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A Fingerprint Localization Method in Collocated Massive MIMO-OFDM Systems Using Clustering and Gaussian Process Regression

机译:使用聚类和高斯工艺回归配套巨大MIMO-OFDM系统的指纹定位方法

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Localization has been a notable feature in wireless communications due to the increasing demand for location information. Fingerprinting-based (FP) localization methods are promising for rich scattering environments due to their high reliability and accuracy. The Gaussian process regression (GPR) method could potentially be used as an FP-based localization method to facilitate localization and provide high accuracy. However, it is limited by high complexity, especially in a large-scale environment. In this paper, we propose an FP-based localization method in collocated massive multiple-input multiple-output (MIMO) orthogonal frequency division multiplexing (OFDM) systems using the affinity propagation clustering (APC) algorithm and Gaussian process regression (GPR) to estimate the user’s location. Fingerprints are extracted based on instantaneous channel state information (CSI) by taking full advantage of the high resolution in the angle and delay domains. Then, the training fingerprints are clustered using the (APC) algorithm to reduce matching complexity and computational complexity. Finally, the data distribution within each cluster is accurately modeled using GPR to provide excellent support for further localization. Simulation studies reveal that the proposed method improves localization performance significantly by reducing the location estimation error. Additionally, it reduces the matching complexity and computational complexity.
机译:由于对位置信息的需求不断增加,本地化在无线通信中是一个值得注意的特征。由于其高可靠性和准确性,指纹识别的(FP)本地化方法是丰富的散射环境。高斯过程回归(GPR)方法可能被用作基于FP的定位方法,以便于本地化并提供高精度。然而,它受高复杂性的限制,特别是在大规模环境中。在本文中,我们在使用亲和传播聚类(APC)算法和高斯进程回归(GPR)来估计的基于FP的巨大多输入多输出(MIMO)正交频分复用(OFDM)系统中的基于FP的定位方法。用户的位置。通过在角度和延迟域中充分利用高分辨率来基于瞬时信道状态信息(CSI)来提取指纹。然后,使用(APC)算法聚集训练指纹以降低匹配的复杂性和计算复杂性。最后,使用GPR准确地建模每个群集内的数据分布,以提供对进一步定位的优异支持。仿真研究表明,该方法通过减少位置估计误差显着提高了本地化性能。此外,它降低了匹配的复杂性和计算复杂性。

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