基于环境变量的传播路径损耗模型

S. Bolli
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引用次数: 2

摘要

我们开发了一个包含环境变量的路径损失模型。我们拍摄了海得拉巴、孟买、金奈、新德里4个城市的大尺寸二维卫星图像,然后将大的二维图像分成许多小图像。然后,我们使用最大似然算法对每个较小的图像进行图像分割。分割将图像分割成由具有相同质量的像素组成的独立区域。之后,我们分别基于模糊逻辑、人工神经网络(ANN)和自适应神经模糊推理系统(ANFIS)开发了三种不同的11输入路径损失模型。这三种路径损耗模型的输入参数分别为:%建筑物、%道路、%平原、%水、%树木、发射机地形高度、接收机地形高度、接收机与发射机距离、平均杂波高度、发射机频率、发射机高度。以上三种模型的输出都是路径损失。我们在四个城市通过不同路线的驾驶测试中获得了接收机功率水平数据。我们将每条路线的测量路径损失值与ANN(带图像分割)、ANFIS(带图像分割)、FCM(带图像分割)、ANFIS(不带图像分割)和经验路径损失模型获得的预测值进行了比较。我们用预测和测量的路径损耗值之间的RMSE(均方根误差)来测量每个路径损耗模型的精度。本文发现ANFIS(带图像分割)路径损耗模型的RMSE为2.16 dB,是所有考虑的路径损耗模型中RMSE最低的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Propagation Path loss model based on Environmental Variables
We have developed a path-loss model that includes environmental variables. We take a sizeable 2-dimensional satellite image of 4 cities, namely Hyderabad, Mumbai, Chennai, New Delhi, and then divide the large 2d image into many smaller images. Then we perform image segmentation using the Maximum likelihood algorithm on each smaller image. Segmentation separates the image into separate areas comprising of pixels with identical qualities. After that, we develop three different 11 input path loss models based on Fuzzy logic, Artificial Neural Network (ANN) and Adaptive Neuro-Fuzzy Inference System (ANFIS), respectively. Input Parameters to all these three path loss models were %building, %road, %plain, %water, %trees, transmitter terrain height, receiver terrain height, the distance between receiver and transmitter, average clutter height, transmitter frequency, and transmitter height. The output of all the above three models is a path loss. We acquired receiver power levels data in a driving test through different routes in all four cities. We compared measured path-loss values for each route with the predicted values obtained with ANN(with image segmentation), ANFIS(with image segmentation), FCM(with image segmentation), ANFIS(without image segmentation), and empirical path loss models. We measured each path-loss model’s accuracy with RMSE (root mean square error) obtained between the predicted & measured path loss values. This paper found that ANFIS(with image segmentation) path-loss model has an RMSE of 2.16 dB, the lowest RMSE among all the considered path-loss models.
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