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Abstract
The widespread use of the Internet of Things has led to the development of
large amounts of perception data, making it necessary to develop effective and
scalable data analysis tools. Federated Learning emerges as a promising
paradigm to address the inherent challenges of power consumption and data
privacy in IoT environments. This paper explores the transformative potential
of FL in enhancing the longevity of IoT devices by mitigating power consumption
and enhancing privacy and security measures. We delve into the intricacies of
FL, elucidating its components and applications within IoT ecosystems.
Additionally, we discuss the critical characteristics and challenges of IoT,
highlighting the need for such machine learning solutions in processing
perception data. While FL introduces many benefits for IoT sustainability, it
also has limitations. Through a comprehensive discussion and analysis, this
paper elucidates the opportunities and constraints of FL in shaping the future
of sustainable and secure IoT systems. Our findings highlight the importance of
developing new approaches and conducting additional research to maximise the
benefits of FL in creating a secure and privacy-focused IoT environment.
References
Journal of King Saud University-Computer and Information Sciences
Precision agriculture using IoT data analytics and machine learning
Ravesa Akhter, Shabir Ahmad Sofi
Published: 2022
IEEE communications surveys & tutorials
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Mohammed Ali Al-Garadi, Amr Mohamed, Abdulla Khalid Al-Ali, Xiaojiang Du, Ihsan Ali, Mohsen Guizani
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Asma Haroon, Munam Ali Shah, Yousra Asim, Wajeeha Naeem, Muhammad Kamran, Qaisar Javaid
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arXiv
Fedml: A research library and benchmark for federated machine learning
C. He, S. Li, J. So, M. Zhang, H. Wang, X. Wang, P. Vepakomma, A. Singh, H. Qiu, L. Shen, P. Zhao, Y. Kang, Y. Liu, R. Raskar, Q. Yang, M. Annavaram, S. Avestimehr
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IEEE Access
A deep learning method for short-term residential load forecasting in smart grid
Ye Hong, Yingjie Zhou, Qibin Li, Wenzheng Xu, Xiujuan Zheng
Published: 2020
International Journal of Communication Systems
Federated learning-based IoT: A systematic literature review
Mehdi Hosseinzadeh, Atefeh Hemmati, Amir Masoud Rahmani