posted on 2024-02-15, 00:44authored byXiansheng Liu, Xun Zhang, Rui Wang, Ying Liu, Hadiatullah Hadiatullah, Yanning Xu, Tao Wang, Jan Bendl, Thomas Adam, Jürgen Schnelle-Kreis, Xavier Querol
In this study, we
propose a novel long short-term memory (LSTM)
neural network model that leverages color features (HSV: hue, saturation,
value) extracted from street images to estimate air quality with particulate
matter (PM) in four typical European environments: urban, suburban,
villages, and the harbor. To evaluate its performance, we utilize
concentration data for eight parameters of ambient PM (PM1.0, PM2.5, and PM10, particle number concentration,
lung-deposited surface area, equivalent mass concentrations of ultraviolet
PM, black carbon, and brown carbon) collected from a mobile monitoring
platform during the nonheating season in downtown Augsburg, Germany,
along with synchronized street view images. Experimental comparisons
were conducted between the LSTM model and other deep learning models
(recurrent neural network and gated recurrent unit). The results clearly
demonstrate a better performance of the LSTM model compared with other
statistically based models. The LSTM-HSV model achieved impressive
interpretability rates above 80%, for the eight PM metrics mentioned
above, indicating the expected performance of the proposed model.
Moreover, the successful application of the LSTM-HSV model in other
seasons of Augsburg city and various environments (suburbs, villages,
and harbor cities) demonstrates its satisfactory generalization capabilities
in both temporal and spatial dimensions. The successful application
of the LSTM-HSV model underscores its potential as a versatile tool
for the estimation of air pollution after presampling of the studied
area, with broad implications for urban planning and public health
initiatives.