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EEMLCR:基于机器学习的无线传感器网络节能聚类与路由
Energy-Efficient Machine Learning-Based Clustering and Routing for Wireless Sensor Networks
| 作者 | Muhammad Akram · Sibghat Ullah Bazai · Muhammad Imran Ghafoor · Saira Akram · Qazi Mudassar Ilyas · Abid Mehmood |
| 期刊 | IEEE Access |
| 出版日期 | 2025年1月 |
| 技术分类 | 储能系统技术 |
| 技术标签 | 储能系统 GaN器件 机器学习 |
| 相关度评分 | ★★★★ 4.0 / 5.0 |
| 关键词 | 无线传感器网络 机器学习算法 节能聚类路由 网络寿命 能量效率 |
语言:
中文摘要
无线传感器网络WSN受限于低功耗传感单元、通信约束和处理能力,需要通过聚类和路由节约能源延长生命周期。本文研究Q-learning和K-means聚类算法应用,提出EEMLCR节能机器学习聚类与路由方法。与LEACH算法及其多跳变体DMHT LEACH和EDMHT LEACH对比验证有效性。在400节点网络600轮后,EEMLCR在存活节点数、平均能耗、剩余能量和数据包接收率等关键指标上显著优于LEACH及其变体,与EECDA和CMML等最新算法相比性能相当或更优。
English Abstract
Wireless Sensor Networks (WSNs) offer a powerful technology for sensing and transmitting data across vast geographical regions. However, limitations inherent to WSNs, such as low-power sensor units, communication constraints, and limited processing capabilities, can significantly impact their lifespan. To address these limitations and enhance the energy efficiency of WSNs, it is often necessary to divide sensors into clusters and establish routing to conserve energy. Machine learning algorithms can potentially automate these processes, minimizing energy consumption and extending network lifetime. This research investigates the application of machine learning algorithms, specifically Q-learning and K-means clustering, to propose the Energy-Efficient Machine Learning-based Clustering and Routing (EEMLCR) method for WSNs. This method facilitates cluster formation and routing path selection. The proposed method is compared with the well-established LEACH algorithm and two multi-hop variants, DMHT LEACH and EDMHT LEACH to validate its effectiveness. Our experimental results demonstrate the effectiveness of EEMLCR compared to LEACH and its multi-hop variants (DMHT LEACH and EDMHT LEACH). After 600 rounds in networks comprising 400 nodes, EEMLCR showed significant improvements in key performance metrics. These include increased alive nodes, reduced average energy consumption, higher remaining energy levels, and improved packet reception. Additionally, we compared EEMLCR with recent state-of-the-art algorithms such as EECDA and CMML, where our method demonstrated comparable or superior performance in terms of network lifetime and energy efficiency. By optimizing clustering and routing strategies, WSNs can reduce energy consumption, leading to more efficient utilization of the limited energy resources available to sensor nodes. The primary objective of this research is to contribute to the development of energy-efficient WSNs by leveraging machine learning algorithms for data routing and the cluster-based organization of sensor nodes.
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SunView 深度解读
该无线传感器网络节能技术对阳光电源分布式光伏监控系统有应用价值。阳光户用光伏系统中大量传感器节点需要低功耗通信和数据采集。EEMLCR聚类路由算法可优化阳光监控设备间通信拓扑,延长电池供电传感器寿命。该技术结合阳光智能运维系统,可实现大规模分布式电站的高效数据采集和传输,降低通信能耗和维护成本,提升系统可靠性和经济性。