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Distributed path optimisation of mobile sensor networks for AOA target localisation

机译:用于AOA目标定位的移动传感器网络的分布式路径优化

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摘要

The path optimisation problem of mobile sensor networks for arrival-of-angle (AOA) target localisation, using the consensus-based extended information filter is considered, in this study. A new idea of equipping sensors with information-driven mobility to improve the estimation accuracy with respect to a stationary target is proposed by the authors. A gradient descent method is used for mobile sensors, which are subject to geometric constraints, to choose the next optimal waypoints. The corresponding optimisation problem is solved in a distributed manner, by selecting a proper cost function for each mobile sensor. It is shown that the boundedness of the estimation error is guaranteed. Moreover, they find that the mobility of sensors does decrease the estimation error bounds compared with the static sensor networks, which is beneficial for the localisation performance. Simulation is carried out to show the effectiveness of the proposed method.
机译:在这项研究中,考虑了使用基于共识的扩展信息滤波器的角度到达(AOA)目标定位的移动传感器网络的路径优化问题。作者提出了一种新的想法,即为传感器配备信息驱动的移动性,以提高相对于固定目标的估计精度。梯度下降方法用于受几何约束的移动传感器,以选择下一个最佳航路点。通过为每个移动传感器选择适当的成本函数,可以以分布式方式解决相应的优化问题。结果表明,可以保证估计误差的有界性。此外,他们发现与静态传感器网络相比,传感器的移动性确实降低了估计误差范围,这对定位性能很有帮助。仿真表明了该方法的有效性。

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