A Novel CMAQ-CNN Hybrid Model to Forecast Hourly Surface-Ozone Concentrations Fourteen Days in Advance
Alqamah Sayeed, Yunsoo Choi, Ebrahim Eslami, Jia Jung, Yannic Lops,, Ahmed Khan Salman

TL;DR
This study introduces a hybrid CMAQ-CNN model that forecasts hourly surface ozone levels up to two weeks in advance, combining numerical weather and air quality models with deep learning for fast, accurate predictions.
Contribution
The paper presents a novel hybrid modeling system that integrates numerical models and CNNs to extend ozone forecasting to 14 days with high temporal resolution.
Findings
Achieves 0.91 agreement index on day 1
Achieves 0.78 agreement index on day 14
Outperforms CMAQ-only predictions in accuracy
Abstract
Issues regarding air quality and related health concerns have prompted this study, which develops an accurate and computationally fast, efficient hybrid modeling system that combines numerical modeling and machine learning for forecasting concentrations of surface ozone. Currently available numerical modeling systems for air quality predictions (e.g., CMAQ, NCEP EMP) can forecast 24 to 48 hours in advance. In this study, we develop a modeling system based on a convolutional neural network (CNN) model that is not only fast but covers a temporal period of two weeks with a resolution as small as a single hour for 255 stations. The CNN model uses forecasted meteorology from the Weather Research and Forecasting model (processed by the Meteorology-Chemistry Interface Processor), forecasted air quality from the Community Multi-scale Air Quality Model (CMAQ), and previous 24-hour concentrations…
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