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High-Precision Microscale Particulate Matter Prediction in Diverse Environments Using a Long Short-Term Memory Neural Network and Street View Imagery

ENVIRONMENTAL SCIENCE & TECHNOLOGY(2024)

Beijing Technol & Business Univ | Tianjin Univ | Qingdao Univ Technol | Fudan Univ | Univ Bundeswehr Munich | Joint Mass Spectrometry Ctr | Inst Environm Assessment & Water Res

Cited 1|Views22
Abstract
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.
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Key words
PM metrics,deep learning,LSTM,exposureassessment models,air quality
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要点】:本研究提出了一种利用HSV颜色特征从街景图像中估计四种典型欧洲环境中的PM浓度的LSTM神经网络模型,表现出优于其他统计模型的性能和良好的泛化能力。

方法】:通过提取街景图像的HSV颜色特征,使用LSTM神经网络模型预测PM浓度。

实验】:使用德国奥格斯堡市中心非取暖季节期间移动监测平台收集的PM浓度数据和同步街景图像进行实验,并与RNN和GRU等深度学习模型进行了比较,LSTM-HSV模型在八种PM指标上达到了80%以上的解释率。