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利用机器学习对库里蒂巴的颗粒物进行预测和预报。

Particulate matter forecast and prediction in Curitiba using machine learning.

作者信息

Chaves Marianna Gonçalves Dias, da Silva Adriel Bilharva, Mercuri Emílio Graciliano Ferreira, Noe Steffen Manfred

机构信息

Graduate Program of Environmental Engineering, Federal University of Paraná, Curitiba, Brazil.

Perkons S.A., Curitiba, Brazil.

出版信息

Front Big Data. 2024 May 30;7:1412837. doi: 10.3389/fdata.2024.1412837. eCollection 2024.

Abstract

INTRODUCTION

Air quality is directly affected by pollutant emission from vehicles, especially in large cities and metropolitan areas or when there is no compliance check for vehicle emission standards. Particulate Matter (PM) is one of the pollutants emitted from fuel burning in internal combustion engines and remains suspended in the atmosphere, causing respiratory and cardiovascular health problems to the population. In this study, we analyzed the interaction between vehicular emissions, meteorological variables, and particulate matter concentrations in the lower atmosphere, presenting methods for predicting and forecasting PM2.5.

METHODS

Meteorological and vehicle flow data from the city of Curitiba, Brazil, and particulate matter concentration data from optical sensors installed in the city between 2020 and 2022 were organized in hourly and daily averages. Prediction and forecasting were based on two machine learning models: Random Forest (RF) and Long Short-Term Memory (LSTM) neural network. The baseline model for prediction was chosen as the Multiple Linear Regression (MLR) model, and for forecast, we used the naive estimation as baseline.

RESULTS

RF showed that on hourly and daily prediction scales, the planetary boundary layer height was the most important variable, followed by wind gust and wind velocity in hourly or daily cases, respectively. The highest PM prediction accuracy (99.37%) was found using the RF model on a daily scale. For forecasting, the highest accuracy was 99.71% using the LSTM model for 1-h forecast horizon with 5 h of previous data used as input variables.

DISCUSSION

The RF and LSTM models were able to improve prediction and forecasting compared with MLR and Naive, respectively. The LSTM was trained with data corresponding to the period of the COVID-19 pandemic (2020 and 2021) and was able to forecast the concentration of PM2.5 in 2022, in which the data show that there was greater circulation of vehicles and higher peaks in the concentration of PM2.5. Our results can help the physical understanding of factors influencing pollutant dispersion from vehicle emissions at the lower atmosphere in urban environment. This study supports the formulation of new government policies to mitigate the impact of vehicle emissions in large cities.

摘要

引言

空气质量直接受到车辆污染物排放的影响,尤其是在大城市和大都市区,或者在没有对车辆排放标准进行合规检查的情况下。颗粒物(PM)是内燃机燃油燃烧排放的污染物之一,它悬浮在大气中,会给人群带来呼吸道和心血管健康问题。在本研究中,我们分析了车辆排放、气象变量与低层大气中颗粒物浓度之间的相互作用,提出了预测和预报PM2.5的方法。

方法

整理了巴西库里蒂巴市的气象和车辆流量数据,以及2020年至2022年期间该市安装的光学传感器的颗粒物浓度数据,以小时和日平均值进行统计。预测和预报基于两种机器学习模型:随机森林(RF)和长短期记忆(LSTM)神经网络。预测的基线模型选为多元线性回归(MLR)模型,预报则以朴素估计作为基线。

结果

RF表明,在小时和日预测尺度上,行星边界层高度是最重要的变量,在小时或日尺度上,其次分别是阵风和风速度。在日尺度上使用RF模型时,PM预测准确率最高(99.37%)。对于预报,使用LSTM模型,以前5小时的数据作为输入变量,在1小时预报期时准确率最高,为99.71%。

讨论

与MLR和朴素模型相比,RF和LSTM模型分别能够改进预测和预报。LSTM使用了与新冠疫情期间(2020年和2021年)相对应的数据进行训练,并能够预报2022年的PM2.5浓度,数据显示2022年车辆流通量更大,PM2.5浓度峰值更高。我们的结果有助于从物理角度理解城市环境中影响低层大气车辆排放污染物扩散的因素。本研究支持制定新的政府政策,以减轻大城市车辆排放的影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/60be/11169811/5d12154c05a5/fdata-07-1412837-g0001.jpg

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