Publication | Closed Access
Dynamical Resource Allocation in Edge for Trustable Internet-of-Things Systems: A Reinforcement Learning Method
162
Citations
28
References
2020
Year
Dynamical Resource AllocationEngineeringEdge DeviceEdge ComputingCloud ComputingQuality-of-serviceComputer EngineeringReinforcement Learning MethodSystems EngineeringMulti-access Edge ComputingMobile ComputingInternet Of ThingsComputer ScienceTrustable Internet-of-things SystemsResource Allocation SchemeEdge ArchitectureMarkov Decision Process
Edge computing (EC) is now emerging as a key paradigm to handle the increasing Internet-of-Things (IoT) devices connected to the edge of the network. By using the services deployed on the service provisioning system which is made up of edge servers nearby, these IoT devices are enabled to fulfill complex tasks effectively. Nevertheless, it also brings challenges in trustworthiness management. The volatile environment will make it difficult to comply with the service-level agreement (SLA), which is an important index of trustworthiness declared by these IoT services. In this article, by denoting the trustworthiness gain with how well the SLA can comply, we first encode the state of the service provisioning system and the resource allocation scheme and model the adjustment of allocated resources for services as a Markov decision process (MDP). Based on these, we get a trained resource allocating policy with the help of the reinforcement learning (RL) method. The trained policy can always maximize the services' trustworthiness gain by generating appropriate resource allocation schemes dynamically according to the system states. By conducting a series of experiments on the YouTube request dataset, we show that the edge service provisioning system using our approach has 21.72% better performance at least compared to baselines.
| Year | Citations | |
|---|---|---|
Page 1
Page 1