论文标题
天空中的联合学习:空中空气质量传感框架与无人机群
Federated Learning in the Sky: Aerial-Ground Air Quality Sensing Framework with UAV Swarms
论文作者
论文摘要
由于空气质量会显着影响人类健康,因此准确,及时预测空气质量指数(AQI)变得越来越重要。为此,本文提出了一个新的基于联邦学习的空中空气质量传感框架,用于细度3D空气质量监测和预测。具体而言,在空中,该框架利用轻质密集的模型模型从无人驾驶飞机(UAV)拍摄的湿气特征(UAVS)的湿气特征中获得节能的端到端学习来预测AQI量表分布。此外,联邦学习框架不仅允许各种组织或机构协作学习训练有素的全球模型,以监视AQI而不会损害隐私,而且还扩大了无人机群监测的范围。对于接地传感系统,我们提出了一个基于图形卷积神经网络的长短期记忆(GC-LSTM)模型,以实现准确,实时和未来的AQI推断。 GC-LSTM模型利用地面监测站的拓扑结构来捕获历史观察数据的时空相关性,这有助于空中接地传感系统实现准确的AQI推断。通过对现实世界数据集的广泛案例研究,数值结果表明,所提出的框架可以实现准确和节能的AQI传感,而不会损害原始数据的隐私。
Due to air quality significantly affects human health, it is becoming increasingly important to accurately and timely predict the Air Quality Index (AQI). To this end, this paper proposes a new federated learning-based aerial-ground air quality sensing framework for fine-grained 3D air quality monitoring and forecasting. Specifically, in the air, this framework leverages a light-weight Dense-MobileNet model to achieve energy-efficient end-to-end learning from haze features of haze images taken by Unmanned Aerial Vehicles (UAVs) for predicting AQI scale distribution. Furthermore, the Federated Learning Framework not only allows various organizations or institutions to collaboratively learn a well-trained global model to monitor AQI without compromising privacy, but also expands the scope of UAV swarms monitoring. For ground sensing systems, we propose a Graph Convolutional neural network-based Long Short-Term Memory (GC-LSTM) model to achieve accurate, real-time and future AQI inference. The GC-LSTM model utilizes the topological structure of the ground monitoring station to capture the spatio-temporal correlation of historical observation data, which helps the aerial-ground sensing system to achieve accurate AQI inference. Through extensive case studies on a real-world dataset, numerical results show that the proposed framework can achieve accurate and energy-efficient AQI sensing without compromising the privacy of raw data.