最小化基于lora的物联网网络中的碳足迹:网关定位的机器学习视角

Francisco-Jose Alvarado-Alcon;Rafael Asorey-Cacheda;Antonio-Javier Garcia-Sanchez;Joan Garcia-Haro
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引用次数: 0

摘要

物联网(IoT)通过实现无缝连接和数据交换,能够对各个部门进行数字化转型,因此备受关注。但是,由于需要根据不同的应用程序需求定制配置,因此部署这些网络具有挑战性。迄今为止,对检查和增强与这些网络部署相关的碳足迹(CF)的关注有限。在本研究中,我们提出了一个利用机器学习技术的优化框架,通过改变所需网关的位置来最小化与物联网多跳网络部署相关的CF。此外,我们建立了我们提出的机器学习方法和整数线性规划(ILP)方法之间的直接比较。我们的研究结果表明,使用神经网络放置网关与不使用网关放置优化的网关相比,可以使简单网络的CF减少14%。对于相同的网络,ILP方法可以将CF降低16.6%,尽管它的计算成本要高出250倍以上,这对环境也有影响。此外,我们强调机器学习技术的卓越可扩展性,特别是对大型网络有利,正如我们在结束语中所讨论的那样。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Minimizing the Carbon Footprint in LoRa-Based IoT Networks: A Machine Learning Perspective on Gateway Positioning
The Internet of Things (IoT) is gaining significant attention for its ability to digitally transform various sectors by enabling seamless connectivity and data exchange. However, deploying these networks is challenging due to the need to tailor configurations to diverse application requirements. To date, there has been limited focus on examining and enhancing the carbon footprint (CF) associated with these network deployments. In this study, we present an optimization framework leveraging machine learning techniques to minimize the CF associated with IoT multi-hop network deployments by varying the placement of the required gateways. Additionally, we establish a direct comparison between our proposed machine learning method and the integer linear program (ILP) approach. Our findings reveal that placing gateways using neural networks can achieve a 14% reduction in the CF for simple networks compared to those not using optimization for gateway placement. The ILP method could reduce the CF by 16.6% for identical networks, although it incurs a computational cost more than 250 times higher, which has its own environmental impact. Furthermore, we highlight the superior scalability of machine learning techniques, particularly advantageous for larger networks, as discussed in our concluding remarks.
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CiteScore
12.60
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