Mobile Sensor Location Optimization U sing Support Vector Machines with Error-Correcting Output Codes

Sharif H. R. Khalil, N. Namazi, Ouyang Feng
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Abstract

This work is concerned with the introduction and development of a technique to optimally position a Mobile Sensor (MS) in a location with adequate side lobe Radio Frequency (RF) signal power. The proposed method involves the generation of a database (DB) of side lobe power distribution for different azimuth angles of the downlink transmitted signal. The generated DB is subsequently used to train and test a Machine Learning (ML) multiclass classifier, as well as two distinct Convolution Neural Networks (CNN), to identify the desired MS location. Simulation experiments are performed which indicate a maximum accuracy of 99.25%, 96.56% and 96.10% for 8 different receiver locations.
基于纠错输出码的支持向量机的移动传感器定位优化
这项工作涉及一种技术的引入和发展,该技术可将移动传感器(MS)最佳地定位在具有足够的旁瓣射频(RF)信号功率的位置。所提出的方法涉及到对下行传输信号的不同方位角生成旁瓣功率分布数据库(DB)。生成的数据库随后用于训练和测试机器学习(ML)多类分类器,以及两个不同的卷积神经网络(CNN),以识别所需的MS位置。仿真实验表明,在8个不同的接收位置下,该方法的最大精度分别为99.25%、96.56%和96.10%。
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