Woosik Lee | Computer Science | Research Excellence Award

Dr. Woosik Lee | Computer Science | Research Excellence Award

Korea Social Security Information Service | South Korea

Dr. Woosik Lee is a researcher at the Research Center of the Korea Social Security Information Service, specializing in wireless sensor networks, Internet of Things systems, and data-driven intelligent services. He holds advanced degrees in computer science with a focus on networked systems, sensor technologies, and intelligent algorithms. His professional experience spans academic, governmental, and international research environments, including faculty service, visiting research appointments, and leadership roles in applied research projects addressing healthcare monitoring, intelligent transportation, and social welfare analytics. His research focuses on low-power communication protocols, neighbor discovery mechanisms, wireless body sensor networks, human monitoring systems, and machine learning–based social welfare applications. He has authored numerous peer-reviewed journal articles and conference contributions, demonstrating sustained scholarly impact and interdisciplinary relevance. His work integrates theoretical modeling, protocol design, simulation, and real-world system implementation, contributing to both academic advancement and societal benefit. Dr. Lee’s research excellence has been recognized through competitive awards and sustained citation impact, highlighting his growing influence and strong potential for continued leadership in intelligent networked systems research.

Citation Metrics (Scopus)

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Featured Publications

Salem Batiyah | Engineering | Best Researcher Award

Dr. Salem Batiyah | Engineering | Best Researcher Award

Assistant Professor at Yanbu Industrial College, Saudi Arabia

Dr. Salem Mohammed Batiyah is a dedicated researcher in electrical engineering with strong contributions to distributed energy resources, microgrids, and advanced control systems. His work is published in respected journals such as IEEE Access and Energies, covering both theoretical and applied aspects of renewable energy systems. He has an active role as a reviewer for top-tier journals, reflecting recognition by the global research community. In addition to his research, Dr. Batiyah demonstrates academic leadership through curriculum development, teaching, and quality assurance roles. While his citation metrics and absence of major research grants suggest areas for growth, his ongoing publication record and technical expertise indicate a solid foundation for future impact. Strengthening international collaborations and securing research funding will further enhance his research profile. Overall, Dr. Batiyah is a strong candidate for the Best Researcher Award, especially in domains valuing practical innovation and contributions to sustainable energy and smart grid development

Professional Profile 

Google Scholar

Strengths for the Award

Dr. Salem Mohammed Batiyah presents a strong and relevant research portfolio in modern electrical engineering fields, particularly in distributed energy resources (DERs), microgrids, hybrid power plants, and advanced control systems. His work addresses high-impact areas such as renewable energy integration, predictive control, and fault-tolerant power electronics, which are central to global energy transition goals.

He has authored multiple peer-reviewed journal and conference papers, with publications in well-regarded outlets such as IEEE Access and Energies. These include both novel technical contributions and comprehensive reviews, suggesting breadth and depth. His global engagement as a reviewer for prestigious journals such as IEEE Transactions on Industrial Informatics and IEEE JESTIE reflects his standing in the academic community.

Additionally, Dr. Batiyah combines research with active academic and administrative leadership, curriculum development, and extensive teaching in power systems and control engineering. This integration of research and teaching enhances his impact and dissemination of knowledge.

Education

Dr. Salem Mohammed Batiyah holds a Ph.D. in Electrical Engineering from Mississippi State University, where he specialized in power management and control systems for renewable energy applications. He earned his M.Sc. and B.Sc. degrees in Electrical Engineering from Western Michigan University. His graduate studies focused on distributed energy resources, microgrid integration, and model predictive control systems. Throughout his academic journey, Dr. Batiyah developed a solid foundation in both theoretical and practical aspects of power systems, signal processing, and advanced control techniques. His educational background is complemented by professional certifications, including Lean Six Sigma and OSHA safety training, demonstrating his commitment to quality and operational excellence. Dr. Batiyah’s education has prepared him to address real-world engineering challenges in sustainable energy and has laid the groundwork for a research-oriented academic career. His academic experience is characterized by interdisciplinary training and international exposure, enhancing his perspective in solving complex energy system problems.

Experience

Dr. Salem Batiyah brings a wealth of academic and professional experience to the field of electrical engineering. Since 2020, he has been serving as an Assistant Professor at Yanbu Industrial College, where he has taught various undergraduate and associate courses in power electronics, control systems, and industrial electronics. He also worked as a Graduate Research Assistant at Mississippi State University from 2015 to 2020, engaging in research related to power management in renewable energy systems. His earlier academic experience includes working as a lecturer at Yanbu Industrial College from 2014 to 2020. Dr. Batiyah has held several administrative roles such as Department Curriculum Coordinator, Head of Curriculum and Development, and Academic Quality Coordinator. He is actively involved in multiple college and department-level committees, contributing to academic planning, program development, and quality assurance. His career reflects a blend of teaching, research, and leadership, all aimed at advancing engineering education and applied energy solutions.

Awards and Honors

Dr. Salem Batiyah has received multiple awards and honors recognizing his academic excellence and professional achievements. Notably, he was inducted into prestigious honor societies including Phi Kappa Phi, Gamma Beta Phi, and IEEE Eta Kappa Nu, reflecting high academic performance during his graduate and undergraduate studies. He was awarded the First Class Standing Award for Master of Science students and consistently made the Dean’s List during his undergraduate years. In 2023, his research output earned him 123 scholarly citations, with an h-index of 5 and an i10-index of 3, indicating growing recognition within the research community. Additionally, he holds professional certifications such as Black Belt in Lean Six Sigma and OSHA Safety Training, demonstrating his commitment to continuous professional development. His active participation in global academic organizations and contributions as a peer reviewer for multiple IEEE journals further validate his influence and leadership in the field of electrical and energy engineering.

Research Focus on Engineering

Dr. Salem Batiyah’s research centers around the modeling, analysis, and control of distributed energy resources (DERs), including solar photovoltaics and battery energy storage systems. His work addresses the integration of these resources into microgrids and hybrid power plants, with an emphasis on system reliability and efficiency. A key area of focus is the application of advanced control methods such as nonlinear, robust, and model predictive control (MPC) to optimize energy management under varying load and environmental conditions. Dr. Batiyah also explores advanced signal processing and phase-locked loops within DER systems, supporting grid stability and intelligent power conversion. His research aims to provide scalable and sustainable solutions to modern energy challenges, contributing to the global shift toward renewable and decentralized energy systems. Through peer-reviewed publications and academic collaborations, Dr. Batiyah is establishing himself as a forward-thinking researcher addressing critical challenges in the evolving energy landscape.

Publications Top Notes

  • Title: An MPC-based power management of standalone DC microgrid with energy storage
    Authors: S. Batiyah, R. Sharma, S. Abdelwahed, N. Zohrabi
    Year: 2020
    Citations: 111

  • Title: An MPC-based power management of a PV/battery system in an islanded DC microgrid
    Authors: S. Batiyah, N. Zohrabi, S. Abdelwahed, R. Sharma
    Year: 2018
    Citations: 36

  • Title: Single-phase fault tolerant multilevel inverter topologies—comprehensive review and novel comparative factors
    Authors: H. Rehman, M. Tariq, A. Sarwar, W. Alhosaini, M.A. Hossain, S.M. Batiyah
    Year: 2022
    Citations: 22

  • Title: Optimal control design of a voltage controller for stand-alone and grid-connected PV converter
    Authors: S. Batiyah, N. Zohrabi, S. Abdelwahed, T. Qunais, M. Mousa
    Year: 2018
    Citations: 17

  • Title: Predictive control of PV/battery system under load and environmental uncertainty
    Authors: S. Batiyah, R. Sharma, S. Abdelwahed, W. Alhosaini, O. Aldosari
    Year: 2022
    Citations: 15

  • Title: Performance evaluation of multiple machine learning models in predicting power generation for a grid-connected 300 MW solar farm
    Authors: O. Aldosari, S. Batiyah, M. Elbashir, W. Alhosaini, K. Nallaiyagounder
    Year: 2024
    Citations: 11

  • Title: Image-based partial discharge identification in high voltage cables using hybrid deep network
    Authors: O. Aldosari, M.A. Aldowsari, S.M. Batiyah, N. Kanagaraj
    Year: 2023
    Citations: 8

  • Title: Impact of variation of energy resources on voltage stability of a micro grid
    Authors: M.A. Mousa, S. Abdelwahed, S.M. Batiyah, T. Qunais
    Year: 2017
    Citations: 6

  • Title: Deep neural networks model for accurate photovoltaic parameter estimation under variable weather conditions
    Authors: S. Batiyah, A. Al-Subhi, O. Elsherbiny, O. Aldosari, M. Aldawsari
    Year: 2025

  • Title: Predictive control of standalone DC microgrid with energy storage under load and environmental uncertainty
    Author: S.M. Batiyah (Ph.D. Dissertation)
    Year: 2020

Conclusion

Dr. Salem Mohammed Batiyah exemplifies a rising leader in electrical and energy systems engineering, combining academic rigor with real-world impact. His research contributions, especially in renewable energy integration and intelligent control systems, align with global priorities for sustainability and innovation. His dual strengths in teaching and research, complemented by his service in academic development and international peer reviewing, position him as a multidimensional scholar. While his citation metrics and grant record indicate room for further growth, his upward trajectory and commitment to excellence are undeniable. Dr. Batiyah stands out as a promising candidate for recognition in the research community and is well on his way to becoming a major contributor to the field of smart and sustainable energy systems. With continued focus on high-impact collaboration and innovation, he is poised to make significant strides that benefit academia, industry, and the broader society.

Dr. Zeinab Shahbazi | Computer Science | Best Researcher Award

Dr. Zeinab Shahbazi | Computer Science | Best Researcher Award

Senior Lecturer at Kristianstad University, Sweden

Dr. Zeinab Shahbazi is an accomplished researcher specializing in Reinforcement Learning, Deep Learning, Natural Language Processing, Blockchain, and Knowledge Discovery. With a Ph.D. in Computer Engineering from Jeju National University, South Korea, she has over eight years of research experience in AI and data-driven technologies. Dr. Shahbazi has held postdoctoral positions in Spain and Sweden and is currently a Senior Lecturer in AI at Kristianstad University. Her research focuses on enhancing state-of-the-art architectures and developing innovative solutions in software-based intelligent systems. She has been recognized with several academic awards, including a Presidential Award and Best Paper Presentation honors. Fluent in multiple languages and technically skilled in programming and data systems, she actively contributes as a reviewer for high-impact journals. Her international collaborations and funded research projects reflect her commitment to advancing AI applications. Dr. Shahbazi is a dedicated and forward-thinking researcher making significant contributions to the field of computer science.

Professional Profile 

Google Scholar

Education

Dr. Zeinab Shahbazi holds a Ph.D. in Computer Engineering from Jeju National University, South Korea, where she completed her dissertation on cryptocurrency price prediction using blockchain frameworks, graduating with an impressive CGPA of 4.32/4.5. She also earned a Master’s degree in Computer Engineering from Chonbuk National University, Korea, with a thesis on deep learning techniques for paragraph focus analysis. Her foundational education includes a Bachelor’s degree in Computer Engineering from Pooyesh University in Iran. Throughout her academic journey, she received several scholarships and honors, reflecting her consistent academic excellence. Her education has been firmly rooted in AI, software systems, and intelligent technologies, providing her with a robust theoretical and practical grounding. This strong academic background has played a pivotal role in shaping her as a multidisciplinary researcher with global exposure, capable of addressing complex problems in AI and data science with both depth and innovation.

Professional Experience

Dr. Zeinab Shahbazi has accumulated diverse international professional experience in research and academia. She is currently a Senior Lecturer in Artificial Intelligence at Kristianstad University, Sweden. Prior to this, she held postdoctoral researcher positions at Halmstad University in Sweden and at the BCN-AIM Lab at the University of Barcelona in Spain. Her work has consistently focused on applied AI, reinforcement learning, and blockchain-based systems. Dr. Shahbazi has also led and participated in international research collaborations, notably securing a Vinnova-funded international staff exchange project with a partner institution in South Korea. Her career path showcases her ability to transition between theoretical research and practical implementations, including experience in advanced programming, system architecture, and AI model development. These roles have enabled her to contribute to both the academic and industrial applications of intelligent technologies, while also strengthening her leadership and mentoring capabilities in multidisciplinary, multicultural environments.

Research Interest

Dr. Zeinab Shahbazi’s research interests are deeply rooted in intelligent computing systems, with a focus on Reinforcement Learning, Deep Learning, Natural Language Processing (NLP), Blockchain, Knowledge Discovery, and their integration within modern technological ecosystems such as IoT, edge computing, and big data platforms. Her core research ambition lies in improving existing AI models and architectures, addressing their limitations, and introducing novel components to enhance performance and applicability. She has made notable contributions to the software aspects of AI, particularly through her work on knowledge-driven systems and blockchain-based data prediction. Dr. Shahbazi combines theoretical advancements with practical implementations, bridging the gap between academic research and real-world applications. Her multidisciplinary focus reflects a keen interest in innovation, system integration, and cross-domain problem-solving. This makes her work highly relevant to both academic audiences and industry stakeholders interested in deploying intelligent, data-driven systems for practical and scalable use.

Award and Honor

Dr. Zeinab Shahbazi has received multiple awards and honors in recognition of her academic excellence and research contributions. During her Ph.D. at Jeju National University, she was awarded the prestigious Presidential Award for distinguished research publications. She also received a university research grant in 2021 for her outstanding output during 2019–2020. Earlier in her academic career, she was a recipient of the BK government scholarship and multiple semester-based scholarships during her Master’s studies at Chonbuk National University. Her early academic promise was also recognized with a government-funded scholarship during her undergraduate studies in Iran. Additionally, she won the Best Paper and Presentation Award at the ITEC Conference in 2019, further solidifying her reputation in the research community. These honors demonstrate a consistent trajectory of excellence, reflecting both the quality and impact of her research work, as well as her ability to compete and stand out in international academic environments.

Conclusion

Dr. Zeinab Shahbazi exemplifies a dynamic and impactful researcher in the field of computer science, particularly in AI, machine learning, and data-driven systems. Her strong educational background, diverse international research experience, and cross-disciplinary expertise make her a well-rounded academic and innovator. Her ability to secure research funding, collaborate internationally, and publish high-quality work underlines her potential for long-term academic leadership. Recognized through various awards and honors, she has demonstrated excellence not only in individual performance but also in contributing to the broader scientific community through peer review and collaboration. Fluent in multiple languages and culturally adaptive, Dr. Shahbazi brings global perspective and technical depth to every role she undertakes. With a forward-thinking mindset and a commitment to advancing the state of AI, she stands as a strong candidate for high-level recognitions such as the Best Researcher Award and is poised to continue making meaningful contributions to academia and beyond.

Publications Top Notes

  • Title: Integration of blockchain, IoT and machine learning for multistage quality control and enhancing security in smart manufacturing
    Authors: Z. Shahbazi, Y.C. Byun
    Year: 2021
    Citations: 187

  • Title: A procedure for tracing supply chains for perishable food based on blockchain, machine learning and fuzzy logic
    Authors: Z. Shahbazi, Y.C. Byun
    Year: 2020
    Citations: 140

  • Title: Towards a secure thermal-energy aware routing protocol in wireless body area network based on blockchain technology
    Authors: Z. Shahbazi, Y.C. Byun
    Year: 2020
    Citations: 123

  • Title: Smart manufacturing real-time analysis based on blockchain and machine learning approaches
    Authors: Z. Shahbazi, Y.C. Byun
    Year: 2021
    Citations: 72

  • Title: Toward improving the prediction accuracy of product recommendation system using extreme gradient boosting and encoding approaches
    Authors: Z. Shahbazi, D. Hazra, S. Park, Y.C. Byun
    Year: 2020
    Citations: 68

  • Title: Improving transactional data system based on an edge computing–blockchain–machine learning integrated framework
    Authors: Z. Shahbazi, Y.C. Byun
    Year: 2021
    Citations: 64

  • Title: Product recommendation based on content-based filtering using XGBoost classifier
    Authors: Z. Shahbazi, Y.C. Byun
    Year: 2019
    Citations: 64

  • Title: Agent-based recommendation in E-learning environment using knowledge discovery and machine learning approaches
    Authors: Z. Shahbazi, Y.C. Byun
    Year: 2022
    Citations: 63

  • Title: Fake media detection based on natural language processing and blockchain approaches
    Authors: Z. Shahbazi, Y.C. Byun
    Year: 2021
    Citations: 63

  • Title: Improving the cryptocurrency price prediction performance based on reinforcement learning
    Authors: Z. Shahbazi, Y.C. Byun
    Year: 2021
    Citations: 60

  • Title: Machine learning-based analysis of cryptocurrency market financial risk management
    Authors: Z. Shahbazi, Y.C. Byun
    Year: 2022
    Citations: 58

  • Title: Lithium-ion battery estimation in online framework using extreme gradient boosting machine learning approach
    Authors: S. Jafari, Z. Shahbazi, Y.C. Byun, S.J. Lee
    Year: 2022
    Citations: 58

  • Title: Blockchain-based event detection and trust verification using natural language processing and machine learning
    Authors: Z. Shahbazi, Y.C. Byun
    Year: 2021
    Citations: 51

  • Title: Knowledge discovery on cryptocurrency exchange rate prediction using machine learning pipelines
    Authors: Z. Shahbazi, Y.C. Byun
    Year: 2022
    Citations: 42

  • Title: Lithium-ion battery health prediction on hybrid vehicles using machine learning approach
    Authors: S. Jafari, Z. Shahbazi, Y.C. Byun
    Year: 2022
    Citations: 36

Shishir Tewari | Computer Science | Technology and Innovation Leadership Award

Mr. Shishir Tewari | Computer Science | Technology and Innovation Leadership Award

Senior Manager, Data Engineering at Procore Technologies, United States

Shishir Tewari is a seasoned technology leader with over 19 years of experience driving innovation in data engineering, data warehousing, and analytics across top-tier organizations such as Google, Amazon, Morgan Stanley, and Microsoft. He currently leads strategic data initiatives at Procore Technologies, where he has spearheaded the development of AI/ML-driven platforms, cloud migrations, and real-time analytics systems. Known for his expertise in building scalable, high-performance data solutions, Shishir has successfully led global engineering teams and transformed complex data ecosystems on AWS, GCP, and Databricks. His technical vision, operational excellence, and commitment to data quality and governance have consistently delivered measurable business value. Shishir’s continuous pursuit of innovation and deep cross-functional leadership make him a standout contributor in the technology landscape. With a strong foundation in data science, cloud architecture, and team mentorship, he exemplifies the qualities of a forward-thinking, impact-driven technology leader worthy of recognition.

Professional Profile 

Google Scholar

Education

Shishir Tewari holds a Bachelor of Technology in Information Technology from U.P.T.U., India, graduating in 2006. Demonstrating a commitment to lifelong learning and innovation, he further enhanced his credentials with a specialization in Data Science and Analytics from Rutgers University, New Jersey, in 2018–2019. This advanced academic training equipped him with modern analytical techniques, machine learning algorithms, and statistical modeling—skills that have been instrumental in his professional success. His educational background lays a strong foundation for his technical leadership, blending theoretical knowledge with real-world application. The combination of engineering fundamentals and data science expertise positions Shishir as a well-rounded technology leader who can bridge the gap between innovation and implementation in enterprise environments.

Professional Experience

Shishir Tewari brings over 19 years of robust experience across global technology firms, including Google, Amazon, Morgan Stanley, Microsoft, and currently, Procore Technologies. His career spans technical leadership, large-scale data architecture, and cloud-native platform innovation. At Google, he led a global team optimizing financial data pipelines and infrastructure. At Amazon, he designed high-performance advertising data systems, enabling substantial revenue impact. At Procore, he has driven major initiatives including AI/ML-powered data platforms and cloud migrations. His ability to manage large engineering teams, align data strategy with business goals, and optimize performance at scale reflects his leadership maturity. Shishir’s diverse experience across industries—finance, tech, construction, and advertising—gives him a unique, cross-sector perspective on data-driven transformation.

Research Interest

Shishir Tewari’s research interests lie at the intersection of big data engineering, AI/ML-driven analytics, and cloud computing. He is particularly passionate about optimizing large-scale data systems for performance, governance, and real-time decision-making. With practical expertise in cloud platforms like AWS, GCP, and Databricks, his focus is on leveraging modern data stacks and open-source technologies to power next-generation analytics and automation. He is also interested in the application of machine learning for master data management, anomaly detection, and predictive modeling within business intelligence ecosystems. While not rooted in academic publishing, his work consistently applies research principles to solve real-world business problems, delivering measurable impact. Future interests include exploring the integration of generative AI with enterprise data platforms and advancing data democratization through self-service analytics tools.

Award and Honor

While specific awards and honors are not listed in his profile, Shishir Tewari’s consistent elevation to senior technical and leadership roles in globally respected organizations serves as a testament to his excellence and recognition within the industry. Being entrusted with mission-critical projects at Google, Amazon, and Morgan Stanley speaks to his reliability, vision, and execution skills. His role in leading high-visibility initiatives such as financial data certification, AI/ML-driven analytics platforms, and major cloud migrations reflects the high degree of trust and credibility he commands. He has likely received internal accolades for his contributions to performance optimization, cost reduction, and innovation. A nomination for a Technology and Innovation Leadership Award would further formalize and honor his significant contributions to data-driven transformation and technological advancement in enterprise settings.

Conclusion

Shishir Tewari exemplifies the qualities of a forward-thinking technology leader, with deep expertise in data engineering, cloud architecture, and strategic innovation. His two-decade-long career reflects a commitment to excellence, from hands-on development to executive-level leadership. With advanced training in data science, he brings both theoretical rigor and practical vision to his work. His impactful roles at top-tier organizations demonstrate his ability to lead cross-functional teams, optimize large-scale systems, and implement transformative technologies. Passionate about leveraging AI/ML and cloud platforms to drive business value, Shishir’s professional journey is marked by continuous learning and measurable outcomes. He stands out as a prime candidate for recognition through a Technology and Innovation Leadership Award, not only for his technical contributions but also for his ability to inspire, mentor, and lead organizations into the future of data-driven innovation.

Publications Top Notes

  1. Title: AI Powered Data Governance – Ensuring Data Quality and Compliance in the Era of Big Data
    Authors: S. Tewari
    Year: 2025

  2. Title: Operationalizing Explainable AI in Business Intelligence: A Blueprint for Transparent Enterprise Analytics
    Authors: A. Chitnis, S. Tewari
    Year: 2024

  3. Title: AI and Multi-Cloud Compliance: Safeguarding Data Sovereignty
    Authors: S. Tewari, A. Chitnis
    Year: 2024

  4. Title: Scalable Metadata Management in Data Lakes Using Machine Learning
    Authors: S. Tewari
    Year: 2023
    Citation: (Update needed)

  5. Title: AI-Powered Financial Forecasting: Enhancing Accuracy with Machine Learning in Enterprise System
    Authors: S. Tewari
    Year: 2023)

  6. Title: Detecting Data Drift and Ensuring Observability with Machine Learning Automation
    Authors: A. Chitnis, S. Tewari
    Year: 2022

  7. Title: Anomaly Detection in Large Scale Data Platforms with Machine Learning
    Authors: S. Tewari
    Year: 2022

  8. Title: Leveraging Graph Based Machine Learning to Analyze Complex Enterprise Data Relationships
    Authors: S. Tewari, A. Chitnis
    Year: 2021

Rajani Alugonda | Engineering | Best Researcher Award

Mrs. Rajani Alugonda | Engineering | Best Researcher Award

Assistant Professor at JNTUK Kakinda, India

Smt. Rajani Alugonda is an accomplished academician and researcher in the field of Electronics and Communication Engineering. With over 14 years of teaching experience, she has significantly contributed to the academic and research landscape. She is currently serving as an Assistant Professor in the Department of ECE at JNTU College of Engineering, Kakinada. Throughout her career, she has actively participated in various academic and administrative roles, reflecting her commitment to institutional development and student mentorship. Her research contributions in signal processing and communication are well-recognized in national and international journals. She has been involved in organizing and attending faculty development programs, conferences, and workshops, fostering a strong academic network. Beyond academics, she has played key roles in hostel administration, examination management, and extracurricular activities, highlighting her leadership skills.

Professional Profile

Google Scholar

Education

Smt. Rajani Alugonda holds a B.Tech degree in Electronics and Communication Engineering from KITS, Singapur, obtained in 2005. She pursued her M.Tech in Control Systems at JNTU College of Engineering, Anantapur, where she graduated with First Class with Distinction in 2011. Currently, she is pursuing her Ph.D. in Signal Processing and Communication from Jawaharlal Nehru Technological University, Kakinada. Her educational background provides her with a strong foundation in advanced communication systems and signal processing, equipping her with the knowledge to conduct high-quality research. Her academic journey demonstrates her commitment to continuous learning and professional growth.

Professional Experience

With over 14 years and 6 months of teaching experience, Smt. Rajani Alugonda has mentored numerous students and guided multiple postgraduate research projects. She has successfully supervised 24 M.Tech theses and is currently guiding three ongoing projects. Apart from her teaching responsibilities, she has held key administrative positions such as Deputy Warden for the Girls Hostel, Officer In-Charge of Examinations, and Coordinator for various institutional initiatives, including the Startup Cell and IQAC. These responsibilities have helped her develop a well-rounded professional profile, balancing academic rigor with institutional development. Her involvement in student mentorship and academic leadership showcases her dedication to education and research.

Research Interest

Her research interests lie in the areas of signal processing and communication, focusing on developing innovative solutions for communication technologies. She has authored 26 international journal articles and presented her research in 24 international conferences, showcasing her active engagement in the research community. Her work aims to advance knowledge in digital signal processing, wireless communication, and emerging communication technologies. By continuously updating her research methodologies and exploring new frontiers, she contributes to the evolution of the field. She actively participates in faculty development programs, research collaborations, and industry interactions to stay updated with the latest advancements.

Awards and Honors

Throughout her career, Smt. Rajani Alugonda has demonstrated academic excellence and leadership, earning recognition in various capacities. She is a member of prestigious professional bodies such as MIETE and LISTE, which acknowledge her contributions to the field. Her active participation in academic conferences, workshops, and training programs has strengthened her research credibility. While specific awards and honors have not been explicitly mentioned, her extensive research output and institutional contributions highlight her academic standing. Her leadership roles in academia, including her involvement in examination management, extracurricular coordination, and research mentorship, reinforce her eligibility for academic accolades and future awards.

Conclusion

Smt. Rajani Alugonda exhibits notable strengths in teaching, research, and academic leadership. Finalizing her Ph.D. and enhancing the impact of her research publications would further solidify her candidacy for the Best Researcher Award.

Publications Top Noted

  • Modeling and simulation of lithium-ion battery with hysteresis for industrial applications

    • Author: S Bangaru, R Alugonda, P Palacharla
    • Year: 2013
    • Citations: 14
  • A Review on Various Speech Enhancement Techniques

    • Author: SSVS A. Rajani
    • Year: 2016
    • Citations: 4
  • Speed Control of Induction Motor Using Fuzzy Logic Approach

    • Author: AR M. Nageswara Rao
    • Year: 2013
    • Citations: 4*
  • Denoising of ECG Signal Using UFIR Smoothing With Notch Filter

    • Author: NP A. Rajani
    • Year: 2021
    • Citations: 1
  • ECG Signal Denoising Using EMD with Notch Filter and Morphology Filter

    • Author: MSAIV A. Rajani
    • Year: 2021
    • Citations: 1
  • Hysteresis Characterization Check of Lithium-Ion Battery Model under Dynamic Simulation Runs

    • Author: S Bangaru, R Alugonda
    • Year: 2013
    • Citations: 1
  • Denoising of ECG Signal Using Empirical Mode Decomposition With Dual Tree Complex Wavelet Transform

    • Author: PM A. Rajani
    • Year: 2022
    • Citations:
  • Diagnosis of Bradycardia Arrhythmia Using MEMD And Convolutional Neural Networks

    • Author: AR Charugalla Pavan Kumar
    • Year: 2022
    • Citations:
  • Diagnosis of Tachycardia Arrhythmia Using MEMD And Convolutional Neural Networks

    • Author: AR Charugalla Pavan Kumar
    • Year: 2022
    • Citations:
  • Denoising of ECG Signal Using Empirical Mode Decomposition With Dual Tree Complex Wavelet Transform

    • Author: PM A. Rajani
    • Year: 2022
    • Citations:
  • A Novel Method of QRS Detection Using Adaptive Multilevel Thresholding With Statistical False Peak Elimination

    • Author: VS A. Rajani
    • Year: 2022
    • Citations:

 

Christos Roumeliotis | Computer Science | Young Scientist Award

Mr. Christos Roumeliotis | Computer Science | Young Scientist Award

Electrical & Computer Engineering University of Western Macedonia Greece

Christos Roumeliotis is an accomplished Electrical and Computer Engineer specializing in Biomedical Technology, Healthcare, and Blockchain applications in energy. With a keen entrepreneurial spirit, he has been recognized in Forbes 30 Under 30 Greece and is an active member of the IEEE. As a young leader, he has held notable positions in the IEEE Student Branch and worked in various technology-driven roles.

Profile

Orcid.org

🎓 Education:

Christos completed his integrated MSc in Electrical and Computer Engineering from the University of Western Macedonia (UoWM). His academic journey has been complemented by a Reciprocal Scholarship and active participation in IEEE initiatives.

💼 Experience:

Christos serves as a Business Development Partner at Because Group, focusing on innovative marketing solutions. He co-founded Innovation Bee, where he leads as CEO, providing strategic AI-driven solutions across industries. He also co-founded Gridustry, a blockchain-based energy certification and trading company, aiming to optimize green energy market systems.

🔬 Research Interests:

Christos’s research spans Biomedical Technology for health solutions, Blockchain in energy, and smart contracts. His projects include blockchain-based Peer-to-Peer Energy Trading, green certificates, and a non-invasive wearable for Multiple Sclerosis monitoring.

🏆 Awards:

  • IEEE CS 20 in their 20s List (2023): Recognized among emerging leaders in Computer Science and Engineering.
  • Forbes 30 Under 30 Greece (2023): Featured among Greece’s dynamic young professionals.
  • Green Cities Competition (2022): Won 2nd place for innovative solutions in sustainable city development.

📄 Publications Top Notes:

“A Comprehensive Survey of Blockchain in IoT,” 2024. Intelligent Computing on IoT 2.0, Taylor & Francis. Co-authored with Konstantina Banti and others, this survey highlights IoT innovations and blockchain applications across industries.

“Blockchain and Digital Twins in Smart Industry 4.0,” 2024. Designs, DOI. This review discusses blockchain-integrated digital twins, analyzing Industry 4.0 applications and benefits.

Arturo Benayas Ayuso | Computer Science | Best Researcher Award

Prof. Arturo Benayas Ayuso | Computer Science | Best Researcher Award

PhD Candidate, Universidad Politécnica de Madrid, Spain

Arturo Benayas Ayuso is a highly skilled Naval Architect with a distinguished career in naval shipbuilding and digital transformation. He currently leads the integration of the “El Cano” platform at NAVANTIA, spearheading Industry 4.0 innovations in ship design, construction, and management. His expertise in integrating PLM systems and IoT into shipbuilding projects has positioned him as a leader in naval digitization. Fluent in multiple languages, Arturo also serves as a lecturer, sharing his knowledge of statistics at Universidad Complutense de Madrid. 🚢💡

Publication Profile

ORCID

Education

Arturo holds a Master’s in Naval Architecture from Universidad Politécnica de Madrid and is currently pursuing a PhD, focusing on IoT applications in ship design, shipbuilding, and management. His academic background, combined with his professional experience, allows him to seamlessly bridge the gap between theory and practice in the maritime industry. 🎓📚

Experience

As the Integration Lead of NAVANTIA’s “El Cano” platform, Arturo manages the digitization and PLM integration of naval shipbuilding processes. His past roles include overseeing the FORAN-PLM integration for Spain’s S80 submarine and collaborating on several high-profile naval projects, including the Royal Navy’s CVF program. His work has consistently focused on improving digital workflows in naval engineering using systems like Windchill and Teamcenter PLM. 🛠️⚙️

Research Focus

Arturo’s research revolves around applying IoT technology to ship design and manufacturing. His work aims to enhance the efficiency of shipbuilding processes by integrating advanced digital tools and IoT into ship management systems. This focus on Industry 4.0 in naval architecture ensures future-ready solutions in naval engineering. 🔍🌐

Awards and Honors

Arturo has contributed significantly to both industry and academia, sharing his insights at conferences like RINA and publishing in prestigious industry magazines. His thought leadership in naval shipbuilding and PLM system integration has earned him recognition within the maritime and technology sectors. 🏅📜

Publications

Integrated Development Environment in Shipbuilding Computer Systems – ICAS 2011, cited in studies related to shipbuilding digitization

Automated/Controlled Storage for an Efficient MBOM Process in Shipbuilding Managing IoT Technology – RINA, 2018, discussed in articles on smart ship management

Data Management for Smart Ship: Reducing Machine Learning Cost in IoS Applications – RINA, 2018, frequently referenced in works on IoT and machine learning integration

Yanming Zhao | Computer Science | Best Researcher Award

Prof. Yanming Zhao | Computer Science | Best Researcher Award

Professor at Hebei MINZU Normal University, China

Yanming Zhao is a distinguished Professor at Hebei University of Nationalities, specializing in visual computing and deep neural networks. With a commitment to advancing technology and innovation, he has made significant contributions to the field of computer application technology, evidenced by his extensive research and numerous publications. 🌟

Profile 

Scopus Profile

Education🎓

Yanming graduated with a Master’s degree in Computer Application Technology from the School of Information at Shenyang University of Technology in 2010. His academic background laid a solid foundation for his future research endeavors and leadership in academia.

Experience🏛️💼

As a Master’s Supervisor and experienced researcher, Professor Zhao has participated in over nine provincial-level research projects and has consulted on over 500 industry projects. His work not only showcases his expertise but also his dedication to bridging the gap between academia and industry.

Research Interests🔬📈

Professor Zhao’s research primarily focuses on visual computing and deep neural networks. He has developed innovative algorithms, including the visual selectivity-based 3D graph convolutional algorithm (VS-3DGCN), aimed at enhancing point cloud segmentation performance and addressing key challenges in 3D graph convolutional algorithms.

Awards 🏆

Throughout his career, Yanming has received numerous accolades, including the title of Excellent Scientific and Technological Worker in Hebei Province and Outstanding Expert Managed by Chengde City. These awards reflect his significant contributions to the scientific community and his leadership in research.

Publications

Professor Zhao has published more than 30 academic papers in esteemed journals, such as:

  • Multi-channel depth segmentation network based on 3D graph convolution algorithm and its application in point cloud segmentation
    • Authors: Zhao, Y.
    • Journal: Alexandria Engineering Journal
    • Year: 2024
    • Citations: 0
  • The Multi-View Deep Visual Adaptive Graph Convolution Network and Its Application in Point Cloud
    • Authors: Fan, H., Zhao, Y., Su, G., Zhao, T., Jin, S.
    • Journal: Traitement du Signal
    • Year: 2023
    • Citations: 4
  • Graph Convolution Algorithm Based on Visual Selectivity and Point Cloud Analysis Application
    • Authors: Zhao, Y., Su, G., Yang, H., Jin, S., Yang, J.
    • Journal: Traitement du Signal
    • Year: 2022
    • Citations: 2
  • Slow Feature Extraction Algorithm Based on Visual Selection Consistency Continuity and Its Application
    • Authors: Yang, H., Zhao, Y., Su, G., Fan, H., Shang, Y.
    • Journal: Traitement du Signal
    • Year: 2021
    • Citations: 0
  • Design and application of a slow feature algorithm coupling visual selectivity and multiple long short-term memory networks
    • Authors: Zhao, Y., Yang, H., Su, G.
    • Journal: Traitement du Signal
    • Year: 2021
    • Citations: 1

These contributions have garnered a total citation index of 102 times, illustrating the impact of his work on the research community. 📚🔗

Conclusion🌍✨

In summary, Professor Yanming Zhao stands out as a leading figure in the fields of visual computing and deep learning. His extensive research, numerous publications, and accolades make him a deserving candidate for the Best Researcher Award. His ongoing commitment to innovation and excellence continues to inspire colleagues and students alike.

Osama Sohaib | Information Systems | Best Researcher Award

Dr. Osama Sohaib | Information Systems | Best Researcher Award

Associate Professor, American University of Ras Al Khaimah, United Arab Emirates

Dr. Osama Sohaib is an Associate Professor of Business Analytics at the American University of Ras al Khaimah, UAE. He holds a Ph.D. in Information Systems from the University of Technology Sydney, Australia. With over 15 years of teaching experience, Dr. Sohaib is dedicated to educating and mentoring undergraduate and postgraduate students in information systems, focusing on the intersection of technology and business. 🌍📚

Publication Profile

Google Scholar

Education

Dr. Sohaib earned his Ph.D. in Information Systems in 2015 from the University of Technology Sydney, Australia. He is currently pursuing a Master of Business Analytics at the University of Queensland and holds a Graduate Certificate in Applied Artificial Intelligence from Charles Sturt University. His academic journey also includes a Master of Science in Computer Science, a Postgraduate Diploma in Information Management, and a Bachelor of Science in Software Development. 🎓📖

Experience

With over 15 years of experience in academia, Dr. Sohaib has held various positions, including Associate Professor at the American University of Ras al Khaimah and Lecturer at the University of Technology Sydney. He has also taught at Macquarie University and the University of New South Wales. His roles have included supervising research students, coordinating academic programs, and contributing to funded projects in business information systems. 💼👨‍🏫

Research Focus

Dr. Sohaib’s research interests encompass business information systems, e-services, digital privacy, digital transformation, business intelligence, decision-making, and applied machine learning. His work aims to enhance service effectiveness across various sectors, including digital business, healthcare, education, and government, with a strong emphasis on the ethical and societal implications of technology. 💡🔍

Awards and Honors

Dr. Sohaib has received multiple accolades, including the “Research of the Year” award from the School of Business at AURAK for his exceptional research contributions in 2023 and 2024. He was also honored with the “Best Paper Award” at the 25th International Conference on Information Systems Development in 2016 for his work on web content accessibility. 🏆🌟

Publication Top Notes

Assessing Web Content Accessibility of E-Commerce Websites for People with Disabilities
Best Paper Award, 2016
Link to Publication | 2016 | Journal of Information Systems Development | Cited by: 120

Digital Privacy in the Age of Big Data and Machine Learning: People’s Expectations and Experiences
Link to Publication | 2022 | International Journal of Information Management | Cited by: 85

Factors Influencing Continuance Intention in Augmented Reality Platforms
Link to Publication | 2023 | Journal of Business Research | Cited by: 45

Opportunities and Challenges in the Implementation of AI in Accounting and Auditing Software
Link to Publication | 2024 | International Journal of Accounting Information Systems | Cited by: 10

The Effect of Individual’s Technological Belief and Usage on their Absorptive Capacity towards their Learning Behaviour in the Learning Environment
Link to Publication | 2020 | Computers & Education | Cited by: 30

Bita Ayati | Engineering | Best Researcher Award

Assoc Prof Dr. Bita Ayati | Engineering | Best Researcher Award

Assoc Prof Dr. Bita Ayati , Tarbiat Modares University , Iran

Dr. Bita Ayati is a distinguished researcher in the field of engineering, known for her innovative contributions to materials science and sustainable engineering practices. She earned her PhD in Engineering from [University Name], where her groundbreaking research focused on [specific topic or project]. Dr. Ayati has published numerous peer-reviewed articles and has been recognized with several awards for her impactful work. Currently, she serves as a faculty member at [Institution Name], where she teaches and mentors aspiring engineers while leading advanced research projects. Her dedication to fostering collaboration and knowledge exchange within the engineering community makes her a leading figure in her field.

Publication Profile

Scopus

Scholar

 

Awards

Dr. Bita Ayati has received numerous prestigious awards throughout her academic career, recognizing her outstanding contributions to education and research. She was honored as the Best University Professor at Tarbiat Modares University in both 2023 and 2017, and named Best University Researcher in 2016. In March 2015, she received the Young Researcher Award at the 10th Annual Dr. Taghi Ebtekar Environmental Awards. Her scholarly works have also been acknowledged, with nominations for Best Book at IRDA 2012 and winning the Students’ Book of the Year Award in 2011. Additionally, she has been recognized as the Best Researcher at Tarbiat Modares University in 2010 and received the Best Paper Award at CELCO in 2007. Dr. Ayati achieved First Rank in her Ph.D. program and was also recognized as the top Ph.D. student in Iran for the academic year 2004-2005. Her accolades include the Thematic Man and Biosphere (MAB) Young Scientist Award from UNESCO in 2002 and top rankings in her Master’s and Bachelor’s programs at Sharif University of Technology.

 

Education

Dr. Bita Ayati holds a Ph.D. in Civil (Environmental) Engineering from Tarbiat Modares University, completed in March 2005. She also earned her M.Sc. in Civil (Environmental) Engineering from Sharif University of Technology between 1996 and 1998. Earlier, she obtained her B.Sc. in Chemical Engineering from the same institution, graduating in 1996. Her academic journey reflects a strong foundation in both engineering disciplines, emphasizing her commitment to environmental sustainability and innovation.

Experience

Dr. Bita Ayati has extensive professional experience in environmental engineering, currently serving as the Head of the Environmental Engineering Division at Tarbiat Modares University since June 2023, after previously holding the same position from March 2020 to March 2022. She has been an Associate Professor in the Civil and Environmental Engineering Faculty since September 2010 and served as an Assistant Professor from July 2005 to September 2010. Additionally, Dr. Ayati led the Environmental Engineering Laboratory since 1999 and was a member of the HSE Committee from December 2012 to October 2016. Earlier in her career, she contributed to Yekom Consulting Engineering, focusing on the literature review of environmental assessments from 1996 to 1997. Her leadership and academic roles highlight her commitment to advancing the field of environmental engineering.

Professional Training

Dr. Bita Ayati has pursued extensive professional training to enhance her expertise in environmental engineering and related fields. Notable courses include the “Plastics: Impacts and Action” online course from Cornell University (2021) and participation in the Water Initiative South Asia (WISA) in Istanbul (2018). She attended the Matchmaking Workshop between the Leibniz Association and Iranian Researchers in Berlin (2017), as well as the Middle East and North Africa Group Invitation Program by the Japan Foundation (2017). Additionally, Dr. Ayati was part of the International Visitor Leadership Program in the USA focused on wetland management (2016) and attended an EABRN-UNESCO training workshop on Remote Sensing & GIS in Beijing (2011). Her training also includes various workshops in Iran on clean air strategies, water treatment, and hazardous waste management, demonstrating her commitment to professional development in environmental issues.

Publication Top Notes

M.G. Rahimi, Removal of petroleum hydrocarbons from wastewater using photolysis-moving bed biofilm reactor hybrid system, Accepted for Publication in Journal of Advanced Environmental Research and Technology.

R. Haririyan Javan, M. Seyyedi, B. Ayati, Evaluation of treatment and energy efficiencies of an advanced electrochemical system for Chlorella removal equipped with aluminum, graphite, and RGO nanoparticle-coated cathodes, Journal of Water Science and Engineering, January 2024, https://doi.org/10.1016/j.wse.2023.12.004.

S. Gan, Y. Meng, Z. Lin, C. Zheng, A. Zhu, H. Ganjidoust, B. Ayati, A. Huo, Efficient Removal of Antimony (V) from Antimony Mine Wastewater by Micrometer Zero-Valent Iron, Langmuir, 2023, 39(42), 14945–14957, https://doi.org/10.1021/acs.langmuir.3c01787.

H. Sadati, B. Ayati, Using A Promising Biomass-Based Biochar in Photocatalytic Degradation: Highly Impressive Performance of RHB/SnO2/Fe3O4 for Elimination of AO7, Journal of Photochemistry and Photobiology, 2023, 22(6), 1445-1462, https://doi.org/10.1007/s43630-023-00389-2.

M.G. Rahimi, B. Ayati, R.D. Webster, Removal of Petroleum Hydrocarbons from Wastewater using Photolysis-Moving Bed Biofilm Reactor Hybrid System, Journal of Advanced Environmental Research and Technology, 2023, 1(3), 25-34.

M.A. Mousavian, S. Hosseini, B. Ayati, Bioelectricity Generation and Decolorization of Reactive Blue 221 Using a Modified Cathode Dual-Chamber Microbial Fuel Cell, Water, 2023, 15(1), 101, https://doi.org/10.3390/w15010101.

S. Entezari, M. Abdullah Al, A. Mostashari, H. Ganjidoust, B. Ayati, J. Yang, Microplastics in urban waters and its effects on microbial communities: A critical review, Environmental Science and Pollution Research, 2022, 29(59), 88410-88431, https://doi.org/10.1007/s11356-022-23810-2.

M. Ghalebizade, B. Ayati, Modeling, Optimization and Kinetic Investigation of Acid Orange 7 Degradation using Ozonation in A Cylindrical Reactor with Recirculation Flow with RSM, Modares Civil Engineering Journal, 2022, 22(4), 19-31. (In Persian)

M. Seyyedi, B. Ayati, Design and Optimization of a Sequential and Hybrid AOP System using RSM, Applied Water Engineering and Research, 2023, 11(3), 381-393, https://doi.org/10.1080/23249676.2022.2125092.

F. Habibi, M. Seyyedi, B. Ayati, Synthesis and Application of Reusable and Magnetic RGO/Fe3O4 Nanocomposites in BR46 Removal from an Aqueous Solution; Future Prospects of an Efficient Adsorption Platform, Journal of Materials and Environmental Science, 2022, 13(8), 900-913.