Paulo F. C. Barbosa, Bruna A. da Silva, Cleber Zanchettin, Renato M. de Moraes
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引用次数: 0
摘要
用于优化无线通信系统能效的传统方法采用了介质访问控制(MAC)协议,这些协议在复杂的功能下运行,需要很高的计算成本来优化有限的参数。此外,这些方法无法在不同的协议下工作,这些协议涉及学习和调整与现有问题(如安全性、容错性和人为干扰)相关的设备规格,这使得它们在实际系统中的实施不切实际;这种限制主要适用于具有高节点可扩展性的网络。本文针对这一问题提出了一种利用机器学习实现节能的新方法。该方法建议将多种功耗控制算法、CSMA/CA 或槽式 ALOHA(ALOHA 的一种变体)、WiFi 中使用的基准 MAC 协议以及 LoRaWAN 技术的运行信息结合起来,创建一个优化解决方案数据库,作为神经网络的训练基础,该网络能够同时学习所有协议的行为,并创建一个统一的自适应能量优化模型,该模型考虑了不同设备和协议的多个物理(PHY)和 MAC 层变量。所提出的方法同时提出了优化不同协议能量降低算法的解决方案,接近或提高了技术性能,节省了 97.6% 的 CPU 计算量和 113,322,733% 的搜索相同解决方案的处理时间。这项工作的主要贡献在于提出了一种基于机器学习的适应性多协议方法,它能管理无线网络中插槽式 ALOHA 和 CSMA/CA 基准协议的资源。此外,它还通过机器学习促进多目标优化,以提高实际网络的能效。它创建了一个新的智能系统,可促进多种 MAC 协议的高效通信,并考虑设备的处理能力限制。这项工作还表明,当最优参数无法用数学方法映射时,神经网络可以近似和优化精确函数。
A multi-protocol energy optimization method for an adaptable wireless MAC system through machine learning
The traditional methods used to optimize energy efficiency in wireless communication systems employ medium access control (MAC) protocols that operate under complex functions that require a high computational cost to optimize a limited number of parameters. Furthermore, the inability of these methods to work under different protocols that involve learning and adapting the device specifications associated with existing problems, such as security, error tolerance, and human interference, makes their implementation in real systems impractical; this limitation mainly applies to networks with high node scalability. This paper presents a novel approach to this problem using machine learning to attain energy savings. The method proposes combining operating information from multiple power consumption control algorithms, CSMA/CA or slotted ALOHA (a variant of ALOHA), benchmark MAC protocols used in WiFi, and LoRaWAN technologies, creating a database of optimized solutions, which serves as a training base for a neural network capable of learning the behavior of all protocols simultaneously and creating a unified self-adaptive energy optimization model that considers multiple physical (PHY) and MAC layer variables for different devices and protocols. The proposed approach simultaneously presents solutions that optimize the energy reduction algorithms for different protocols, approaching or improving the performance of the techniques, saving 97.6% in CPU computation and 113,322,733% of the processing time in the search for the same solutions. The main contribution of this work is the proposal of an adaptable multi-protocol approach based on machine learning, which manages resources in slotted ALOHA and CSMA/CA benchmark protocols for wireless networks. Furthermore, it facilitates multi-objective optimization via machine learning for energy efficiency in real networks. It creates a new intelligent system that promotes efficient communication for multiple MAC protocols and considers the device’s processing capacity limitation. This work also shows that a neural network can approximate and optimize exact functions when the optimal parameters cannot be mapped mathematically.
期刊介绍:
Annals of Telecommunications is an international journal publishing original peer-reviewed papers in the field of telecommunications. It covers all the essential branches of modern telecommunications, ranging from digital communications to communication networks and the internet, to software, protocols and services, uses and economics. This large spectrum of topics accounts for the rapid convergence through telecommunications of the underlying technologies in computers, communications, content management towards the emergence of the information and knowledge society. As a consequence, the Journal provides a medium for exchanging research results and technological achievements accomplished by the European and international scientific community from academia and industry.