分布式光伏系统中基于集群的数据传输方案

Dongyu Yuan, Feng Yan, Wen Wang, Lei Fang, Weiwei Xia, Lianfeng Shen
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引用次数: 0

摘要

自光伏发电行业蓬勃发展以来,如何降低配套运维系统的成本成为热门话题。为了降低系统的整体能耗和流量成本,本文提出了一种基于集群的数据传输方案。在聚类策略中,根据与智能变电站的距离选择簇头(逆变器)。对于簇头的每一个邻居节点,如果数据通过簇头传输消耗的能量少,它就会加入到簇中。该过程将迭代地运行,直到所有节点都已集群化。我们采用中国移动和中国电信的能耗模型和流量成本模型来评估所提出方案的性能。仿真结果表明,使用不同的数据包可以大大降低流量成本。最大降幅达到75%以上。能耗可降低15%左右,受逆变器密度、参数值等多种因素影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Cluster Based Data Transmission Scheme for Distributed Photovoltaic Systems
Since the prosperity of the photovoltaic power generation industry, how to reduce the cost of a matched operation and maintenance system has become a hot topic. In this paper, a cluster based data transmission scheme is proposed in order to reduce the overall energy consumption and traffic cost of the system. In the clustering strategy, a cluster head (inverter) is selected according to the distance to the smart sub station. For each neighbor node of the cluster head, it will join in the cluster if data transmission will consume less energy through the cluster head. The process will be iteratively run until all nodes have been clustered. We adopt an energy consumption model and traffic cost models of China Mobile and China Telecom to evaluate the performance of the proposed scheme. Simulation results show that traffic cost can be greatly reduced by using different data packages. The utmost reduction achieves over 75%. The energy consumption can be reduced about 15%, and it is affected by various factors including the density of the inverters and the values of parameters.
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