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Wyszukujesz frazę "air quality prediction" wg kryterium: Temat


Wyświetlanie 1-2 z 2
Tytuł:
Data-driven temporal-spatial model for the prediction of AQI in Nanjin
Autorzy:
Zhao, Xuan
Song, Meichen
Liu, Anqi
Wang, Yiming
Wang, Tong
Cao, Jinde
Powiązania:
https://bibliotekanauki.pl/articles/1837414.pdf
Data publikacji:
2020
Wydawca:
Społeczna Akademia Nauk w Łodzi. Polskie Towarzystwo Sieci Neuronowych
Tematy:
air quality prediction
k-Nearest Neighbor
BP neural network
non-monitoring stations
Opis:
Air quality data prediction in urban area is of great significance to control air pollution and protect the public health. The prediction of the air quality in the monitoring station is well studied in existing researches. However, air-quality-monitor stations are insufficient in most cities and the air quality varies from one place to another dramatically due to complex factors. A novel model is established in this paper to estimate and predict the Air Quality Index (AQI) of the areas without monitoring stations in Nanjing. The proposed model predicts AQI in a non-monitoring area both in temporal dimension and in spatial dimension respectively. The temporal dimension model is presented at first based on the enhanced k-Nearest Neighbor (KNN) algorithm to predict the AQI values among monitoring stations, the acceptability of the results achieves 92% for one-hour prediction. Meanwhile, in order to forecast the evolution of air quality in the spatial dimension, the method is utilized with the help of Back Propagation neural network (BP), which considers geographical distance. Furthermore, to improve the accuracy and adaptability of the spatial model, the similarity of topological structure is introduced. Especially, the temporal-spatial model is built and its adaptability is tested on a specific non-monitoring site, Jiulonghu Campus of Southeast University. The result demonstrates that the acceptability achieves 73.8% on average. The current paper provides strong evidence suggesting that the proposed non-parametric and data-driven approach for air quality forecasting provides promising results.
Źródło:
Journal of Artificial Intelligence and Soft Computing Research; 2020, 10, 4; 255-270
2083-2567
2449-6499
Pojawia się w:
Journal of Artificial Intelligence and Soft Computing Research
Dostawca treści:
Biblioteka Nauki
Artykuł
Tytuł:
Application of neural networks to the prediction of gas pollution of air
Autorzy:
Pawul, Małgorzata
Powiązania:
https://bibliotekanauki.pl/articles/2064392.pdf
Data publikacji:
2019
Wydawca:
STE GROUP
Tematy:
air quality monitoring
air pollution
artificial neural networks
prediction
monitorowanie jakości powietrza
zanieczyszczenie powietrza
sztuczne sieci neuronowe
prognozowanie
predykcja
Opis:
The issue of projecting the air pollution levels is quite essential from the viewpoint of the necessity to adopt specific prevention measures intended to reduce the pollution concentration in the air. One can apply certain machine learning methods, including neural networks, to build pollution concentration models. Neural networks are characterised by the fact that they can be used to solve the relevant problem when we face shortage of data, or we do not know the analytical relationship between input and output data. Consequently, neural networks can be applied in a number of problems. This paper discusses a possibility to apply neural networks to the prediction of selected gas concentrations in the air, based on the data originating from the measurement networks of the Polish State Environmental Monitoring System, combined with local meteorological data. Forecast results have been presented here for SO2, NO, NO2, and O3 in various locations. The author also discusses the accuracy of the respective forecasts and indicates the relevant contributing factors.
Źródło:
New Trends in Production Engineering; 2019, 2, 1; 515--523
2545-2843
Pojawia się w:
New Trends in Production Engineering
Dostawca treści:
Biblioteka Nauki
Artykuł
    Wyświetlanie 1-2 z 2

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