Ching-Lung Fan | Deep Learning | Best Researcher Award

Assoc. Prof. Dr. Ching-Lung Fan | Deep Learning | Best Researcher Award

Associate Professor, ROC Military Academy, Taiwan

Ching-Lung Fan is an associate professor in Civil Engineering at the Republic of China Military Academy. He completed his Ph.D. in 2019 from the National Kaohsiung University of Science and Technology. His professional journey reflects a strong dedication to advancing technology in the construction and civil engineering sectors, particularly through the application of machine learning and deep learning methods. 🏫

Publication Profile

Education

Dr. Fan holds a Master of Science (M.S.) from National Taiwan University (2006) and a Ph.D. from National Kaohsiung University of Science and Technology (2019). His academic background underscores his commitment to both theoretical and practical contributions to the field. 🎓

Experience

Dr. Fan started his academic career as an assistant professor at the Republic of China Military Academy in January 2019 and was promoted to associate professor in June 2022. His teaching and research experience has significantly impacted the study of civil engineering, especially through the integration of machine learning and data mining. 🏢

Awards and Honors

Ching-Lung Fan has received several prestigious awards, including the Phi Tau Phi Scholastic Honor (2019), Outstanding Paper Award (2021), Excellent Paper Award (2022), and Best Researcher Award (2024). In 2023, he was honored with membership in Sigma Xi, an esteemed scientific organization. 🏅

Research Focus

Dr. Fan’s research interests are primarily centered around machine learning, deep learning, data mining, construction performance evaluation, and risk management. His work integrates cutting-edge computational methods with civil engineering applications to enhance the quality and efficiency of construction projects. 🤖📊

Conclusion

Dr. Fan’s innovative contributions to civil engineering, particularly in the realm of AI-driven solutions, continue to shape the future of construction and infrastructure development. His ongoing research and recognition in the academic community highlight his expertise and impact in the field. 🌟

Publications

 Integrating image processing technology and deep learning to identify crops in UAV orthoimages. CMC-Computers, Materials & Continua. (Accepted).

Predicting the construction quality of projects by using hybrid soft computing techniques. CMES-Computer Modeling in Engineering & Sciences. (Accepted).

 Evaluation model for crack detection with deep learning—Improved confusion matrix based on linear features. Journal of Construction Engineering and Management (ASCE), 151(3): 04024210. (SCI).

 Evaluating the performance of Taiwan airport renovation projects: An application of multiple attributes intelligent decision analysis. Buildings, 14(10): 3314. (SCI).

Deep neural networks for automated damage classification in image-based visual data of reinforced concrete structures. Heliyon, 10(19): e38104. (SCI).

Multiscale feature extraction by using convolutional neural network: Extraction of objects from multiresolution images of urban areas. ISPRS International Journal of GeoInformation, 13(1): 5. (SCI).

Ground surface structure classification using UAV remote sensing images and machine learning algorithms. Applied Geomatics, 15: 919-931. (ESCI).

 Using convolutional neural networks to identify illegal roofs from unmanned aerial vehicle images. Architectural Engineering and Design Management, 20(2): 390-410. (SCI).

Evaluation of machine learning in recognizing images of reinforced concrete damage. Multimedia Tools and Applications, 82: 30221-30246. (SCI).

 Supervised machine learning–Based detection of concrete efflorescence. Symmetry, 14(11): 284. (SCI).

 

Zhaohai Ma | Differential Equation | Best Researcher Award

Prof. Zhaohai Ma | Differential Equation | Best Researcher Award

Professor, China University of Geosciences, Beijing, China

🎓 Dr. Zhaohai Ma is an accomplished mathematician specializing in applied and fundamental mathematics. Currently an Associate Professor at the China University of Geosciences, Beijing, Dr. Ma is a prolific researcher and educator with significant contributions to the qualitative theory of differential equations and its applications. His work has garnered recognition through numerous publications and awards, showcasing his dedication to advancing mathematical sciences.

Publication Profile

Education

📚 Dr. Zhaohai Ma’s educational journey is marked by excellence in mathematics. He completed his Bachelor’s degree in Applied Mathematics at Yantai University (2009–2013). He then pursued a Master’s (2013–2016) and Ph.D. (2016–2019) in Fundamental Mathematics under the guidance of Professor Yuan Rong at Beijing Normal University, solidifying his expertise in mathematical theories.

Experience

👨‍🏫 Since 2019, Dr. Ma has been serving as an Associate Professor at the School of Science, China University of Geosciences, Beijing. He is also a Doctoral Supervisor, mentoring students in mathematical modeling and guiding them to achieve accolades in national competitions. Dr. Ma’s leadership and expertise have resulted in over 20 SCI-indexed publications and involvement in significant national and institutional research projects.

Awards and Honors

🏆 Dr. Ma’s achievements include winning the “Advanced Individual” title at the China Graduate Mathematical Contest in Modeling in 2020. As a guest Mathematical Reviewer for the American Mathematical Society, he continues to contribute to the global mathematical community through his academic insights.

Research Focus

🔬 Dr. Ma focuses on applied research in the qualitative theory of differential equations. His research encompasses reaction-diffusion equations, stability analysis of traveling wave solutions, age-structured population dynamics, biomathematical model dynamics, and delay differential equations. His work significantly impacts fields like epidemiology, ecological systems, and applied mathematical modeling.

Conclusion

🌟 Dr. Zhaohai Ma’s passion for mathematics, combined with his extensive research contributions, has made him a respected figure in the mathematical sciences. His dedication to teaching, mentoring, and advancing applied mathematics ensures his lasting influence on the field and future generations of mathematicians.

Publications 📚

Asymptotic stability of the nonlocal diffusion equation with nonlocal delay, Math. Meth. Appl. Sci., 48(2025), 1281-1302.

Boundedness and non-existence of traveling wave solutions for a four-compartment lattice epidemic system with exposed class and standard incidence, Math. Meth. Appl. Sci., 47(2024), 7397-7403.

Asymptotic behavior of a delayed nonlocal dispersal Lotka-Volterra competitive system, J. Appl. Anal. Comput., (2024).

Hopf bifurcation of an age-structured hand-foot-mouth disease model in a contaminated environment,Internat. J. Bifur. Chaos Appl. Sci. Engrg., 34(2024), 2450196(24 pages).

Global asymptotic stability for Gurtin-MacCamy’s population dynamics model, Proc. Amer. Math. Soc., 152(2024), 765-780.

Stationary distribution of a stochastic three species predator–prey model with antipredator behavior, Journal of Applied Mathematics and Computing, 70(2024), 1365-1393.

Traveling waves for a nonlocal dispersal SIRS epidemic model with age structure, AIMS Mathematics, 9(2024), 8001-8019.

Stability of planar traveling waves for a class of Lotka–Volterra competition systems with time delay and nonlocal reaction term, Qual. Theory Dyn. Syst., 22(2023), 1-25.

Traveling waves for a nonlocal dispersal susceptible–infected–recovered epidemic model with the mass action infection mechanism, Math. Meth. Appl. Sci., 46(2023), 18837-18860.

Traveling waves of predator–prey system with a sedentary predator, Z. Angew. Math. Phys., 74(2023), 1-24.

 

 

Dongmei Li | photocatalysis | Best Researcher Award

Dr. Dongmei Li | photocatalysis | Best Researcher Award

Associate professor, Inner Mongolia University of Science and Technology, China

🌟 Dongmei Li is an Associate Professor at the School of Chemistry and Chemical Engineering, Inner Mongolia University of Science & Technology. With a strong academic background and extensive research experience, she has contributed significantly to the fields of photocatalysis and electrocatalysis. Throughout her career, she has led numerous research projects and published multiple journal articles, receiving recognition for her pioneering work in nanocomposites and catalytic materials. Dongmei is committed to advancing sustainable technologies and fostering innovative solutions through her research.

Publication Profile

ORCID

Education

🎓 Dongmei Li completed her Ph.D. in Applied Chemistry at East China University of Science and Technology (2005), after earning her Master’s in Chemical Engineering from Tianjin University (2002) and Bachelor’s in Fine Chemical Engineering from the University of Jinan (1999). Her diverse educational background laid the foundation for her outstanding contributions to chemical engineering research.

Experience

💼 Dongmei Li has a rich professional journey spanning over 20 years. She has been an Associate Professor at Inner Mongolia University of Science & Technology since 2019. Prior to this, she served at the University of Jinan from 2005 to 2019. In 2016-2017, she was a visiting scholar at Utah State University, where she further honed her research in catalysis. Throughout her career, she has also been actively involved in research and innovation, leading several funded projects.

Awards and Honors

🏆 Dongmei Li has received multiple accolades for her contributions to science. Notably, she is a recipient of the National Natural Science Foundation of China grant, Inner Mongolia Autonomous Region Science and Technology Plan Project, and has authored a book titled “Research on Chemical Engineering Technologies” (ISBN: 9787030333575). Her excellence in research has also been recognized in industry collaborations and various science awards.

Research Focus

🔬 Dongmei Li focuses on photocatalysis and electrocatalysis, particularly in the synthesis of MOFs, COFs, and nanocomposites. Her research explores the photocatalytic and electrocatalytic properties of these materials to advance environmental sustainability and energy efficiency. She leads several ongoing research projects funded by prestigious organizations, such as the National Natural Science Foundation of China and the Inner Mongolia Autonomous Region Science and Technology Plan Project.

Conclusion

🌱 With a commitment to scientific advancement, Dongmei Li continues to push the boundaries of applied chemistry and chemical engineering. Her work contributes to innovations in energy and environmental sustainability, marking her as a prominent researcher in her field.

Publications:

Novel noble-metal-free CdIn2S4/MoB Schottky heterojunction photocatalysts with efficient charge separation for boosting photocatalytic H2 production (2025) – Separation and Purification Technology
DOI: 10.1016/j.seppur.2024.129057

Synthesis of Co/Ni-MOFs with mixed ligands and their Oxygen Evolution Reaction (OER) performance (2025) – Journal of Molecular Structure
DOI: 10.1016/j.molstruc.2024.140549

Synthesis, insecticidal evaluation, crystal structure and theoretical calculations of nine/ten-membered carbon bridged neonicotinoid analogues (2025) – Journal of Molecular Structure
DOI: 10.1016/j.molstruc.2024.139898

Thiazolo[5,4-d]thiazole-Based Covalent Organic Frameworks for the Rapid Removal of RhB (2025) – Catalysts
DOI: 10.3390/catal15010042

Thiazolo[5,4-d]thiazole conjugated viologens for hydrogel-type all-in-one electrochromic devices (2024) – Research on Chemical Intermediates
DOI: 10.1007/s11164-024-05419-x

Novel noble-metal-free NiCo2O4/CdIn2S4 S-scheme heterojunction photocatalyst with redox center for highly efficient photocatalytic H2 evolution (2024) – Applied Surface Science
DOI: 10.1016/j.apsusc.2024.160895

Molecular engineering of π-extended viologens consisting of oxadiazoles-based bridges for highly stable electrochromic devices (2024) – Journal of Molecular Structure
DOI: 10.1016/j.molstruc.2024.138578

Cu/Fe-MOFs based on mixed ligands: Synthesis, crystal structure and electrocatalytic hydrogen evolution performance (2024) – Journal of Molecular Structure
DOI: 10.1016/j.molstruc.2024.137968

Preparation of amorphous Bi4V0.2Ti2.8O12 and its photocatalytic activity for the degradation of Basic Red 2 (2022) – Research on Chemical Intermediates
DOI: 10.1007/s11164-022-04765-y

 

JUNYI LIU | Petroleum Engineering | Best Researcher Award

Dr. JUNYI LIU | Petroleum Engineering | Best Researcher Award

Chief Expert, Shengli Petroleum Engineering Corporation Limited, SINOPEC, China

Junyi Liu is a highly skilled Petroleum Engineer at Shengli Petroleum Engineering Corporation Limited, SINOPEC, with a focus on Oil and Gas Drilling Engineering, Oilfield Chemistry, and Environmental Protection. He holds a PhD in Oil and Gas Drilling Engineering from China University of Petroleum (East China), awarded in 2016, and a Bachelor’s degree in Petroleum Engineering from the same institution. With years of experience, Junyi is dedicated to developing advanced techniques in drilling fluid treatment and environmental protection in the oil and gas industry. 🌍💧

Publication Profile

Scopus

Education

Junyi Liu completed his Ph.D. in Oil and Gas Drilling Engineering from China University of Petroleum (East China) in 2016. Prior to that, he obtained his Bachelor’s degree in Petroleum Engineering from the same institution in 2010. 🎓🛢️

Experience

Since November 2016, Junyi has been serving as a Petroleum Engineer at Shengli Petroleum Engineering Corporation Limited, SINOPEC, where he specializes in drilling fluid technology, environmental protection, and innovative oilfield solutions. His work in the industry focuses on improving drilling efficiency while minimizing environmental impact. 💼🔧

Awards and Honors

Throughout his career, Junyi Liu has contributed to the advancement of petroleum engineering, particularly in the areas of drilling technology and environmental sustainability. His work has led to recognition in the field, although specific awards are not listed in the provided details. 🏆🌿

Research Focus

Junyi’s research is centered around Oil and Gas Drilling Engineering, Oilfield Chemistry, and Environmental Protection. He has worked extensively on drilling fluid treatment technologies and sustainable practices to protect the environment, with particular attention to water-based drilling fluids and filtration reducers. His innovations also include pressure-response lubricants for drilling fluids and the use of phase-change heat storage for deep-well cooling. 🔬🌱

Conclusion

With a solid educational background and extensive industry experience, Junyi Liu continues to make impactful contributions to the petroleum engineering sector. His work stands at the intersection of technological advancement and environmental sustainability, making him a key player in improving the oilfield industry’s operational and ecological performance. 💡🌍

Publications

Research and Application of Environmental Protection Technologies for Drilling Fluid Treatment in Shengli Oilfield, PETROLEUM DRILLING TECHNIQUES, 2024, 52(3): 47-52.

Targeted Pressure-Response Encapsulated Lubricants for Water-Based Drilling Fluids, Natural Gas Industry, 2023, 43(12): 91-99.

Synthesis and Characterization of Micro-Nano Environmental Friendly Filtration Reducer for Water-Based Drilling Fluids, Fresenius Environmental Bulletin, 2022, 31(10): 10046-10055.

Experimental Study of Drilling Fluid Cooling in Deep Wells Based on Phase Change Heat Storage, PETROLEUM DRILLING TECHNIQUES, 2021, 49(1): 53-58.

Hau-Kun Jhuang | Space data analysis | Outstanding Scientist Award

Dr. Hau-Kun Jhuang | Space data analysis | Outstanding Scientist Award

Senior Scientist, Alpha Ring Asia Incorporation, Taiwan

Hau-Kun Jhuang is a Senior Scientist at Alpha Ring Asia INC. in Taipei, Taiwan, with a strong background in space science and plasma physics. He has dedicated over a decade to researching ionospheric anomalies and their relationships with earthquakes. His expertise includes the study of ionospheric total electron content (TEC) anomalies, plasma waves, and tidal wave analysis. With a passion for integrating artificial intelligence, Jhuang utilizes machine learning models such as Long Short-Term Memory (LSTM) networks to predict earthquake-related phenomena. 🌌📡

Publication Profile

Google Scholar

Education

Jhuang holds a Doctor of Philosophy in Space Science from the Graduate Institute of Space Science, National Central University (2014). His dissertation focused on ionospheric anomalies during significant earthquakes in Taiwan and China. He completed his Master’s degree in Space Science at the same institution in 2004 and earned a Bachelor’s degree in Physics from Fu Jen Catholic University in 2002. 🎓📚

Experience

Jhuang has extensive experience in both academic and industrial research. He currently serves as a Senior Scientist at Alpha Ring Asia INC. and previously held postdoctoral positions at the Institute of Earth Science, Academia Sinica, and National Taiwan University. His career also includes teaching positions in high schools and international collaborations with leading institutions such as LPC2E/CNRS in France. 🧑‍🔬🌍

Awards and Honors

Throughout his career, Jhuang has contributed significantly to the field of space science, receiving various recognitions. His research on seismo-ionospheric anomalies and AI-based earthquake prediction has been widely recognized and published in high-impact journals. 🌟🏆

Research Focus

Jhuang’s primary research interests include plasma physics, ionospheric physics, and seismo-ionospheric anomalies. He explores the dynamics between neutrals and charged particles, ionospheric tidal waves, and the use of machine learning for earthquake prediction. His work also delves into the impact of large earthquakes on ionospheric behavior. ⚡🌍

Conclusion

With a career spanning multiple fields of space and earth sciences, Hau-Kun Jhuang continues to push the boundaries of ionospheric research and artificial intelligence in geophysics. His work has contributed to improving our understanding of the ionosphere’s behavior during natural disasters like earthquakes. 🌏🔬

Publications

Driving Source of Change for Ionosphere before Large Earthquake – Vertical Ground Motion. Remote Sensing, 15(18), 4556. Link to article (SCI, IF=5.0)

Deep learning of detecting ionospheric precursors associated with M ≥ 6.0 earthquakes in Taiwan. Earth and Space Science, 9, e2022EA002289. Link to article (SCI, IF = 3.68)

Ionospheric peaked structures and their local-time, seasonal, and solar activity dependence based on Global Ionosphere Maps. J. Geophys. Res. Space Phys., 124, 7994-8014. Link to article (SCI, IF = 2.75)

Ionospheric tidal waves observed from Global Ionosphere Maps: analysis of total electron content. J. Geophys. Res. Space Phys., 123, 6776-6797. Link to article (SCI, IF = 2.75)

Ionospheric density and velocity anomalies before M ≥ 6.5 earthquakes observed by DEMETER satellite. J. Asian Earth Sci., 166, 210-222. Link to article (SCI, IF = 2.762)

Seismo-ionospheric anomalies in total electron content of the GIM and electron density of DEMETER before the 27 February 2010 M8.8 Chile earthquake. J. Adv. Space Res. Link to article (SCI, IF = 1.746)

Seismo-ionospheric anomalies of the GPS-TEC appear before the 12 May 2008 magnitude 8.0 Wenchuan Earthquake. Int. J. Remote Sensing, 31(13), 3579-3587. Link to article (SCI, IF = 2.493)

 

Huan Zhao | Machine Learning | Best Researcher Award

Assoc. Prof. Dr . Huan Zhao | Machine Learning | Best Researcher Award

Associate Professor, School of Aeronautics, Northwestern Polytechnical University, China

Huan Zhao is an associate professor at the School of Aeronautics, Northwestern Polytechnical University (NPU), China. He specializes in aerodynamics, multidisciplinary design optimization, uncertainty quantification, and machine learning, focusing on CFD simulation, AI-based global optimization, and surrogate modeling. He is also the executive deputy director of the Institute of Digital Intelligence for Flight Mechanics and Aerodynamic Design (IDIFMAD). Zhao has made significant contributions to the fields of aerodynamic shape optimization, high-dimensional global optimization, and uncertainty-based robust design. He holds several patents and has authored many high-impact publications. 🌐✈️

Publication Profile

Education

Huan Zhao completed his Ph.D. in Fluid Dynamics at Northwestern Polytechnical University (NPU) in 2020, following a B.Eng. in Aircraft Design and Engineering from the same university in 2014. 📚🎓

Experience

Zhao served as a tenure-track assistant professor at Sun Yat-sen University (SYSU) before joining NPU as a tenure-track associate professor in 2023. He has directed and participated in numerous research projects focusing on aerodynamic design optimization, high-speed rotor airfoil design, and surrogate-assisted design techniques. He is a principal investigator (PI) for multiple projects funded by the National Natural Science Foundation of China (NSFC). 👨‍🏫🔬

Awards and Honors

Huan Zhao has received several awards and honors, including recognition as part of the “Hundred Talents Plan” Young Academic Backbone at SYSU and multiple patents for his innovative contributions to aerodynamic design. 🏆🎖️

Research Focus

Zhao’s research interests lie in aerodynamics, including multi-fidelity polynomial chaos-Kriging models, aerodynamic shape optimization, and uncertainty quantification. His work has contributed significantly to the design and optimization of high-lift airfoils, laminar flow airfoils, and robust design methods under uncertainty. His expertise also includes machine learning, AI-based global optimization, and the application of surrogate models in complex design scenarios. 🔍🧑‍💻

Conclusion

Huan Zhao’s innovative work has had a profound impact on the field of aerodynamics and optimization. His research has not only advanced the understanding of aerodynamic design but has also led to practical improvements in the development of high-performance aircraft and related technologies. He continues to drive forward cutting-edge research in aerodynamics and multidisciplinary design optimization. 🚀🌍

Publications

An efficient adaptive forward–backward selection method for sparse polynomial chaos expansion, Computer Methods in Applied Mechanics and Engineering, 2019.

Review of robust aerodynamic design optimization for air vehicles, Archives of Computational Methods in Engineering, 2019.

Effective robust design of high lift NLF airfoil under multi-parameter uncertainty, Aerospace Science and Technology, 2017.

Adaptive multi-fidelity sparse polynomial chaos-Kriging metamodeling for global approximation of aerodynamic data, Structural and Multidisciplinary Optimization, 2021.

Uncertainty-based design optimization of NLF airfoil for high altitude long endurance unmanned air vehicles, Engineering Computations, 2019.

 Efficient aerodynamic analysis and optimization under uncertainty using multi-fidelity polynomial chaos-Kriging surrogate model, Computers & Fluids, 2022.

Research on efficient robust aerodynamic design optimization method of high-speed and high-lift NLF airfoil, Acta Aeronautica et Astronautica Sinica, 2021.

Research on Novel High-Dimensional Surrogate Model-Based Aerodynamic Shape Design Optimization, Acta Aeronautica et Astronautica Sinica, 2022.

Research on novel multi-fidelity surrogate model assisted many-objective global optimization method, Acta Aeronautica et Astronautica Sinica, 2022.

Adaptive multi-fidelity polynomial chaos-Kriging model-based efficient aerodynamic design optimization method, Chinese Journal of Theoretical and Applied Mechanics, 2023.

 

Yexin Wang | Planetary remote sensing | Best Researcher Award

Assoc. Prof. Dr. Yexin Wang | Planetary remote sensing | Best Researcher Award

State Key Laboratory of Remote Sensing Science, Aerospace Information Research Institute, Chinese Academy of Sciences, China
📚 Dr. Yexin Wang is an Associate Professor at the State Key Laboratory of Remote Sensing Science, Aerospace Information Research Institute, Chinese Academy of Sciences (AIRCAS). With a Ph.D. in Measuring and Testing Technologies and Instruments from Beihang University, she specializes in planetary remote sensing, computer vision, artificial intelligence, and image processing. Dr. Wang has significantly contributed to China’s planetary exploration missions, including Chang’e-4, Chang’e-5, Chang’e-6, and Tianwen-1, through her expertise in environment perception, navigation, and localization.

Publication Profile

Education

🎓 Dr. Yexin Wang earned her Ph.D. in Measuring and Testing Technologies and Instruments from Beihang University, Beijing, in 2014. Her strong academic foundation underpins her advanced research in planetary exploration and image processing.

Experience

🌌 As a key researcher at AIRCAS, Dr. Wang has been actively involved in groundbreaking planetary exploration missions. Her projects span planetary remote sensing, pattern recognition, and environment perception for rovers used in China’s Chang’e and Tianwen-1 missions. She has also collaborated with international institutions like the National Institute for Nuclear Physics (INFN-LNF), contributing to global space exploration advancements.

Awards and Honors

🏆 Dr. Yexin Wang’s outstanding contributions have been widely recognized, with notable achievements in scientific research and innovation. Her leadership in high-profile projects and patents reflects her impactful role in planetary science and technology.

Research Focus

🔍 Dr. Wang’s research revolves around planetary remote sensing, computer vision, artificial intelligence, and image processing. She is particularly focused on environment perception, feature extraction, navigation, and localization for deep-space exploration rovers. Her work ensures precise mapping and analysis of extraterrestrial surfaces.

Conclusion

✨ Dr. Yexin Wang is a distinguished scientist and a driving force behind advancements in planetary exploration. Her dedication to innovation and collaboration has cemented her position as a leading expert in remote sensing and space technology.

Publications

YOLOv8-LCNET: An Improved YOLOv8 Automatic Crater Detection Algorithm and Application in the Chang’e-6 Landing Area (2025) – Sensors. Cited by [10 articles]. DOI: 10.3390/s25010243

Geological context of the Chang’e-6 landing area and implications for sample analysis (2024) – The Innovation. Cited by [15 articles]. DOI: 10.1016/j.xinn.2024.100663

High-Precision Visual Localization of the Chang’e-6 Lander (2024) – National Remote Sensing Bulletin. Cited by [8 articles]. DOI: 10.11834/jrs.20244229

A Catalogue of Impact Craters and Surface Age Analysis in the Chang’e-6 Landing Area (2024) – Remote Sensing. Cited by [20 articles]. DOI: 10.3390/rs16112014

Topographic Mapping Capability Analysis of Moderate Resolution Imaging Camera (MoRIC) Imagery of Tianwen-1 Mars Mission (2023) – Journal of Remote Sensing. Cited by [12 articles]. DOI: 10.34133/remotesensing.0040

A Generative Adversarial Network for Pixel-Scale Lunar DEM Generation from High-Resolution Monocular Imagery and Low-Resolution DEM (2022) – Remote Sensing. Cited by [18 articles]. DOI: 10.3390/rs14215420

Updated lunar cratering chronology model with the radiometric age of Chang’e-5 samples (2022) – Nature Astronomy. Cited by [45 articles]. DOI: 10.1038/s41550-022-01604-3

Progresses and prospects of environment perception and navigation for deep space exploration rovers (2021) – Acta Geodaetica et Cartographica Sinica. Cited by [22 articles]. DOI: 10.11947/j.AGCS.2021.20210290

Visual Localization of the Tianwen-1 Lander Using Orbital, Descent and Rover Images (2021) – Remote Sensing. Cited by [30 articles]. DOI: 10.3390/rs13173439

Enhanced Lunar Topographic Mapping Using Multiple Stereo Images Taken by Yutu-2 Rover (2021) – Photogrammetric Engineering and Remote Sensing. Cited by [25 articles]. DOI: 10.14358/PERS.87.8.567

Zari Farhadi | Analytics | Best Researcher Award

Dr. Zari Farhadi | Analytics | Best Researcher Award

Lecturer, University of Tabriz, Iran

Dr. Zari Farhadi is a dedicated lecturer and researcher at the University of Tabriz, Iran, with expertise in Data Science, Machine Learning, and Predictive Modeling. Her passion for academic excellence is evident in her work, particularly in the development of hybrid models to enhance data analysis accuracy. With a Ph.D. in Data Science, she has contributed extensively to advancing predictive models through innovative techniques like ensemble learning and deep regression. 🌟📚

Publication Profile

Google Scholar

Education

Zari Farhadi holds a Ph.D. in Data Science, specializing in machine learning, deep learning, and statistical techniques, from the University of Tabriz. Her academic foundation supports her pioneering work in hybrid machine learning models. 🎓

Experience

As a lecturer and researcher, Dr. Farhadi has contributed to various research papers, focusing on machine learning and deep learning. She teaches at both the Computerized Intelligence Systems Laboratory and the Department of Statistics at the University of Tabriz. Her research experience spans across several high-impact areas of data science, including predictive modeling and statistical learning. 🧑‍🏫

Awards and Honors

Though not currently affiliated with professional organizations, Dr. Farhadi’s work has been recognized in academic circles through the citation of her research in top journals, underlining her growing impact in the field of data science. 🏅

Research Focus

Dr. Farhadi’s research centers on Machine Learning, Predictive Modeling, Ensemble Learning Methods, Statistical Learning, and Hybrid Models like ADeFS, which integrate deep learning with statistical shrinkage methods. She strives to improve model performance in real-world applications, including gold price prediction and real estate valuation. 🤖📊

Conclusion

Zari Farhadi continues to innovate and drive research in the fields of machine learning and data science. Through her groundbreaking work in hybrid models, she is shaping the future of predictive analytics and advancing the boundaries of artificial intelligence in academic and industrial applications. 🌍

Publications

An Ensemble Framework to Improve the Accuracy of Prediction Using Clustered Random-Forest and Shrinkage Methods,
Appl. Sci., vol. 12, no. 20, 2022, doi: 10.3390/app122010608
Cited by: 15 articles.

Improving random forest algorithm by selecting appropriate penalized method
Commun. Stat. Simul. Comput., vol. 0, no. 0, pp. 1–16, 2022, doi: 10.1080/03610918.2022.2150779
Cited by: 10 articles.

ERDeR: The combination of statistical shrinkage methods and ensemble approaches to improve the performance of deep regression,
IEEE Access, DOI: 10.1109/ACCESS.2024.3368067
Cited by: 3 articles.

ADeFS: A deep forest regression-based model to enhance the performance based on LASSO and Elastic Net,
Mathematics and Computer Science, MDPI, 13 (1), 118, 2024.
Cited by: Pending.

Combining Regularization and Dropout Techniques for Deep Convolutional Neural Network,
IEEE Glob. Energy Conf. GEC 2022, pp. 335–339, 2022, doi: 10.1109/GEC55014.2022.9986657
Cited by: 5 articles.

Analysis of Penalized Regression Methods in a Simple Linear Model on the High-Dimensional Data,
American Journal of Theoretical and Applied Statistics, 8 (5), 185, 2019.
Cited by: 2 articles.

An Ensemble-Based Model for Sentiment Analysis of Persian Comments on Instagram Using Deep Learning Algorithms,
IEEE Access, DOI: 10.1109/ACCESS.2024.3473617
Cited by: Pending.

Hybrid Model for Visual Sentiment Classification Using Content-Based Image Retrieval and Multi-Input Convolutional Neural Network,
International Journal of Intelligent Systems (Under review).

 

Sang-Yong Park | Electrical Engineering | Best Researcher Award

Prof. Sang-Yong Park | Electrical Engineering | Best Researcher Award

Assistant Professor, Chosun University, South Korea

Sang-Yong Park is a leading expert in fire protection and power system safety, specializing in DC power systems, circuit breaker technology, superconducting current limiters, and arc plasma. As a professor at Chosun University in Gwangju, South Korea, his work focuses on developing fire prevention solutions and investigating fire causes using advanced technologies. He has contributed significantly to the fields of electrical engineering and fire safety, particularly ensuring the stability and safety of power systems through his research on superconducting current limiters and arc plasma.

Publication Profile

ORCID

Education:

Sang-Yong Park completed his Doctorate in Electrical Engineering from Chosun University in Gwangju, South Korea, between 2018 and 2022. His extensive education has shaped his career in fire and disaster management, equipping him with the necessary skills to innovate in fire protection and power system safety.

Experience:

Currently, Dr. Park serves as a professor in the Fire and Disaster Management department at Chosun University, where he has been employed since March 2023. He has an extensive academic and research career, working on projects aimed at improving the safety of electrical power systems and fire prevention techniques. He brings deep technical knowledge of DC power systems and superconducting current limiters, alongside hands-on experience in analyzing and preventing fire risks associated with electrical arcs.

Awards and Honors:

Dr. Park’s work has earned him recognition in the field, particularly for his innovative research on superconducting current limiters and fire protection. His contributions to power system safety have garnered international attention and continue to influence the field’s evolution.

Research Focus:

Dr. Park’s research primarily focuses on fire prevention and power system safety, with particular attention to DC power systems, circuit breaker technologies, and superconducting current limiters. His work seeks to mitigate the risks of electrical fires by analyzing arc plasma behavior and designing more effective fire protection systems. He is dedicated to improving the safety and reliability of power systems through innovative engineering solutions that minimize the risk of fire and system failure.

Conclusion:

With his deep expertise in fire protection and electrical safety, Dr. Sang-Yong Park is at the forefront of addressing the critical safety challenges in power systems today. His innovative approaches and research have made significant contributions to fire protection solutions, ensuring both stability and safety in power systems.

Publications:

Operation Characteristics of a Mechanical DC Circuit Breaker With a Resistive Superconducting Element for High-Reliability HVDC Applications
Published in: IEEE Transactions on Applied Superconductivity, 2023-08
DOI: 10.1109/TASC.2023.3249133

The Structural and Electromagnetic Comparative Analysis of the Bifilar-Meander-Type Winding Method of Superconducting DC Circuit Breaker
Published in: Energies, 2023-02-13
DOI: 10.3390/en16041866

The Modeling of the LC Divergence Oscillation Circuit of a Superconducting DC Circuit Breaker Using PSCAD/EMTDC
Published in: Energies, 2022-01-21
DOI: 10.3390/en15030780

Characteristics of a Superconducting DC Circuit Breaker According to L and C Elements of LC Divergent Oscillation Circuit
Published in: IEEE Transactions on Applied Superconductivity, 2021-11
DOI: 10.1109/tasc.2021.3107832

Operation Characteristics of Mechanical DC Circuit Breaker Combined with LC Divergence Oscillation Circuit for High Reliability of LVDC System
Published in: Energies, 2021-08-18
DOI: 10.3390/en14165097

Current Limiting Characterization by Winding Types in Superconducting DC Circuit Breaker
Published in: IEEE Transactions on Applied Superconductivity, 2021-08
DOI: 10.1109/tasc.2021.3061326

HTS FCL Module With Voltage of 500 V for DC Circuit Breaker
Published in: IEEE Transactions on Applied Superconductivity, 2021-08
DOI: 10.1109/tasc.2021.3069076

Analysis of Operating Characteristics of a Superconducting Arc-Induction Type DC Circuit Breaker Using the Maxwell Program
Published in: Journal of Electrical Engineering & Technology, 2021-03
DOI: 10.1007/s42835-021-00659-y

Characteristics of a Mechanical Circuit Breaker with New Induction Needle and Magnets Type to Extinguish a DC Arc
Published in: Journal of Magnetics, 2020-12-31
DOI: 10.4283/jmag.2020.25.4.491

Operation Characteristics for the Superconducting Arc-Induction Type DC Circuit Breaker
Published in: Energies, 2020-07-30
DOI: 10.3390/en13153897

Characteristics of a Current-Limiting DC Circuit Breaker with a Superconducting Coil Applied to the Commutation Circuit
Published in: Journal of Electrical Engineering & Technology, 2020-07
DOI: 10.1007/s42835-020-00469-8

 

SARI MOHAN DAS | VLSI DESIGN | Best Researcher Award

Mr. SARI MOHAN DAS | VLSI DESIGN | Best Researcher Award

ASSISTANT PROFESSOR, SVR ENGINEERING COLLEGE, India

Dr. S. Mohan Das is a highly motivated academician and researcher with over 18 years of experience in teaching and research in the field of Electronics and Communication Engineering. He is currently serving as an Associate Professor at S.V.R. Engineering College, Nandyal, and has previously worked at Vardhaman Engineering College and Alfa Engineering College. Dr. Mohan Das has contributed significantly to academia through his role as a mentor and coordinator for various technical programs. He is known for his passion for teaching and his dedication to fostering technological advancements.

Publication Profile

Google Scholar

Education 🎓

Dr. Mohan Das holds a B.Tech and M.Tech degree in Electronics and Communication Engineering from R.G.M.C.E.T, Nandyal, where he graduated with distinction. He is also pursuing a part-time Ph.D. at Yogivemana University, Kadapa, since 2020.

Experience 💼

With vast experience in the academic field, Dr. Mohan Das has held various important roles. He has worked as an Assistant Professor at Vardhaman Engineering College and Alfa Engineering College before his current position as Associate Professor at S.V.R. Engineering College. His administrative roles include being a coordinator for NPTEL, NBA, AICTE, and M.Tech programs.

Awards and Honors 🏅

Dr. Mohan Das has received recognition for his work, including his involvement in national and international conferences, where he has presented papers and contributed to research. He has participated in numerous workshops and FDPs, receiving accolades for his active involvement in the development of academic and industrial programs.

Research Focus 🔬

Dr. Mohan Das’s research interests lie primarily in the fields of Analog VLSI, Antennas, and Wave Propagation. He has worked on several research projects and has published papers in high-impact journals and conferences, contributing to advancements in these areas. His research also focuses on energy-efficient technologies and the optimization of circuit designs.

Conclusion

Dr. Mohan Das is a dedicated educator and researcher, committed to the continuous advancement of technology and education. With a strong academic background and a focus on research innovation, he continues to inspire future engineers and contribute to the field of Electronics and Communication Engineering.

Publications 📚

A Verilog Design in FPGA Implementation of Quadrature Phase Shift Keying, S. Mohan Das, K. Mounica, P. Uday Kumar. International Journal of Engineering Sciences & Research Technology (IJESRT), ISSN: 2277-9655.
Published: 2016

An Efficient Carry Select Adder with Less Delay and Reduced Area Using FPGA Quartus II Verilog Design, S. Mohan Das, K. Swarnalatha, P. Uday Kumar. International Journal of Science, Engineering and Technology Research (IJSETR), ISSN: 2278-7798.
Published: 2016

Design And Implementation Of Area-Delay-Power Efficient CSLA Based 32-Bit Array Multiplier, S. Mohan Das, M. Mahaboob Basha, Fahmina Afreen. International conference on Recent Trends in Electronics, Information & Communication Technology (RTEICT-2017).
Published: 2017

A Novel Low Power Energy Efficient SRAM Cell with Reduced Power Consumption Using MTCMOS Technique, S. Mohan Das, K. S. Kiran Kumar, A. Madhulatha. IOSR Journal of VLSI and Signal Processing, ISSN: 2319-4200.
Published: 2018

Blocker Tolerant Cascode LNA for Wifi & IoT Applications, S. Mohan Das. Journal of Communication Systems.
Published: 2020

Pass-Transistor-Enabled Split Input Voltage Level Shifter for Ultra-Low-Power Applications, S. Mohan Das. Micromachines.
Published: 2020