, Australia. His research interests include artificial intelligence, data science, and document image analysis. Dr. Cader has published numerous high-impact articles and is actively involved in academic development and curriculum design. He is committed to advancing education and research in the field of computer science.
Visiting Research Fellow – QUT Momentum Visiting Fellow, QUT, Australia (2021 – Present)
Senior Lecturer (Computer Science) – South Eastern University of Sri Lanka (2020 – Present)
Sessional Academic – School of Electrical Engineering & Computer Science, QUT (2016 – 2019)
Lecturer (Computer Science) – South Eastern University of Sri Lanka (2012 – 2015)
Assistant Lecturer – South Eastern University of Sri Lanka (2010 – 2012)
Demonstrator in Computer Science – South Eastern University of Sri Lanka (2009 – 2010)
Suitability For The Award
Dr. Mac Akmal Jahan Mohamed Abdul Cader, Senior Lecturer in Computer Science at the South Eastern University of Sri Lanka, is a highly accomplished academic and researcher, making him an exemplary candidate for the Best Researcher Award. With a career spanning over a decade, Dr. Cader has consistently demonstrated leadership in research, teaching, and academic development, particularly in the fields of artificial intelligence, computer science, and digital technologies. His research contributions, coupled with his active involvement in academic service, professional organizations, and international collaborations, solidify his standing as a leading figure in his domain.
Professional Development
Dr. Cader has participated in several professional development programs focused on effective communication, teaching and learning, and project-based learning. He has completed various certifications at QUT, enhancing his skills in pedagogy and curriculum development. His commitment to continuous improvement in education is evident in his active engagement in workshops and training sessions aimed at promoting best practices in teaching. As a Fellow of the Higher Education Academy, he champions high standards in academic instruction and student engagement.
Research Focus
Dr. Cader’s research primarily focuses on artificial intelligence, data science, and document image analysis. He explores the synthesis and application of synthetic metals, aiming to develop innovative solutions in electronics and energy storage. His work on TCNQ chemistry has significant implications for biotechnology and medicine, including the construction of electrochemical sensors and drug delivery systems. By synthesizing novel compounds, he contributes to advancements in both theoretical and practical aspects of computer science and materials research.
Awards and Honors
Senate Honours Award for High Impact Publications – SEUSL (2022 & 2023)
Queensland University of Technology Postgraduate Award (QUTPRA) (2015)
Faculty Write Up (FWU) Scholarship – QUT, Australia (2019)
Effective Communication in Teaching and Learning – QUT, Australia (2019)
Foundation of Teaching and Learning – QUT (2018)
Publication Top Notes
Locating tables in scanned documents for reconstructing and republishing | Cited by: 46 | Year: 2014
Plagiarism Detection on Electronic Text based Assignments using Vector Space Model (ICIAfS14) | Cited by: 37 | Year: 2014
AntiPlag: Plagiarism Detection on Electronic Submissions of Text Based Assignments | Cited by: 34 | Year: 2014
Plagiarism detection tools and techniques: A comprehensive survey | Cited by: 23 | Year: 2021
Contactless multiple finger segments based identity verification using information fusion from higher order spectral invariants | Cited by: 9 | Year: 2018
Assoc. Prof. Dr. Mahmoud Bayat, Research Institute of Forests and Rangelands, Iran
Mahmoud Bayat is an Assistant Professor at the Research Institute of Forests and Rangelands, part of the Agricultural Research, Education, and Extension Organization (AREEO) in Tehran, Iran. He earned his B.A., M.Sc., and Ph.D. degrees from the University of Tehran, specializing in forestry science. Mahmoud has collaborated with renowned researchers, including Dr. Charles P.-A. Bourque, Dr. Pete Bettinger, Dr. Eric Zenner, Dr. Aaron Weiskittel, Dr. Harold Burkhart, and Dr. Timo Pukkala. His research focuses on forest modeling and inventory, with particular interest in applying artificial intelligence and machine learning techniques in forestry. Currently, he is working on projects related to growth and yield models for uneven-aged and mixed broadleaf forests using neural networks and the monitoring and mapping of tree species richness in northern Iran’s forests through symbolic regression and artificial neural networks. Mahmoud is proficient in statistical tools such as SPSS and MATLAB, and he is eager to share his expertise and discuss potential collaborations. For more information, his profiles can be found on ResearchGate, Google Scholar, and Scopus.
Mahmoud Bayat’s Suitability for the Research for Best Researcher Award
Based on the provided details, Mahmoud Bayat demonstrates a strong candidacy for the Research for Best Researcher Award due to his extensive academic and professional contributions. Below is a summary supporting his suitability
Education 🎓
Ph.D. in Forestry Science
University of Tehran, Iran
M.Sc. in Forestry Science
University of Tehran, Iran
B.A. in Forestry Science
University of Tehran, Iran
Work Experience 🏢
Assistant Professor
Research Institute of Forests and Rangelands, Agricultural Research, Education and Extension Organization (AREEO)
Tehran, Iran
Year: [Specify Year] – Present
Research Collaborator
Worked with:
Dr. Charles P.-A. Bourque
Dr. Pete Bettinger
Dr. Eric Zenner
Dr. Aaron Weiskittel
Dr. Harold Burkhart
Dr. Timo Pukkala
Research Interests 🔍
Forest modeling and inventory
Application of artificial intelligence and machine learning in forestry
Current Projects 📊
Growth and Yield Models for Uneven-Aged and Mixed Broadleaf Forest
Method: Neural Network
Monitoring, Mapping, and Modeling Variation in Tree Species Richness
Method: Symbolic Regression and Artificial Neural Networks
Location: Northern Iran Forests
Publication Top Notes:
Comparison of Random Forest Models, Support Vector Machine and Multivariate Linear Regression for Biodiversity Assessment in the Hyrcanian Forests
Projected biodiversity in the Hyrcanian Mountain Forest of Iran: an investigation based on two climate scenarios
Recreation Potential Assessment at Tamarix Forest Reserves: A Method Based on Multicriteria Evaluation Approach and Landscape Metrics
Comparison between graph theory connectivity indices and landscape connectivity metrics for modeling river water quality in the southern Caspian sea basin
Development of multiclass alternating decision trees based models for landslide susceptibility mapping
Modeling Tree Growth Responses to Climate Change: A Case Study in Natural Deciduous Mountain Forests
Prof. Dr. Shih-Lin Chang, National Yang Ming Chiao Tung University, Taiwan
Dr. Shih-Lin Chang, is a distinguished cardiologist and academic leader in the field of cardiovascular medicine. He is currently the Chief of the Department of Experimental Examination at Taipei Veterans General Hospital and the Director of the Intelligent Medicine and Telehealth Center within the Cardiovascular Center. Dr. Chang is also a Professor of Medicine at National Yang Ming Chiao Tung University, where he has contributed significantly to research and education in cardiology. Dr. Chang completed his M.D. at China Medical University in 1998 and earned his Ph.D. from National Yang Ming Chiao Tung University in 2012. He underwent extensive training, including a residency in Internal Medicine and fellowships in cardiology and electrophysiology at Taipei Veterans General Hospital. His professional journey includes significant roles such as Staff Cardiologist and Associate Director of the Cardiovascular Research Center at National Yang Ming Chiao Tung University.
Suitability for Best Researcher Award: Shih-Lin Chang, M.D., Ph.D.
Shih-Lin Chang exemplifies the qualities and achievements that make him an outstanding candidate for the Best Researcher Award. With a robust educational background, including an M.D. from China Medical University and a Ph.D. from National Yang Ming Chiao Tung University, Dr. Chang has established himself as a leading figure in cardiology and electrophysiology.
🎓 Education
M.D.: China Medical University, Taiwan (1991–1998)
Ph.D.: National Yang Ming Chiao Tung University, Institute of Clinical Medicine, Taiwan (2007–2012)
💼 Work Experience
2023.8: Chief, Department of Experimental Examination, Taipei Veterans General Hospital Healthcare and Services Center
2023.1: Director of Intelligent Medicine and Telehealth Center, Department of Cardiovascular Center
2022.7: Associate Director, Cardiovascular Research Center, National Yang Ming Chiao Tung University
2019.8: Professor of Medicine, National Yang Ming Chiao Tung University, School of Medicine
2017.10–2020.10: Director, Heart Rhythm Center, Taipei Veterans General Hospital
2016.8–2019.8: Associate Professor of Medicine, National Yang Ming Chiao Tung University
2015.3–2017.3: Secretary-General, Taiwan Heart Rhythm Society
2009.3–Present: Staff Cardiologist, Division of Cardiology, Taipei Veterans General Hospital
2006–2009.3: Staff Cardiologist, Division of Cardiology, Suao Veterans Hospital
2004–2006: Fellowship, Clinical and Basic Electrophysiology Laboratory, Taipei Veterans General Hospital
2003–2005: Fellowship, Division of Cardiology, Taipei Veterans General Hospital
2000–2003: Resident, Department of Internal Medicine, Taipei Veterans General Hospital
First Prize: Young Investigator Award, Taiwan Society of Cardiology (2010) 🥇
Young Investigator Award: 3rd Asia-Pacific Heart Rhythm Society (2010) 🏅
Best Oral Presentation Award: Taiwan Society of Cardiology (2011) 🎤
Best Poster Presentation Award: Taiwan Society of Cardiology (2013) 🖼️
Best Teacher Award: National Yang Ming University (2014, 2016, 2019) 🎓
Best Paper Award: Veterans General Hospitals and University System of Taiwan Joint Research Program (2015, 2018, 2019, 2021) 📝
PBL Tutor Award: National Yang Ming University (2017) 👩🏫
Outstanding Journal Paper Special Excellence Award: Taiwan Society for Simulation in Healthcare (2021) 🌟
Gold Award: Outstanding Academic Research Paper in Medical Education, Taipei Veterans General Hospital (2022) 🥇
National Healthcare Quality Award: Smart Services Category (2022) 🏥
Clinical Teaching Excellence Award: Taipei Veterans General Hospital (2023) 📚
🌟 Achievements
Active roles as editor for Acta Cardiologica Sinica (2015–Present) and Clinical Medicine (2014–Present).
Member of APHRS EP Ablation and Digital Health Committees (2024).
Numerous oral and poster presentations at international cardiology conferences.
Invited faculty/speaker at prestigious global cardiology events, including the European Society of Cardiology Congress and Heart Rhythm Society Annual Scientific Sessions.
Publication Top Notes:
Performance of the novel ANTWERP score in predicting heart function improvement after atrial fibrillation ablation in Asian patients with heart failure
Three-dimensional mapping and superior approach for catheter ablation in patients without inferior vena cava access
Effectiveness and safety of non-vitamin K antagonist oral anticoagulants in low-weight patients with atrial fibrillation
Multistep Algorithm to Predict RVOT PVC Site of Origin for Successful Ablation Using Available Criteria: A Two-Center Cross-Validation Study
Frailty and Its Associated Factors in Patients With Atrial Fibrillation: A Cross-Sectional Study
Ruochen Li, PhD candidate at Macau University of Science and Technology, specializes in Artificial Intelligence with a focus on no-reference video quality assessment, cross-modal audio-visual retrieval, and image-based sound source localization. With expertise in cutting-edge AI technologies like PyTorch, TensorFlow, and MindSpore, Li has achieved groundbreaking research in video quality evaluation and audio-visual content correlation, earning recognition in top-tier journals. He has also received a prize in the National Artificial Intelligence Competition for his contributions to ultra-high-definition video processing.
PhD in Artificial Intelligence (2021-2024), Macau University of Science and Technology.
Master’s in Control Engineering (2016-2019), Jiangsu University of Science and Technology.
Supervisor: Associate Prof. Shuxia Ye.
Bachelor’s in Control Engineering (2012-2016), Jiangsu University of Science and Technology.
Research Participant: National Ultra-High Definition Video Innovation Center.
Research Contributor: China Science and Technology Information Research Institute.
Suitability For The Award
Dr. Ruochen Li is an accomplished researcher specializing in artificial intelligence, video quality assessment, and audio-visual event retrieval. With a Ph.D. in Artificial Intelligence from Mauca University of Science and Technology and extensive expertise in PyTorch, TensorFlow, and MindSpore, Li has contributed significantly to advancing multimedia technologies. Their innovations include state-of-the-art datasets, algorithms like Reformer, and multimodal fusion techniques with applications in accessibility, entertainment, and surveillance. Recognized through high-impact publications and awards, including third prize in the National Artificial Intelligence Competition, Ruochen Li exemplifies excellence in research and innovation, making them a strong candidate for prestigious honors such as the Best Researcher Award.
Professional Development
Ruochen Li’s professional journey is defined by innovations in AI and deep learning. He developed the UHD-VQ5k dataset and proposed novel algorithms for ultra-high-definition video quality assessment, utilizing advanced models like Resformer. His work in audio-visual content analysis, featured in his doctoral dissertation, emphasizes the integration of audio-visual features using deep neural networks. As a key participant in national projects, he has contributed to cloud-based UHD video platforms and AI policy analysis. His collaborations and publications underscore his commitment to advancing AI research and applications.
Research Focus
Ruochen Li’s research revolves around Artificial Intelligence applications in multimedia. His expertise spans no-reference video quality assessment, where he develops datasets and benchmarks for UHD video, to cross-modal audio-visual retrieval, enhancing machine understanding of multimodal content. His work also extends to image-based sound source localization, integrating audio-visual data for precise event detection. Through pioneering algorithms, Li bridges gaps between modalities, advancing the interplay of audio and video content in deep learning applications. His contributions drive progress in multimedia AI.
Awards and Honors
Prize Winner: National Artificial Intelligence Competition.
CET-6 Certificate: Scored 490.
CET-4 Certificate: Scored 552.
Publication Top Notes
SgLFT: Semantic-guided Late Fusion Transformer for Video Corpus Moment Retrieval – Neurocomputing, 2024.
Ultrahigh-definition Video Quality Assessment: A New Dataset and Benchmark – Neurocomputing, 2024,
TA2V: Text-Audio Guided Video Generation – IEEE Transactions on Multimedia, 2024,
Cross-Modality Knowledge Calibration Network for Video Corpus Moment Retrieval – IEEE Transactions on Multimedia, 2024,
Maximizing Mutual Information Inside Intra- and Inter-Modality for Audio-Visual Event Retrieval – International Journal of Multimedia Information Retrieval, 2023,
Dr. Seyed Reza Nabavi, University of Mazandaran, Iran
Dr. Seyed Reza Nabavi is an Associate Professor of Applied Chemistry in the Department of Applied Chemistry at the University of Mazandaran, Babolsar, Iran. he earned his Ph.D. in Applied Chemistry from the University of Tabriz in 2009, focusing on hybrid modeling and artificial intelligence applications for olefin process optimization. As a visiting scholar at the National University of Singapore in 2008, Dr. Nabavi further honed his expertise in chemical and biomolecular engineering. His teaching repertoire spans diverse topics, including transport phenomena, chemical reactor design, and chemical process modeling at both undergraduate and postgraduate levels. A prolific researcher, his interests lie in polymer nanotechnology, catalytic processes, machine learning in chemical process optimization, and pyrolysis. Notably, he has collaborated on significant projects, such as studying coke formation and inhibitors in naphtha thermal cracking at the bench scale, bridging academia and industry. Married and based in Iran, Dr. Nabavi has received recognition for his academic excellence, including being the top-ranked B.Sc. graduate.
Suitability for Best Researcher Award: Seyed Reza Nabavi
Based on the provided curriculum vitae, Dr. Seyed Reza Nabavi demonstrates exceptional qualifications that make him a strong candidate for the Best Researcher Award. Below is a summary of his key accomplishments and attributes supporting his suitability for this recognition
🎓 Educational Background
Ph.D. in Applied Chemistry (2009), University of Tabriz 🧬 Thesis: Application of Hybrid Modeling and Artificial Intelligence in Modeling and Optimization of Olefin Processes.
Visiting Scholar: National University of Singapore (Apr-Dec 2008).
M.Sc. in Applied Chemistry (2003), University of Tabriz 🧵 Thesis: Preparation and Characterization of Conducting Polyaniline/Nylon-6 Composite Fibers.
B.Sc. in Applied Chemistry (2000), University of Sistan and Baluchestan 🏛️
🎖️ First Rank among graduate students.
👨🏫 Teaching Experience
Expertise in teaching at M.Sc. and B.Sc. levels 📚, including advanced courses:
Transport Phenomena, Design of Experiments (DOE), Chemical Reactors, Process Control, and Petrochemical Processes.
Proficient in Modeling and Simulation and Unit Operation Laboratories.
🔬 Research Interests
Nanotechnology of Polymers: Electrospinning and Nanofiber Membranes 🧵.
Catalytic Processes: Ozonation, Photocatalysts, and Reaction Engineering ⚗️.
Modeling and Optimization: Applying Machine Learning and Evolutionary Algorithms 🤖.
Thermal Cracking & Pyrolysis: Exploring Coke Formation and Mitigation 🔥.
🏅 Academic Positions
Associate Professor: 2022 – Present, University of Mazandaran 🏫.
Assistant Professor: 2012 – 2022, University of Mazandaran.
🧪 Research Highlights
Lead researcher in projects like Coke Formation and Inhibitors in thermal cracking of naphtha (collaboration with Tabriz Petrochemical Company) 🛢️.
Published impactful research on polymers, reaction engineering, and optimization using cutting-edge AI techniques.
Publication top Notes:
Multi-Criteria Decision Making in Chemical and Process Engineering: Methods, Progress, and Potential
A liter scale synthesis of hierarchically mesoporous UiO-66 for removal of large antibiotics from wastewater
Data-Based Modeling, Multi-Objective Optimization and Multi-Criteria Decision Making of a Catalytic Ozonation Process for Degradation of a Colored Effluent
A bacterial cellulose-based LiSrVO4:Eu3+ nanosensor platform for smartphone sensing of levodopa and dopamine: point-of-care diagnosis of Parkinson’s disease
Parametric optimization of poly(ether sulfone) electrospun membrane for effective oil/water separation
Deep Learning Aided Multi-Objective Optimization and Multi-Criteria Decision Making in Thermal Cracking Process for Olefines Production
Dr. Tara P Banjade, East China University of Technology, Nanchang, China
Dr. Tara P. Banjade is an Associate Professor at the East China University of Technology, Nanchang, China, specializing in applied mathematics, seismic signal processing, and artificial intelligence applications for seismic data processing. He completed his Ph.D. in Applied Mathematics at Harbin Institute of Technology in China in 2020, following a Master’s and Bachelor’s in Mathematics from Tribhuvan University, Nepal. Dr. Banjade’s research focuses on developing mathematical algorithms for denoising seismic data, including 1D earthquake signals and 2D geophysical data like oil, gas, and ground-penetrating radar (GPR) data. His innovative approaches employ techniques such as variational mode decomposition, wavelet transforms, and artificial intelligence, including DARE U-Net for seismic noise attenuation and self-guided singular value decomposition for data edge detection.
Dr. Tara P. Banjade demonstrates an impressive academic and research profile, particularly within Applied Mathematics and Seismic Signal Processing, fields which align closely with the scope of the Best Researcher Award. His doctoral education from Harbin Institute of Technology and ongoing research position at East China University of Technology position him as a strong candidate.
Education
Harbin Institute of Technology, Harbin, China
Ph.D. in Applied Mathematics
Duration: September 2015 – January 2020
Tribhuvan University, Kathmandu, Nepal
Master’s in Mathematics
Duration: 2012 – 2014
Tribhuvan University, Kathmandu, Nepal
Bachelor’s in Mathematics
Duration: 2006 – 2010
Work Experience
Associate Professor
Institution: East China University of Technology, School of Geophysics and Measurement-Control Technology, Nanchang, Jiangxi, China
Duration: March 2023 – Present
Founder/Chairperson
Organization: Intellisia Institute for Research and Development, Nepal
Research Director
Organization: Girija Prasad Koirala Foundation
Duration: 2020 – Present
Visiting Scientist
Institution: Research Centre for Applied Science and Technology (RECAST), Tribhuvan University, Nepal
Assoc Prof Dr. Wenlong Hang, Nanjing Tech University, China
Wenlong Hang holds a Doctor of Engineering degree from Jiangnan University, where he graduated in June 2017, specializing in Light Industry Information Technology. During his doctoral studies, he visited both Hong Kong Polytechnic University and the Shenzhen Institutes of Advanced Technology. Since September 2017, Dr. Hang has been a faculty member at the School of Computer Science and Technology at Nanjing Tech University. His research interests primarily focus on artificial intelligence and machine learning, with a particular emphasis on medical image analysis and EEG signal processing. He has published more than 30 papers in reputable journals and conferences, contributing significantly to semi-supervised learning, federated learning, and EEG classification techniques. His representative works include research on medical image segmentation, reliability-aware semi-supervised frameworks, and domain-generalized EEG classification.
Summary of Suitability for Best Researcher Award :
Wenlong Hang is highly suitable for the Best Researcher Award based on his extensive research and contributions in the fields of artificial intelligence, machine learning, and medical image processing. His academic background, with a Doctor of Engineering degree from Jiangnan University, and professional experiences at institutions like Hong Kong Polytechnic University and Shenzhen Institutes of Advanced Technology, demonstrates his deep involvement in advanced technological research.
Education:
Doctor of Engineering (Graduated in June 2017)
Major: Light Industry Information Technology
Institution: Jiangnan University
Doctoral Visits: Hong Kong Polytechnic University, Shenzhen Institutes of Advanced Technology
Work Experience:
Since September 2017: Faculty Member
Position: Professor at the School of Computer Science and Technology