LGSPAPMLMay 30, 2019

A novel hybrid model based on multi-objective Harris hawks optimization algorithm for daily PM2.5 and PM10 forecasting

arXiv:1905.13550v1134 citations
Originality Incremental advance
AI Analysis

This work addresses air pollution forecasting to help reduce emissions and prevent health issues, but it is incremental as it builds on existing methods like ELM with a new optimization approach.

The authors tackled the problem of accurately and stably forecasting daily PM2.5 and PM10 air pollutant levels by proposing a novel hybrid model that combines data preprocessing, a new multi-objective optimization algorithm (MOHHO), and an optimized ELM model, achieving more stable and higher predictive performance compared to benchmark models in experiments across six time series from three Chinese cities.

High levels of air pollution may seriously affect people's living environment and even endanger their lives. In order to reduce air pollution concentrations, and warn the public before the occurrence of hazardous air pollutants, it is urgent to design an accurate and reliable air pollutant forecasting model. However, most previous research have many deficiencies, such as ignoring the importance of predictive stability, and poor initial parameters and so on, which have significantly effect on the performance of air pollution prediction. Therefore, to address these issues, a novel hybrid model is proposed in this study. Specifically, a powerful data preprocessing techniques is applied to decompose the original time series into different modes from low- frequency to high- frequency. Next, a new multi-objective algorithm called MOHHO is first developed in this study, which are introduced to tune the parameters of ELM model with high forecasting accuracy and stability for air pollution series prediction, simultaneously. And the optimized ELM model is used to perform the time series prediction. Finally, a scientific and robust evaluation system including several error criteria, benchmark models, and several experiments using six air pollutant concentrations time series from three cities in China is designed to perform a compressive assessment for the presented hybrid forecasting model. Experimental results indicate that the proposed hybrid model can guarantee a more stable and higher predictive performance compared to others, whose superior prediction ability may help to develop effective plans for air pollutant emissions and prevent health problems caused by air pollution.

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