2019
DOI: 10.1109/tvt.2018.2890685
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Learning-Based Computation Offloading for IoT Devices With Energy Harvesting

Abstract: Internet of Things (IoT) devices can apply mobileedge computing (MEC) and energy harvesting (EH) to provide the satisfactory quality of experiences for computation intensive applications and prolong the battery lifetime. In this article, we investigate the computation offloading for IoT devices with energy harvesting in wireless networks with multiple MEC devices such as base stations and access points, each with different computation resource and radio communication capability. We propose a reinforcement lear… Show more

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Cited by 483 publications
(253 citation statements)
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“…8(d). The authors in [104] aim to design optimal offloading policy for IoT devices with energy harvesting capabilities. The system consists of multiple MEC servers, such as BSs and APs, with different capabilities in computation and communications.…”
Section: B Data and Computation Offloadingmentioning
confidence: 99%
See 1 more Smart Citation
“…8(d). The authors in [104] aim to design optimal offloading policy for IoT devices with energy harvesting capabilities. The system consists of multiple MEC servers, such as BSs and APs, with different capabilities in computation and communications.…”
Section: B Data and Computation Offloadingmentioning
confidence: 99%
“…The IoT device evaluates the reward based on the overall delay, energy consumption, the task drop loss and the data sharing gains in each time slot. Similar to [100], the authors in [104] enhance Q-learning by the hotbooting technique to save the random exploration time at the beginning of learning. The authors also propose a fast DQL offloading scheme that uses hotbooting to initialize the CNN and accelerates the learning speed.…”
Section: B Data and Computation Offloadingmentioning
confidence: 99%
“…More and more research efforts focus on dynamically managing the radio and computational resources for multi-user multi-server edge computing systems, utilizing Lyapunov optimization technologies [18] [19]. In recent years, optimizing computation offloading decisions via DQN is popular [20] [21]. It models the computation offloading problem as a Markov decision process (MBP) and maximize the long-term utility performance.…”
Section: B a Recapitulation Of Iecmentioning
confidence: 99%
“…At edge servers, Xu et al [154] proposed a post-decision state (PDS) based learning algorithm to obtain the optimal workload offloading (to the centralized cloud) policy, which minimizes the long-term system cost. Instead, at the IoT devices, Min et al [155], [156] combined PDS based learning and deep convolutional neural network (CNN) to select the optimal edge device and offloading rate.…”
Section: A Reinforcement Learning Based Communication Optimization Imentioning
confidence: 99%