Afşin Baran Bayezit | Engineering | Research Excellence Award

Mr. Afşin Baran Bayezit | Engineering | Research Excellence Award

Research Assistant at Istanbul Technical University | Turkey

Research engineer specializing in maritime artificial intelligence and control systems, with strong expertise in reinforcement learning, machine learning, and control theory for autonomous platforms. Demonstrates proficiency in developing and validating intelligent control algorithms using Python, embedded systems, and ROS, with hands-on implementation in real-world and model-scale environments. Contributed to advanced research in ship dynamics, autopilot systems, and safety modeling through data-driven approaches. Experienced in integrating sensors, actuators, and high-performance computing tools to optimize system performance. Professional experience reflects a consistent focus on innovative, experimentally validated solutions for autonomous maritime systems, delivering impactful contributions to intelligent navigation, system efficiency, and safety.

Citation Metrics (Google Scholar)

40

30

20

10

0

Citations
32

i10index
1

h-index
2

🟦 Citations    🟥 i10-index    🟩 h-index


View Google Scholar Profile

Featured Publications

 

Ouiem Bchir | Computer Science | Research Excellence Award

Prof. Ouiem Bchir | Computer Science | Research Excellence Award

Professor | Computer Science Department, King Saud University | Saudi Arabia

Prof. Ouiem Bchir is a distinguished researcher in computer science with expertise in machine learning, deep learning, computer vision, and pattern recognition. Her research focuses on clustering techniques, semi-supervised and unsupervised learning, hyperspectral image analysis, and intelligent systems for healthcare, security, and multimedia applications. She has contributed extensively to advanced methodologies such as autoencoders, convolutional neural networks, and fuzzy clustering models. With a strong publication record, she has achieved an h-index of 12, with 527 citations across 65 documents. Her research approach integrates theoretical innovation with practical applications, significantly advancing intelligent data analysis and decision-making systems.

Citation Metrics (Scopus)

600

450

300

150

0

Citations
527

Documents
65

h-index
12

🟦 Citations    🟥 Documents    🟩 h-index


View Scopus Profile
   View Orcid Profile
    View Google Scholar Profile

Featured Publications

Ayogeboh Epizitone | Information | Research Excellence Award

Dr. Ayogeboh Epizitone | Information | Research Excellence Award

Durban University of Technology | South Africa

Dr. Ayogeboh Epizitone is an interdisciplinary researcher specializing in information systems, business information management, and data-driven technologies. His research focuses on enterprise resource planning, health information systems, and advanced data analytics, integrating artificial intelligence, machine learning, and big data to enhance decision-making and organizational efficiency. He has contributed extensively through scholarly publications addressing healthcare analytics, ERP implementation, and digital transformation in education and business sectors. His professional experience includes academic teaching, research supervision, and project management, alongside consultancy in data systems and business intelligence. His publications record includes 15 documents with 119 citations and an h-index of 6, reflecting impactful contributions and a strong commitment to innovative, scalable, and sustainable research solutions.

Citation Metrics (Scopus)

125

100

75

50

25

0

Citations
119

Documents
15

h-index
6

🟦 Citations 🟥 Documents 🟩 h-index


View Scopus Profile
    View Orcid Profile
     View Google Scholar Profile

Featured Publications

Jinglin Li | Computer Science | Best Researcher Award

Mr. Jinglin Li | Computer Science | Best Researcher Award

Engineer | China National Nuclear Corporation | China

Li Jinglin is a researcher specializing in intelligent systems, reinforcement learning, and energy-efficient technologies for industrial and service applications. He holds advanced degrees in Instrument Science and Technology, Electrical Engineering, and Vehicle Engineering with a focus on new energy systems. His research encompasses the development of intelligent interactive service technologies for elderly care, optimization of energy-harvesting wireless sensor networks, and multi-task scheduling for energy-secured unmanned vehicles. He has led projects on digital twin platform technologies and vertical displacement control of nuclear fusion plasma, applying deep reinforcement learning to enhance system performance and replace traditional control methods. Li has extensive experience in algorithm design, including MATLAB-based reinforcement learning, adaptive dynamic programming, and multi-level exploration deep Q-network scheduling, with applications in optimal microgrid transmission, mobile charging sequence scheduling, and network monitoring. His work has resulted in multiple first-author publications in high-impact journals covering reinforcement learning, wireless sensor networks, and energy management, as well as conference contributions in control and automation. Beyond his technical expertise, he demonstrates strong analytical, problem-solving, and team collaboration skills, with experience in summarizing complex research findings and implementing practical solutions. Li actively engages in academic presentations and has earned recognition for his research achievements. In addition to his research, he maintains leadership roles in university sports teams, reflecting his commitment to teamwork, discipline, and resilience. His professional approach combines a proactive mindset, logical thinking, and a dedication to advancing intelligent and sustainable technological solutions across both industrial and service domains.

Profile: Scopus

Featured Publications

Li, J. (2024). A deep reinforcement learning approach for online mobile charging scheduling with optimal quality of sensing coverage in wireless rechargeable sensor networks. Ad Hoc Networks, 156, 103431.

Li, J. (2024). A reinforcement learning based mobile charging sequence scheduling algorithm for optimal sensing coverage in wireless rechargeable sensor networks. Journal of Ambient Intelligence and Humanized Computing, 15(6), 2869–2881.

Li, J. (2023). Mobile charging sequence scheduling for optimal sensing coverage in wireless rechargeable sensor networks. Applied Sciences, 13(5), 2840.

Li, J. (2024). A reinforcement learning based mobile charging sequence scheduling algorithm for optimal stochastic event detection in wireless rechargeable sensor networks. IEEE Transactions on Network and Service Management.

Li, J. (2024). A swarm deep reinforcement learning based on-demand mobile charging-scheduling and charging-time control joint algorithm for optimal stochastic event detection in wireless rechargeable sensor networks. Expert Systems with Applications.

Yunfei Zì | Computer Science | Best Researcher Award

Dr. Yunfei Zì | Computer Science | Best Researcher Award

Researcher Wuhan University of Technology China

Zi Yunfei is a distinguished researcher specializing in voiceprint recognition and artificial intelligence, affiliated with the Wuhan University of Technology. His expertise lies in developing advanced speaker verification systems and acoustic feature extraction methods, especially within IoT contexts. Currently, he is concluding his Ph.D. under the guidance of Professor Xiong Shengwu.

Profile

Orcid

Google scholar

Education 🎓

  • Ph.D. in Computer Science and Technology (2019–2023) – Wuhan University of Technology
  • M.Eng. in Information and Communication Engineering (2016–2019) – Beijing University of Graphic Arts
  • B.Eng. in Computer Science and Technology (2011–2015) – Northeast Petroleum University

Experience 💼

Zi has led and contributed to various research initiatives, including a Huawei NRE project and significant AI advancements in IoT voiceprint recognition and military voice monitoring. His technical contributions have been instrumental in enhancing acoustic feature extraction and system integration on Huawei’s deep learning platform, MindSpore.

Research Interests 🔍

  • Voiceprint Recognition
  • Short Utterance Speaker Verification
  • Artificial Intelligence & Deep Learning
  • Acoustic Feature Enhancement
  • IoT Smart Services

Awards 🏆

  • Outstanding Academic Achievement Award – Beijing University of Graphic Arts, 2018
  • Outstanding Master’s Thesis Award – Beijing University of Graphic Arts, 2019
  • Huawei Smart Base Future Star Award – Ministry of Education-Huawei, 2021
  • Outstanding Doctoral Thesis Award – Wuhan University of Technology, 2024

Publications Top Notes📚:

Multi-Fisher and Triple-Domain Feature Enhancement-Based Short Utterance Speaker Verification for IoT Smart ServiceIEEE Internet of Things Journal (2024) [DOI:10.1109/JIOT.2023.3309659]

Joint Filter Combination-based Central Difference Feature ExtractionExpert Systems with Applications (2023) [DOI:10.1016/j.eswa.2023.120995]

Fisher Ratio-Based Multi-Domain Frame-Level Feature AggregationEngineering Applications of Artificial Intelligence (2024) [DOI:10.1016/j.engappai.2024.108063]

Short-Duration Speaker Verification by Joint Filter SuperpositionIEEE Transactions on Consumer Electronics (2024) [DOI:10.1109/TCE.2024.3411116]

Aggregating Discriminative Embedding by Triple-Domain Feature Joint LearningBiomedical Signal Processing and Control (2023) [DOI:10.1016/j.bspc.2023.104703]