Federated learning enables intelligent reflecting surface in fog-cloud enabled cellular network

The intelligent reflecting surface (IRS) is a ground-breaking technology that can boost the efficiency of wireless data transmission systems. Specifically, the wireless signal transmitting environment is reconfigured by adjusting a large number of small reflecting units simultaneously. Therefore, intelligent reflecting surface (IRS) has been suggested as a possible solution for improving several aspects of future wireless communication. However, individual nodes are empowered in IRS, but decisions and learning of data are still made by the centralized node in the IRS mechanism. Whereas, in previous works, the problem of energy-efficient and delayed awareness learning IRS-assisted communications has been largely overlooked. The federated learning aware Intelligent Reconfigurable Surface Task Scheduling schemes (FL-IRSTS) algorithm is proposed in this paper to achieve high-speed communication with energy and delay efficient offloading and scheduling. The training of models is divided into different nodes. Therefore, the trained model will decide the IRSTS configuration that best meets the goals in terms of communication rate. Multiple local models trained with the local healthcare fog-cloud network for each workload using federated learning (FL) to generate a global model. Then, each trained model shared its initial configuration with the global model for the next training round. Each application’s healthcare data is handled and processed locally during the training process. Simulation results show that the proposed algorithm’s achievable rate output can effectively approach centralized machine learning (ML) while meeting the study’s energy and delay objectives.

[1]  Howard H. Yang,et al.  Federated-Learning-Enabled Intelligent Fog Radio Access Networks: Fundamental Theory, Key Techniques, and Future Trends , 2020, IEEE Wireless Communications.

[2]  Alireza Jolfaei,et al.  Mobility Aware Blockchain Enabled Offloading and Scheduling in Vehicular Fog Cloud Computing , 2021, IEEE Transactions on Intelligent Transportation Systems.

[3]  Xiaoping Li,et al.  Content Aware Task Scheduling Framework for Mobile Workflow Applications in Heterogeneous Mobile-Edge-Cloud Paradigms: CATSA Framework , 2019, 2019 IEEE Intl Conf on Parallel & Distributed Processing with Applications, Big Data & Cloud Computing, Sustainable Computing & Communications, Social Computing & Networking (ISPA/BDCloud/SocialCom/SustainCom).

[4]  Yun Liu,et al.  How to develop machine learning models for healthcare , 2019, Nature Materials.

[5]  Mara Nikolaidou,et al.  A microservice-based framework for integrating IoT management platforms, semantic and AI services for supply chain management , 2019, ICT Express.

[6]  Ali Hassan Sodhro,et al.  Multi-Layer Latency Aware Workload Assignment of E-Transport IoT Applications in Mobile Sensors Cloudlet Cloud Networks , 2021, Electronics.

[7]  Sudip Misra,et al.  FogFL: Fog-Assisted Federated Learning for Resource-Constrained IoT Devices , 2021, IEEE Internet of Things Journal.

[8]  Abdullah Lakhan,et al.  Energy Aware Dynamic Workflow Application Partitioning and Task Scheduling in Heterogeneous Mobile Cloud Network , 2018, 2018 International Conference on Cloud Computing, Big Data and Blockchain (ICCBB).

[9]  Naixue Xiong,et al.  A Reinforcement Learning-Empowered Feedback Control System for Industrial Internet of Things , 2021, IEEE Transactions on Industrial Informatics.

[10]  Yong Xiang,et al.  Decentralized Privacy Using Blockchain-Enabled Federated Learning in Fog Computing , 2020, IEEE Internet of Things Journal.

[11]  Huaiyu Dai,et al.  From Federated to Fog Learning: Distributed Machine Learning over Heterogeneous Wireless Networks , 2020, IEEE Communications Magazine.

[12]  Xiaoping Li,et al.  Transient fault aware application partitioning computational offloading algorithm in microservices based mobile cloudlet networks , 2019, Computing.

[13]  Jong Hyuk Park,et al.  Blockchain and federated learning-based distributed computing defence framework for sustainable society , 2020 .

[14]  Huaqun Wang,et al.  Privacy-Preserving Federated Learning in Fog Computing , 2020, IEEE Internet of Things Journal.

[15]  Karrar Hameed Abdulkareem,et al.  Smart-Contract Aware Ethereum and Client-Fog-Cloud Healthcare System , 2021, Sensors.