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Toward optimal resource scheduling for Internet of Things under imperfect CSI

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posted on 2025-08-01, 08:03 authored by L Jiao, Y Wu, J Dong, Z Jiang
The Internet of Things (IoT) increases the numberof connected devices and supports ever-growing complexity of applications. Owing to the constrained physical size, the IoT devices can significantly enhance computation capacity by offloading computation-intensive tasks to the resource-rich edge servers deployed at the base station (BS) via wireless networks. However, how to achieve optimal resource scheduling remains a challenge due to stochastic task arrivals, time-varying wireless channels and imperfect estimation of channel state information (CSI). In this paper, by virtue of the Lyapunov optimization technique, we propose the toward optimal resource scheduling algorithm under imperfect CSI (TORS) to optimize resource scheduling in an IoT environment. A convex transmit power and subchannel allocation problem in TORS is formulated. This problem is then solved via the Lagrangian dual decomposition method. We derive analytical bounds for the time-averaged system throughput and queue backlog. We show that TORS can arbitrarily approach the optimal system throughput by simply tuning an introduced control parameter β without prior knowledge of stochastic task arrivals and the CSI of wireless channels. Extensive simulation results confirm the theoretical analysis on the performance of TORS.

Funding

2016YFB1000102

61972222

National Key Researchand Development Program

National Natural Science Foundation of China

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© 2019 IEEE

Notes

This is the author accepted manuscript. The final version is available from IEEE via the DOI in this record

Journal

IEEE Internet of Things Journal

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Version

  • Accepted Manuscript

Language

en

FCD date

2019-11-21T10:47:06Z

FOA date

2019-11-28T14:58:09Z

Citation

Published online 11 November 2019

Department

  • Computer Science

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