基于传感器网络的波束形成和动态空时聚类混合定位与目标跟踪

S. Phoha, N. Jacobson, D. Friedlander, R. Brooks
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引用次数: 20

摘要

用于区域监视的自组织无线传感器网络存在严重的功率、时间和处理限制,因此需要进行现场调整以节省资源并优化性能。特别是,可能有必要在集中式处理算法(如波束成形)和基于知识的分布式处理算法(如依赖于原始传感器数据的本地处理的动态时空聚类(DSTC))之间进行动态权衡。即使声源在远场,波束形成方法在估计声波到达方向方面也能达到很高的精度。因此,相对稀疏的传感器网络可以实现精确的定位。然而,当节点数量增加时,波束形成有严重的限制。在网络上传输整个时间序列需要更高数量级的能量。另一方面,DSTC方法在节点数量大的情况下工作得很好,因为集群可以在较小的时空窗口内形成。这项工作通过分析误差来源、对传感器密度的依赖、传感器几何形状、能源使用、数据处理的控制逻辑以及网络拓扑对两种算法的影响,检查了两种集中式和分布式算法的操作域。基于此分析,我们开发了混合算法,利用每种算法的操作特性来设计高性能传感器网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensor network based localization and target tracking through hybridization in the operational domains of beamforming and dynamic space-time clustering
The severe power, time and processing constraints on ad hoc wireless sensor networks for area surveillance require in-situ adaptations to conserve resources and optimize performance. In particular, it may be necessary to make dynamic tradeoffs between centralized processing algorithms, like beamforming, and knowledge based distributed processing algorithms like dynamic space-time clustering (DSTC) that rely on local processing of raw sensor data. Beamforming methods can achieve high levels of accuracy in estimating direction of arrival with a sound wave even when the source is in the far field. Hence accurate localization can be achieved with a relatively sparse sensor network. However, beamforming has severe limitations when the number of nodes increases. It requires orders of magnitude higher energy for transporting the entire time series over the network. DSTC methods, on the other hand, work well when the number of nodes is large because clusters can be formed within a smaller space-time window. This work examines the operational domains of the two centralized and distributed algorithms by analyzing sources of error, dependence on sensor density, sensor geometries, energy usage, control logic for data processing and the effects of network topology on the two algorithms. Based on this analysis, we develop hybrid algorithms that take advantage of the operational characteristics of each one in designing a high performance sensor network.
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