使用机器学习模型研究c波段时空信号散射的证据

I. Harun Surej, S. Karthic, G. Vigneshwara, T. Jeyashri, R. Thiruvengadathan, R. Gandhiraj, K. Pradeep Kumar, B. N. Binoy, G. S. Shanmugha Sundaram, D. S. Harish Ram
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引用次数: 2

摘要

在无线通信中,通过自由空间传播的信号受到传播介质中视距和非视距物体的加性噪声的影响。由于多径效应,这导致了大量的干扰和散射。本研究旨在识别传播通道中的这些贡献者,并根据其信号散射特性对其进行表征。采用数据驱动的建模方法代替传统的基于数学的建模。使用k -均值聚类以及其他数据解释方法来识别散点。根据信号受影响的方式,散射体可分为吸收型或反射型。在实验室条件下收集了五个使用c波段频率的独立数据集并用于研究。使用来自制造商的理想数据集作为基准。结果从实验数据集中识别出散射体,并能够在实验室条件下估计其尺寸和材料组成。
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Evidence of Scatter in C-band Spatio-temporal Signals using Machine Learning Models
Signal propagating through free space in wireless communication is subject to additive noise by line-of-sight and non-line-of-sight objects in the propagation medium. This leads to a lot of interference and scattering due to multipath effects. This research work aims to identify such contributors in the propagation channel and characterize them based on their signal scattering property. A data-driven modelling approach is used in place of the traditional math-based modelling. K-means clustering along with other data interpretation methods were used to identify the scatterers. The scatterers are either characterized as absorbing or reflecting type based on the way the signal is affected. Five independent datasets using the C-band frequency were collected under laboratory conditions and used for the study. The ideal dataset from the manufacturer was used as the benchmark. The results identified the scatterers from the experimental dataset and enabled the estimation of their dimensions and material composition in laboratory conditions.
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