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  4. Statistical modeling approach for PM10 prediction before and during confinement by COVID-19 in South Lima, Perú

Statistical modeling approach for PM10 prediction before and during confinement by COVID-19 in South Lima, Perú

Author(s)
Manuel Angel Ponce Estela
Odón R. Sánchez-Ccoyllo
Edison Alessandro Romero-Cabello
Fausto Fernando García Ávila
Carlos Alberto Castañeda Olivera
Lorgio Valdiviezo-Gonzáles
Carlos Quispe Eulogio
Alex Rubén Huamán De La Cruz
Date Issued
6 de octubre de 2022
Type
Article
Volume
12
Issue
1
Start Page
16737
End Page
16737
DOI
10.1038/s41598-022-20904-2
Abstract
A total of 188,859 meteorological-PM[Formula: see text] data validated before (2019) and during the COVID-19 pandemic (2020) were used. In order to predict PM[Formula: see text] in two districts of South Lima in Peru, hourly, daily, monthly and seasonal variations of the data were analyzed. Principal Component Analysis (PCA) and linear/nonlinear modeling were applied. The results showed the highest annual average PM[Formula: see text] for San Juan de Miraflores (SJM) (PM[Formula: see text]-SJM: 78.7 [Formula: see text]g/m[Formula: see text]) and the lowest in Santiago de Surco (SS) (PM[Formula: see text]-SS: 40.2 [Formula: see text]g/m[Formula: see text]). The PCA showed the influence of relative humidity (RH)-atmospheric pressure (AP)-temperature (T)/dew point (DP)-wind speed (WS)-wind direction (WD) combinations. Cool months with higher humidity and atmospheric instability decreased PM[Formula: see text] values in SJM and warm months increased it, favored by thermal inversion (TI). Dust resuspension, vehicular transport and stationary sources contributed more PM[Formula: see text] at peak times in the morning and evening. The Multiple linear regression (MLR) showed the best correlation (r = 0.6166), followed by the three-dimensional model LogAP-LogWD-LogPM[Formula: see text] (r = 0.5753); the RMSE-MLR (12.92) exceeded that found in the 3D models (RMSE [Formula: see text]) and the NSE-MLR criterion (0.3804) was acceptable. PM[Formula: see text] prediction was modeled using the algorithmic approach in any scenario to optimize urban management decisions in times of pandemic.
Subjects

Algorithm

Artificial intelligen...

Computer science

Algorithm

Artificial intelligen...

Computer science

COVID-19 epidemiology...

COVID-19 epidemiology...

COVID-19 epidemiology...

Air Pollutants analys...

Air Pollutants analys...

Air Pollutants analys...

Dust

Dust

Dust

Environmental Monitor...

Environmental Monitor...

Environmental Monitor...

Humans

Humans

Humans

Peru epidemiology

Peru epidemiology

Peru epidemiology

Pandemics

Pandemics

Pandemics

Physical Sciences Env...

Physical Sciences Env...

Physical Sciences Env...

Metrics
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