Haijun Liao, Zehan Jia, Ruiqiuyu Wang, Zhenyu Zhou, Fei Wang, Dongsheng Han, Guangyuan Xu, Zhenti Wang, Yan Qin
China Communications.
2022, 19(7):
324-336.
Multi-mode power internet of things (PIoT) combines various communication media to provide spatio-temporal coverage for low-carbon operation in smart park. Edge-end collaboration is feasible to achieve the full utilization of heterogeneous resources and anti-eavesdropping. However, edge-end collaboration-based multi-mode PIoT faces challenges of mutual contradiction in communication and security quality of service (QoS) guarantee, inadaptability of resource management, and multi-mode access conflict. We propose an Adaptive learning based delAy-sensitive and seCure Edge-End Collaboration algorithm ($\text{ACE}^2$) to optimize multi-mode channel selection and split device power into artificial noise (AN) transmission and data transmission for secure data delivery. $\text{ACE}^2$ can achieve multi-attribute QoS guarantee, adaptive resource management and security enhancement, and access conflict elimination with the combined power of deep actor-critic (DAC), “win or learn fast (WoLF)” mechanism, and edge-end collaboration. Simulations demonstrate its superior performance in queuing delay, energy consumption, secrecy capacity, and adaptability to differentiated low-carbon services.