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引用次数: 0
摘要
准确的信号路径损耗预测模型对当前的蜂窝通信网络至关重要。最近,人们提出了许多路径损耗估算方法,以提高网络效率。然而,这些现有模型大多不包括空间数据,如土地利用/土地覆盖、地形高程、建筑物高度和地形的影响。针对这一问题,本研究提出了一种基于 GeoAI 的蜂窝通信网络路径损耗估计技术,以解决现有模型缺乏空间数据集成的问题。通过对土耳其凡城郊区不同频率的实地测量,对支持向量回归、K-近邻、随机森林和多层感知器(MLP)人工神经网络模型进行了评估。在这些模型中,具有三个隐藏层、九个输入变量、双曲正切激活函数和 Adam 优化方法的 MLP 表现最佳。在 900 MHz 频率下,MLP 的 MSE、RMSE、MAE 和 R 值分别为 0.22 dB、0.47 dB、0.46 dB 和 0.99 dB。最后,将所开发的模型与自由空间模型、COST 231 模型、爱立信模型和 SUI 模型进行比较后发现,基于 GeoAI 的路径损耗模型在预测准确性和泛化方面优于经验模型。这项研究强调了将空间数据整合到路径损耗预测中的重要性,特别是在多样化的城市和郊区环境中,以优化蜂窝通信网络。
Performance Evaluation of GeoAI-Based Approach for Path Loss Prediction in Cellular Communication Networks
Accurate signal path loss models for predictions are crucial in current cellular communication networks. Recently, numerous path loss estimation methods have been presented to improve the efficiency of networks. However, most of these existing models do not include spatial data such as land use/land cover, terrain elevation, building height, and the effect of topography. To address this issue, this study proposes a GeoAI-based technique for path loss estimation in cellular communication networks, addressing existing models’ lack of spatial data integration. Support Vector Regression, K-Nearest Neighbor, Random Forest, and multi-layer perceptron (MLP) artificial neural network models are evaluated using field measurements in an urban, suburban area in Van, Turkey, across various frequencies. Among the models, MLP with three hidden layers, nine input variables, hyperbolic tangent activation function, and Adam optimization method performs best. At 900 MHz, MLP has been observed with MSE, RMSE, MAE, and R values of 0.22 dB, 0.47 dB, 0.46 dB, and 0.99 dB, respectively. Lastly, a comparison of the developed model to the Free space, COST 231, Ericsson, and SUI models revealed that the GeoAI-based path loss models outperformed the empirical models regarding prediction accuracy and generalization. This study underscores the significance of integrating spatial data into path loss prediction, particularly in diverse urban and suburban environments, for optimizing cellular communication networks.
期刊介绍:
The Journal on Mobile Communication and Computing ...
Publishes tutorial, survey, and original research papers addressing mobile communications and computing;
Investigates theoretical, engineering, and experimental aspects of radio communications, voice, data, images, and multimedia;
Explores propagation, system models, speech and image coding, multiple access techniques, protocols, performance evaluation, radio local area networks, and networking and architectures, etc.;
98% of authors who answered a survey reported that they would definitely publish or probably publish in the journal again.
Wireless Personal Communications is an archival, peer reviewed, scientific and technical journal addressing mobile communications and computing. It investigates theoretical, engineering, and experimental aspects of radio communications, voice, data, images, and multimedia. A partial list of topics included in the journal is: propagation, system models, speech and image coding, multiple access techniques, protocols performance evaluation, radio local area networks, and networking and architectures.
In addition to the above mentioned areas, the journal also accepts papers that deal with interdisciplinary aspects of wireless communications along with: big data and analytics, business and economy, society, and the environment.
The journal features five principal types of papers: full technical papers, short papers, technical aspects of policy and standardization, letters offering new research thoughts and experimental ideas, and invited papers on important and emerging topics authored by renowned experts.