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A Robust Wireless Sensor Network Localization Algorithm in Mixed LOS/NLOS Scenario

机译:LOS / NLOS混合场景下的鲁棒无线传感器网络定位算法

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摘要

Localization algorithms based on received signal strength indication (RSSI) are widely used in the field of target localization due to its advantages of convenient application and independent from hardware devices. Unfortunately, the RSSI values are susceptible to fluctuate under the influence of non-line-of-sight (NLOS) in indoor space. Existing algorithms often produce unreliable estimated distances, leading to low accuracy and low effectiveness in indoor target localization. Moreover, these approaches require extra prior knowledge about the propagation model. As such, we focus on the problem of localization in mixed LOS/NLOS scenario and propose a novel localization algorithm: Gaussian mixed model based non-metric Multidimensional (GMDS). In GMDS, the RSSI is estimated using a Gaussian mixed model (GMM). The dissimilarity matrix is built to generate relative coordinates of nodes by a multi-dimensional scaling (MDS) approach. Finally, based on the anchor nodes’ actual coordinates and target’s relative coordinates, the target’s actual coordinates can be computed via coordinate transformation. Our algorithm could perform localization estimation well without being provided with prior knowledge. The experimental verification shows that GMDS effectively reduces NLOS error and is of higher accuracy in indoor mixed LOS/NLOS localization and still remains effective when we extend single NLOS to multiple NLOS.
机译:基于接收信号强度指示(RSSI)的定位算法由于具有应用方便,独立于硬件设备的优点而被广泛应用于目标定位领域。不幸的是,RSSI值在室内空间的非视线(NLOS)的影响下容易波动。现有算法通常会产生不可靠的估计距离,从而导致室内目标定位的准确性较低和有效性较低。此外,这些方法需要有关传播模型的额外先验知识。因此,我们关注混合LOS / NLOS场景中的定位问题,并提出了一种新颖的定位算法:基于高斯混合模型的非度量多维(GMDS)。在GMDS中,使用高斯混合模型(GMM)估算RSSI。建立差异矩阵以通过多维缩放(MDS)方法生成节点的相对坐标。最后,根据锚节点的实际坐标和目标的相对坐标,可以通过坐标转换来计算目标的实际坐标。我们的算法可以在不提供先验知识的情况下很好地执行定位估计。实验验证表明,GMDS有效降低了NLOS误差,在室内混合LOS / NLOS定位中具有更高的精度,并且当我们将单个NLOS扩展到多个NLOS时仍然有效。

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