Abstract

Mobile Edge Computing (MEC) has evolved into a promising technology that can relieve computing pressure on wireless devices (WDs) in the Internet of Things (IoT) by offloading computation tasks to the MEC server. Resource management and allocation are challenging because of the unpredictability of task arrival, wireless channel status and energy consumption. To address such a challenge, in this paper, we provide an energy-efficient joint resource management and allocation (ECM-RMA) policy to reduce time-averaged energy consumption in a multi-user multi-task MEC system with hybrid energy harvested WDs. We first formulate the time-averaged energy consumption minimization problem while the MEC system satisfied both the data queue stability constraint and energy queue stability constraint. To solve the stochastic optimization problem, we turn the problem into two deterministic sub-problems, which can be easily solved by convex optimization technique and linear programming technique. Correspondingly, we propose the ECM-RMA algorithm that does not require priori knowledge of stochastic processes such as channel states, data arrivals and green energy harvesting. Most importantly, the proposed algorithm achieves the energy consumption-delay trade-off as . V, as a non-negative weight, which can effectively control the energy consumption-delay performance. Finally, simulation results verify the correctness of the theoretical analysis and the effectiveness of the proposed algorithm.

Highlights

  • As an ubiquitous computer paradigm, the Internet of Things (IoT) has seen explosive growth in computationally intensive mobile applications such as autonomous driving, virtual reality, and interactive online games [1]

  • In order to improve the energy efficiency and performance of wireless devices (WDs) in an Mobile Edge Computing (MEC) system, in addition to designing an efficient computational offloading scheme, we need to consider the following issues: (i) How much transmit power should be allocated to offloading computation tasks; (ii) How long to offload tasks; and (iii) how to manage the battery of an WD to ensure the normal operation of the device? In order to solve the above problems, we focus on the joint resource management and allocation issues

  • Hi indicates that the average channel gain is determined by the geographical position of WD m and α is a random variable of a unit mean independent exponential

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Summary

Introduction

As an ubiquitous computer paradigm, the Internet of Things (IoT) has seen explosive growth in computationally intensive mobile applications such as autonomous driving, virtual reality, and interactive online games [1]. How to eliminate this bottleneck is a key issue in the research and development of modern Internet of Things technology This limitation is solved by transferring computation and storage from the resource-constrained devices to clouds. In order to improve the energy efficiency and performance of WDs in an MEC system, in addition to designing an efficient computational offloading scheme, we need to consider the following issues:. We consider a multi-user multi-task MEC system with hybrid energy harvesting WDs to investigate the joint resource management and allocation problem. Based on Lyapunov optimization theory and convex optimization theory, we use the proposed energy-efficient joint resource management and allocation algorithm (ECM-RMA) to solve the problem of minimizing energy consumption under delay guarantees. In the field of MEC, we first proposed the devices with a hybrid energy harvesting method that integrates green energy and wireless energy

Related Works
System Model
Communication Model
Task Computation Model
Mobile Edge Cloud Computing
Energy Consumption Model
Optimization Problem Formulation
Online Resource Management and Allocation Optimization in MEC
Lyapunov-Based Problem Decomposition
Transmission Optimization Problem
Battery Management Problem
Performance Analysis
The Performance of the Proposed ECM-RMA Algorithm
The Trade-Off between Energy Consumption and Delay
Simulation Results
Performance Achieved by the ECM-RMA Algorithm
Conclusions
Full Text
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