Chongyuan Wang | Deep learning | Best Researcher Award

Dr. Chongyuan Wang | Deep learning | Best Researcher Award

Dr. Chongyuan Wang, a Ph.D. researcher at Hohai University, specializes in artificial intelligence 🤖 and neural computation 🧠. He completed his B.S. at Jiangsu University 🇨🇳 and M.S. in Energy and Power from Warwick University 🇬🇧. His research journey is centered around biologically inspired learning algorithms, with notable contributions to dendritic neuron modeling and evolutionary optimization. Through innovative algorithms like Reinforced Dynamic-grouping Differential Evolution (RDE), Dr. Wang advances the understanding of synaptic plasticity in AI systems. His patent filings and international publications reflect a strong commitment to academic innovation and impact 🌍.

Profile

Education 🎓

🎓 B.S. in Engineering – Jiangsu University, China 🇨🇳
🎓 M.S. in Energy and Power – University of Warwick, UK 🇬🇧 (2018)
🎓 Ph.D. Candidate – Hohai University, majoring in Artificial Intelligence 🤖
Dr. Wang’s educational path bridges engineering and intelligent systems. His strong technical foundation and global exposure foster advanced thinking in machine learning and neuroscience. His current doctoral research integrates deep learning, dendritic neuron models, and biologically plausible architectures for improved learning accuracy and model efficiency. 📘🧠

Experience 👨‍🏫

Dr. Wang is currently pursuing his Ph.D. at Hohai University, where he investigates dendritic learning algorithms and synaptic modeling. 🧬 He proposed the RDE algorithm, enhancing dynamic learning in artificial neurons. His hands-on experience includes research design, algorithm optimization, patent writing, and international publication. He has contributed to projects such as “Toward Next-Generation Biologically Plausible Single Neuron Modeling” and “RADE for Lightweight Dendritic Learning.” 📊 His work balances theoretical depth and applied research, particularly in neural computation, classification systems, and resource-efficient AI. 🔬💡

Awards & Recognitions 🏅

🏅 Patent Holder (CN202410790312.0, CN202410646306.8, CN201510661212.9)
📄 Published in SCI-indexed journal Mathematics (MDPI)
🌐 Recognized on ORCID (0009-0002-6844-1446)
🧠 Nominee for Best Researcher Award 2025
His inventive research has earned him national patents and global visibility. His SCI publications in computational modeling reflect both novelty and academic rigor. His continued innovation in biologically inspired AI learning systems has established his position as an emerging researcher in intelligent systems. 🚀📘

Research Interests 🔬

Dr. Wang’s research fuses deep learning 🤖 and dendritic modeling 🧠 to create biologically plausible AI. He developed the RDE algorithm to mimic synaptic plasticity, improving convergence and adaptability in neural networks. His research areas include evolutionary optimization, adaptive grouping, resource-efficient models, and dendritic learning. He explores how artificial neurons can reflect real-brain behavior, leading to faster, more accurate AI systems. Current projects like RADE aim to make AI lightweight and biologically relevant. 🌱📊 His vision is to bridge the gap between neuroscience and AI through interpretable, high-performance algorithms. 🧠💡

Publications
  • Toward Next-Generation Biologically Plausible Single Neuron Modeling: An Evolutionary Dendritic Neuron Model

    Mathematics
    2025-04-29 | Journal article
    CONTRIBUTORS: Chongyuan Wang; Huiyi Liu

Alaa Abd-Elsayed | Neuromidulation | Best Researcher Award

Dr. Alaa Abd-Elsayed | Neuromidulation | Best Researcher Award

Dr. Alaa Abd-Elsayed 🇺🇸 is an American board-certified anesthesiologist and pain medicine specialist at the University of Wisconsin-Madison 🏥, recognized for his leadership, groundbreaking research 🔬, and compassionate patient care 💉, with a prolific academic career as a professor, director, and global speaker 🎤, blending clinical excellence, innovation, and education 📚 in pain management, with over two decades of medical service and leadership roles across Egypt 🇪🇬 and the U.S. 🇺🇸, while holding numerous prestigious certifications 🏅, published research, and leadership awards 🏆, he stands as a dedicated pioneer in improving chronic pain therapy 🔥 and anesthesiology practice worldwide 🌍.

Profile

Education 🎓

Dr. Alaa’s academic journey began at Assuit University 🇪🇬, earning his MBBCh 🩺 in 2000 & MPH 🎓 in 2006; postgrad, he trained extensively in the U.S. 🇺🇸, completing internships, anesthesiology residency, and a pain medicine fellowship 🏥 at the University of Cincinnati 🎯, and a Clinical Research Fellowship at Cleveland Clinic 🧪; board-certified in anesthesiology & chronic pain medicine 💊, and a Certified Physician Executive (CPE) 🏆, he capped his academic prowess with an Executive MBA 🎓 in 2023, mastering both medicine & healthcare leadership 🧠, and attending diverse leadership programs 💼 from AAPL, UW Health, and Faulkner University, cementing a strong foundation in clinical care and strategic innovation ⚡.

Experience 👨‍🏫

With over 20 years in medicine 🩺, Dr. Alaa has held roles from intern 👨‍⚕️ in Egypt 🇪🇬 to Associate Professor 📖, First Division Chief, and Medical Director at UW-Madison 🇺🇸; he’s led UW Health Pain Services 🔥, pioneering chronic pain medicine management 💊; his journey spanned positions at Assuit University, Cleveland Clinic, and University of Cincinnati 🏥; he’s served as chief fellow, staff anesthesiologist, researcher 🔬, educator 📚, and leader, combining advanced clinical practice 🏆 with administrative excellence 💼, mentoring future physicians while driving cutting-edge research 🚀 and pain medicine innovations 🌟.

Awards & Recognitions 🏅

Dr. Alaa’s distinguished career is crowned with awards 🌟 like the Raj/Racz Excellence Award 🥇, Physician of the Year 🏅, America’s Top Doctors 👏, Fellow of ASA 🧠, and recognition as a World Expert 🌍 in pain by Expertscape; multiple top research, poster 🖼️, and abstract prizes 🧾 from ASIPP, MARC, ASPN, ASA, INS & WSA 🏆 highlight his prolific contributions, while his books 📚 were ranked among the best in anesthesiology and pain medicine 💊; his research has shaped clinical practices 🌡️ and his leadership has been applauded across national and global stages 🎤, underlining his impact as a clinician, educator, and thought leader 💡.

Research Interests 🔬

Dr. Alaa’s research explores pain management innovation 🔥, neuromodulation ⚡, spinal cord stimulation 🧠, dorsal root ganglion therapies 💉, and anesthesiology outcomes 🧾; he’s passionate about translating bench-to-bedside discoveries 🏥, optimizing patient-centered chronic pain therapies 💊, and advancing perioperative safety 🌡️; his peer-reviewed publications 📚, clinical trials 🧪, and systematic reviews ⚗️ have influenced global practices 🌍, securing his place among top 0.05% scholars worldwide 🏆; his scientific vision combines clinical evidence, bioethics, and real-world health solutions for pain relief and anesthetic care 🧠💡.

Publications 

Yun Kang | Mathematical Biology | Best Researcher Award

Dr. Yun Kang | Mathematical Biology | Best Researcher Award

Yun Kang is a distinguished Professor of Applied Mathematics at Arizona State University 🏫, specializing in mathematical biology, complex adaptive systems, and nonlinear dynamical systems 🔬📊; with over 70 publications in high-impact journals 📝, Kang’s work bridges theory and modeling to solve biological, ecological, and social questions 🌍; a leader in mathematical research, she also champions women in STEM through mentoring and advocacy 🤝💡; her cutting-edge research, funded by the NSF 💰, explores multiscale modeling in social insects 🐜 and trust dynamics in human-automation interaction 🤖; as a dedicated educator and core faculty member at the Simon A. Levin Mathematical, Computational & Modeling Sciences Center 🧠, she has shaped both academic programs and future researchers 🌱📈.

Profile

Education 🎓

Yun Kang earned her Ph.D. in Mathematics from Arizona State University in 2008 🎓, focusing on mathematical biology 🧪; she completed an M.S. in Pure Mathematics at the University of Arizona in 2004 📐, with special research in random graphs 🔗; her academic journey began with a B.S. in Applied Mathematics from Shanghai Jiaotong University, China 🇨🇳, in 2002, where she concentrated on financial and computational mathematics 💹💻; this academic foundation provided a solid platform for her research into nonlinear systems and biological applications 🌿📊; Kang’s education path reflects global excellence 🌍, interdisciplinary rigor 🧠, and a passion for bridging mathematics with real-world complexity 🌐✨.

Experience 👨‍🏫

Yun Kang’s academic career began as an Assistant Professor at ASU in 2008 🧑‍🏫, after completing her doctorate 🎓; she advanced to Associate Professor in 2014 and became a full Professor in 2019 🌟; from 2016 to 2019, she served as Acting Director/Co-Director of the Simon A. Levin Mathematical, Computational & Modeling Sciences Center 🧠, promoting interdisciplinary collaborations 💡; beyond teaching, Kang holds roles as Core Faculty and Affiliated Faculty at ASU’s School of Mathematical and Statistical Sciences 📚; her career spans leadership, research, mentorship, and advocacy for diversity in mathematical sciences 💪🌸; each role reflects her commitment to both academic excellence and community empowerment 🏅📢.

Awards & Recognitions 🏅

Yun Kang’s excellence is reflected in her NSF-funded research grants 💰, numerous high-impact publications 📝, and her leadership in mathematical biology 🔬; she’s a proud and active member of top organizations: Association for Women in Mathematics 👩‍🔬, American Mathematical Society 📘, Society for Industrial and Applied Mathematics 🧠, and Society for Mathematical Biology 🌿; since 2009, she’s mentored young female mathematicians via the AWM mentor network 🤝💡; her recognition stems from both groundbreaking research and her role as a diversity advocate in STEM 🌸🌍; her distinguished honors underscore her dual commitment to advancing math and empowering future scholars 🌟👩‍🏫.

Research Interests 🔬

Yun Kang’s research bridges nonlinear dynamical systems ⚙️, stochastic models 🎲, and mathematical biology 🧬; she explores complex adaptive systems — from population dynamics 🦌, food webs 🌾, eco-epidemiology 🦠, to social insect colonies 🐜; her NSF-funded work dissects multiscale division of labor in insect societies 🐝; she also models trust dynamics in human-automation interactions 🤖, blending theoretical rigor with real-world relevance 🌎; her contributions illuminate evolutionary processes 🔄, ecological interactions 🌱, and behavioral modeling 🧠; Kang’s approach merges deep mathematical theory with empirical validation 📊, offering new tools for biological, ecological, and social system analysis 🚀📘.

Publications 

Jolanta Dorszewska | Neurobiology | Women Researcher Award

Dr. Jolanta Dorszewska | Neurobiology | Women Researcher Award

Professor Jolanta Dorszewska is a globally recognized neuroscientist and pharmacologist based at Poznan University of Medical Sciences, Poland 🧠🇵🇱. She leads the Laboratory of Neurobiology, exploring the molecular and genetic basis of neurodegenerative diseases 🧬. With over 35 years of academic experience, her work spans neurochemistry, clinical neurology, and genetic research in Alzheimer’s and Parkinson’s disease 🧪. A prolific author, she has contributed to 80+ research papers, 50+ reviews, and 30+ book chapters 📚. She serves on editorial boards of top neuroscience journals and holds leadership roles in national and international neurological societies 🌍.

Profile

Education 🎓

Prof. Dorszewska earned her M.Sc. in Pharmacy with distinction from Poznan University of Medical Sciences in 1987 🏅. She completed board certifications in Pharmaceutical Analytics (1990 & 1997) and received her Ph.D. in 1996 🧪. In 2004, she qualified as an Associate Professor and achieved full Professorship in 2016 🎓. Her academic growth includes training in medical genetics from 2012 to 2020 🧬. Her education reflects an evolving blend of pharmacy, neurobiology, and genetics, forming the foundation of her current research excellence 💡.

Experience 👨‍🏫

Prof. Dorszewska began as an Assistant in the Dept. of Pharmacy (1987-88), then in Clinical Neurochemistry (1988-96) at PUMS 👩‍🔬. She was a Research Scientist in New York (1999–2000) 🗽 and has led the Laboratory of Neurobiology since 2004 🧠. She became Full Professor in 2022 🏛️. She also lectured at the National High Medical School in Pila (2012–2018) 📖. Her career blends hands-on research, global collaboration, and dedicated academic leadership 📚. She continues to mentor, publish, and drive innovations in neurology and neurochemistry 🚀

Awards & Recognitions 🏅

Awards and Honors:
Prof. Dorszewska is a Local Honorary Member of the 12th World Congress on Controversies in Neurology (2018) 🌐. She has served as Guest Editor for 6 prestigious theme issues and holds editorial roles in top-tier journals like Frontiers in Molecular Neuroscience and Current Alzheimer Research 📘. A section and associate editor for journals across the USA, UK, and Poland 🌍, she’s a key figure in scientific publishing 🖋️. She’s affiliated with the Polish Academy of Sciences and international neurological societies and has co-edited 5 books 📚.

Research Interests 🔬

Research Focus:
Her research spans lipid metabolism in hypoxia 🧫, cerebral sterols 🧠, neurotransmitters (serotonin, dopamine) 🧪, apoptosis in aging and disease (Alzheimer’s, Parkinson’s) 💔, and gene polymorphisms (MTHFR, MAO-B, PARK) 🧬. She investigates homocysteine metabolism, catecholamine pathways, and molecular changes in neurodegeneration 🧠. Since 2009, she’s focused on genetic mutations (PARK, APOE), biomarkers (ASN, microRNAs), and migraine genetics ⚙️. She uses advanced techniques like HPLC, PCR, ELISA, and immunohistochemistry 🔍. Her interdisciplinary work integrates neurobiology, pharmacogenomics, and molecular neuroscience in tackling brain diseases 🚀.

Publications 
  • Genetic variants of ZNF746 and the level of plasma Parkin, PINK1, and ZNF746 proteins in patients with Parkinson’s disease

    IBRO Neuroscience Reports
    2025-06 | Journal article
    CONTRIBUTORS: Jolanta Dorszewska; Jolanta Florczak-Wyspiańska; Bartosz Słowikowski; Wojciech Owecki; Oliwia Szymanowicz; Ulyana Goutor; Mateusz Dezor; Paweł P. Jagodziński; Wojciech Kozubski
  • Kinesiotherapeutic Possibilities and Molecular Parameters in Multiple Sclerosis

    Sclerosis
    2025-04-03 | Journal article
    CONTRIBUTORS: Katarzyna Wiszniewska; Małgorzata Wilk; Małgorzata Wiszniewska; Joanna Poszwa; Oliwia Szymanowicz; Wojciech Kozubski; Jolanta Dorszewsk
  • Unraveling the Role of Proteinopathies in Parasitic Infections

    Biomedicines
    2025-03-03 | Journal article
    CONTRIBUTORS: Mikołaj Hurła; Damian Pikor; Natalia Banaszek-Hurła; Alicja Drelichowska; Jolanta Dorszewska; Wojciech Kozubski; Elżbieta Kacprzak; Małgorzata Paul
  • Expression of Neuronal Nicotinic Acetylcholine Receptor and Early Oxidative DNA Damage in Aging Rat Brain—The Effects of Memantine

    International Journal of Molecular Sciences
    2025-02-14 | Journal article
    CONTRIBUTORS: Małgorzata Anna Lewandowska; Agata Różycka; Teresa Grzelak; Bartosz Kempisty; Paweł Piotr Jagodziński; Margarita Lianeri; Jolanta Dorszewska

Farshad Sadeghpour | Data prediction | Best Researcher Award

Dr. Farshad Sadeghpour | Data prediction | Best Researcher Award

Farshad Sadeghpour (b. 1996) 🇮🇷 is a Petroleum Engineer and Data Scientist 💻🛢️ with expertise in reservoir engineering, petrophysics, and AI applications in the energy sector. Based in Tehran, Iran 📍, he holds a Master’s and Bachelor’s in Petroleum Exploration. With extensive experience in EOR, SCAL/RCAL analysis, and machine learning, Farshad has contributed to both academic and industrial R&D at RIPI, NISOC, and PVP. He has published multiple research articles 📚, won international awards 🏆, and participated in key petroleum projects. He served in the military 🪖 and actively collaborates with academia and industry on AI-driven energy solutions.

Profile

Education 🎓

🧑‍🎓 Master’s in Petroleum Engineering (Petroleum Exploration), Petroleum University of Technology, Abadan 🇮🇷 (2019–2022) | GPA: 18.82/20
🎓 Bachelor’s in Petroleum Engineering, Islamic Azad University (Science & Research Branch), Tehran 🇮🇷 (2015–2019) | GPA: 19.14/20
📚 Courses covered include reservoir engineering, geomechanics, well-logging, and advanced data analytics.
🛠️ Projects include CO₂ storage modeling, permeability prediction via AI, and LWD-based mud loss forecasting.
📊 Developed key industry collaborations with NISOC, RIPI, and OEID through thesis, internships, and military service projects.
💡 Honed computational and simulation skills using MATLAB, Python, COMSOL, Petrel, and ECLIPSE.
🏛️ Academic mentors: Dr. Seyed Reza Shadizadeh, Dr. Bijan Biranvand, Dr. Majid Akbari.

Experience 👨‍🏫


🔬 Computer Aided Process Engineering (CAPE) – Petroleum Reservoir Engineer (Nov 2024–Present)
🛢️ Petro Vision Pasargad – Reservoir Engineer & Lab Operator (Sep 2023–May 2024)
🧠 Research Institute of Petroleum Industry (RIPI) – Petroleum Engineer, Data Scientist (Mar 2023–Apr 2024)
🏭 National Iranian South Oil Company (NISOC) – Petroleum Engineer, Petrophysicist (Mar 2021–Nov 2024)
🧪 Internships: NIOC – Exploration Management, Oil & Energy Industries Development (OEID)
📊 Key contributions include EOR analysis, SCAL/RCAL lab testing, permeability modeling, machine learning pipelines, and field data analysis.
🧾 Delivered reports, simulations, and AI models supporting production optimization and reservoir characterization.

Awards & Recognitions 🏅

🥉 3rd Prize Winner – EAGE Laurie Dake Challenge 2022 (Madrid, Spain) 🌍
🎖️ Recognized for thesis excellence in AI-driven mud loss prediction with NISOC collaboration
📌 Acknowledged during military service project with RIPI for developing ANN-based well log models
🏅 Published in high-impact journals such as Energy, Geoenergy Science and Engineering, and JRMGE
✍️ Co-author of multiple peer-reviewed papers and under-review articles across petroleum engineering disciplines
🔬 Worked alongside top researchers including Dr. Ostadhassan, Dr. Gao, and Dr. Hemmati-Sarapardeh
🛠️ Actively participated in multidisciplinary teams combining AI, geomechanics, and petrophysics
📢 Regular presenter and contributor at petroleum conferences and AI-in-energy seminars.

Research Interests 🔬

📌 AI & ML applications in petroleum engineering 🧠🛢️ – including ANN, genetic algorithms, and deep learning
📊 Mud loss zone prediction, formation permeability modeling, CO₂ storage feasibility using ML
🧪 Experimental rock mechanics: nanoindentation, geomechanical upscaling, SCAL/RCAL testing
📈 Petrophysical property estimation in carbonate and unconventional reservoirs
🌍 Reservoir simulation, LWD analysis, and smart data integration using Python, Petrel, COMSOL
📖 Notable studies include: elastic modulus upscaling, kerogen behavior under pyrolysis, RQI/FZI modeling
🔬 Interdisciplinary projects bridging data science with geoscience and reservoir engineering
🤝 Collaboration with academic and industry leaders to develop practical, AI-driven solutions for energy challenges.

Publications 
  • Elastic Properties of Anisotropic Rocks Using an Stepwise Loading Framework in a True Triaxial Testing Apparatus

    Geoenergy Science and Engineering
    2025-04 | Journal article
    CONTRIBUTORS: Farshad Sadeghpour; Hem Bahadur Motra; Chinmay Sethi; Sandra Wind; Bodhisatwa Hazra; Ghasem Aghli; Mehdi Ostadhassan
  • Storage Efficiency Prediction for Feasibility Assessment of Underground CO2 Storage: Novel Machine Learning Approaches

    Energy
    2025-04 | Journal article
    CONTRIBUTORS: Farshad Sadeghpour
  • A new petrophysical-mathematical approach to estimate RQI and FZI parameters in carbonate reservoirs

    Journal of Petroleum Exploration and Production Technology
    2025-03 | Journal article
    CONTRIBUTORS: Farshad Sadeghpour; Kamran Jahangiri; Javad Honarmand
  • Effect of stress on fracture development in the Asmari reservoir in the Zagros Thrust Belt

    Journal of Rock Mechanics and Geotechnical Engineering
    2024-11 | Journal article
    CONTRIBUTORS: Ghasem Aghli; Babak Aminshahidy; Hem Bahadur Motra; Ardavan Darkhal; Farshad Sadeghpour; Mehdi Ostadhassan
  • Comparison of geomechanical upscaling methods for prediction of elastic modulus of heterogeneous media

    Geoenergy Science and Engineering
    2024-08 | Journal article
    CONTRIBUTORS: Farshad Sadeghpour; Ardavan Darkhal; Yifei Gao; Hem B. Motra; Ghasem Aghli; Mehdi Ostadhassan

Tran Chau My Thanh | Neuroscience | Young Scientist Award

Dr. Tran Chau My Thanh | Neuroscience | Young Scientist Award

Dr. Tran Chau My Thanh, a dedicated researcher at Duy Tan University, Vietnam 🇻🇳, holds a medical degree and Ph.D. from Hue University of Medicine and Pharmacy 🎓. Her work bridges the gap between clinical medicine and molecular biology 🧬. With a strong passion for translational research, she focuses on using bioinformatics and genomic tools for early diagnosis and targeted therapy development for diseases like cancer, diabetes, and cardiovascular disorders 💉. Through CRISPR/Cas9 and RNA networks, she aims to revolutionize patient-specific treatment pathways 🚀. Her extensive lab experience, scholarly publications, and ongoing innovations make her a promising leader in biomedical science 🏅.

Profile

Education 🎓

Dr. Thanh earned her Medical Degree (M.D.) from Hue University of Medicine and Pharmacy 🏥 and went on to complete her Doctorate (Ph.D.) in the same prestigious institution 🎓. Her education was deeply rooted in both clinical and research training, equipping her with a comprehensive understanding of human health and disease 🧠. Throughout her academic journey, she focused on genomics, molecular medicine, and biotechnology 🔬. The rigorous curriculum and hands-on exposure in advanced labs trained her in modern diagnostic tools and therapeutic innovations ⚙️. She also mastered computational biology and molecular interactions, forming a solid foundation for her groundbreaking work in RNA regulation and gene editing technologies such as CRISPR/Cas9 🧪.

Experience 👨‍🏫

Dr. Thanh brings rich experience as a medical doctor and academic at Duy Tan University 🏫. Her research career spans multiple roles in molecular diagnostics, bioinformatics, and therapeutic innovation 🧬. She has led studies on disease biomarkers, participated in international collaborations 🌐, and worked extensively with cell lines, recombinant DNA, and next-gen sequencing data 🔍. Her proficiency in wet lab and dry lab environments empowers her to integrate experimental biology with computational modeling 🧫💻. Alongside mentoring students and publishing SCI-indexed research, she contributes to translational medicine by connecting bench science to bedside applications, helping advance precision medicine for critical illnesses 💡.

Awards & Recognitions 🏅

Dr. Thanh is a nominee for the Young Scientist Award by the International Cognitive Scientist Awards 🧠🏆. Her impactful work on circular RNAs, miRNAs, and disease biomarker networks has garnered international recognition 🌍. She’s been acknowledged in high-impact journals for discoveries related to coronary heart disease and cancer diagnostics 📖. Her scholarly articles are indexed in SCI and Scopus, and she continues to influence the biomedical community through conference presentations, peer reviews, and academic collaborations 🤝. As a rising figure in molecular biology, her research promises transformative outcomes for early disease detection and targeted therapies 🧬✨.

Research Interests 🔬

Dr. Thanh’s research explores circRNA/miRNA/mRNA interactions, protein-protein networks, and gene function analysis 🧬🧠. She is driven by the quest to discover novel biomarkers for early diagnosis of complex diseases such as cancer, stroke, and diabetes 💊. Her focus includes CRISPR/Cas9 gene editing, molecular docking, and simulations for drug discovery and target validation 💻🧪. She also builds interaction networks to map LncRNA/CircRNA/miRNA/gene/protein-drug relationships, contributing to personalized medicine approaches 🎯. Through bioinformatics, she decodes gene expression dynamics and immune infiltrations to enable efficient diagnostics and therapeutics 💡. Her ultimate goal is to bridge computational biology with translational research for global health improvement 🌐💚.

Publications 

1. Hsa_circRNA_0000284 acts as a ceRNA to participate in coronary heart disease progression
by sponging miRNA-338-3p via regulating the expression of ETS1
2. Identification of hsa_circ_0001445 of a novel circRNA-miRNA-mRNA regulatory network as
potential biomarker for coronary heart disease
3. Potential diagnostic value of serum microRNAs for 19 cancer types: a meta-analysis of
bioinformatics data

Ata Jahangir Moshayedi | Brain Stimulation | Best Researcher Award

Dr. Ata Jahangir Moshayedi | Brain Stimulation | Best Researcher Award

Dr. Ata Jahangir Moshayedi is an Associate Professor at Jiangxi University of Science and Technology 🇨🇳 with a PhD in Electronic Science 🎓 from Savitribai Phule Pune University 🇮🇳. He is a prolific academic 🧠 with over 90 publications 📚, three authored books 📖, two patents 🧾, and nine copyrights 📝. A distinguished member of IEEE ⚡, ACM 💻, Instrument Society of India 🧪, and Speed Society of India 🚀, he contributes to editorial boards 🗞️ and international conferences 🌐. His interdisciplinary expertise bridges robotics 🤖, AI 🤖, VR 🕶️, and embedded systems 🔧, driving innovation in education and technology 🚀.

Profile

Education 🎓

Dr. Moshayedi earned his PhD in Electronic Science from Savitribai Phule Pune University 🇮🇳, specializing in robotics and automation 🤖. His educational path is deeply rooted in multidisciplinary technologies like embedded systems 🔧, machine vision 👁️, and AI 🧠. With academic training grounded in both theory 📘 and application 🛠️, he cultivated expertise across digital systems 💡 and bio-inspired robots 🦾. He integrates engineering principles with computer science 💻 to develop cutting-edge innovations in virtual and intelligent systems 🌍. His educational achievements laid the foundation for his impactful career in academic research and mentoring 📈.

Experience 👨‍🏫

Dr. Moshayedi has served as Associate Professor at Jiangxi University of Science and Technology 🇨🇳 since 2018. He leads modules in Robotics 🤖, Embedded Systems 💻, and Digital Image Processing 📷. He supervises UG and PG research 🧪, formulates grant proposals 💡, and serves as a module leader and tutor across advanced computer engineering courses 🧑‍🎓. His role includes designing learning materials 📘, aligning curriculum with accreditation standards 🎯, and evaluating student performance 🎓. He has extensive teaching experience in C/C++ programming 💾, algorithm analysis 📊, and mobile app programming 📱, ensuring comprehensive academic development.

Awards & Recognitions 🏅

🥇2024: Best Mentor, Jiangxi University 👨‍🏫 | 🏅2022: Book Award (Unity in Embedded System Design and Robotics) 📖 | 🥉2022: 3rd National & 1st Provincial Prize, Handy Pipe Detector, China Computer Design Competition 🛠️ | 🥉2021: 3rd National & 2nd Provincial, PEA Project (Pandemic Exam Assistant) 🧪 | 🏆2021: Innovation Award, Iran National Festival 🌍 | 🥉2021: 3rd National & 2nd Provincial, RDK Cloud Robot, Intelligent Service Robot Challenge ☁️🤖 — All reflecting his excellence in guiding innovation, mentoring students 👨‍🎓, and advancing global tech competitions 🌐.

Research Interests 🔬

Dr. Moshayedi’s research integrates robotics 🤖, AI 🧠, and embedded systems 🔧. His work on bio-inspired robots 🐜, mobile robot olfaction 👃, and sensor modeling 🧪 explores intelligent perception and environmental interaction 🌫️. He develops machine vision-based systems 👁️, virtual reality environments 🕶️, and smart embedded architectures 🖥️. His focus on plume tracking 🌬️ and cloud robotics ☁️ brings autonomous systems closer to real-world application. Merging theory and practice 🔍, his research propels innovation across intelligent systems, cyber-physical interaction 🌐, and real-time automation, making significant strides in modern engineering and applied AI 🤖.

Publications 

Mansoor Ali Darazi | Artificial Intelligence | Best Researcher Award

Dr. Mansoor Ali Darazi | Artificial Intelligence | Best Researcher Award

Dr. Mansoor Ali Darazi is an accomplished English language educator and researcher with extensive experience in ELT, curriculum development, and student mentorship. Passionate about modern pedagogical techniques, he fosters an inclusive learning environment while actively contributing to academic research. His expertise in language teaching, academic writing, and leadership roles has earned him recognition in the field. Committed to continuous professional growth, he participates in conferences and research projects. His dynamic teaching approach and strong managerial skills enhance students’ academic success and institutional development.

Profile

Education 🎓

Dr. Darazi is pursuing a Ph.D. in English Linguistics at the University of Sindh (2023–2026). He holds a Ph.D. in Education (ELT) (2022) and an M.Phil. in Education (ELT) (2014) from Iqra University, Karachi. He completed his Bachelor of Arts at Shah Abdul Latif University, Khairpur (1997). His academic journey reflects his dedication to English language teaching, research, and linguistic studies.

Experience 👨‍🏫

Dr. Darazi is an Assistant Professor at Benazir Bhutto Shaheed University, Lyari (2022–present). He has served as a Lecturer (2015–2022), ELT Coordinator, and English Lecturer at various institutions, including Army Public School, Pakistan Marine Academy, and Bahria Foundation College. With over two decades in academia, he has contributed to curriculum development, language instruction, and educational leadership, shaping student success through innovative teaching methodologies.

Awards & Recognitions 🏅

Dr. Darazi has received recognition for his contributions to education and research. His accolades include academic excellence awards, research grants, and honors from national and international organizations. His active participation in TESOL, IELTA, and Linguistic Society of America highlights his commitment to advancing English language education and pedagogy.

Research Interests 🔬

Dr. Darazi’s research explores English language proficiency, ELT methodologies, academic motivation, and student engagement. His publications address linguistic pedagogy, transformational leadership in education, and the role of feedback in language learning. His work contributes to developing innovative teaching strategies that enhance students’ academic performance and career prospects.

Publications 

Khalifa Aliyu Ibrahim | Artificial Intelligence in Power Electronics Design | Best Researcher Award

Mr. Khalifa Aliyu Ibrahim | Artificial Intelligence in Power Electronics Design | Best Researcher Award

Khalifa Aliyu Ibrahim is a dedicated researcher and academic pursuing a PhD at Cranfield University, UK, specializing in AI-driven high-frequency power electronics design. With a strong foundation in physics and energy systems, he has extensive experience in research, teaching, and project management. His expertise spans power electronics, renewable energy, and AI applications in engineering. As a research assistant, he has contributed to innovative projects, collaborated with industry partners, and published in esteemed journals. A recipient of multiple prestigious scholarships, Khalifa is actively involved in professional societies such as IEEE, Energy Institute UK, and the Nigerian Institute of Physics. His leadership, technical proficiency, and commitment to advancing energy solutions position him as a key player in the field of power electronics and renewable energy.

Profile

Education 🎓

Khalifa holds a PhD (ongoing) in AI-driven high-frequency power electronics from Cranfield University, where he explores AI applications in power electronics design. He earned an MRes in Energy and Power from Cranfield University (2022-2023) and an MSc in Energy Systems & Thermal Processes (2020-2021), graduating with distinction. His research includes concentrated photovoltaic cooling and hydrogen generation systems. He completed a BSc in Physics at Kaduna State University (2013-2016), graduating as the only first-class student in his department. His undergraduate research focused on geological resistivity and solar irradiation effects on solar cells. He has published in reputable journals, showcasing his expertise in renewable energy and power electronics. Khalifa is an associate member of the Energy Institute UK and an active IEEE member, engaging in cutting-edge research on sustainable energy solutions.

Experience 👨‍🏫

Khalifa currently serves as a research assistant at Cranfield University, contributing to AI-driven power electronics research and mentoring MSc students. Previously, he lectured at Kaduna State University (2021-2022) and Nuhu Bamalli Polytechnic (2020-2021), teaching physics and supervising student projects. His early career included a teaching and laboratory assistant role at Umaru Musa Yar’adua University (2017-2018), where he led physics experiments and administrative tasks. He also gained industrial experience at Kaduna Refining and Petrochemical Company, monitoring power plant operations. Additionally, he worked as an enumerator at Tripple Seventh Nigeria Ltd., mapping assets and conducting data analysis. His diverse experience spans academia, research, industry, and leadership roles, equipping him with a solid foundation in energy systems, AI applications, and power electronics innovation.

Awards & Recognitions 🏅

Khalifa has received multiple prestigious scholarships, including the Petroleum Technology Development Fund Scholarship (2021) worth £31,000 and the Kaduna State Merit-Based Foreign Scholarship (2020) worth £27,000. In 2014, he won a cash prize and a Certificate of Participation in the Nigeria Centenary Quiz Show. His outstanding academic achievements include graduating as the only first-class student in his physics department. He has also been recognized for his research contributions, publishing in esteemed journals and conferences. His leadership and excellence in academia and research have positioned him as a rising expert in AI-driven power electronics and renewable energy solutions.

Research Interests 🔬

Khalifa’s research focuses on integrating AI into high-frequency power electronics design to enhance efficiency and performance. His work explores AI-driven modeling, optimization of energy systems, and smart renewable energy solutions. He has contributed to studies on concentrated photovoltaic cooling, hydrogen generation, and floating solar wireless power transfer. His research also extends to machine learning applications in power electronics, climate change mitigation strategies, and sustainable energy transitions. Through his publications and collaborations, Khalifa aims to bridge the gap between AI and power systems, advancing the next generation of intelligent energy solutions. His work is pivotal in driving innovation in energy-efficient and AI-powered electronic systems.

Publications 

Quanying Lu | Forecasting | Best Researcher Award

Dr. Quanying Lu | Forecasting | Best Researcher Award

Dr. Quanying Lu is an Associate Professor at Beijing University of Technology, specializing in energy economics, forecasting, and systems engineering. 🎓 She completed her Ph.D. at the University of Chinese Academy of Sciences and has published 30+ papers in top journals, including Nature Communications and Energy Economics. 📚 She has held postdoctoral and research positions in prestigious institutions and actively contributes to policy research. 🌍

Profile

Education 🎓

  • Ph.D. (2017-2020): University of Chinese Academy of Sciences, School of Economics and Management, supervised by Prof. Shouyang Wang.
  • M.Sc. (2014-2017): International Business School, Shaanxi Normal University, supervised by Prof. Jian Chai.
  • B.Sc. (2010-2014): International Business School, Shaanxi Normal University, Department of Economics and Statistics.

Experience 👨‍🏫

  • Associate Professor (06/2022–Present), Beijing University of Technology, supervising Ph.D. students.
  • Postdoctoral Fellow (07/2020–05/2022), Academy of Mathematics and Systems Science, Chinese Academy of Sciences.
  • Research Assistant (08/2018–10/2018), Department of Management Sciences, City University of Hong Kong.

Awards & Recognitions 🏅

  • Outstanding Young Talent, Phoenix Plan, Chaoyang District, Beijing (2024).
  • Young Scholar of Social Computing, CAAI-BDSC (2024).
  • Young Scholar of Forecasting Science, Frontier Forum on Forecasting Science (2024).
  • Young Elite Scientists Sponsorship, BAST (2023).
  • Excellent Mentor, China International “Internet Plus” Innovation Competition (2023).

Research Interests 🔬

Dr. Lu specializes in energy economics, environmental policy analysis, economic forecasting, and systems engineering. 📊 Her research addresses crude oil price dynamics, carbon reduction strategies, and financial market interactions. 💡 She integrates machine learning with forecasting models, contributing to sustainable energy and environmental policies. 🌍

Publications 

[1] Liang, Q., Lin, Q., Guo, M., Lu, Q., Zhang, D. Forecasting crude oil prices: A
Gated Recurrent Unit-based nonlinear Granger Causality model. International
Review of Financial Analysis, 2025, 104124.
[2] Wang, S., Li, J., Lu, Q. (2024) Optimization of carbon peaking achieving paths in
Chinas transportation sector under digital feature clustering. Energy, 313,133887
[3] Yang, B., Lu, Q.*, Sun, Y., Wang, S., & Lai, K. K. Quantitative evaluation of oil
price fluctuation events based on interval counterfactual model (in Chinese).
Systems Engineering-Theory & Practice, 2023, 43(1):191-205.
[4] Lu, Q.*, Shi, H., & Wang, S. Estimating the shock effect of “Black Swan” and
“Gray Rhino” events on the crude oil market: the GSI-BN research framework (in
Chinese). China Journal of Econometrics, 2022, 1(2): 194-208.
[5] Lu, Q., Duan, H.*, Shi, H., Peng, B., Liu, Y., Wu, T., Du, H., & Wang, S*. (2022).
Decarbonization scenarios and carbon reduction potential for China’s road
transportation by 2060. npj Urban Sustainability, 2: 34. DOI:
https://www.nature.com/articles/s42949-022-000.
[6] Lu, Q., Sun, Y.*, Hong, Y., Wang, S. (2022). Forecasting interval-valued crude
oil prices via threshold autoregressive interval models. Quantitative Finance,
DOI: 10.1080/14697688.2022.2112065
Page 3 / 6
[7] Guo, Y., Lu, Q.*, Wang, S., Wang, Q. (2022). Analysis of air quality spatial
spillover effect caused by transportation infrastructure. Transportation Research
Part D: Transport & Environment, 108, 103325.
[8] Wei, Z., Chai, J., Dong, J., Lu, Q. (2022). Understanding the linkage-dependence
structure between oil and gas markets: A new perspective. Energy, 257, 124755.
[9] Chai, J., Zhang, X.*, Lu, Q., Zhang, X., & Wang, Y. (2021). Research on
imbalance between supply and demand in China’s natural gas market under the
double -track price system. Energy Policy, 155, 112380.
[10]Lu, Q., Sun, S., Duan, H.*, & Wang, S. (2021). Analysis and forecasting of crude
oil price based on the variable selection-LSTM integrated model. Energy
Informatics, 4 (Suppl 2):47.
[11]Shi, H., Chai, J.*, Lu, Q., Zheng, J., & Wang, S. (2021). The impact of China’s
low-carbon transition on economy, society and energy in 2030 based on CO2
emissions drivers. Energy, 239(1):122336, DOI: 10.1016/j.energy.2021.122336.
[12]Jiang, S., Li, Y., Lu, Q., Hong, Y., Guan, D.*, Xiong, Y., & Wang, S.* (2021).
Policy assessments for the carbon emission flows and sustainability of Bitcoin
blockchain operation in China. Nature Communications, 12(1), 1-10.
[13]Jiang, S., Li Y., Lu, Q., Wang, S., & Wei, Y*. (2021). Volatility communicator or
receiver? Investigating volatility spillover mechanisms among Bitcoin and other
financial markets. Research in International Business and Finance,
59(4):101543.
[14]Lu, Q., Li, Y., Chai, J., & Wang, S.* (2020). Crude oil price analysis and
forecasting :A perspective of “new triangle”. Energy Economics, 87, 104721.
DOI: 10.1016/j.eneco.2020.104721.
[15]Chai, J., Shi, H.*, Lu, Q., & Hu, Y. (2020). Quantifying and predicting the
Water-Energy-Food-Economy-Society-Environment Nexus based on Bayesian
networks – a case study of China. Journal of Cleaner Production, 256, 120266.
DOI: 10.1016/j.jclepro.2020.120266.
[16]Lu, Q., Chai, J., Wang, S.*, Zhang, Z. G., & Sun, X. C. (2020). Potential energy
conservation and CO2 emission reduction related to China’s road transportation.
Journal of Cleaner Production, 245, 118892. DOI:
10.1016/j.jclepro.2019.118892.
[17]Chai, J., Lu, Q.*, Hu, Y., Wang, S., Lai, K. K., & Liu, H. (2018). Analysis and
Bayes statistical probability inference of crude oil price change point.
Technological Forecasting & Social Change, 126, 271-283.
[18]Chai, J., Lu, Q.*, Wang, S., & Lai, K. K. (2016). Analysis of road transportation
consumption demand in China. Transportation Research Part D: Transport &
Environment, 2016, 48:112-124.