Boruvka-Incremental Power Greedy Heuristic for Strong Minimum Energy Topology in Wireless Sensor Networks

B. S. Panda, B. K. Bhatta, Deepak Mishra, S. De
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引用次数: 2

Abstract

Given a set of sensors, the strong minimum energy topology (SMET) problem is to assign transmission range to each sensor node so that the sum of the transmission range for all the sensor is minimum subject to the constraint that the network is strongly connected (there is a directed path between every pair of nodes in the Network). This problem is known to be NP-hard. As this problem has lots of practical applications, several approximation algorithms and heuristics have been proposed. In this paper, we propose a new heuristic called Boruvka-incremental power greedy heuristic based on the Boruvka algorithm for the minimum spanning tree (MST) problem for solving the SMET problem. We compare the performance of the Boruvka-incremental power greedy heuristic with Kruskal-incremental power greedy heuristic and Prim-incremental power greedy heuristic. Extensive simulation results illustrate that Boruvka heuristic outperforms the Kruskal-incremental power greedy heuristic and Prim-incremental power greedy heuristic. We have also proved that apart from providing significant improvement in terms of average power savings, Boruvka incremental power greedy heuristic takes O(n) time for planar graphs as compared to O(n log n) time taken by Kruskal-incremental power greedy heuristic and O(n2) time taken by Prim-incremental power greedy heuristic, where n is the number of nodes in the network.
无线传感器网络强最小能量拓扑的boruvka -增量功率贪心启发式算法
给定一组传感器,强最小能量拓扑(SMET)问题是在网络是强连接的约束下(网络中每对节点之间都有一条有向路径),为每个传感器节点分配传输范围,使所有传感器的传输范围之和最小。这个问题被称为NP-hard。由于这个问题有很多实际应用,人们提出了几种近似算法和启发式算法。本文在最小生成树(MST)问题的Boruvka算法的基础上,提出了一种新的求解SMET问题的Boruvka-增量幂贪心启发式算法。我们比较了boruvka -增量幂贪婪启发式算法与kruskal -增量幂贪婪启发式算法和prim -增量幂贪婪启发式算法的性能。大量仿真结果表明,Boruvka启发式算法优于kruskal -增量功率贪婪启发式算法和prim -增量功率贪婪启发式算法。我们还证明,除了在平均功耗节省方面提供显著改进外,Boruvka增量功率贪婪启发式算法对平面图的处理时间为O(n),而kruskal增量功率贪婪启发式算法的处理时间为O(n log n), prim增量功率贪婪启发式算法的处理时间为O(n2),其中n为网络中的节点数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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