Knowledge Agora



Similar Articles

Title Applications of federated learning in smart cities: recent advances, taxonomy, and open challenges
ID_Doc 42787
Authors Zheng, ZH; Zhou, YZ; Sun, YL; Wang, Z; Liu, BY; Li, KQ
Title Applications of federated learning in smart cities: recent advances, taxonomy, and open challenges
Year 2022
Published Connection Science, 34, 1
Abstract Federated learning (FL) plays an important role in the development of smart cities. With the evolution of big data and artificial intelligence, issues related to data privacy and protection have emerged, which can be solved by FL. In this paper, the current developments in FL and its applications in various fields are reviewed. With a comprehensive investigation, the latest research on the application of FL is discussed for various fields in smart cities. We explain the current developments in FL in fields, such as the Internet of Things (IoT), transportation, communications, finance, and medicine. First, we introduce the background, definition, and key technologies of FL. Then, we review key applications and the latest results. Finally, we discuss the future applications and research directions of FL in smart cities.
PDF https://www.tandfonline.com/doi/pdf/10.1080/09540091.2021.1936455?needAccess=true

Similar Articles

ID Score Article
39062 Pandya, S; Srivastava, G; Jhaveri, R; Babu, MR; Bhattacharya, S; Maddikunta, PKR; Mastorakis, S; Piran, MJ; Gadekallu, TR Federated learning for smart cities: A comprehensive survey(2023)
37402 Jiang, JC; Kantarci, B; Oktug, S; Soyata, T Federated Learning in Smart City Sensing: Challenges and Opportunities(2020)Sensors, 20.0, 21
39557 Ramu, SP; Boopalan, P; Pham, QV; Maddikunta, R; Huynh-The, T; Alazab, M; Nguyen, TT; Gadekallu, TP Federated learning enabled digital twins for smart cities: Concepts, recent advances, and future directions(2022)
44635 Khan, MA; Alkaabi, N Rebirth of Distributed AI-A Review of eHealth Research(2021)Sensors, 21, 15
45460 Guo, SY; Xiang, BY; Chen, LD; Yang, HF; Yu, DX Multi-level Federated Learning Mechanism with Reinforcement Learning Optimizing in Smart City(2022)
42056 Valente, R; Senna, C; Rito, P; Sargento, S Embedded Federated Learning for VANET Environments(2023)Applied Sciences-Basel, 13, 4
Scroll