Nandan Banerji | Internet of Things | Editorial Board Member

Editorial Board Member

Nandan Banerji, Birla Institute of Technology, India

Nandan Banerji
Affiliation Birla Institute of Technology
Country India
Scopus ID 57209101586
Documents 13
Citations 8
h-index 2
Subject Area Internet of Things
Event Technology Scientists Awards
ORCID 0000-0002-0698-0404

Nandan Banerji is an academic researcher associated with the Birla Institute of Technology, India, whose work focuses on Internet of Things (IoT), federated learning systems, real-time analytics, and distributed intelligent infrastructures. His scholarly contributions explore the intersection of machine learning methodologies and resilient IoT frameworks for emerging computational environments.[1] His research publications demonstrate applications in electricity generation analytics, fintech-oriented federated learning infrastructures, and adaptive decentralized learning systems.[2][3]

Abstract

This article presents an academic overview of Nandan Banerji and his contributions within the field of Internet of Things and intelligent distributed computing systems. The discussion highlights research activities related to machine learning-driven electricity analytics, federated learning architectures for IoT systems, and resilient infrastructures for decentralized computational environments.[1][2] The article also examines the scholarly significance of his publications and their relevance to modern computational challenges in fintech services, adaptive networking, and real-time data processing.[3]

Keywords

Internet of Things, Federated Learning, Distributed Computing, Machine Learning, Real-Time Analytics, Fintech Infrastructure, Adaptive IoT Systems, Decentralized Intelligence, Electricity Generation Analytics, Resilient Networks

Introduction

The evolution of Internet of Things technologies has significantly transformed the landscape of intelligent systems and distributed computational environments. Researchers working in this domain increasingly investigate adaptive infrastructures capable of supporting resilient communication, secure data aggregation, and decentralized machine learning operations.[2] Nandan Banerji has contributed to these developments through scholarly work centered on federated learning mechanisms and real-time analytical systems applicable to IoT-driven environments.[3]

His publications address contemporary issues associated with large-scale data processing, intelligent decision-making, and distributed learning infrastructures. Such work reflects ongoing academic interest in scalable and privacy-aware computational systems suitable for modern digital ecosystems.[1]

Research Profile

Nandan Banerji is affiliated with Birla Institute of Technology, India, where his research activities are associated with Internet of Things technologies and intelligent distributed infrastructures. His Scopus profile documents scholarly output related to machine learning applications, decentralized systems, and adaptive network architectures.[4]

  • Research specialization in Internet of Things and federated learning infrastructures.[2]
  • Experience in machine learning-based real-time data analysis systems.[1]
  • Academic contributions related to decentralized fintech and IoT service architectures.[3]
  • Participation in collaborative interdisciplinary computational research initiatives.[1]

Research Contributions

One of the significant areas of contribution by Nandan Banerji involves the integration of machine learning methodologies into real-time electricity generation analytics. The study focusing on Sikkim regional electricity generation explored predictive and analytical methods for understanding real-time energy data patterns within computational intelligence frameworks.[1]

Another notable contribution concerns adaptive federated learning infrastructures for ad hoc IoT environments. This work proposed resilient and scalable architectures designed to support decentralized learning operations while preserving distributed data privacy and communication efficiency.[2]

Additional scholarly work investigated threshold-based federated learning infrastructures for fintech services, highlighting the practical application of distributed intelligence systems within financial technology ecosystems. The research addressed challenges associated with trust management, learning synchronization, and distributed analytical processing.[3]

Publications

  1. Limboo, S., Katel, A., Koirala, T. K., Nag, A., & Banerji, N. (2023). Machine Learning-Based Analysis of Electricity Generation on Real-Time Data from Sikkim Regions. Springer.
    DOI: https://doi.org/10.1007/978-3-032-20253-6_35
  2. Bhattacharjee, S., Katel, A., Singh, Y., & Banerji, N. (2022). An Adaptive and Resilient Federated Learning Infrastructure for Adhoc IoT Scenario. TechRxiv.
    DOI: https://doi.org/10.36227/techrxiv.176404090.05996485/v1
  3. Banerji, N., & Sherpa, L. (2022). A Threshold-Based Federated Learning Infrastructure for Fintech Services. TechRxiv.
    DOI: https://doi.org/10.36227/techrxiv.176003148.82070541/v1

Research Impact

The research activities associated with Nandan Banerji contribute to the broader advancement of intelligent IoT ecosystems and decentralized machine learning systems. His work on federated learning architectures aligns with ongoing global efforts toward privacy-preserving distributed intelligence and scalable computational frameworks.[2]

The application-oriented nature of his publications demonstrates practical relevance for emerging domains such as energy analytics, fintech infrastructures, and adaptive communication systems. Such contributions support the integration of machine learning technologies into real-world computational environments and industrial applications.[1][3]

Award Suitability

Nandan Banerji’s academic profile demonstrates alignment with the objectives of the Technology Scientists Awards, particularly within the subject area of Internet of Things. His scholarly contributions emphasize innovation in federated learning infrastructures, intelligent distributed systems, and real-time analytical methodologies applicable to emerging digital ecosystems.[2]

The interdisciplinary character of his work further supports recognition within academic and scientific award frameworks that emphasize technological innovation, computational intelligence, and scalable IoT-based architectures.[3]

Conclusion

Nandan Banerji represents an emerging scholarly contributor within the field of Internet of Things and intelligent distributed systems research. His academic publications illustrate engagement with contemporary computational challenges involving federated learning, resilient infrastructures, and machine learning-enabled analytical systems.[1][2] Through collaborative and application-oriented research, his work contributes to the ongoing advancement of adaptive and decentralized intelligent technologies.[3]

References

  1. Limboo, S., Katel, A., Koirala, T. K., Nag, A., & Banerji, N. (2023). Machine Learning-Based Analysis of Electricity Generation on Real-Time Data from Sikkim Regions. Springer.
    DOI: https://doi.org/10.1007/978-3-032-20253-6_35
  2. Bhattacharjee, S., Katel, A., Singh, Y., & Banerji, N. (2022). An Adaptive and Resilient Federated Learning Infrastructure for Adhoc IoT Scenario. TechRxiv.
    DOI: https://doi.org/10.36227/techrxiv.176404090.05996485/v1
  3. Banerji, N., & Sherpa, L. (2022). A Threshold-Based Federated Learning Infrastructure for Fintech Services. TechRxiv.
    DOI: https://doi.org/10.36227/techrxiv.176003148.82070541/v1
  4. Elsevier. (n.d.). Scopus author details: Nandan Banerji, Author ID 57209101586. Scopus.
    https://www.scopus.com/authid/detail.uri?authorId=57209101586

Zeng Xiangjin | Robot | Best Academic Researcher Award

Prof. Dr. Zeng Xiangjin | Robot | Best Academic Researcher Award

Professor | Wuhan Institute of Technology | China

Prof. Dr. Xiangjin Zeng is a researcher at the Wuhan Institute of Technology specializing in computer vision, deep learning, and intelligent image processing. His work focuses on advanced techniques for super-resolution, object detection, infrared imaging, and image captioning, integrating attention mechanisms and modern CNN–Transformer architectures. He has authored 37 publications with 165 citations and 6 h-index, reflecting growing global recognition. Dr. Zeng has collaborated with over 30 co-authors, contributing to multidisciplinary advancements in multimedia applications and AI-driven visual analysis. His research supports practical innovations in surveillance, smart imaging systems, and human–machine interaction, strengthening the societal impact of next-generation visual technologies.

Citation Metrics (Scopus)
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Top 5 Featured Publications

Xingxing You | Intelligent control | Editorial Board Member

Assist. Prof. Dr. Xingxing You | Intelligent control | Editorial Board Member

Assistant Professor | Sichuan University | China

Assist. Prof. Dr. Xingxing You is a developing researcher affiliated with Sichuan University, China, whose work spans advanced signal processing, intelligent control, and underwater imaging technologies. With 26 scientific publications, h-index 7and over 408 citations, the author demonstrates an emerging yet steadily growing influence in these fields. His research contributions include multi-level feature fusion strategies for perception-driven underwater image enhancement, advancing the reliability of visual sensing in complex aquatic environments, as well as novel critic-only self-learning optimal control methods for continuum robots operating under unknown disturbances, integrating extended state observer frameworks to elevate robustness and adaptability. These works reflect a broader expertise in machine learning–guided optimization, sensor fusion, and nonlinear dynamical systems, addressing real-world problems where conventional modeling is insufficient. Collaboration is a key dimension of his academic trajectory, with 55 co-authors across disciplines, indicating strong engagement within interdisciplinary research networks and an ability to participate effectively in multi-institutional scientific efforts. His research outcomes demonstrate relevance not only to academic communities working on robotics, automation, and digital signal processing, but also to domains such as marine engineering, environmental monitoring, and intelligent manufacturing. By focusing on interpretable enhancements, computational efficiency, and real-time control, his contributions help bridge theoretical advances and applied technological innovation. Overall, Xingxing You’s scholarly record showcases growing expertise, collaborative capacity, and a commitment to addressing technically challenging problems with practical societal implications.

Profiles: Scopus | ORCID

Featured Publications

1. Perception-driven underwater image enhancement via multi-level feature fusion. (2026). Digital Signal Processing: A Review Journal.

2. Critic-only based self learning optimal control for continuum robots with unknown disturbances via extended state observer. (2025). Nonlinear Dynamics.

Assist. Prof. Dr. Xingxing You’s work advances intelligent sensing and robust control systems, enabling more reliable robotic and imaging technologies in uncertain environments. His research contributes to global innovation by strengthening the scientific foundation for autonomous systems and enhancing their applications in marine exploration, environmental protection, and advanced robotics.