Energy-Efficient Joint Optimization of Sensing and Computation in MEC-Assisted IoT Using Mean-Field Game | IEEE Journals & Magazine | IEEE Xplore

Energy-Efficient Joint Optimization of Sensing and Computation in MEC-Assisted IoT Using Mean-Field Game


Abstract:

Integrating multiaccess edge computing (MEC) with the Internet of Things (IoT) is able to provide IoT sufficient computational resources in addition to its capabilities o...Show More

Abstract:

Integrating multiaccess edge computing (MEC) with the Internet of Things (IoT) is able to provide IoT sufficient computational resources in addition to its capabilities of sensing and communication. In this article, given the limited computational and energy resources, IoT devices (IDs) are allowed to offload computational tasks to MEC servers for execution. However, as the number of IDs increases dramatically, jointly optimizing the usage of sensing, communication, and computational resources becomes challenging due to the exponential growth in interactions among the IDs. In this article, we address the energy-efficient joint optimization problem for sensing and computation in the MEC-assisted IoT system, aiming to ensure the freshness of the status update and minimize the energy consumption of IDs. To reduce the computation complexity, we introduce the concept of the general mean-field N-player Markov game (GMFG), and reformulate it as a mean-field game (MFG) with teams, leveraging the network structure of states. Considering the advantages of reinforcement learning (RL) for solving dynamic problems, we propose an MFG-based actor-critic algorithm (MFGAC) to minimize the long-term average system cost. Through extensive simulations, we demonstrate that the proposed method is effective and can outperform other schemes under different scenarios.
Published in: IEEE Internet of Things Journal ( Volume: 11, Issue: 23, 01 December 2024)
Page(s): 37857 - 37871
Date of Publication: 14 August 2024

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I. Introduction

Recently, the research on Internet of Things (IoT) applications has received increasing interests, driven by the advancements in computation, communication, and sensing technologies [1], [2], [3] and the proliferation of IoT devices (IDs). To facilitate various IoT applications, including traffic surveillance, autonomous driving, and environmental monitoring, it is necessary to sense a variety of valid real-time information about the physical environment and transform it into state updates for future system operations. Meanwhile, as a metric for measuring the data freshness in IoT, the Age of Information (AoI), which assesses the currency of data within IoT applications, has been extensively studied and is integral to the functioning of communication systems [4], [5], [6], [7], [8], [9], [10]. However, the processing of sensory data is often constrained by the computational and temporal limitations inherent in IDs, which typically have restricted computing power, storage capability and battery capacity. To address these constraints, the emergence of multiaccess edge computing (MEC) has provided a potential solution by bringing networking, storage and computation capabilities closer to the network edge [9], [11], [12], [13]. By leveraging the computational resources of MEC servers, IDs can offload their computational tasks for efficient execution. Nonetheless, the increasing number of devices within the next-generation IoT system has resulted in an upsurge of interactions, both among devices and between devices and MEC servers [7]. As a result, the joint optimization of sensing and computation strategies becomes extremely complex, presenting a significant challenge in MEC-assisted IoT systems.

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