基于室外实测数据支持的衰落信道参数化仿真

Q3 Computer Science
Azra Kapetanovic, M. Zohdy, Redhwan Mawari
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引用次数: 0

摘要

优化接收到的功率信号的估计是很重要的,因为它可以改善从蜂窝网络中的一个基站向另一个基站传输活动呼叫而不中断呼叫的过程。由于缺乏有效的估计衰落移动无线通信信道阴影功率的技术,卡尔曼滤波(KF)被用作一种有效的替代方法。在我们的研究中,进一步研究了线性二阶状态空间卡尔曼滤波的适用性。我们首先为两个基于kf的估计器创建了仿真模型,用于估计受多径噪声干扰的移动通信中的局部平均(阴影)功率。在本研究的初始阶段,大量使用了仿真来验证所提出的方法。下一个挑战是确定这些模型是否适用于真实数据。因此,在[1]中,我们提出了一种考虑实际环境条件的无线小尺度衰落信道实验表征的新技术。二维测量技术使我们能够进行室内实验并收集真实数据。然后使用这些实验的测量结果来验证两个估计器的模拟模型。基于室内实验,我们在[2]中提出了新的结果,我们得出结论,即使在施加非高斯测量噪声的信道中,基于二阶kf的估计器在预测局部阴影功率分布方面比基于一阶kf的估计器更准确。在本文中,我们将实验扩展到室外环境,以包括更高的速度,更大的距离和遥远的大型物体,如高层建筑。通过比较,观察系统在各种条件下是否能够无故障运行,证明了模型的鲁棒性,并进一步研究了该方法在优化接收信号方面的有效性。给出了室外实验结果。结果表明,二阶卡尔曼滤波器优于一阶卡尔曼滤波器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fading Channels Parametric Data Simulation Supported by Real Data from Outdoor Experiments
Optimizing the estimates of received power signals is important as it can improve the process of transferring an active call from one base station in a cellular network to another base station without any interruptions to the call. The lack of effective techniques for estimation of shadow power in fading mobile wireless communication channels motivated the use of Kalman Filtering (KF) as an effective alternative. In our research, linear second-order state space Kalman Filtering was further investigated and tested for applicability. We first created simulation models for two KF-based estimators designed to estimate local mean (shadow) power in mobile communications corrupted by multipath noise. Simulations were used extensively in the initial stage of this research to validate the proposed method. The next challenge was to determine if the models would work with real data. Therefore, in [1] we presented a new technique to experimentally characterize the wireless small-scale fading channel taking into consideration real environmental conditions. The two-dimensional measurement technique enabled us to perform indoor experiments and collect real data. Measurements from these experiments were then used to validate simulation models for both estimators. Based on the indoor experiments, we presented new results in [2], where we concluded that the second-order KF-based estimator is more accurate in predicting local shadow power profiles than the first-order KF-based estimator, even in channels with imposed non-Gaussian measurement noise. In the present paper, we extend experiments to the outdoor environment to include higher speeds, larger distances, and distant large objects, such as tall buildings. Comparison was performed to see if the system is able to operate without a failure under a variety of conditions, which demonstrates model robustness and further investigates the effectiveness of this method in optimization of the received signals. Outdoor experimental results are provided. Findings demonstrate that the second-order Kalman filter outperforms the first-order Kalman filter.
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CiteScore
3.20
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