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Sensor-Aided EMF Exposure Assessments in an Urban Environment Using Artificial Neural Networks

机译:使用人工神经网络的城市环境中的传感器辅助EMF暴露评估

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摘要

This paper studies the time and space mapping of the electromagnetic field (EMF) exposure induced by cellular base station antennas (BSA) using artificial neural networks (ANN). The reconstructed EMF exposure map (EEM) in urban environment is obtained by using data from EMF sensor networks, drive testing and information accessible in a public database, e.g., locations and orientations of BSA. The performance of EEM is compared with Exposure Reference Map (ERM) based on simulations, in which parametric path loss models are used to reflect the complexity of urban cities. Then, a new hybrid ANN, which has the advantage of sorting and utilizing inputs from simulations efficiently, is proposed. Using both hybrid ANN and conventional regression ANN, the EEM is reconstructed and compared to the ERM first by the reconstruction approach considering only EMF exposure assessed from sensor networks, where the required number of sensors towards good reconstruction is explored; then, a new reconstruction approach using the sensors information combined with EMF along few streets from drive testing. Both reconstruction approaches use simulations to mimic measurements. The influence of city architecture on EMF exposure reconstruction is analyzed and the addition of noise is considered to test the robustness of ANN as well.
机译:本文研究了使用人工神经网络(ANN)的蜂窝基站天线(BSA)引起的电磁场(EMF)暴露的时间和空间映射。通过使用来自EMF传感器网络的数据,驾驶测试和公共数据库中可访问的信息(例如BSA的位置和方向)来获得城市环境中的重构EMF暴露图(EEM)。在模拟的基础上,将EEM的性能与暴露参考图(ERM)进行了比较,其中使用参数路径损耗模型来反映城市的复杂性。然后,提出了一种新的混合人工神经网络,该混合神经网络具有对模拟输入进行有效排序和利用的优势。同时使用混合人工神经网络和常规回归人工神经网络,通过仅考虑从传感器网络评估的EMF暴露量的EMF暴露量,即可通过重建方法重建EEM,并将其与ERM进行比较;然后,采用一种新的重建方法,即在行驶测试的几条街道上将传感器信息与EMF相结合。两种重建方法都使用模拟来模拟测量。分析了城市建筑对电动势暴露重建的影响,并考虑了噪声的添加以测试人工神经网络的鲁棒性。

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