AI-Driven Task Scheduling Strategy with Blockchain Integration for Edge Computing

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-01-19 DOI:10.1007/s10723-024-09743-9
Avishek Sinha, Samayveer Singh, Harsh K. Verma
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Abstract

In recent times, edge computing has arisen as a highly promising paradigm aimed at facilitating resource-intensive Internet of Things (IoT) applications by offering low-latency services. However, the constrained computational capabilities of the IoT nodes present considerable obstacles when it comes to efficient task-scheduling applications. In this paper, a nature-inspired coati optimization-based energy-aware task scheduling (CO-ETS) approach is proposed to address the challenge of efficiently assigning tasks to available edge devices. The proposed work incorporates a fitness function that effectively enhances task assignment optimization, leading to improved system efficiency, reduced power consumption, and enhanced system reliability. Moreover, we integrate blockchain with AI-driven task scheduling to fortify security, protect user privacy, and optimize edge computing in IoT-based environments. The blockchain-based approach ensures a secure and trusted decentralized identity management and reputation system for IoT edge networks. To validate the effectiveness of the proposed CO-ETS approach, we conduct a comparative analysis against state-of-the-art methods by considering metrics such as makespan, CPU execution time, energy consumption, and mean wait time. The proposed approach offers promising solutions to optimize task allocation, enhance system performance, and ensure secure and privacy-preserving operations in edge computing environments.

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为边缘计算整合区块链的人工智能驱动任务调度策略
近来,边缘计算已成为一种极具前景的模式,旨在通过提供低延迟服务促进资源密集型物联网(IoT)应用。然而,物联网节点受限的计算能力给高效任务调度应用带来了相当大的障碍。本文提出了一种受自然启发的基于协同优化的能量感知任务调度(CO-ETS)方法,以应对将任务高效分配给可用边缘设备的挑战。所提出的工作结合了一个拟合函数,可有效增强任务分配优化,从而提高系统效率、降低功耗并增强系统可靠性。此外,我们还将区块链与人工智能驱动的任务调度相结合,在基于物联网的环境中加强安全性、保护用户隐私并优化边缘计算。基于区块链的方法可确保为物联网边缘网络提供安全可信的去中心化身份管理和信誉系统。为了验证所提出的 CO-ETS 方法的有效性,我们通过考虑时间跨度、CPU 执行时间、能耗和平均等待时间等指标,与最先进的方法进行了比较分析。所提出的方法为优化任务分配、提高系统性能以及确保边缘计算环境中的安全和隐私保护操作提供了有前途的解决方案。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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