Fine grained analysis method for unmanned aerial vehicle measurement based on laser-based light scattering particle sensing

被引:0
作者
Jia, Xutao [1 ]
Song, Tianhong [1 ]
Liu, Guang [1 ]
机构
[1] Qinhuangdao Tianda Environm Res Protect Inst Co LT, Qinghuandao, Peoples R China
关键词
air quality fine-grained; Sniffer4D Mini2; M30T UAV; laser particulate matter sensor; Co-KNN-DNN; MODEL;
D O I
10.3389/fphy.2024.1413037
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
As an effective particle measurement method, laser-based particle sensors combined with unmanned aerial vehicles (UAVs) can be used for measuring air quality in near ground space. The Sniffer4D Mini2 features portability and real-time acquisition of accurate spatial distribution information on air pollution. Additionally, a new fine-grained analysis method called Co-KNN-DNN has been proposed to assess air quality between flight trajectories, allowing for a more detailed presentation of the continuous distribution of air quality. Therefore, this article introduces an unmanned aerial vehicle measurement fine-grained analysis method based on laser light scattering particle sensors. Firstly, the overall scheme was designed, M30T UAV was selected to carry the portable air quality monitoring equipment, with laser-based laser particulate matter sensor and Mini2, to collect AQI and related attributes of the near-ground layer in the selected research area, to do the necessary processing of the collected data, to build a data set suitable for model input, etc., to train and optimize the model, and to carry out practical application of the model. This article is based on the Co-KNN-DNN model for fine-grained analysis of air quality in spatial dimensions. Three experiments were conducted at different altitudes in the study area to investigate the practical application of fine-grained analysis of near-surface air quality. The experimental results show that the average R-squared value can reach 0.99. Choose to conduct experiments using the M30T UAV equipped with Sniffer4D Mini2 and a laser-based particulate matter sensor. The application research validates the effectiveness and practicality of the Co-KNN-DNN model.
引用
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页数:10
相关论文
共 33 条
[1]   Spatiotemporal land use random forest model for estimating metropolitan NO2 exposure in Japan [J].
Araki, Shin ;
Shima, Masayuki ;
Yamamoto, Kouhei .
SCIENCE OF THE TOTAL ENVIRONMENT, 2018, 634 :1269-1277
[2]   Electrochemical gas sensing module combined with Unmanned Aerial Vehicles for air quality monitoring [J].
Arroyo, Patricia ;
Gomez-Suarez, Jaime ;
Luis Herrero, Jose ;
Lozano, Jesus .
SENSORS AND ACTUATORS B-CHEMICAL, 2022, 364
[3]   MesSBAR-Multicopter and Instrumentation for Air Quality Research [J].
Bretschneider, Lutz ;
Schlerf, Andreas ;
Baum, Anja ;
Bohlius, Henning ;
Buchholz, Marcel ;
Duesing, Sebastian ;
Ebert, Volker ;
Erraji, Hassnae ;
Frost, Paul ;
Kaethner, Ralf ;
Krueger, Thomas ;
Langer, Anne Caroline ;
Langner, Marcel ;
Nowak, Andreas ;
Paetzold, Falk ;
Ruediger, Julian ;
Saturno, Jorge ;
Scholz, Hendrik ;
Schuldt, Tobias ;
Seldschopf, Rickmar ;
Sobotta, Andre ;
Tillmann, Ralf ;
Wehner, Birgit ;
Wesolek, Christian ;
Wolf, Katharina ;
Lampert, Astrid .
ATMOSPHERE, 2022, 13 (04)
[4]   Haze Risk Assessment Based on Improved PCA-MEE and ISPO-LightGBM Model [J].
Dai, Hongbin ;
Huang, Guangqiu ;
Zeng, Huibin ;
Yu, Rongchuan .
SYSTEMS, 2022, 10 (06)
[5]   PM2.5 volatility prediction by XGBoost-MLP based on GARCH models [J].
Dai, Hongbin ;
Huang, Guangqiu ;
Zeng, Huibin ;
Zhou, Fangyu .
JOURNAL OF CLEANER PRODUCTION, 2022, 356
[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]  
Han J., 2000, Data Mining, Concepts and Techniques-2nd edition
[8]  
Heweling G., 2017, Int J Edu Learn Syst, P63
[9]   Detection of Natural Gas Leakages Using a Laser-Based Methane Sensor and UAV [J].
Iwaszenko, Sebastian ;
Kalisz, Piotr ;
Slota, Marcin ;
Rudzki, Andrzej .
REMOTE SENSING, 2021, 13 (03) :1-16
[10]  
Ke GL, 2017, ADV NEUR IN, V30