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动态移动自组织网络的高能效混合自适应聚类
Energy-Efficient Hybrid Adaptive Clustering for Dynamic MANETs
| 作者 | Kudret Yilmaz · Resul Kara · Ferzan Katircioglu |
| 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 |
| 相关度评分 | ★★★★★ 5.0 / 5.0 |
| 关键词 | 移动自组织网络 混合自适应聚类算法 簇头 能量效率 网络寿命 |
语言:
中文摘要
移动自组织网络是无线移动节点网络,节点随机移动且无集中管理运行。本文提出两阶段混合自适应聚类算法HACADM,提升网络性能。第一阶段采用加权聚类算法选择最优簇头,通过引力搜索算法优化节点度、邻域距离、电池功率和移动性。第二阶段使用增强型DBSCAN无监督学习方法执行聚类,识别成员节点和选定簇头的角色。该方法还选择网关节点进行簇间通信,降低簇头负载并增强簇稳定性。实验结果显示,HACADM相比现有方法剩余能量提升8%-46%,显著延长网络寿命并保持高性能。
English Abstract
Mobile ad hoc network (MANET) is a wireless, mobile node network in which the nodes move randomly and operate without centralized management. In MANETs, the network structure increases the energy consumption of the nodes, which shortens the network lifetime and affects packet transmission. The process of clustering in MANETs (Mobile Ad-hoc Network) can be achieved through the division of the network into virtual groups, known as clusters. The Cluster Head (CH) of each cluster is in charge of data transmission within the cluster. In this study, a two-stage Hybrid Adaptive Clustering Algorithm for Dynamics MANETs (HACADM) is proposed to improve the network performance in MANETs. In the first stage, based on the Weighted Clustering Algorithm (WCA) for selecting optimal CHs, criteria such as node degree, neighborhood distance, power of battery and mobility are optimized using the Gravity Search Algorithm (GSA). In the second phase, the clustering is executed by identifying the member nodes and their roles of the selected CHs using the Enhanced Density Based Spatial Clustering of Applications with Noise (Enhanced-DBSCAN) algorithm, which is one of the unsupervised learning methods. Moreover, this approach serves to reduce the load on the CHs and enhance the stability of the cluster by selecting gateway nodes for inter-cluster communication. This study represents a significant step towards optimizing energy efficiency and extending network lifetime by enhancing the adaptability of clustering processes in MANETs under dynamic network conditions. The proposed HACADM method has the potential to enhance the performance of MANETs by ensuring a more balanced load distribution compared to existing clustering approaches. The HACADM method was compared with the EE-WCA, E-MAVMMF, TSDR and MORS-ASO methods using critical performance metrics such as remaining energy, end-to-end delay, packet delivery ratio and throughput. For example, experimental results on remaining energy show that the average energy consumption improvements of HACADM compared with EE-WCA, E-MAVMMF, TSDR and MORS-ASO are 46.38%, 18.35%, 13.08% and 8.33% respectively. Other Performance evaluation results also show that HACADM significantly contributes to the effective management of MANETs, extends the network lifetime and maintains high performance under dynamic network conditions.
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SunView 深度解读
该自组织网络聚类技术对阳光电源分布式光伏储能通信具有参考价值。阳光大型光伏电站采用分布式组串逆变器架构,需要高效无线通信网络实现设备协同。该研究的能效优化和动态簇头选择策略可应用于阳光iSolarCloud平台的设备通信协议,降低通信功耗,提升分布式储能系统的协调控制能力。结合阳光ST储能变流器的分布式架构,该技术可优化电站级能量管理系统通信效率,支持大规模设备联网和实时数据采集。