论文标题
通过射线追踪模拟和少量测量数据,基于转移学习的收到的电源预测
Transfer Learning-Based Received Power Prediction with Ray-tracing Simulation and Small Amount of Measurement Data
论文作者
论文摘要
本文提出了一种确定性地预测城市地区接收力的方法,该方法可以通过模拟的转移学习和数据增强从少量的测量数据中学习预测模型。机器学习的最新发展,例如人工神经网络(ANN),使我们能够准确预测无线电传播和路径损失。但是,培训高性能ANN模型需要大量数据,这在实际环境中很难获得。这项工作的主要动机是使用少量的测量数据来促进准确的预测。为此,我们提出了一种基于转移学习的预测方法,并提出了数据增强。提出的方法使用射线追踪模拟生成的数据预测模型,使用仿真辅助数据增强增加数据数,然后使用增强数据进行微型模型以适合目标环境。进行了使用Wi-Fi设备的实验,结果表明,所提出的方法预测了传统方法的RMS误差的50%(或更少)接收的功率。
This paper proposes a method to predict received power in urban area deterministically, which can learn a prediction model from small amount of measurement data by a simulation-aided transfer learning and data augmentation. Recent development in machine learning such as artificial neural network (ANN) enables us to predict radio propagation and path loss accurately. However, training a high-performance ANN model requires a significant number of data, which are difficult to obtain in real environments. The main motivation for this work was to facilitate accurate prediction using small amount of measurement data. To this end, we propose a transfer learning-based prediction method with data augmentation. The proposed method pre-trains a prediction model using data generated from ray-tracing simulations, increases the number of data using simulation-assisted data augmentation, and then fine-tunes a model using the augmented data to fit the target environment. Experiments using Wi-Fi devices were conducted, and the results demonstrate that the proposed method predicts received power with 50% (or less) of the RMS error of conventional methods.