Publication | Closed Access
Deep Reinforcement Learning for IoT Network Dynamic Clustering in Edge Computing
42
Citations
7
References
2019
Year
Unknown Venue
Large InternetCluster ComputingEngineeringMachine LearningData ScienceEdge DeviceEdge ComputingCluster PartitioningDeep Reinforcement LearningComputer EngineeringMulti-access Edge ComputingEmbedded Machine LearningInternet Of ThingsComputer ScienceDeep LearningEdge ArchitectureEdge Artificial IntelligenceBig Data
Processing big data generated in large Internet of Things (IoT) networks is challenging current techniques. To date, a lot of network clustering approaches have been proposed to improve the performance of data collection in IoT. However, most of them focus on partitioning networks with static topologies, and thus they are not optimal in handling the case with moving objects in the networks. Moreover, to the best of our knowledge, none of them has ever considered the performance of computing in edge servers. To solve these problems, we propose a highly efficient IoT network dynamic clustering solution in edge computing using deep reinforcement learning (DRL). Our approach can both fulfill the data communication requirements from IoT networks and load-balancing requirements from edge servers, and thus provide a great opportunity for future high performance IoT data analytics. We implement our approach using a Deep Q-learning Network (DQN) model, and our preliminary experimental results show that the DQN solution can achieve higher scores in cluster partitioning compared with the current static benchmark solution.
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