Department of Electronics and Control Engineering, Hanbat National University, Dajeon 34158, Korea.
Department of Computer Science, University of Southern California, Los Angeles, CA 90089, USA.
Sensors (Basel). 2020 Mar 30;20(7):1927. doi: 10.3390/s20071927.
Although various linear log-distance path loss models have been developed for wireless sensor networks, advanced models are required to more accurately and flexibly represent the path loss for complex environments. This paper proposes a machine learning framework for modeling path loss using a combination of three key techniques: artificial neural network (ANN)-based multi-dimensional regression, Gaussian process-based variance analysis, and principle component analysis (PCA)-aided feature selection. In general, the measured path loss dataset comprises multiple features such as distance, antenna height, etc. First, PCA is adopted to reduce the number of features of the dataset and simplify the learning model accordingly. ANN then learns the path loss structure from the dataset with reduced dimension, and Gaussian process learns the shadowing effect. Path loss data measured in a suburban area in Korea are employed. We observe that the proposed combined path loss and shadowing model is more accurate and flexible compared to the conventional linear path loss plus log-normal shadowing model.
虽然已经为无线传感器网络开发了各种线性对数距离路径损耗模型,但需要更先进的模型来更准确和灵活地表示复杂环境中的路径损耗。本文提出了一种使用三种关键技术(基于人工神经网络 (ANN) 的多维回归、基于高斯过程的方差分析和基于主成分分析 (PCA) 的特征选择)的机器学习框架来建模路径损耗。通常,测量的路径损耗数据集包含多个特征,例如距离、天线高度等。首先,采用 PCA 来减少数据集的特征数量,并相应简化学习模型。ANN 然后从降维后的数据集学习路径损耗结构,而高斯过程学习阴影效应。使用在韩国郊区测量的路径损耗数据。我们观察到,与传统的线性路径损耗加对数正态阴影模型相比,所提出的组合路径损耗和阴影模型更加准确和灵活。