Federated Learning and Autonomous UAVs for Hazardous Zone Detection and AQI Prediction in IoT Environment

被引:47
作者
Chhikara, Prateek [1 ]
Tekchandani, Rajkumar [1 ]
Kumar, Neeraj [2 ,3 ,4 ]
Guizani, Mohsen [5 ]
Hassan, Mohammad Mehedi [6 ]
机构
[1] Thapar Inst Engn & Technol, Dept Comp Sci & Engn, Patiala 147004, Punjab, India
[2] Thapar Inst Engn & Technol, Patiala 147004, Punjab, India
[3] Asia Univ, Dept Comp Sci & Informat Engn, Taichung 41354, Taiwan
[4] Univ Petr & Energy Studies, Sch Comp Sci, Dehra Dun 248007, Uttarakhand, India
[5] Qatar Univ, Dept Comp Sci & Engn, Doha, Qatar
[6] King Saud Univ, Coll Comp & Informat Sci, Res Chair Pervas & Mobile Comp, Riyadh 11543, Saudi Arabia
关键词
Monitoring; Sensors; Air pollution; Pollution measurement; Atmospheric measurements; Real-time systems; Wireless sensor networks; Air quality index (AQI); federated learning (FL); particle swarm optimization (PSO); time-series analysis; unmanned aerial vehicles (UAVs); LSTM;
D O I
10.1109/JIOT.2021.3074523
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Air pollution monitoring, finding the hazardous zone, and future air quality predictions have recently become a significant issue for many researchers. With the adverse effect of low air quality on human health, it has become necessary for predicting the air quality index (AQI) accurately and on time. The unmanned aerial vehicle (UAV) can collect air quality data with high spatial and temporal resolutions. Using a fleet of UAVs could be considered a good option. In the proposed work, we implement a distributed federated learning (FL) algorithm within a UAV swarm that collects air quality data using built-in sensors. A scheme for finding the area with the highest AQI value is proposed using swarm intelligence. The collected data are then fed to a CNN-LSTM model to predict the AQI. The trained local model is sent to the central server, and the server aggregates the received models from UAVs in the swarm. A global model is created and is transmitted to the UAV swarm again in the next iteration. The proposed architecture is compared with other time-series models. The results show that the proposed model predicts AQI daily with a minimal error rate on a real-time data set from Delhi.
引用
收藏
页码:15456 / 15467
页数:12
相关论文
共 36 条
[1]   Using UAV-Based Systems to Monitor Air Pollution in Areas with Poor Accessibility [J].
Alvear, Oscar ;
Zema, Nicola Roberto ;
Natalizio, Enrico ;
Calafate, Carlos T. .
JOURNAL OF ADVANCED TRANSPORTATION, 2017,
[2]  
Andy M., 2014, EMERGENCE REMARKABLE
[3]  
Caragnano G, 2020, IEEE METROL AEROSPAC, P550, DOI [10.1109/MetroAeroSpace48742.2020.9160206, 10.1109/metroaerospace48742.2020.9160206]
[4]  
Chen M., 2020, CONVERGENCE TIME OPT
[5]   ANALYSIS OF CAPABILITY OF AIR POLLUTION MONITORING FROM AN UNMANNED AIRCRAFT [J].
Chwaleba, Augustyn ;
Olejnik, Aleksander ;
Rapacki, Tomasz ;
Tusnio, Norbert .
AVIATION, 2014, 18 (01) :13-19
[6]   AQ360: UAV-Aided Air Quality Monitoring by 360-Degree Aerial Panoramic Images in Urban Areas [J].
Gao, Jiahao ;
Hu, Zhiwen ;
Bian, Kaigui ;
Mao, Xinyu ;
Song, Lingyang .
IEEE INTERNET OF THINGS JOURNAL, 2021, 8 (01) :428-442
[7]   A Machine Learning Approach to Visual Perception of Forest Trails for Mobile Robots [J].
Giusti, Alessandro ;
Guzzi, Jerome ;
Ciresan, Dan C. ;
He, Fang-Lin ;
Rodriguez, Juan P. ;
Fontana, Flavio ;
Faessler, Matthias ;
Forster, Christian ;
Schmidhuber, Jurgen ;
Di Caro, Gianni ;
Scaramuzza, Davide ;
Gambardella, Luca M. .
IEEE ROBOTICS AND AUTOMATION LETTERS, 2016, 1 (02) :661-667
[8]   Framewise phoneme classification with bidirectional LSTM and other neural network architectures [J].
Graves, A ;
Schmidhuber, J .
NEURAL NETWORKS, 2005, 18 (5-6) :602-610
[9]   LSTM: A Search Space Odyssey [J].
Greff, Klaus ;
Srivastava, Rupesh K. ;
Koutnik, Jan ;
Steunebrink, Bas R. ;
Schmidhuber, Juergen .
IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2017, 28 (10) :2222-2232
[10]  
Grogan M, 2020, CNN LSTM PREDICTING