Multi-step ahead ozone level forecasting using a component-based technique: A case study in Lima, Peru

Author:

Quispe Flor1,Salcedo Eddy1,Iftikhar Hasnain2,Zafar Aimel34,Khan Murad5,Turpo-Chaparro Josué E.6,Rodrigues Paulo Canas7,López-Gonzales Javier Linkolk6

Affiliation:

1. E.P. Ingeniería Ambiental, Universidad Peruana Unión, Lima, Peru

2. Department of Statistics, Quaid-i-Azam University, 45320, Islamabad, Pakistan

3. Department of Statistics, University of Peshawar, Pakistan

4. Department of Mathematics, Statistics and Computer Science, The University of Agriculture, Peshawar - Pakistan

5. Department of Statistics, Abdul Wali Khan University Mardan, Mardan 23200, Pakistan

6. Escuela de Posgrado, Universidad Peruana Unión, Lima 15468, Peru

7. Department of Statistics, Federal University of Bahia, Salvador 40170-110, Brazil

Abstract

<abstract><p>The rise in global ozone levels over the last few decades has harmed human health. This problem exists in several cities throughout South America due to dangerous levels of particulate matter in the air, particularly during the winter season, making it a public health issue. Lima, Peru, is one of the ten cities in South America with the worst levels of air pollution. Thus, efficient and precise modeling and forecasting are critical for ozone concentrations in Lima. The focus is on developing precise forecasting models to anticipate ozone concentrations, providing timely information for adequate public health protection and environmental management. This work used hourly O$ _{3} $ data in metropolitan areas for multi-step-ahead (one-, two-, three-, and seven-day-ahead) O$ _{3} $ forecasts. A multiple linear regression model was used to represent the deterministic portion, and four-time series models, autoregressive, nonparametric autoregressive, autoregressive moving average, and nonlinear neural network autoregressive, were used to describe the stochastic component. The various horizon out-of-sample forecast results for the considered data suggest that the proposed component-based forecasting technique gives a highly consistent, accurate, and efficient gain. This may be expanded to other districts of Lima, different regions of Peru, and even the global level to assess the efficacy of the proposed component-based modeling and forecasting approach. Finally, no analysis has been undertaken using a component-based estimation to forecast ozone concentrations in Lima in a multi-step-ahead manner.</p></abstract>

Publisher

American Institute of Mathematical Sciences (AIMS)

Reference53 articles.

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