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Modeling PM2.5 Urban Pollution Using Machine Learning and Selected Meteorological Parameters

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TLDR
A machine learning approach based on six years of meteorological and pollution data analyses is proposed to predict the concentrations of PM2.5 from wind (speed and direction) and precipitation levels and demonstrates that the use of statistical models based on machine learning is relevant to predict PM 2.5 concentrations from meteorological data.
Abstract
Outdoor air pollution costs millions of premature deaths annually, mostly due to anthropogenic fine particulate matter (or PM2.5). Quito, the capital city of Ecuador, is no exception in exceeding the healthy levels of pollution. In addition to the impact of urbanization, motorization, and rapid population growth, particulate pollution is modulated by meteorological factors and geophysical characteristics, which complicate the implementation of the most advanced models of weather forecast. Thus, this paper proposes a machine learning approach based on six years of meteorological and pollution data analyses to predict the concentrations of PM2.5 from wind (speed and direction) and precipitation levels. The results of the classification model show a high reliability in the classification of low ( 25 µg/m3) and low (<10 µg/m3) versus moderate (10–25 µg/m3) concentrations of PM2.5. A regression analysis suggests a better prediction of PM2.5 when the climatic conditions are getting more extreme (strong winds or high levels of precipitation). The high correlation between estimated and real data for a time series analysis during the wet season confirms this finding. The study demonstrates that the use of statistical models based on machine learning is relevant to predict PM2.5 concentrations from meteorological data.

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Evaluation of machine learning techniques with multiple remote sensing datasets in estimating monthly concentrations of ground-level PM2.5.

TL;DR: Comparing the performance of eight predictive algorithms with the use of multiple remote sensing datasets, including satellite-derived AOD data, for the prediction of ground-level PM2.5 concentration indicated that the predictors with the highest contributions in modelling were monthly AOD and elevation.
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Machine Learning Approaches for Outdoor Air Quality Modelling: A Systematic Review

TL;DR: The main findings of this literature review show that: (i) machine learning is mainly applied in Eurasian and North American continents and (ii) estimation problems tend to implement Ensemble Learning and Regressions, whereas forecasting make use of Neural Networks and Support Vector Machines.
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A Machine Learning Approach for Air Quality Prediction: Model Regularization and Optimization

TL;DR: In this paper, a multi-task learning (MTL) based approach was proposed to predict the hourly air pollution concentration on the basis of meteorological data of previous days by formulating the prediction over 24 hours as a multistask learning problem, and a useful regularization by enforcing the prediction models of consecutive hours to be close to each other.
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Comparative Analysis of Machine Learning Techniques for Predicting Air Quality in Smart Cities

TL;DR: A comparative study is presented to determine the best model for accurately predicting air quality with reference to data size and processing time to find the best-fit model in terms of processing time and lowest error rate.
Journal ArticleDOI

Constructing a PM2.5 concentration prediction model by combining auto-encoder with Bi-LSTM neural networks

TL;DR: A deep learning model based on an auto-encoder and bidirectional long short short-term memory (Bi-LSTM) to forecast PM2.5 concentrations to reveal the correlation between PM1.5 and multiple climate variables and results indicated this model can improve the prediction accuracy in an experimental scenario.
References
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