Multi-Horizon Air Pollution Forecasting with Deep Neural Networks

Air pollution is a global problem, especially in urban areas where the population density is very high due to the diverse pollutant sources such as vehicles, industrial plants, buildings, and waste. North Macedonia, as a developing country, has a serious problem with air pollution. The problem is highly present in its capital city, Skopje, where air pollution places it consistently within the top 10 cities in the world during the winter months. In this work, we propose using Recurrent Neural Network (RNN) models with long short-term memory units to predict the level of PM10 particles at 6, 12, and 24 h in the future. We employ historical air quality measurement data from sensors placed at multiple locations in Skopje and meteorological conditions such as temperature and humidity. We compare different deep learning models’ performance to an Auto-regressive Integrated Moving Average (ARIMA) model. The obtained results show that the proposed models consistently outperform the baseline model and can be successfully employed for air pollution prediction. Ultimately, we demonstrate that these models can help decision-makers and local authorities better manage the air pollution consequences by taking proactive measures.

[1]  Chao Chen,et al.  A hybrid multi-resolution multi-objective ensemble model and its application for forecasting of daily PM2.5 concentrations , 2020, Inf. Sci..

[2]  Sumit Sharma,et al.  Air quality forecasting using artificial neural networks with real time dynamic error correction in highly polluted regions. , 2020, The Science of the total environment.

[3]  Gourav,et al.  Forecasting Air Quality of Delhi Using ARIMA Model , 2019 .

[4]  R. Arasa,et al.  ANALYSIS OF THE INTEGRATED ENVIRONMENTAL AND METEOROLOGICAL FORECASTING AND ALERT SYSTEM ( SIAM ) FOR AIR QUALITY APPLICATIONS OVER DIFFERENT REGIONS ON THE IBERIAN PENINSULA , 2013 .

[5]  Eftim Zdravevski,et al.  Deep Learning for Feature Extraction in Remote Sensing: A Case-Study of Aerial Scene Classification , 2020, Sensors.

[6]  Le Hoang Son,et al.  Prediction of Air Pollution Index in Kuala Lumpur using fuzzy time series and statistical models , 2019, Air Quality, Atmosphere & Health.

[7]  Michelangelo Ceci,et al.  Spatial autocorrelation and entropy for renewable energy forecasting , 2018, Data Mining and Knowledge Discovery.

[8]  Mahmod Othman,et al.  Predicting Daily Air Pollution Index Based on Fuzzy Time Series Markov Chain Model , 2020, Symmetry.

[9]  Jimmy Ba,et al.  Adam: A Method for Stochastic Optimization , 2014, ICLR.

[10]  Pengfei Sheng,et al.  Analysis of Cost-Effective Methods to Reduce Industrial Wastewater Emissions in China , 2020 .

[11]  G. Fronza,et al.  Mathematical Models for Planning and Controlling Air Quality; Proceedings of an IIASA Workshop, October 1979 , 1982 .

[12]  Ping-Huan Kuo,et al.  A Deep CNN-LSTM Model for Particulate Matter (PM2.5) Forecasting in Smart Cities , 2018, Sensors.

[13]  Jianqiang Li,et al.  A Sequence-to-Sequence Air Quality Predictor Based on the n-Step Recurrent Prediction , 2019, IEEE Access.

[14]  Iluju Kiringa,et al.  Pattern and Anomaly Localization in Complex and Dynamic Data , 2019, 2019 18th IEEE International Conference On Machine Learning And Applications (ICMLA).

[15]  Alper Tokgöz,et al.  A RNN based time series approach for forecasting turkish electricity load , 2018, 2018 26th Signal Processing and Communications Applications Conference (SIU).

[16]  Duen-Ren Liu,et al.  Air pollution forecasting based on attention‐based LSTM neural network and ensemble learning , 2019, Expert Syst. J. Knowl. Eng..

[17]  Nuno M. Garcia,et al.  Air Pollution Prediction with Multi-Modal Data and Deep Neural Networks , 2020, Remote. Sens..

[18]  Jakub Horák,et al.  Support Vector Machine Methods and Artificial Neural Networks Used for the Development of Bankruptcy Prediction Models and their Comparison , 2020, Journal of Risk and Financial Management.

[19]  Ujjwal Kumar,et al.  ARIMA forecasting of ambient air pollutants (O3, NO, NO2 and CO) , 2010 .

[20]  Y. Akdi,et al.  Estimation and forecasting of PM10 air pollution in Ankara via time series and harmonic regressions , 2020, International Journal of Environmental Science and Technology.

[21]  Jürgen Schmidhuber,et al.  Long Short-Term Memory , 1997, Neural Computation.

[22]  Xiang Li,et al.  Deep learning architecture for air quality predictions , 2016, Environmental Science and Pollution Research.

[23]  Eftim Zdravevski,et al.  From Big Data to business analytics: The case study of churn prediction , 2020, Appl. Soft Comput..

[24]  Jaromír Vrbka,et al.  Bankruptcy or Success? The Effective Prediction of a Company’s Financial Development Using LSTM , 2020, Sustainability.

[25]  Ah Chung Tsoi,et al.  Discrete time recurrent neural network architectures: A unifying review , 1997, Neurocomputing.

[26]  Junyu Dong,et al.  Dual channel LSTM based multi-feature extraction in gait for diagnosis of Neurodegenerative diseases , 2018, Knowl. Based Syst..

[27]  Hao Chen,et al.  A spatiotemporal hierarchical attention mechanism-based model for multi-step station-level crowd flow prediction , 2021, Inf. Sci..

[28]  Bo Zhang,et al.  A Novel Combined Prediction Scheme Based on CNN and LSTM for Urban PM2.5 Concentration , 2019, IEEE Access.

[29]  Giorgio Corani,et al.  Air pollution prediction via multi-label classification , 2016, Environ. Model. Softw..

[30]  Congcong Wen,et al.  A novel spatiotemporal convolutional long short-term neural network for air pollution prediction. , 2019, The Science of the total environment.

[31]  Sepp Hochreiter,et al.  Self-Normalizing Neural Networks , 2017, NIPS.

[32]  A. Abdullah,et al.  Development of Multiple Linear Regression for Particulate Matter (PM10) Forecasting during Episodic Transboundary Haze Event in Malaysia , 2020 .

[33]  Qi Li,et al.  A Spatiotemporal Prediction Framework for Air Pollution Based on Deep RNN , 2017 .

[34]  Yue-Shan Chang,et al.  Air Pollution Forecasting Using RNN with LSTM , 2018, 2018 IEEE 16th Intl Conf on Dependable, Autonomic and Secure Computing, 16th Intl Conf on Pervasive Intelligence and Computing, 4th Intl Conf on Big Data Intelligence and Computing and Cyber Science and Technology Congress(DASC/PiCom/DataCom/CyberSciTech).

[35]  Eftim Zdravevski,et al.  Short-term air pollution forecasting based on environmental factors and deep learning models , 2020, 2020 15th Conference on Computer Science and Information Systems (FedCSIS).

[36]  Michelangelo Ceci,et al.  Scalable auto-encoders for gravitational waves detection from time series data , 2020, Expert Syst. Appl..

[37]  Dominik Slezak,et al.  A framework for learning and embedding multi-sensor forecasting models into a decision support system: A case study of methane concentration in coal mines , 2018, Inf. Sci..

[39]  Il-Chul Moon,et al.  Forecasting the Concentration of Particulate Matter in the Seoul Metropolitan Area Using a Gaussian Process Model , 2020, Sensors.

[40]  Anshuman Singh,et al.  Long short-term memory (LSTM) recurrent neural network for low-flow hydrological time series forecasting , 2019, Acta Geophysica.

[41]  Tatjana Atanasova-Pacemska,et al.  Aerial Scene Classification through Fine-Tuning with Adaptive Learning Rates and Label Smoothing , 2020, Applied Sciences.

[42]  Rossitza Goleva,et al.  Improving Activity Recognition Accuracy in Ambient-Assisted Living Systems by Automated Feature Engineering , 2017, IEEE Access.

[43]  Marcin Michalak,et al.  Predicting seismic events in coal mines based on underground sensor measurements , 2017, Eng. Appl. Artif. Intell..

[44]  Yu Zheng,et al.  Deep Distributed Fusion Network for Air Quality Prediction , 2018, KDD.

[45]  Liangpei Zhang,et al.  Estimating Ground‐Level PM2.5 by Fusing Satellite and Station Observations: A Geo‐Intelligent Deep Learning Approach , 2017, 1707.03558.

[46]  Zhongfei Zhang,et al.  Deep Air Learning: Interpolation, Prediction, and Feature Analysis of Fine-Grained Air Quality , 2017, IEEE Transactions on Knowledge and Data Engineering.

[47]  Zheng-Xin Wang,et al.  Forecasting the monthly iron ore import of China using a model combining empirical mode decomposition, non-linear autoregressive neural network, and autoregressive integrated moving average , 2020, Appl. Soft Comput..

[48]  More than 90% of the world’s children breathe toxic air every day , 2018, Saudi Medical Journal.

[49]  Ming Li,et al.  Forecasting Fine-Grained Air Quality Based on Big Data , 2015, KDD.

[50]  Michelangelo Ceci,et al.  Multi-aspect renewable energy forecasting , 2021, Inf. Sci..

[51]  R. Harrison,et al.  Particles, air quality, policy and health. , 2012, Chemical Society reviews.

[52]  Doreswamy,et al.  Forecasting Air Pollution Particulate Matter (PM2.5) Using Machine Learning Regression Models , 2020 .