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Hybrid Spatio-temporal Deep Learning Framework for Particulate Matter(PM2.5) Concentration Forecasting

机译:颗粒物质的混合时空深度学习框架(PM 2.5 )浓度预测

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With massive urbanization, air pollution has turned out to be a life-threatening factor that requires serious control management. Proper assessment and prediction of outdoor air pollution could significantly warn people about the risk of chronic and acute respiratory diseases including asthma during outdoor exposure. IoT based air quality monitoring through sensors deployed at different locations could be an expedient solution for this. Accurate modeling of the air quality big data collected by the IoT sensors extensively helps in predicting future values for accessing the risk of outdoor exposure. This extraction of knowledge gained could greatly in reducing the deterioration of human health through early warnings and decision-making. In this paper, a hybrid deep learning-based architecture using CNN-LSTM combination is proposed to model Particulate Matter (PM2.5) of a location with the values collected from the IoT air quality sensors. The encoder-decoder based architecture models the time distributed multivariate air pollutant data of 9 locations. The 3D CNN and 1D CNN is exploited to encode both the inter-dependency (spatial autocorrelation) and intra-dependency (heterogeneity) in the spatiotemporal air pollutant data. The CNN based encoder captures all relevant spatiotemporal features for facilitating improved accuracy in predictions. The LSTM learns the temporal dependencies in the encoded air pollutant data for PM2.5 concentration forecasting. Extensive experimentations are performed on real-world IoT City Pulse Pollution dataset. The proposed model is compared with ConvLSTM in terms of root mean square error (RMSE), the mean absolute error (MAE) and the R-squared (R2) and is found to outperform ConvLSTM.
机译:随着巨大的城市化,空气污染已经成为需要严重控制管理的危及生命的因素。户外空气污染的适当评估和预测可以显着警告人们在户外暴露过程中患慢性和急性呼吸系统疾病的风险。基于IOT的空气质量通过在不同位置部署的传感器监控可能是一个有利的解决方案。 IOT传感器收集的空气质量大数据的准确建模广泛有助于预测访问户外曝光风险的未来值。通过早期警告和决策,这一知识的提取可能很大程度上降低了人类健康的恶化。在本文中,提出了一种使用CNN-LSTM组合的混合深度学习的架构,以模拟来自物流特性传感器的值的位置的颗粒物质(PM2.5)。基于编码器 - 解码器的架构模型的时间分布式多变量空气污染物数据为9个位置。利用3D CNN和1D CNN来编码时尚空气污染物数据中的依赖性(空间自相关)和依赖性依赖性(异质性)。基于CNN的编码器捕获所有相关的时空特征,以便于预测的提高精度。 LSTM了解PM2.5浓度预测的编码空气污染物数据中的时间依赖性。广泛的实验是在现实世界IOT城市脉冲污染数据集进行的。在根均线误差(RMSE)方面,将所提出的模型与CONMLSTM进行比较,平均绝对误差(MAE)和R线(R2),并且被发现以优于GUNDLSTM。

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