Fairness-driven link scheduling approach for heterogeneous gateways for digital twin enabled industry 4.0

Suvarna Patil , Mandeep Kaur , Katarina Rogulj
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引用次数: 4

Abstract

The advent of Industry 4.0 has brought with it the integration of digital twin technology, which has enabled businesses to develop a virtual replica of their physical assets. This technology allows businesses to optimize their operations and improve their overall efficiency. However, the successful implementation of digital twin technology in Industry 4.0 heavily relies on the effective utilization of gateways. A significant challenge in gateway utilization is the fair allocation of resources, particularly in heterogeneous environments where gateways have different capabilities. Digital Twin is helping Industry 4.0 vision by connecting the authorized people to the exact data and processes to protect the data/assets from unauthorized access. It is accomplished by connecting sensing devices using a unique addressing system and transmitting their combined data to the Internet of Things (IoT) cloud. Massive volumes of heterogeneous data have resulted from the rapid growth of IoT applications and services. As a result, evaluation of data which affects the Digital Twin enabled industry is studied in this article which focuses on data traffic generated from different Industry 4.0 applications and protection of data along with the industry assets is looked by Digital Twin technology. IoT gateways are currently used to connect the devices from various technologies to the Digital Twins. In such networks, sudden increase in demand of IoT gateways will increase with the increase in IoT devices and the operational cost will also be increased. In the proposed system, low-cost specific gateways are proposed to minimize cost and maximize network performance for protecting assets of smart city through Digital Twin technology. In order to accomplish effective resource allocation in a Digital Twin based infrastructure, data transmission fairness at every gateway is accomplished in an IIoT network by considering link scheduling issues. To address these issues and provide fairness in heterogeneous networks with enhanced data transfer, two steps solution is implemented. The Long Short-Term Memory (LSTM) technique is used in the initial step of traffic prediction to assess the minimal time of prior traffic conditions before being applied to estimate dynamic traffic. In the second step, effective link scheduling and selection are made for each wireless technology, taking into account predicted load, gateway distance, link capacity, and estimated time. More data is transmitted at maximum capacity as a result of improved data transfer fairness for all gateways and then the data is protected by Digital Twin technology. Simulated results show that our suggested strategy performs better than other approaches by obtaining maximum network throughput in Industry 4.0 to provide protective solutions using Digital Twin technology.

Index Terms – Internet of Things (IoT), Link Scheduling, Traffic Prediction, Machine Learning (ML), Industry 4.0.

面向数字孪生工业4.0的异构网关的公平驱动链路调度方法
工业4.0的出现带来了数字孪生技术的集成,使企业能够开发其实物资产的虚拟复制品。这项技术使企业能够优化运营并提高整体效率。然而,数字孪生技术在工业4.0中的成功实施在很大程度上依赖于网关的有效利用。网关利用率方面的一个重大挑战是资源的公平分配,特别是在网关具有不同功能的异构环境中。Digital Twin通过将授权人员连接到准确的数据和流程来保护数据/资产免受未经授权的访问,从而帮助实现工业4.0愿景。它是通过使用独特的寻址系统连接传感设备并将其组合数据传输到物联网(IoT)云来实现的。物联网应用和服务的快速增长带来了海量的异构数据。因此,本文研究了影响数字孪生行业的数据评估,重点关注不同工业4.0应用程序产生的数据流量,并通过数字孪生技术来保护数据和行业资产。物联网网关目前用于将各种技术的设备连接到数字双胞胎。在这样的网络中,物联网网关需求的突然增加将随着物联网设备的增加而增加,运营成本也将增加。在所提出的系统中,提出了低成本的特定网关,以最大限度地降低成本并提高网络性能,从而通过数字孪生技术保护智能城市的资产。为了在基于数字孪生的基础设施中实现有效的资源分配,通过考虑链路调度问题,在IIoT网络中实现每个网关的数据传输公平性。为了解决这些问题,并通过增强的数据传输在异构网络中提供公平性,实现了两步解决方案。长短期记忆(LSTM)技术用于交通预测的初始步骤,以在应用于估计动态交通之前评估先前交通状况的最短时间。在第二步中,考虑预测的负载、网关距离、链路容量和估计的时间,为每种无线技术进行有效的链路调度和选择。由于提高了所有网关的数据传输公平性,更多的数据以最大容量传输,然后数据受到数字孪生技术的保护。模拟结果表明,我们提出的策略比其他方法表现更好,在工业4.0中获得了最大的网络吞吐量,从而使用数字孪生技术提供保护性解决方案。索引术语——物联网(IoT)、链路调度、流量预测、机器学习(ML)、工业4.0。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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