论文标题
使用两阶段的全局估计方案对本地化的多局延迟估计
Multiband Delay Estimation for Localization Using a Two-Stage Global Estimation Scheme
论文作者
论文摘要
基于(TOA)基于(TOA)的定位技术需要估算延迟视线(LOS)路径的延迟,已广泛用于位置吸引网络中。为了实现高准确性延迟估计,最近提出了许多基于多播的算法,这些算法利用了通道状态信息(CSI)测量值,而不是多个非连续频带。但是,据我们所知,当考虑由硬件缺陷引起的相失真因子引起的相关因子时,仍然缺乏有效的方案,因为相关的多参数估计问题包含许多本地最优值,并且现有的算法很容易被卡在“不良”本地最佳距离中。为了解决这些问题,我们提出了一种新型的两阶段全球估计(TSGE)方案,以进行多局延迟估计。在粗糙阶段,我们利用多播通道的群稀疏结构,并提出涡轮贝叶斯推理(Turbo-BI)算法,以基于粗信号模型来实现良好的初始延迟估计,该估计是通过吸收载载频率项来从原始的多体信号模型转换。与使用原始信号模型的直接相比,从粗糙信号模型得出的估计问题包含的局部最佳较少,因此可以实现更稳定的估计。然后,在精制阶段,在粗略估计结果的帮助下,我们使用粒子群优化的最高法(PSO-LS)算法进行了全局延迟估计,该算法基于精制的多频道信号模型,以利用多频段增益来进一步提高估计准确性。仿真结果表明,提出的TSGE具有比较计算复杂性可显着优于基准。
The time of arrival (TOA)-based localization techniques, which need to estimate the delay of the line-of-sight (LoS) path, have been widely employed in location-aware networks. To achieve a high-accuracy delay estimation, a number of multiband-based algorithms have been proposed recently, which exploit the channel state information (CSI) measurements over multiple non-contiguous frequency bands. However, to the best of our knowledge, there still lacks an efficient scheme that fully exploits the multiband gains when the phase distortion factors caused by hardware imperfections are considered, due to that the associated multi-parameter estimation problem contains many local optimums and the existing algorithms can easily get stuck in a "bad" local optimum. To address these issues, we propose a novel two-stage global estimation (TSGE) scheme for multiband delay estimation. In the coarse stage, we exploit the group sparsity structure of the multiband channel and propose a Turbo Bayesian inference (Turbo-BI) algorithm to achieve a good initial delay estimation based on a coarse signal model, which is transformed from the original multiband signal model by absorbing the carrier frequency terms. The estimation problem derived from the coarse signal model contains less local optimums and thus a more stable estimation can be achieved than directly using the original signal model. Then in the refined stage, with the help of coarse estimation results to narrow down the search range, we perform a global delay estimation using a particle swarm optimization-least square (PSO-LS) algorithm based on a refined multiband signal model to exploit the multiband gains to further improve the estimation accuracy. Simulation results show that the proposed TSGE significantly outperforms the benchmarks with comparative computational complexity.