Abstract

A total of 188,859 meteorological-PM_{10} data validated before (2019) and during the COVID-19 pandemic (2020) were used. In order to predict PM_{10} 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_{10} for San Juan de Miraflores (SJM) (PM_{10}-SJM: 78.7 upmug/m^{3}) and the lowest in Santiago de Surco (SS) (PM_{10}-SS: 40.2 upmug/m^{3}). 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_{10} values in SJM and warm months increased it, favored by thermal inversion (TI). Dust resuspension, vehicular transport and stationary sources contributed more PM_{10} 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_{10} (r = 0.5753); the RMSE-MLR (12.92) exceeded that found in the 3D models (RMSE <0.3) and the NSE-MLR criterion (0.3804) was acceptable. PM_{10} prediction was modeled using the algorithmic approach in any scenario to optimize urban management decisions in times of pandemic.

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