利用人工神经网络进行卫星间光学无线通信系统的高效功率预测

Subhash Suman, Ayush Kumar Singh, Prakash Pareek, Jitendra K. Mishra
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引用次数: 0

摘要

卫星间光学无线通信(IsOWC)系统促进了两颗天基卫星之间的高速数据传输,因而受到全球关注。然而,由于背景光、闪烁、指向误差和光学串扰等因素,准确预测低地球轨道上的接收或输出信号功率具有挑战性。为了克服这一问题,我们提出了一种基于人工神经网络(ANN)的技术,以提高 IsOWC 系统中接收信号功率的效率。IsOWC 系统的输入特征包括传播距离、闪烁衰减、波长、指向误差和输入功率,范围分别为 1 至 25 km、0 至 6 dB、800 至 1600 nm、0 至 1 µradian 和 0 至 4.77 dBm。输出特性即接收信号功率的范围为 - 100 至 34.99 dBm。在训练之前,对基于 16 正交振幅调制的 IsOWC 系统生成的 2100 个数据集进行了探索性数据分析。此外,还对 ANN 模型进行了训练,结果与其他机器学习模型相比,平均平方误差 (MSE) 低至 4.8 × 10-6。该模型严格讨论了超参数调整对 MSE 曲线的影响。此外,还深入探讨了真实功率和 ANN 功率预测之间的散点图以及误差密度图分析。所提出的技术旨在有效预测接收信号功率,并可应用于地面通信、军事行动、5G 超高速通信、水下通信等全球互联网连接领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Efficient Power Prediction for Intersatellite Optical Wireless Communication System Using Artificial Neural Network

Efficient Power Prediction for Intersatellite Optical Wireless Communication System Using Artificial Neural Network

Intersatellite optical wireless communication (IsOWC) system has garnered global attention for facilitating high-speed data transfer between two space-based satellites. However, accurately predicting received or output signal power in a lower earth orbit trajectory is challenging due to factors such as background light, scintillation, pointing error, and optical crosstalk. To overcome this problem, a technique based on artificial neural networks (ANN) is proposed to enhance the efficiency of received signal power in the IsOWC system. The input features for an IsOWC system include propagation distance, scintillation attenuation, wavelength, pointing error, and input power, ranging from 1 to 25 km, 0 to 6 dB, 800 to 1600 nm, 0 to 1 µradian, and 0 to 4.77 dBm, respectively. The output feature i.e., received signal power, ranges from − 100 to 34.99 dBm. Before training, exploratory data analysis is performed on 2100 datasets generated by 16-quadrature amplitude modulation based IsOWC system. Furthermore, an ANN model is trained, resulting in a low mean squared error (MSE) of 4.8 × 10− 6 compared to other machine learning model. The impact of hyperparameter tuning on the MSE curve is rigorously discussed. Additionally, the scatter plot between true power and ANN power prediction, along with an error density plot analysis are thoroughly explored. The proposed technique is intended to efficiently predict the received signal power and find applications in terrestrial communication, military operations, 5G beyond communication, underwater communication, and more for global internet connectivity.

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