Shayesteh Tabatabaei | Wireless Sensor Networks | Best Researcher Award

Assoc. Prof. Dr. Shayesteh Tabatabaei | Wireless Sensor Networks | Best Researcher Award

Phd, University of Saravan, Iran

Dr. Shayesteh Tabatabei is an accomplished Iranian Associate Professor in Computer Engineering at the Higher Education Complex of Saravan. Born in Tabriz, she has been recognized among the top 2% of scientists worldwide in 2024 🌍. With a Ph.D. from Tehran Science and Research University, her expertise spans wireless sensor networks, mobile ad-hoc networks, IoT, and intelligent algorithms πŸ€–πŸ“‘. She is a passionate educator and researcher who actively contributes to advancing intelligent routing protocols and optimization algorithms. Shayesteh also organizes workshops to foster knowledge in wireless networks and ISI article writing, supporting academic growth in her community πŸ“šπŸŽ“.

Profile:

πŸŽ“Education & Experience :

Dr. Shayesteh Tabatabei earned her Ph.D. in Computer Engineering from Tehran Science and Research University between 2010 and 2015, where she focused on intelligent routing protocols for mobile ad-hoc networks πŸŽ“. Prior to that, she completed her M.Sc. at Islamic Azad University of Shabestar from 2007 to 2009, researching improvements to the AODV routing protocol using reinforcement learning πŸŽ“. She also holds a B.Sc. in Computer Engineering from the same university, earned between 2002 and 2006 πŸŽ“. Currently, she serves as an Associate Professor at the Department of Computer Engineering, Higher Education Complex of Saravan πŸ’Ό. Shayesteh has extensive teaching experience in advanced computer engineering courses across several universities πŸ“± and is proficient in simulation tools and programming languages such as Matlab, R, Opnet, GloMoSim, C/C++, Python, HTML, SQL, and Oracle πŸ’».

πŸ”ΉProfessional Development :

Dr. Tabatabei actively pursues professional growth through leading and organizing numerous workshops, including Wireless Networks, IoT, and ISI Article Writing workshops, held between 2014 and 2022 πŸ› οΈπŸ“…. Her commitment to advancing scientific knowledge is reflected in her top researcher awards at multiple universities πŸ†. She continually updates her skills in simulation tools and programming languages, strengthening her research and teaching capabilities πŸ’». Her dedication to academic excellence and community support drives her efforts in mentoring students and colleagues, facilitating better understanding and application of cutting-edge technologies in wireless communication and intelligent systems 🀝🌐.

πŸ”Ή Research Focus :

Dr. Tabatabei’s research centers on wireless sensor networks, mobile ad-hoc networks, and Internet of Things (IoT), focusing on designing and optimizing intelligent routing protocols for efficient communication in dynamic networks πŸ“‘πŸ“Ά. She explores intelligent and optimization algorithms to enhance network performance and reliability, integrating reinforcement learning techniques for adaptive routing πŸ“ŠπŸ€–. Her work addresses challenges in distributed systems and intelligent systems to support scalable, energy-efficient, and secure data transmission. This research is crucial for advancing next-generation smart networks and IoT applications, contributing to improved connectivity and smart infrastructure development πŸŒβš™οΈ.

πŸ†Awards and Honors :

Dr. Shayesteh Tabatabei has been recognized multiple times for her outstanding research contributions. She was honored as the Top Researcher at the Islamic Azad University of Malekan Branch in 2011, 2016, and 2017 πŸ†. More recently, she received the Top Researcher award at the Higher Education Complex of Saravan in 2019, 2021, and 2022 πŸ…. These accolades highlight her consistent dedication to advancing research and excellence in her academic field.

πŸ”ΉPublication Top Notes :

  • Title: New energy efficient management approach for wireless sensor networks in target tracking using Vortex Search Algorithm

Citation:
Tabatabaei, S. (2025). New energy efficient management approach for wireless sensor networks in target tracking using Vortex Search Algorithm. Heliyon, 2025-Mar. https://doi.org/10.1016/j.heliyon.2025.e42867

Summary:
This paper proposes a novel energy-efficient management protocol for wireless sensor networks (WSNs) focused on improving target tracking accuracy and prolonging network lifetime. It employs the Vortex Search Algorithm, a nature-inspired metaheuristic optimization technique, to optimize cluster formation and routing paths, reducing energy consumption. Simulation results demonstrate enhanced performance compared to existing methods, showing increased network longevity and tracking reliability.

  • Title: WITHDRAWN: A Novel method of routing in multi-channel multi-radio wireless mesh networks

Citation:
Tabatabaei, S., & Mehbodniya, A. (2025). WITHDRAWN: A Novel method of routing in multi-channel multi-radio wireless mesh networks. Preprint, 2025-Mar-05. https://doi.org/10.21203/rs.3.rs-3069796/v2

Summary:
This preprint, now withdrawn, originally introduced a new routing method for multi-channel, multi-radio wireless mesh networks aimed at enhancing throughput and minimizing interference. The approach integrated channel assignment and route optimization strategies. As the paper was withdrawn, details on methodology or results are unavailable.

  • Title: An energy-aware protocol in wireless sensor networks using the scattered search algorithm and fuzzy logic

Citation:
Tabatabaei, S., & Shaheen, Q. (2024). An energy-aware protocol in wireless sensor networks using the scattered search algorithm and fuzzy logic. PLOS ONE, 2024-Nov-04. https://doi.org/10.1371/journal.pone.0297728

Summary:
This article presents an energy-aware routing protocol that combines the Scattered Search Algorithm, a global optimization technique, with fuzzy logic to improve decision-making in WSNs. The protocol focuses on efficient energy usage by dynamically adapting routing paths according to network conditions and sensor node energy levels, significantly extending network lifespan while maintaining reliable data transmission.

  • Title: A Fault-Tolerant Clustering Approach for Target Tracking in Wireless Sensor Networks

Citation:
Tabatabaei, S. (2024). A Fault-Tolerant Clustering Approach for Target Tracking in Wireless Sensor Networks. Wireless Personal Communications, 2024-Aug. https://doi.org/10.1007/s11277-024-11495-4

Summary:
This paper introduces a fault-tolerant clustering protocol designed for target tracking applications in WSNs. The method enhances network robustness by incorporating mechanisms to detect and recover from node failures during target tracking, ensuring continuous monitoring and reducing data loss. Results show improved reliability and accuracy in tracking moving targets under adverse network conditions.

  • Title: A new model for evaluating the impact of organizational culture variables on the success of knowledge management in organizations using the TOPSIS multi-criteria algorithm: Case study

Citation:
Tabatabaei, S. (2024). A new model for evaluating the impact of organizational culture variables on the success of knowledge management in organizations using the TOPSIS multi-criteria algorithm: Case study. Computers in Human Behavior Reports, 2024-May. https://doi.org/10.1016/j.chbr.2024.100417

Summary:
This interdisciplinary paper applies the TOPSIS multi-criteria decision-making algorithm to evaluate how various organizational culture factors affect the success of knowledge management initiatives. The case study reveals key cultural drivers that significantly influence knowledge sharing and management, providing actionable insights for organizational development and strategy planning.

πŸ”ΉConclusion:

Dr. Shayesteh Tabatabei exemplifies the qualities that the Best Researcher Award seeks to honor: impactful research, global recognition, leadership in knowledge dissemination, and a clear dedication to advancing her field. Her combination of technical innovation and educational mentorship makes her an ideal candidate for this award, reflecting both academic excellence and meaningful community impact.

Dr. Shree Krishna Acharya | Wireless Sensor Network Award | Telecommunication Trailblazer Award

Dr. Shree Krishna Acharya | Wireless Sensor Network Award | Telecommunication Trailblazer Award

Dr. Shree Krishna Acharya, University College Dublin, Ireland

Dr. Shree Krishna Acharya is a distinguished Research Scientist at University College Dublin, Ireland πŸŽ“. He holds a Ph.D. in Electronics Engineering, specializing in short-term forecasting using artificial intelligence for distributed energy resources (DERs) in power systems, and a Master’s focusing on uncertainty analysis and short-term forecasting of residential energy consumption πŸ“œ. Dr. Acharya’s professional experience includes leading AI-based projects at UCD, such as live streaming marine vessel detection and anomaly detection in vessel tracking πŸ”¬. His previous roles include postdoctoral research at Mokpo National University, where he enhanced forecasting models and developed reinforcement learning systems. Proficient in AI programming, containerized solutions, and statistical analysis, Dr. Acharya’s research interests span AI-based forecasting, energy resource management, wireless communication systems, and data science πŸ’».

🌐 Professional Profile:

Google Scholar

LinkedInΒ 

πŸŽ“ Education

  • Ph.D. in Electronics Engineering: Specialized in short-term forecasting using artificial intelligence, focusing on distributed energy resources (DERs) in power systems. (2017-2022)
  • Master’s in Electronics Engineering: Focused on uncertainty analysis and short-term forecasting of residential energy consumption. (2015-2017)

πŸ“œ Certification

  • IBM Data Science Professional Certificate: Certified expertise in data science methodologies and tools.

πŸ”¬ Professional Experience

  • Research Scientist at University College Dublin (UCD), Dublin, Ireland (02/2023 – Present): Leading AI-based projects including live streaming marine vessel detection, anomaly detection in vessel tracking, and developing geo-spatial tracking systems. Proficient in AI frameworks, containerized solutions, and data processing with significant contributions to network efficiency and consortium collaborations.
  • Postdoctoral Researcher/PhD Researcher at Mokpo National University, Mokpo, South Korea (09/2015 – 02/2023): Enhanced forecasting models and accuracy in energy consumption and PV systems, developed reinforcement learning models, and improved wireless communication systems. Published research findings and contributed to advancements in AI and statistical models.

πŸ’» Technical Skills

  • Proficient in AI programming (CNN, Keras, TensorFlow, PyTorch)
  • Experienced in developing and deploying containerized solutions (Docker)
  • Skilled in REST API deployment, MQTT, WebRTC, and Python scripting
  • Expertise in statistical analysis and machine learning models for energy forecasting

πŸ” Research Interests

  • AI-based short-term forecasting
  • Energy resource management
  • Wireless communication systems
  • Data science and machine learning applications

Publication Top Notes: