Data Selection for Maximum Coverage in Sensor Networks with Cost Constraints

Scott T. Rager, E. Ciftcioglu, T. L. Porta, Alice Leung, William Dron, R. Ramanathan, J. P. Hancock
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引用次数: 1

Abstract

In many deployments of wireless sensor networks (WSNs), the primary goal is to collect and deliver data from many nodes to a data sink. This goal must be met while considering limited resources, such as battery life, in the wireless nodes. In this work, we propose considering the content of generated data to make intelligent data and node selection decisions. We formally present the problem of maximizing coverage of this collected data while restricting individual node costs to remain within a given budget and provide an algorithm that provides the optimal solution. Next we consider the related problem of finding the optimal long-term average coverage subject to average cost constraints and give its solution, which uses Lyapunov Optimization techniques. For real world implementations, we also provide computationally feasible approximation algorithms of both problems along with proven bounds on their performance, including a novel technique that uses virtual queues for the average maximum coverage problem. Finally, we provide simulation results of all proposed algorithms. These results not only demonstrate the benefits of considering data content in scheduling, but also show the advantages from using the long-term average solution and the near-optimal performance of our greedy virtual queue approximation algorithm.
成本约束下传感器网络最大覆盖的数据选择
在许多无线传感器网络(wsn)的部署中,主要目标是从许多节点收集数据并将数据传递到数据接收器。这一目标必须在考虑无线节点有限资源(如电池寿命)的情况下实现。在这项工作中,我们提出考虑生成数据的内容来做出智能的数据和节点选择决策。我们正式提出了在限制单个节点成本保持在给定预算范围内的同时最大化收集数据的覆盖范围的问题,并提供了提供最佳解决方案的算法。接下来,我们考虑了在平均成本约束下寻找最优长期平均覆盖率的相关问题,并给出了使用李雅普诺夫优化技术的解决方案。对于现实世界的实现,我们还提供了这两个问题的计算上可行的近似算法,以及已证明的性能界限,包括一种使用虚拟队列解决平均最大覆盖问题的新技术。最后,我们给出了所有算法的仿真结果。这些结果不仅证明了在调度中考虑数据内容的好处,而且还显示了使用长期平均解决方案和我们的贪婪虚拟队列近似算法的接近最优性能的优势。
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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