Balanced Tree Based Data Collection Algorithm in Smart Grid

Cheng Zhong, Hang Su, Yifan Ding, Qing-tao Zeng, Xiaochun Jia
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Abstract

In smart grid, one of the important issues that should be solved is how to establish a reasonable and efficient data collection routing mechanism to adapt to the characteristics of smart grid. Compared with traditional routing algorithms a different point is that the major risk of power communication data collection is not sudden congestion caused by bursty traffic, but too much data streams converged at critical nodes. To solve this problem, this paper proposes a routing algorithm based on balanced tree to overcome network congestion, thereby ensuring the reliability of data collecting. First, the algorithm has established a mathematical model for power communication network. The routing metric model that constituted by queue length and buffer capacity of network nodes, together with the balanced tree algorithm, are used to establish routing algorithm. At the end, the difference between the two algorithms were compared in the MATLAB environment. The experimental results show that RA-DBMM algorithm can effectively solve the problem of data congestion problems, so as to improve reliability and throughput of the electric power communication data acquisition network.
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基于平衡树的智能电网数据采集算法
在智能电网中,如何建立合理高效的数据采集路由机制以适应智能电网的特点是需要解决的重要问题之一。与传统路由算法不同的是,电力通信数据采集的主要风险不是突发流量引起的突发拥塞,而是在关键节点上汇聚了过多的数据流。针对这一问题,本文提出了一种基于均衡树的路由算法来克服网络拥塞,从而保证数据采集的可靠性。首先,该算法建立了电力通信网络的数学模型。采用由网络节点的队列长度和缓冲容量构成的路由度量模型,结合平衡树算法建立路由算法。最后,在MATLAB环境下比较了两种算法的差异。实验结果表明,RA-DBMM算法可以有效地解决数据拥塞问题,从而提高电力通信数据采集网络的可靠性和吞吐量。
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