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Non-Line-of-Sight Mitigation via Lagrange Programming Neural Networks in TOA-Based Localization

机译:基于TOA的本地化中通过Lagrange编程神经网络进行的非视线缓解

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摘要

A common measurement model for locating a mobile source is time-of-arrival (TOA). However, when non-line-of-sight (NLOS) bias error exists, the error can seriously degrade the estimation accuracy. This paper formulates the problem of estimating a mobile source position under the NLOS situation as a nonlinear constrained optimization problem. Afterwards, we apply the concept of Lagrange programming neural networks (LPNNs) to solve the problem. In order to improve the stability at the equilibrium point, we add an augmented term into the LPNN objective function. Simulation results show that the proposed method provides much robust estimation performance.
机译:定位移动源的常见测量模型是到达时间(TOA)。但是,当存在非视线(NLOS)偏差误差时,该误差会严重降低估计精度。本文提出了在非视距情况下估计移动源位置的问题,它是一个非线性约束优化问题。之后,我们应用拉格朗日编程神经网络(LPNN)的概念来解决该问题。为了提高平衡点的稳定性,我们在LPNN目标函数中添加了一个扩展项。仿真结果表明,该方法具有很好的估计性能。

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