Nithya S | Network Security | Best Researcher Award

Dr. Nithya S | Network Security | Best Researcher Award

Saveetha Engineering College | India

Author Profile

Google Scholar

Early Academic Pursuits

Dr. Nithya S began her academic journey with a strong foundation in Electronics and Communication Engineering from Maharaja Engineering College, affiliated with Bharathiyar University, Coimbatore. She further specialized in VLSI Design at Sree Sastha Institute of Engineering and Technology under Anna University, Chennai, and advanced her expertise in Wireless Sensor Networks at SRM Institute of Science & Technology, Kattankulathur. This educational progression reflects her dedication to mastering both hardware and communication technologies, setting the stage for a career blending innovation with practical applications.

Professional Endeavors

With extensive teaching experience across reputed institutions, Dr. Nithya has served as Assistant Professor at SRM Institute of Science & Technology, Lecturer at Sree Sastha Institute of Engineering & Technology, and Lecturer at Maharaja Prithvi Engineering College. Her academic career demonstrates a balance between curriculum delivery, student mentorship, and research supervision, fostering both theoretical understanding and applied engineering skills among her students.

Contributions and Research Focus

Dr. Nithya’s research encompasses Wireless Sensor Networks, IoT applications, AI-driven systems, power electronics, and renewable energy integration. She has presented numerous papers at international and national conferences on topics ranging from GAN-CNN-ELM hybrid models for license plate recognition to predictive maintenance of industrial equipment using IoT. She has applied for multiple sponsored research projects including AI-based COVID-19 monitoring devices, autonomous fertilizer recommendation systems, and upper limb rehabilitation robots, reflecting her commitment to socially relevant and impactful technological solutions.

Impact and Influence

Her influence extends beyond classrooms and laboratories through editorial and reviewer roles in reputed journals such as Wireless Personal Communication (Springer, SCI Indexed). She holds lifetime memberships in prestigious organizations like ISRD and IAENG, fostering collaborations and staying connected with global research networks. Her active participation in Faculty Development Programs on emerging domains such as blockchain, FPGA programming, AI, and machine learning ensures continuous professional growth and knowledge transfer to her students.

Academic Citations

Through her scholarly publications, Dr. Nithya has contributed to a wide body of literature in communication systems, renewable energy integration, IoT applications, and security systems. Many of her works have been cited in research on smart systems, energy optimization, and machine learning applications in engineering, indicating the growing relevance of her contributions in the academic and applied research community.

Legacy and Future Contributions

Dr. Nithya’s legacy lies in her blend of academic rigor, research innovation, and social commitment. Her future goals likely involve expanding interdisciplinary research, securing major research grants, and enhancing collaboration with industry for technology transfer. Her work on sustainable systems, AI-driven monitoring, and assistive robotics positions her to make significant contributions to the future of intelligent and eco-friendly technologies.

Conclusion

In summary, Dr. Nithya S stands as a dedicated academician and researcher whose journey reflects a commitment to advancing engineering solutions for societal benefit. Her diverse expertise-from wireless sensor networks to renewable energy integration-combined with her active engagement in mentoring, reviewing, and conference participation, underlines her as a valuable contributor to the academic and research community. With her vision and ongoing efforts, she is poised to make even greater strides in shaping the future of intelligent, sustainable, and impactful technologies.

Notable Publications

"Portable IoT Smart Devices in Healthcare and Remote Health Monitoring

  • Author: G Boopathi Raja, M Parimala Devi, R Deepa, T Sathya, S Nithya
  • Journal: Internet of Things in Bioelectronics
  • Year: 2024

"Smaclad: Secure Mobile Agent Based Cross Layer Attack Detection and Mitigation in Wireless Network

  • Author: CG S.Nithya
  • Journal: Mobile Networks and Applications
  • Year: 2024

"Security Challenges in Smart Grid Management

  • Author: S Nithya, K Vijayalakshmi, MP Devi
  • Journal: Smart and Power Grid Systems
  • Year: 2023

"Comparison of elevator drives Regenerative Energy using DC-DC Converter with Battery Energy Storage Systems in High raise buildings

  • Author: B Siranthini, M Babu, S Nithya, K Vijayalakshmi
  • Journal: 2023 International Conference on Innovative Computing
  • Year: 2023

"International Research Journal of Engineering and Technology (IRJET)

  • Author: Sattar, U.; Khan, H. W.; Ghaffar, A.; Raza, S.
  • Journal: SKS Dr. S. Nithya, Kanishk Yashvardhan, Suryansh Pravin Katiyar
  • Year: 2022

 

 

Warusia Yassin | Cybersecurity | Best Researcher Award

Dr. Warusia Yassin | Cybersecurity | Best Researcher Award

Senior Lecturer at Universiti Teknikal Malaysia Melaka, Malaysia

Ts. Dr. Warusia Mohamed Yassin is a Senior Lecturer (DS51) at Universiti Teknikal Malaysia Melaka (UTeM), specializing in Security in Computing. With a professional background in system programming, engineering, and cybersecurity analysis, she has contributed significantly to academia and industry in the fields of anomaly detection, intrusion prevention, and cyber risk management. She is a certified professional technologist (Ts.) and an active researcher with numerous national and international publications and research projects.

🔹Professional Profile:

Scopus Profile

Orcid Profile

Google Scholar Profile

🎓Education Background

  • PhD in Computer Science (Security in Computing) – Universiti Putra Malaysia, 2015
    Thesis: An Integrated Anomaly Intrusion Detection Scheme Using Statistical, Hybridized Classifier and Signature Approach.

  • Master of Science in Computer Science (Security in Computing) – Universiti Putra Malaysia, 2011
    Thesis: An Improved Hybrid Learning Approach For Better Anomaly Detection.

  • Bachelor of Computer Science (Computer System) – Universiti Putra Malaysia, 2008

💼 Professional Development

  • Senior Lecturer, Universiti Teknikal Malaysia Melaka (2015 – Present)

  • Security Analyst, 2009

  • System Engineer, 2007

  • Lab Demonstrator, 2007

  • System Programmer, 2004

She has taught various undergraduate and postgraduate courses including Computer Programming, Intrusion Detection and Prevention, Cyber Threat Intelligence, and Risk Management.

🔬Research Focus

Her main research interests lie in Security in Computing, particularly:

  • Intrusion Detection Systems

  • Malware Analysis

  • Deep Learning and Machine Learning

  • Deepfake Detection

  • Biometric Authentication

  • Cybersecurity Risk Management

  • Blockchain-based Authentication

  • IoT Security and Forensics

📈Author Metrics:

Dr. Warusia has co-authored numerous high-impact publications in journals and conference proceedings. Key contributions include works on hybrid learning methods, anomaly detection, K-Means clustering with Naïve Bayes, and genetic algorithm applications for cybersecurity. Some notable journals include Information Technology Journal, Journal of Information Assurance and Security, and CyberSec Conference Proceedings.

🏆Awards and Honors:

  • Recipient of multiple industrial research grants including from CyberSecurity Malaysia, APNIC, and UTeM PJP.

  • Recognized consultant for national-level cybersecurity projects, including railway infrastructure security.

  • Active supervisor for PhD and Master students, with several completions under her mentorship.

  • Holds the Professional Technologist (Ts.) title in Malaysia, signifying certified expertise in technology application and innovation.

📝Publication Top Notes

1. Ransomware Early Detection using Machine Learning Approach and Pre-Encryption Boundary Identification

Authors: W. Zanoramy, M.F. Abdollah, O. Abdollah, S.M.W.M. S.M.M
Journal: Journal of Advanced Research in Applied Sciences and Engineering Technology
Volume: 6
Year: 2025
DOI: [Not provided]
Abstract: Proposes a machine learning-based ransomware detection model that identifies pre-encryption behavior to enable proactive intervention and minimize system damage.

2. Routing Protocols Performance on 6LoWPAN IoT Networks

Authors: P.S. Chia, N.H. Kamis, S.F. Abdul Razak, S. Yogarayan, W. Yassin, et al.
Journal: IoT
Volume: 6(1), Page 12
Year: 2025
DOI: [Not provided]
Abstract: Compares multiple routing protocols in 6LoWPAN-based IoT environments to determine optimal performance in terms of energy efficiency, packet delivery, and delay.

3. An Enhanced Integrated Deep Learning Method to Overcome Dehazing Issues on Intelligent Vehicles

Authors: W.M. Yassin, A.I. Hajamydeen, M.F. Abdollah, K. Raja, N. Farzana
Book Title: Sustainable Smart Cities and the Future of Urban Development
Pages: 487–502
Year: 2025
DOI: [Not provided]
Abstract: Introduces an integrated deep learning framework to enhance dehazing in vision systems of intelligent vehicles, contributing to safer navigation in urban smart environments.

4. Optimizing Android Malware Detection Using Neural Networks and Feature Selection Method

Authors: J. Bintoro, F.A. Rafrastara, I.A. Latifah, W. Ghozi, W. Yassin
Journal: Jurnal Teknik Informatika (JUTIF)
Volume: 5(6), Pages 1663–1672
Year: 2024
DOI: [Not provided]
Abstract: Combines neural networks with a tailored feature selection method to boost the accuracy and efficiency of Android malware detection.

5. Enhancing XGBoost Performance in Malware Detection through Chi-Squared Feature Selection

Authors: S. Rosyada, F.A. Rafrastara, A. Ramadhani, W. Ghozi, W. Yassin
Journal: Jurnal Sisfokom (Sistem Informasi dan Komputer)
Volume: 13(3), Pages 396–402
Year: 2024
DOI: [Not provided]
Abstract: Employs Chi-squared feature selection to enhance XGBoost’s ability to detect malware, streamlining the model and improving classification results.

.Conclusion:

Dr. Warusia Mohamed Yassin is undoubtedly a deserving candidate for the Best Researcher Award. Her significant academic achievements, coupled with her active involvement in high-impact research and industry projects, demonstrate her contribution to advancing cybersecurity. Her innovative research in anomaly detection, malware analysis, and deep learning makes her a leader in the field, and her continued success in mentoring and supervising graduate students ensures that her expertise will benefit the next generation of cybersecurity professionals.