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Solving energy issues for sweep coverage in wireless sensor networks

机译:解决无线传感器网络中扫描覆盖的能量问题

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Sweep coverage provides solutions for the applications in wireless sensor networks, where periodic monitoring is sufficient instead of continuous monitoring. The objective of the sweep coverage problem is to minimize the number of sensors required in order to guarantee sweep coverage for a given set of points of interest on a plane. Instead of using only mobile sensors for sweep coverage, use of both static and mobile sensors can be more effective in terms of energy utilization. In this paper, we introduce two variations in sweep coverage problem, where energy consumption by the sensors is taken into consideration. First, an energy efficient sweep coverage problem is proposed, where the objective is to minimize energy consumption by a set of sensors (mobile and/or static) with guaranteed sweep coverage. We prove that the problem is NP-hard and cannot be approximated within a factor of 2. An 8-approximation algorithm is proposed to solve the problem. A 2-approximation algorithm is also proposed for a special case. Second, an energy restricted sweep coverage problem is proposed, where the objective is to find the minimum number of mobile sensors to guarantee sweep coverage subject to the condition that the energy consumption by a mobile sensor in a given time period is bounded. We propose a (5 + 2/alpha)-approximation algorithm to solve this NP-hard problem. (C) 2016 Elsevier B.V. All rights reserved.
机译:扫描覆盖范围为无线传感器网络中的应用提供了解决方案,其中周期性监控是足够的而不是连续监控。扫描覆盖问题的目的是最小化所需的传感器数量,以保证在平面上给定的一组兴趣点集的扫描覆盖。而不是仅使用移动传感器进行扫描覆盖,而是在能量利用方面使用静态和移动传感器的使用可能更有效。在本文中,我们介绍了扫描覆盖问题的两个变化,其中考虑了传感器的能量消耗。首先,提出了一种节能扫描覆盖问题,其中目标是通过具有保证扫描覆盖的一组传感器(移动和/或静态)来最小化能量消耗。我们证明问题是NP - 硬,不能在2倍的时间内近似。提出了一个8近似算法来解决问题。还提出了一种特殊情况的2近似算法。其次,提出了一种能量限制扫描覆盖问题,其中目的是找到最小数量的移动传感器,以保证受到在给定时间段中的移动传感器的能量消耗的条件的扫描覆盖。我们提出了一种(5 + 2 / alpha)的估计算法来解决这个NP难题。 (c)2016年Elsevier B.v.保留所有权利。

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