网络传感器管理跟踪和定位

A. Hero, C. Kreucher
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引用次数: 12

摘要

本文研究了大型敏捷传感器网络的传感器管理问题。传感器管理是指响应不断变化的环境而动态地重新分配敏捷传感器的过程。传感器可以有多种灵活的方式,例如,重新定位、指向天线、选择传感模式或波形的能力。大型网络中传感器管理的目标是动态地选择单个传感器的行为,以最大化整个网络的效用。多平台环境下的传感器管理是一个具有挑战性的问题,原因如下。首先,表征环境所需的状态空间通常是非常高维的,并且很难用参数形式表示。其次,网络必须同时解决一些相互竞争的目标。第三,潜在任务的数量随着传感器的数量呈指数级增长。最后,在低通信环境中,需要分散的方法。我们提出的方法通过一种新的组合来解决这些挑战,该组合包括用于非参数密度估计的粒子滤波、用于比较动作的信息论和用于计算可追溯性的物理模拟。在一个实际的监视应用中,通过仿真说明了该方法的有效性,其中未知数量的地面目标需要由移动传感器网络检测和跟踪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network sensor management for tracking and localization
This paper addresses the problem of sensor management for a large network of agile sensors. Sensor management refers to the process of dynamically retasking agile sensors in response to an evolving environment. Sensors may be agile in a variety of ways, e.g., the ability to reposition, point an antenna, choose sensing mode, or waveform. The goal of sensor management in a large network is to choose actions for individual sensors dynamically so as to maximize overall network utility. Sensor management in the multiplatform setting is a challenging problem for several reasons. First, the state space required to characterize an environment is typically of very high dimension and poorly represented by a parametric form. Second, the network must simultaneously address a number of competing goals. Third, the number of potential taskings grows exponentially with the number of sensors. Finally, in low communication environments, decentralized methods are required. The approach we present addresses these challenges through a novel combination of particle filtering for nonparametric density estimation, information theory for comparing actions, and physicomimetics for computational tractability. The efficacy of the method is illustrated in a realistic surveillance application by simulation, where an unknown number of ground targets are to be detected and tracked by a network of mobile sensors.
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