Publication | Closed Access
Trusted Cloud-Edge Network Resource Management: DRL-Driven Service Function Chain Orchestration for IoT
101
Citations
31
References
2019
Year
Secure ServiceEngineeringEdge DeviceInformation SecurityCloud ContinuumInternet Of ThingsAdvanced NetworkingDynamic Service MigrationComputer ScienceMobile ComputingNetwork Function VirtualizationEdge ArchitectureService OrchestrationData SecurityEdge ComputingCloud ComputingConsortium BlockchainMulti-access Edge ComputingBlockchain
Private and public networks sharing resources for Internet of Things (IoT) network through network function virtualization (NFV) and software-defined networking (SDN) forms a heterogeneous cloud-edge environment. However, the heterogeneous cloud-edge network faces trust and adaptation issues in resource allocation. To address these two problems, we introduce consortium blockchain and deep reinforcement learning (DRL) to construct the trusted and auto-adjust service function chain (SFC) orchestration architecture. In the architecture, this article integrates the consortium blockchain into the distributed SFC orchestration model to realize trusted resource sharing. In addition, for realizing auto-adjusted service provision, this article designs a dynamic hierarchical SFC orchestration algorithm (DHSOA) based on DRL to minimize the orchestration cost and improve the quality of service. Moreover, considering the dynamics of network entities, this article proposes a time-slotted model to support dynamic service migration which adapts to the high-mobility IoT network. The simulation results show that DHSOA has better performance than the link-state routing algorithm and deep Q -network placement algorithm not only in cost saving of 15.8% and 10.1% but also in time saving of 22.0% and 10.0%.
| Year | Citations | |
|---|---|---|
Page 1
Page 1