Mohammad Hossein Khosravi | Engineering | Best Researcher Award

Assoc. Prof. Dr. Mohammad Hossein Khosravi | Engineering| Best Researcher Award

Associate Professor at University of Birjand, Iran

Mohammad Hossein Khosravi is an Associate Professor in the Department of Mining Engineering at the University of Birjand, Iran. He holds a Ph.D. in Geotechnical Engineering from the Tokyo Institute of Technology and has a broad academic background, including an M.Sc. in Rock Mechanics from the University of Tehran. His research interests focus on geomechanics, rock/soil slope engineering, and tunneling, with a particular emphasis on physical modeling and retaining structures. Khosravi has earned numerous prestigious awards, including best paper/presentation honors at international conferences and a Ph.D. scholarship from Japan’s Monbukagakusho. He has also gained valuable experience through postdoctoral research at the Center for Urban Earthquake Engineering and consulting roles in geotechnical engineering. He is actively involved in several professional organizations and has been a faculty member at both the University of Birjand and the University of Tehran. His research and academic achievements have made significant contributions to the field of geotechnical engineering.

Professional Profile

Education

Mohammad Hossein Khosravi has an impressive academic background. He earned his Ph.D. in Geotechnical Engineering from the Tokyo Institute of Technology in Japan, completing his dissertation on the arching effect in geomaterials with applications to retaining walls and undercut slopes. Prior to that, he obtained an M.Sc. in Rock Mechanics from the University of Tehran, where he conducted research on the groutability of alluvial deposits at the Kheirabad Dam foundation. He began his academic journey with a B.Sc. in Mining Engineering from Shahid Bahonar University of Kerman, where he studied the permeability of oxidized copper ore against water and sulfuric acid. His educational path reflects a deep commitment to advancing geotechnical engineering and geomechanics.

Professional Experience

Mohammad Hossein Khosravi has extensive professional experience in both academia and industry. He is currently an Associate Professor in the Department of Mining Engineering at the University of Birjand, Iran, where he contributes to both teaching and research. Previously, he served as an Assistant Professor at the University of Tehran, further strengthening his academic profile. Khosravi’s professional experience extends beyond academia; he was a postdoctoral research fellow at the Center for Urban Earthquake Engineering at the Tokyo Institute of Technology and worked as a Geotechnical Consulting Engineer at TaiseiKiso Sekkei Company in Japan. Additionally, he has held positions as a university lecturer and geotechnical site engineer, where he applied his expertise in real-world projects. His career demonstrates a successful blend of teaching, research, and practical experience in geotechnical engineering.

Research Interest

Mohammad Hossein Khosravi’s research interests are primarily focused on geomechanics, with a specific emphasis on rock/soil slope engineering, tunneling, and the behavior of retaining structures. He is particularly interested in physical modeling in geotechnical engineering, investigating the complex interactions of geomaterials under various stress conditions. His work also explores the arching effect in geomaterials, which has significant applications in the design and stability of retaining walls and undercut slopes. These areas of research are critical for improving the safety and efficiency of infrastructure projects such as tunnels, slopes, and retaining structures, making his work highly relevant to both academia and industry in the field of geotechnical engineering.

Award and Honor

Mohammad Hossein Khosravi has received numerous prestigious awards and honors throughout his academic and professional career. Notably, he was recognized with certificate awards for best paper and presentation at the 10th International Conference on Earthquake Engineering in Tokyo (2012) and the Japanese Geotechnical Conference (2010), reflecting the high quality and impact of his research. He also earned a postdoctoral fellowship from the Center for Urban Earthquake Engineering (CUEE) in Tokyo in 2012, further solidifying his expertise in geotechnical engineering. Khosravi was awarded a Ph.D. scholarship by Japan’s Ministry of Education, Culture, Sports, Science, and Technology (Monbukagakusho) for his doctoral studies. Additionally, he was recognized as the second-ranked student in his M.Sc. program and the first-ranked student in his B.Sc. program, both achievements earning him notable accolades. His exceptional academic and research achievements demonstrate his dedication and influence in his field.

Conclusion

Mohammad Hossein Khosravi’s strong academic foundation, innovative research contributions, international exposure, and recognition through awards make him a very suitable candidate for the Best Researcher Award. His work in geotechnical engineering addresses crucial issues in infrastructure and safety, which are of global importance. By expanding his research visibility and collaborations, he has the potential to further elevate his impact in the scientific community. Overall, he demonstrates the qualities and achievements expected of a Best Researcher Award recipient.

Publications Top Noted

  • Title: Determination of the caving zone height using numerical and physical modeling based on the undercutting method, joint dip, and spacing
    Authors: Alipenhani, B., Jalilian, M., Majdi, A., Bakhshandeh Amnieh, H., Khosravi, M.H.
    Year: 2024
    Citations: 2
  • Title: Use of LBPs to estimate VBPs as observed from an investigation of physical model bimrocks
    Authors: Najafvand, K., Khosravi, M.H., Amini, M., Medley, E.
    Year: 2024
    Citations: 0
  • Title: Introducing a new rock abrasivity index using a scaled down disc cutter
    Authors: Moradi, M., Khosravi, M.H., Hamidi, J.K.
    Year: 2024
    Citations: 1
  • Title: Soil Arching and Ground Deformation around Tunnels in Sandy Grounds: Review and New Insights
    Authors: Khandouzi, G., Khosravi, M.H.
    Year: 2024
    Citations: 2
  • Title: Numerical modelling of cohesive-frictional soil behind inclined retaining wall under passive translation mode
    Authors: Sarfaraz, H., Khosravi, M.H., Pipatpongsa, T.
    Year: 2024
    Citations: 0
  • Title: Performance Evaluation of Artificial Neural Networks and Support Vector Regression in Tunneling-Induced Settlement Prediction Incorporating Umbrella Arch Method Characteristics
    Authors: Varjovi, M.A., Rahmanpour, M., Khosravi, M.H., Majdi, A., Le, B.T.
    Year: 2024
    Citations: 1
  • Title: A review on the buried pipeline responses to tunneling-induced ground settlements
    Authors: Mahmoudi, H., Khandouzi, G., Khosravi, M.H.
    Year: 2024
    Citations: 0
  • Title: Mobilization of Cohesion and Friction Angle of Intact Rocks in the Shearing Process
    Authors: Alidaryan, M., Khosravi, M.H., Bahaaddini, M., Moosavi, M., Roshan, H.
    Year: 2023
    Citations: 3
  • Title: An analytical investigation of soil arching induced by tunneling in sandy ground
    Authors: Khandouzi, G., Khosravi, M.H.
    Year: 2023
    Citations: 10
  • Title: Theoretical and Numerical Analysis of Cohesive-Frictional Backfill against Battered Retaining Wall under Active Translation Mode
    Authors: Sarfaraz, H., Khosravi, M.H., Pipatpongsa, T.
    Year: 2023
    Citations: 7

Milad Jafarypouria | Engineering | Best Researcher Award

Dr. Milad Jafarypouria | Engineering | Best Researcher Award

Skoltech University at Author, Russia

Milad Jafarypouria is a Ph.D. candidate in Mathematics and Mechanics at Skolkovo Institute of Science and Technology (Skoltech), Moscow. His research spans composite materials, nanocomposites, and material mechanics, with a focus on the mechanical and electrical behavior of carbon nanotubes and epoxy resins. He has contributed to several high-impact publications and is involved in innovative work with patents pending. Milad’s research combines advanced computational modeling, experimental studies, and cutting-edge techniques like Python programming, ABAQUS analysis, and scanning electron microscopy. With a robust academic and research background, he demonstrates the potential for significant contributions to engineering and materials science.

Professional Profile

Education

Milad earned his Ph.D. in Mathematics and Mechanics from Skolkovo Institute of Science and Technology (Skoltech) in 2024, with a GPA of A. Before this, he completed his M.Sc. in Mechanical Engineering at Razi University, Kermanshah, Iran, graduating with a GPA of 3.72 in 2019. Milad’s undergraduate studies were completed at Malayer University, where he earned a B.Sc. in Mechanical Engineering with an impressive GPA of 3.96. His solid academic background forms the foundation of his research excellence and technical proficiency in the field.

Professional Experience

Milad has extensive research experience in the fields of material science and mechanical engineering. He has worked under the supervision of Dr. S. Abaimov and Stepan V. Lomov at Skoltech, focusing on the mechanical properties of composites, including the effect of fiber misalignment and diameter distribution on material stress concentrations. His work also includes experimental studies on carbon nanotube composites and epoxy resins. Previously, at Razi University, Milad worked on analytical modeling and numerical simulations related to low-velocity impact on composite materials. His expertise in programming, modeling, and experimental research enhances his ability to tackle complex material science challenges.

Research Interest

Milad Jafarypouria’s research primarily focuses on the mechanical and electrical behavior of composite materials, nanocomposites, and advanced materials science. His work explores the effects of fiber misalignment, fiber diameter distribution, and interfacial debonding in composite structures. Additionally, Milad investigates the temperature-dependent properties of carbon nanotube-based composites, including their Temperature Coefficient of Resistance (TCR). His research combines advanced computational techniques like Python programming and ABAQUS analysis with experimental studies on the behavior of epoxy resins and carbon nanotubes. Milad’s interdisciplinary approach allows him to bridge the gap between theoretical modeling and real-world applications, contributing to the development of next-generation composite materials for various engineering applications.

Awards and Honors

Milad Jafarypouria has received recognition for his exceptional academic and research accomplishments. He has been awarded a Ph.D. scholarship from Skolkovo Institute of Science and Technology (Skoltech) for his outstanding performance and contributions to the field of materials science. Additionally, Milad has received multiple academic distinctions during his M.Sc. and B.Sc. studies, including a high GPA and recognition for his research potential. His ongoing work, including patents and high-impact publications, further solidifies his reputation as a promising researcher in the fields of mechanical engineering and material science.

Conclusion

Milad Jafarypouria is a promising candidate for the Best Researcher Award due to his strong academic background, innovative research, and potential for high-impact contributions. His expertise in materials science, along with his interdisciplinary approach and promising patent work, makes him an excellent choice. To further enhance his candidacy, improving his English-speaking skills and increasing his international visibility could open new avenues for collaboration and recognition.

Publications Top Noted

  • Design and fabrication of robotic gripper for grasping in minimizing contact force
    • Authors: H. Heidari, M. Jafarypouria, S. Sharifi, M. Karami
    • Year: 2018
    • Cited by: 25
    • Journal: Advances in Space Research, 61(5), 1359-1370
  • Separating curing and temperature effects on the temperature coefficient of resistance for a single-walled carbon nanotube nanocomposite
    • Authors: M. Jafarypouria, B. Mahato, S. G. Abaimov
    • Year: 2023
    • Cited by: 9
    • Journal: Polymers, 15(2), 433
  • The effect of fibre misalignment in an impregnated fibre bundle on stress concentrations
    • Authors: M. Jafarypouria, S. V. Lomov, B. Mahato, S. G. Abaimov
    • Year: 2024
    • Cited by: 6
    • Journal: Composites Part A: Applied Science and Manufacturing, 178, 108001
  • Hierarchical toughening and self-diagnostic interleave for composite laminates manufactured from industrial carbon nanotube masterbatch
    • Authors: B. Mahato, S. V. Lomov, M. Jafarypouria, M. Owais, S. G. Abaimov
    • Year: 2023
    • Cited by: 6
    • Journal: Composites Science and Technology, 243, 110241
  • Design and fabrication of robotic gripper for robust grasping various objects in unstructured environments
    • Authors: H. Heidari, M. Jafarypouria, S. Sharifi, M. R. Karami
    • Year: 2016
    • Cited by: Not available
    • Journal: Modares Mechanical Engineering, 16(5), 241-250

Junjie Yang | Engineering | Best Researcher Award

Dr. Junjie Yang | Engineering | Best Researcher Award

Engineer at China Three Gorges Corporation, China

Dr. Junjie Yang is an accomplished researcher specializing in fault diagnosis, anomaly detection, and machine learning applications in complex systems. With a Ph.D. from the University of Paris-Saclay, his groundbreaking work has introduced methodologies such as the Local Mahalanobis Distance (LMD) for incipient fault diagnosis, earning recognition through high-impact publications. He has contributed to diverse domains, from renewable energy systems to multivariate statistical analysis, showcasing his ability to blend theoretical innovation with practical applications. Dr. Yang’s global research experience spans institutions like CNRS Singapore and China Three Gorges Corporation, where he developed hybrid AI frameworks and advanced diagnostic tools. Proficient in Python, Matlab, and AI libraries, he bridges traditional engineering and modern computational techniques. His commitment to interdisciplinary research, strong publication record, and collaboration with renowned experts position him as a leading figure in his field. Dr. Yang exemplifies excellence in leveraging AI for impactful real-world solutions.

Professional Profile

Education

Dr. Junjie Yang has a robust educational foundation that underpins his expertise in fault diagnosis and machine learning. He earned his Ph.D. from the University of Paris-Saclay in 2023, focusing on fault diagnosis and prognosis in multivariate complex systems. His doctoral research introduced innovative methodologies, such as the Local Mahalanobis Distance (LMD), for detecting and isolating faults in complex environments. Prior to this, he completed his M.Sc. in Control Science and Engineering at Guangdong University of Technology, China, in 2019, where he developed a novel method for estimating the volume under a three-class ROC surface using kNN classifiers. His academic journey began with a B.Sc. in Automation from the same university in 2016, during which he worked on open-circuit fault diagnosis for interleaved DC-DC converters. Additionally, Dr. Yang enriched his academic portfolio as a visiting student at Polytech Nantes, France, specializing in wireless embedded technology.

Professional Experience

Dr. Junjie Yang possesses extensive professional experience in the fields of fault diagnosis, renewable energy systems, and machine learning. Currently, he serves as an Engineer at China Three Gorges Corporation, where he focuses on leveraging Large Language Models (LLMs) for fault diagnosis in renewable energy systems. Prior to this role, he was a Research Fellow at CNRS @ CREATE in Singapore, where he developed hybrid models integrating Convolutional Auto-Encoders with traditional physical characteristics for unsupervised high-impedance fault detection. Dr. Yang’s professional journey includes impactful research roles addressing complex problems in power systems and automation, underscored by his innovative contributions to incipient fault detection using AI-driven methodologies. His ability to transition seamlessly between academia and industry highlights his adaptability and focus on real-world applications. Through his work, Dr. Yang demonstrates a unique ability to bridge the gap between theoretical advancements and practical engineering solutions.

Research Interest

Dr. Junjie Yang’s research interests lie at the intersection of machine learning, statistical analysis, and engineering, with a particular focus on fault diagnosis and anomaly detection in complex systems. He is deeply engaged in developing advanced methodologies for one-class classification, semi-supervised learning, and multivariate statistical analysis to tackle challenges in identifying and isolating incipient faults. His work emphasizes the integration of AI techniques, such as Convolutional Auto-Encoders and Local Mahalanobis Distance (LMD), with traditional engineering models to enhance fault detection and prognosis in renewable energy systems and other industrial applications. Dr. Yang is also interested in applying data-driven and hybrid approaches to improve system reliability and performance in multivariate and high-dimensional environments. His research aims to address practical challenges in automation, energy systems, and beyond, making his contributions valuable for advancing both theoretical knowledge and real-world applications in intelligent fault diagnosis and system monitoring.

Award and honor

Dr. Junjie Yang has earned recognition for his innovative contributions to the fields of fault diagnosis and machine learning, receiving accolades that highlight his research excellence. His groundbreaking methodologies, such as the Local Mahalanobis Distance (LMD) and hybrid AI models for fault detection, have garnered widespread acclaim within the academic and industrial communities. Dr. Yang has been invited to present his work at prestigious international conferences, including IEEE IECON and ICASSP, underscoring his influence in advancing fault detection techniques. His papers, published in high-impact journals like Signal Processing and Electric Power Systems Research, have been highly cited, reflecting their significance in the field. While specific awards and honors may not be explicitly listed in his profile, his consistent publication in leading journals, collaborations with globally renowned researchers, and research positions at esteemed institutions underscore his distinction and impactful contributions to science and engineering.

Conclusion

Junjie Yang is a highly deserving candidate for the Best Researcher Award due to his groundbreaking contributions to fault diagnosis and renewable energy systems using AI models. His work bridges theoretical innovation with practical applications, evidenced by his extensive publication record and global collaborations. Enhancing the breadth of his applications and adopting newer AI paradigms could further cement his standing as a leader in the field. He embodies the qualities of a researcher who significantly advances the frontiers of science and engineering.

Publications Top Noted

  • Title: An incipient fault diagnosis methodology using local Mahalanobis distance: Detection process based on empirical probability density estimation
    Authors: J. Yang, C. Delpha
    Year: 2022
    Citations: 38
  • Title: Change point detection with mean shift based on AUC from symmetric sliding windows
    Authors: Y. Wang, G. Huang, J. Yang, H. Lai, S. Liu, C. Chen, W. Xu
    Year: 2020
    Citations: 10
  • Title: An incipient fault diagnosis methodology using local Mahalanobis distance: Fault isolation and fault severity estimation
    Authors: J. Yang, C. Delpha
    Year: 2022
    Citations: 9
  • Title: Open-circuit fault diagnosis for interleaved DC-DC converters
    Authors: Y. Junjie, C. Delpha
    Year: 2020
    Citations: 7
  • Title: A local Mahalanobis distance analysis based methodology for incipient fault diagnosis
    Authors: J. Yang, C. Delpha
    Year: 2021
    Citations: 6
  • Title: Local Mahalanobis distance envelope using a robust healthy domain approximation for incipient fault diagnosis
    Authors: J. Yang, C. Delpha
    Year: 2021
    Citations: 5
  • Title: An efficient and user-friendly software tool for ordered multi-class receiver operating characteristic analysis based on Python
    Authors: S. Liu, J. Yang, X. Zeng, H. Song, J. Cen, W. Xu
    Year: 2022
    Citations: 2
  • Title: Empirical probability density cumulative sum for incipient fault detection
    Authors: J. Yang, C. Delpha
    Year: 2020
    Citations: 2
  • Title: A new reconstruction-based method using local Mahalanobis distance for incipient fault isolation and amplitude estimation
    Authors: J. Yang, C. Delpha
    Year: 2023
    Citations: 1
  • Title: Bearing Faults Detection Using Statistical Feature Extraction and Probability Based Distance: A Comparative Study
    Authors: J. Yang, C. Delpha
    Year: 2022
    Citations: 1
  • Title: IEEE 34 Nodes Test Feeder Simulation Data for High Impedance Fault Detection and Localization
    Authors: J. Yang, D. Benoit
    Year: 2024
    Citations: 0
  • Title: Incipient Fault Severity Estimation Using Local Mahalanobis Distance
    Authors: J. Yang, C. Delpha
    Year: 2022
    Citations: 0

Rana Maya | Engineering | Best Researcher Award

Prof. Rana Maya | Engineering | Best Researcher Award

Chair of construction engineering and management department at Tishreen university, Syria

Prof. Rana Maya is an accomplished academic and professional in construction engineering and management, with extensive experience in research, teaching, and quality management. She holds a Ph.D. in Construction Engineering and Management, awarded jointly by Tishreen University, Syria, and Kassel University, Germany. Prof. Maya has led numerous projects for international organizations like UNESCO, UNDP, and TEMPUS, contributing to the design, evaluation, and implementation of quality management systems. She has overseen more than 120 onsite audits and evaluated over 350 projects. Her leadership has earned her the Exceptional Professors Award and recognition for boosting Tishreen University’s global ranking. Prof. Maya has published widely, co-authoring a book on women in engineering leadership, and she supervises research at the graduate level. Fluent in English, Arabic, and Russian, she combines her academic expertise with global experience in both teaching and consulting roles. She is dedicated to advancing sustainable practices and innovative solutions in construction management.

Professional Profile

Education

Prof. Rana Maya holds an extensive educational background in construction engineering and management. She earned her Ph.D. in Construction Engineering and Management through a joint supervision program between Tishreen University in Syria and Kassel University in Germany, completed between 2005 and 2009. Prior to that, she obtained a Master’s degree in Quality Management in Construction Projects from Tishreen University in 2003. Prof. Maya also holds a Bachelor’s degree in Construction Engineering and Management from Tishreen University, completed in 1995. She has pursued various professional certifications, including a Lead Auditor certification in Quality Management Systems from SGS, United Kingdom, in 2013, and a Certified Auditor and Trainer for ISO9001:2015 from TQCSI, Australia, in 2020. Additionally, she has undertaken training in productivity management and organizational excellence through Syria’s Ministry of Administrative Development and is a certified Trainer of Trainers (TOT) in quality management systems by UNIDO.

Professional Experience

Prof. Rana Maya has extensive professional experience in construction engineering, management, and quality assurance. She has held various academic positions, including Professor and Department Chair at Tishreen University, Syria, where she taught courses in construction project management, quality management, and systems analysis. She also serves as an Associate Professor at the Syrian Virtual University, specializing in Building Information Modeling (BIMM) and quality management at the Master’s level. Beyond academia, Prof. Maya has worked as a consultant, leading quality management and accreditation projects for several organizations, including UNDP and UNESCO. She has supervised over 120 onsite audits and evaluated more than 350 projects in Syria and Germany. Her leadership in academic accreditation has helped institutions like Tishreen University and Al-Sham Private University achieve key certifications. Additionally, Prof. Maya has contributed as a senior management consultant for multiple organizations, improving organizational excellence and project management capabilities across various sectors.

Research Interest

Prof. Rana Maya’s research interests primarily focus on construction engineering, project management, and quality management systems, with an emphasis on improving performance and sustainability in construction projects. She explores innovative approaches to enhancing project management practices, quality assurance, and organizational excellence, particularly in challenging environments. Her work includes the development and evaluation of quality management frameworks and systems in construction projects, aiming to optimize performance and ensure compliance with international standards. Prof. Maya is also interested in the integration of Building Information Modeling (BIMM) in project management, particularly its role in improving efficiency and decision-making processes. Additionally, her research extends to the fields of strategic management, sustainability in construction, and the application of digital tools to support project planning, monitoring, and evaluation. She has contributed to studies on organizational resilience and the implementation of quality standards in both public and private sector construction projects.

Award and Honor

Prof. Rana Maya has received numerous awards and honors throughout her distinguished career. She was recognized with the Exceptional Professors Award at the Syrian Virtual University, achieving high scores of 94.7% and 92% in 2022 and 2023. Her leadership and contributions have significantly impacted the academic and research landscape, including her role as the Team Leader in helping Tishreen University achieve a ranking in the 801-1000 range for the Times Higher Education Impact Ranking 2024. Prof. Maya’s efforts in promoting quality management and academic excellence have earned her the Team Leader Award for supporting the accreditation of Al-Sham Private University’s Faculty of Medicine by the World Federation for Medical Education (WFME). Additionally, she co-authored a volume in the β€œRising to the Top” book series, showcasing women engineering leaders’ journeys to success. These accolades reflect her outstanding contributions to both academic excellence and the advancement of quality management in construction engineering.

Conclusion

Rana Maya’s exemplary career, marked by significant academic, research, and managerial achievements, positions her as a strong candidate for the Best Researcher Award. Her ability to bridge academic excellence with practical applications, coupled with a proven track record in quality management and education, highlights her suitability. Strategic enhancements in international collaboration and cutting-edge research areas would further solidify her standing as a leader in her field.

Publications Top Noted

  • Performance management for Syrian construction projects
    Authors: R. A. Maya
    Year: 2016
    Cited by: 47
  • BIM Implementation Maturity Level and Proposed Approach for the Upgrade in Lithuania
    Authors: N. Lepkova, R. Maya, S. Ahmed, V. Ε arka
    Year: 2019
    Cited by: 31
  • Develop an artificial neural network (ANN) model to predict construction projects performance in Syria
    Authors: R. Maya, B. Hassan, A. Hassan
    Year: 2023
    Cited by: 30
  • Incorporating BIM into the Academic Curricula of Faculties of Architecture within the Framework of Standards for Engineering Education
    Authors: L. Raad, R. Maya, P. Dlask
    Year: 2023
    Cited by: 10
  • Defining the Areas and Priorities of Performance Improvement in Construction Companies Case Study for General Company for Construction and Building
    Authors: B. Hassan, J. Omran, R. Maya
    Year: 2015
    Cited by: 9
  • Methodology of Project Management Assessment and the Financial Effects of Its Practices
    Authors: H. Bassam, O. Jamal, M. Rana
    Year: 2008
    Cited by: 6
  • Quality Assurance of Construction Design and Contractual Phases in Syria Within BIM Environment: A Case study
    Authors: D. Y. Rudwan, R. Maya, N. Lepkova
    Year: 2023
    Cited by: 5
  • The Role of BIM in Managing Risks in Sustainability of Bridge Projects: A Systematic Review with Meta-Analysis
    Authors: D. M. Ahmad, L. GΓ‘spΓ‘r, Z. Bencze, R. A. Maya
    Year: 2024
    Cited by: 3
  • Determining the Most Appropriate Performance Indicators for Improving the Performance of Construction in Syria
    Authors: L. Maya, R. Ahmad
    Year: 2014
    Cited by: 3
  • Optimal Government Strategies for BIM Implementation in Low-Income Economies: A Case Study in Syria
    Authors: M. S. Al-Mohammad, A. T. Haron, R. Maya, R. A. Rahman
    Year: 2024
    Cited by: 2
  • The importance of regional planning in the processes of development and modernization in Syria: the challenges and the scopes of priority for working
    Author: R. Maya
    Year: 2008
    Cited by: 2
  • Measuring the performance of construction firms, using data envelopment analysis
    Authors: B. Hassan, J. Omran, R. Maya
    Year: 2008
    Cited by: 2
  • An Applied Study to Improve the Sustainability of Buildings by Reducing Energy Consumption Costs Using Building Information Modeling (BIM)
    Author: R. Maya
    Year: 2023
    Cited by: 1
  • Suggesting a Model for Applying Digital Engineering to Lean Project Construction
    Author: R. Maya
    Year: 2022
    Cited by: 1
  • BSC Designer to Manage Construction Project Performance Information through Visual Analysis
    Authors: M. Rana, O. Jamal, H. Bassam, A. Layal, P. Ghodous, F. Khosrowshahi
    Year: 2014
    Cited by: 1

Bin Rao | Engineering | Best Researcher Award

Mr. Bin Rao | Engineering | Best Researcher Award

Research Assistant at Univercity of Macao, China

Mr. Bin Rao is a highly accomplished researcher specializing in traffic engineering and intelligent transportation systems. He holds a Bachelor’s degree in Traffic Engineering and a Master’s in Transportation Engineering, both from South China University of Technology, with outstanding academic achievements. Currently a Research Assistant at the University of Macau, Mr. Rao has made significant contributions to data-driven transportation research, focusing on travel time prediction, trajectory visualization, and outlier detection. He has co-authored multiple peer-reviewed publications, filed patents, and developed innovative algorithms leveraging machine learning and spatiotemporal reconstruction. His work has been recognized with prestigious scholarships and awards in national and provincial innovation competitions. Proficient in programming and data analysis tools like Python and MATLAB, Mr. Rao demonstrates a rare combination of technical expertise and problem-solving skills. With a proven research track record and a commitment to innovation, he is an emerging leader in the field of transportation engineering.

Professional Profile:

Education

Mr. Bin Rao has a strong academic foundation in traffic and transportation engineering, supported by consistent excellence in his studies. He earned a Bachelor’s degree in Traffic Engineering with a minor in Finance from South China University of Technology (2017-2021), graduating with a remarkable GPA of 3.80/4.00 and ranking 3rd among 35 students. His coursework included Probability & Mathematical Statistics, Linear Algebra, Traffic Control, and Intelligent Transportation Systems, providing him with a comprehensive understanding of his field. Continuing his academic journey, Mr. Rao pursued a Master’s degree in Transportation Engineering (2021-2024) at the same institution through a postgraduate recommendation, achieving a GPA of 3.81/4.00 and ranking 10th among 60 peers. His advanced coursework encompassed subjects like Operational Research and Data Processing, further sharpening his analytical and technical skills. Currently, as a Research Assistant at the University of Macau, Mr. Rao continues to integrate academic knowledge with impactful research.

Professioanl Experience

Mr. Bin Rao’s professional experience showcases his expertise in traffic engineering and his ability to apply research to real-world problems. He began his career with innovative projects during his academic tenure, such as developing a real-time tunnel vehicle accident detection system based on RSSI technology. This device demonstrated high-precision positioning capabilities, enhancing safety in tunnel environments. As a Research Assistant at the University of Macau since 2024, Mr. Rao has focused on advanced data-driven transportation solutions under the mentorship of Prof. Zhengning Li. He has contributed to groundbreaking projects like urban road network travel time prediction using a WGCN-BiLSTM model and outlier detection algorithms for travel time data. These projects leveraged license plate recognition data to improve traffic management and prediction accuracy. Mr. Rao’s work is distinguished by a combination of technical proficiency, innovative algorithms, and collaborative research, solidifying his role as a rising expert in intelligent transportation systems.

Research Interest

Mr. Bin Rao’s research interests lie at the intersection of intelligent transportation systems, data-driven modeling, and advanced traffic engineering. He is particularly focused on leveraging machine learning, spatiotemporal analysis, and big data technologies to address complex transportation challenges. His work centers on developing predictive models for travel time estimation, such as the innovative WGCN-BiLSTM model, which enhances the accuracy and robustness of urban traffic predictions. He is also passionate about trajectory visualization and anomaly detection, utilizing license plate recognition data and advanced algorithms to refine traffic flow analysis and improve operational efficiency. Mr. Rao is keen on exploring new frontiers in autonomous traffic management, ethical trajectory planning, and long-tail trajectory prediction to better adapt transportation systems to real-world uncertainties. With a commitment to integrating theoretical insights with practical applications, his research aims to revolutionize urban mobility and contribute to sustainable and intelligent transportation networks.

Award and Honor

Mr. Bin Rao has earned numerous awards and honors in recognition of his academic excellence and innovative contributions to transportation engineering. During his undergraduate and postgraduate studies, he consistently received prestigious scholarships, including the National Encouragement Scholarship and the South China University of Technology School Scholarship. These accolades underscore his outstanding academic performance and dedication to his field. Mr. Rao has also excelled in national and provincial competitions, securing top prizes in events like the Fifth National University Intelligent Transportation Innovation and Entrepreneurship Competition, where he earned a National First Prize. His achievements in the Guangzhou Universities β€œInternet + Transportation” Competition and other innovation contests highlight his ability to translate theoretical knowledge into practical, impactful solutions. These honors reflect Mr. Rao’s commitment to advancing transportation engineering through innovative approaches and his potential as a leader in intelligent transportation systems. His accomplishments exemplify excellence, creativity, and a forward-thinking mindset.

Conclusion

Bin Rao demonstrates an exceptional blend of academic rigor, technical innovation, and collaborative research expertise, making a strong case for the Best Researcher Award. His achievements in publication, patents, and competitive accolades reflect both depth and impact in traffic engineering. With further diversification and enhanced independent contributions, he has the potential to emerge as a leading figure in his field. Based on the current profile, Bin Rao is highly suitable for the Best Researcher Award.

Publications Top Noted

  • Xu, Minggui, Rao, Bin, Li, Yue, and Qi, Weiwei (2023)

    Visualization method of urban motor vehicle trajectory based on license plate recognition data.

    Published in: Smart Transportation Systems 2023.

  • Qi, Weiwei, Rao, Bin, and Fu, Chuanyun (2023)

    A novel filtering method of travel time outliers extracted from large-scale traffic checkpoint data.

    Published in: Journal of Transportation Engineering, Part A: Systems.

  • Qi, Weiwei, Rao, Bin (2024)

    Urban road network travel time prediction method based on β€œnode-link-network” spatiotemporal reconstruction: a license plate data-driven WGCN-BiLSTM model.

    Status: Invited for presentation at CICTP 2024, submitted to TITS.

  • Rao, Bin, Ye, Zhihong, Lin, Yongjie, et al. (2021)

    Tunnel vehicle accident detection and early warning device based on RSSI.

    Patent: CN216110866U (Issued March 22, 2022).

  • Qi, Weiwei, Rao, Bin (2022)

    A Visualization Method for Motor Vehicle Trajectories Based on License Plate Recognition Data.

    Patent: ZL 2022 1 1021382.7 (Issued April 12, 2024).

  • Qi, Weiwei, Rao, Bin (2023)

    A Vehicle Convoy Travel Time Abnormal Value Filtering System and Filtering Method.

    Patent: ZL 2023 1 1002516.5 (Issued August 23, 2024).

Syamsul Rizal | Engineering | Best Researcher Award

Dr. Syamsul Rizal | Engineering | Best Researcher Award

Postdoctoral at ICT Convergence Research Center, South Korea

Dr. Syamsul Rizal is an Assistant Professor at Telkom University, Indonesia, and a postdoctoral researcher at Kumoh National Institute of Technology, South Korea, with expertise in machine learning, AI, and blockchain integration. With over five years of teaching experience, he instructs courses in programming and AI, fostering the next generation of tech innovators. His research spans real-time locating systems, biomedical applications of AI, and recently, blockchain with AI, showcasing his focus on emerging, interdisciplinary technology. Dr. Rizal has a strong publication record with contributions to prominent conferences and journals, demonstrating his commitment to advancing AI and machine learning. Honored with a Best Thesis Award and scholarships, he combines technical skill, academic rigor, and practical application in his work. Known for his collaborative spirit and leadership in international research settings, Dr. Rizal is recognized for his contributions to applied AI and his role in innovative technology development.

Professional profile

EducationπŸ“š

Dr. Syamsul Rizal completed his Master’s and Ph.D. programs in the Department of IT Convergence at the Kumoh National Institute of Technology, South Korea, from 2013 to 2018. His advanced studies focused on integrating emerging technologies across fields such as networked systems, IoT, and AI. As a team leader in the Networked Systems Laboratory, he worked on projects related to ISA100.11a, data virtualization, and image and video processing, gaining hands-on experience in cutting-edge technology. During his doctoral studies, he was honored with a Best Thesis Award in 2015, highlighting his research excellence and innovative approach. His education, supported by a scholarship at Kumoh National Institute of Technology, provided a robust foundation in both theoretical and applied aspects of information technology. Dr. Rizal’s academic journey has equipped him with interdisciplinary expertise, enabling him to address complex challenges in machine learning, blockchain, and AI-driven solutions in his professional career.

Professional ExperienceπŸ›οΈ

Dr. Syamsul Rizal has a diverse professional background that spans academic and applied research roles. Currently, he is an Assistant Professor at Telkom University, Indonesia, where he has been teaching since 2019, specializing in programming, artificial intelligence, and mobile application development. His teaching focuses on empowering students with foundational and advanced skills in Python, Java, and C. Alongside teaching, Dr. Rizal is actively involved in research, particularly in machine learning, with projects like AI-driven tea leaf classification. Since 2023, he has also served as a postdoctoral researcher at Kumoh National Institute of Technology in South Korea, where he is developing blockchain systems integrated with AI, reflecting his commitment to emerging technologies. Dr. Rizal’s previous experience includes a postdoctoral role at DGIST, South Korea, where he worked on real-time locating systems and deep learning algorithms for automotive applications. His experience highlights a strong interdisciplinary approach and dedication to innovation.

πŸ”¬ Research Interest

Dr. Syamsul Rizal’s research interests are rooted in interdisciplinary applications of advanced technology, particularly in machine learning, AI integration, and networked systems. His work spans diverse areas such as data reconstruction, real-time locating systems (RTLS), and biomedical engineering applications. Dr. Rizal’s research also emphasizes the application of machine learning algorithms for classification tasks, including innovative projects like tea leaf classification and brain stroke detection. He has explored machine learning in biomedical contexts, using techniques like convolutional neural networks (CNNs) for medical image analysis, including retinal pathology and colon cancer classification. Further extending his expertise, Dr. Rizal is engaged in developing blockchain technology with AI capabilities, underscoring his focus on pioneering solutions that leverage AI for security and scalability in decentralized networks. His research reflects a commitment to advancing the practical impact of machine learning and AI across fields as diverse as agriculture, healthcare, and blockchain technology.

πŸ†Awards and Honors

Dr. Syamsul Rizal has been recognized for his academic excellence and contributions to the field of technology through several awards and honors. Notably, he received the Best Thesis Award in 2015 from the Kumoh National Institute of Technology, South Korea, where he completed both his Master’s and Doctoral studies. This award highlights his exceptional research skills and his innovative contributions during his graduate studies, specifically in networked systems and real-time data communication. Additionally, he was granted a prestigious scholarship to join the Networked System Laboratory at Kumoh, supporting his research in cutting-edge areas such as IoT, virtualization, and image and video processing. These accolades underscore Dr. Rizal’s dedication to advancing technological innovation and his role as a leader in applied research, contributing valuable insights and advancements in fields ranging from machine learning and artificial intelligence to networked systems and data science.

Conclusion

Dr. Syamsul Rizal is a compelling candidate for the Best Researcher Award due to his robust background in machine learning, AI, and systems engineering, combined with a strong publication record and international experience. By further expanding his publication reach and collaborative initiatives, Dr. Rizal could enhance his profile and make an even stronger case for this award, which recognizes impactful and innovative research.

Publications top notedπŸ“œ

  • ND Miranda, L Novamizanti, S Rizal
    Title: β€œConvolutional Neural Network pada klasifikasi sidik jari menggunakan RESNET-50”
    Journal: Jurnal Teknik Informatika
    Year: 2020
    Citations: 88
  • YN Fu’adah, I Wijayanto, NKC Pratiwi, FF Taliningsih, S Rizal, …
    Title: β€œAutomated classification of Alzheimer’s disease based on MRI image processing using convolutional neural network (CNN) with AlexNet architecture”
    Journal: Journal of Physics: Conference Series
    Year: 2021
    Citations: 57
  • S Rizal, N Ibrahim, NORKC PRATIWI, S Saidah, RYNUR FUΓ‚
    Title: β€œDeep Learning untuk Klasifikasi Diabetic Retinopathy menggunakan Model EfficientNet”
    Journal: ELKOMIKA
    Year: 2020
    Citations: 18
  • S Rizal, T Kartika, GA Septia
    Title: β€œStudi Etnobotani Tumbuhan Obat di Desa Pagar Ruyung Kecamatan Kota Agung Kabupaten Lahat Sumatera Selatan”
    Journal: Sainmatika
    Year: 2021
    Citations: 17
  • NORKC PRATIWI, NUR IBRAHIM, YNUR FUΓ‚, S RIZAL
    Title: β€œDeteksi Parasit Plasmodium pada Citra Mikroskopis Hapusan Darah dengan Metode Deep Learning”
    Journal: ELKOMIKA
    Year: 2021
    Citations: 15
  • AA Pramudita, Y Wahyu, S Rizal, MD Prasetio, AN Jati, R Wulansari, …
    Title: β€œSoil water content estimation with the presence of vegetation using ultra wideband radar-drone”
    Journal: IEEE Access
    Year: 2022
    Citations: 13
  • AA Santosa, RYN Fu’adah, S Rizal
    Title: β€œDeteksi Penyakit pada Tanaman Padi Menggunakan Pengolahan Citra Digital dengan Metode Convolutional Neural Network”
    Journal: Journal of Electrical and System Control Engineering
    Year: 2023
    Citations: 10
  • ME Abdulfattah, L Novamizanti, S Rizal
    Title: β€œSuper Resolution pada Citra Udara menggunakan Convolutional Neural Network”
    Journal: ELKOMIKA
    Year: 2021
    Citations: 10
  • I Wijayanto, S Rizal, S Hadiyoso
    Title: β€œEpileptic electroencephalogram signal classification using wavelet energy and random forest”
    Journal: AIP Conference Proceedings
    Year: 2023
    Citations: 9
  • S Saidah, YN Fuadah, F Alia, N Ibrahim, R Magdalena, S Rizal
    Title: β€œFacial skin type classification based on microscopic images using convolutional neural network (CNN)”
    Conference: 1st International Conference on Electronics, Biomedical …
    Year: 2021
    Citations: 9
  • YN Fu’adah, S Sa’idah, I Wijayanto, N Ibrahim, S Rizal, R Magdalena
    Title: β€œComputer Aided Diagnosis for Early Detection of Glaucoma Using Convolutional Neural Network (CNN)”
    Conference: 1st International Conference on Electronics, Biomedical …
    Year: 2021
    Citations: 9
  • HM Lathifah, L Novamizanti, S Rizal
    Title: β€œFast and accurate fish classification from underwater video using you only look once”
    Journal: IOP Conference Series: Materials Science and Engineering
    Year: 2020
    Citations: 8

Masoud Yaghini | Engineering | Best Researcher Award

Assoc Prof Dr Masoud Yaghini | Engineering | Best Researcher Award

Faculty Member at Iran University of Science and Technology, Iran

Dr. Masoud Yaghini is a distinguished faculty member in the Department of Rail Transportation at the Iran University of Science and Technology. Born on December 8, 1966, he holds an extensive academic and professional background in rail transportation planning and optimization techniques. With over two decades of experience, Dr. Yaghini has made substantial contributions to the fields of transportation logistics, network design, and data mining, particularly within the railway industry. His innovative approaches to complex rail transportation problems have earned him a reputation as a leading researcher in the field. Dr. Yaghini is widely published and continues to shape the future of transportation with cutting-edge research.

Professional Profile

Education

Dr. Yaghini received his Ph.D. in Rail Transportation Planning and Engineering from Northern Jiaotong University, Beijing, China, in 2003, with a focus on dynamic service network design. He also holds an MSc and BSc in Industrial Management from Islamic Azad University, Tehran. His master’s thesis on resource assignment optimization in preventive maintenance laid the foundation for his interest in large-scale optimization problems. Additionally, he furthered his knowledge with specialized training in Ergonomics and Human Factors for Railways from the University of Birmingham, UK, in 2005. This diverse educational background has equipped Dr. Yaghini with both theoretical and practical expertise in optimizing transportation systems.

Professional Experience

Dr. Yaghini has over 20 years of professional experience, primarily as a faculty member at the Iran University of Science and Technology. He teaches a wide range of courses, from advanced computer programming to railway operations management and data mining in transportation. His professional experience extends beyond academia into consultancy work in optimization and transportation planning. Dr. Yaghini has also conducted numerous short courses and workshops in data mining, information management, and metaheuristic algorithms for both academic institutions and private companies. His role as an educator and consultant has allowed him to bridge the gap between academic research and real-world transportation challenges.

Research Interests

Dr. Yaghini’s research primarily focuses on optimization problems in rail transportation, including train scheduling, fleet sizing, and locomotive scheduling. He has a strong interest in metaheuristics such as Genetic Algorithms, Tabu Search, and Ant Colony Optimization, as well as exact solution methods like Column Generation and Branch and Cut. His work also explores data mining techniques applied to railway systems, such as the prediction of train delays and analysis of accident data. His research is driven by the need to optimize and improve efficiency in transportation systems, particularly in large-scale rail networks. His work has significant practical implications for enhancing railway operations and minimizing costs.

Awards and Honors

Dr. Yaghini’s contributions to transportation research have earned him multiple accolades, though his recognition mainly stems from his published works in high-impact journals such as Applied Mathematical Modelling and Journal of Transportation Engineering. He has been recognized for his work on solving complex railway optimization problems through innovative algorithms like Ant Colony Optimization and Simulated Annealing. In addition to his publications, Dr. Yaghini has been invited to present his findings at numerous international conferences. While he has not widely publicized any specific awards, his ongoing research contributions have earned him a solid reputation in the global transportation research community, marking him as a key figure in rail transportation planning and optimization.

Conclusion

Dr. Masoud Yaghini’s research portfolio is impressive, with a strong emphasis on rail transportation and optimization problems. His consistent contributions to both academic knowledge and practical railway systems demonstrate his potential for recognition as a top researcher. By broadening his collaborative network and impact beyond academia, he could further strengthen his candidacy for prestigious awards like the Best Researcher Award.

Publication top noted

  1. Online prediction of arrival and departure times in each station for passenger trains using machine learning methods
    • Vafaei, S., Yaghini, M.
    • Transportation Engineering, 2024
    • πŸ“– 0 citations
  2. Analysis of the relationship between geometric parameters of railway track and twist failure by using data mining techniques
    • Izadi Yazdan Abadi, E., Khadem Sameni, M., Yaghini, M.
    • Engineering Failure Analysis, 2023
    • πŸ“– 2 citations
  3. A mathematical formulation and an LP-based neighborhood search matheuristic solution method for the integrated train blocking and shipment path problem
    • Yaghini, M., Mirghavami, M., Zare Andaryan, A.
    • Networks, 2021
    • πŸ“– 5 citations
  4. Efficient algorithms to minimize makespan of the unrelated parallel batch-processing machines scheduling problem with unequal job ready times
    • Zarook, Y., Rezaeian, J., Mahdavi, I., Yaghini, M.
    • RAIRO – Operations Research, 2021
    • πŸ“– 10 citations
  5. An adaptive structure on a new local branching algorithm using instantaneous dimensions and convergence speed: a case study for multi-commodity network design problems
    • Hajiyan, H., Yaghini, M.
    • SN Applied Sciences, 2020
    • πŸ“– 1 citation
  6. Optimization of embedded rail slab track with respect to environmental vibrations
    • Esmaeili, M., Yaghini, M., Moslemipour, S.
    • Scientia Iranica, 2020
    • πŸ“– 0 citations
  7. An Effective Improvement to Main Non-periodic Train Scheduling Models by a New Headway Definition
    • Jafarian-Moghaddam, A.R., Yaghini, M.
    • Iranian Journal of Science and Technology – Transactions of Civil Engineering, 2019
    • πŸ“– 2 citations
  8. Optimizing headways for urban rail transit services using adaptive particle swarm algorithms
    • Hassannayebi, E., Zegordi, S.H., Amin-Naseri, M.R., Yaghini, M.
    • Public Transport, 2018
    • πŸ“– 26 citations
  9. Train timetabling at rapid rail transit lines: a robust multi-objective stochastic programming approach
    • Hassannayebi, E., Zegordi, S.H., Amin-Naseri, M.R., Yaghini, M.
    • Operational Research, 2017
    • πŸ“– 48 citations
  10. Timetable optimization models and methods for minimizing passenger waiting time at public transit terminals
  • Hassannayebi, E., Zegordi, S.H., Yaghini, M., Amin-Naseri, M.R.
  • Transportation Planning and Technology, 2017
  • πŸ“– 35 citations