空气质量指数
计算机科学
数据挖掘
堆积
过程(计算)
集合预报
集成学习
机器学习
气象学
核磁共振
操作系统
物理
作者
Peng Tian,Jinlin Xiong,Kai Sun,S. J. Qian,Zihan Tao,Muhammad Shahzad Nazir,Chu Zhang
标识
DOI:10.1016/j.envres.2024.118176
摘要
With the ongoing process of industrialization, the issue of declining air quality is increasingly becoming a critical concern. Accurate prediction of the Air Quality Index (AQI), considered as an all-inclusive measure representing the extent of pollutants present in the atmosphere, is of paramount importance. This study introduces a novel methodology that combines stacking ensemble and error correction to improve AQI prediction. Additionally, the reptile search algorithm (RSA) is employed for optimizing model parameters. In this study, four distinct regional AQI data containing a collection of 34864 data samples are collected. Initially, we perform cross-validation on ten commonly used single models to obtain prediction results. Then, based on evaluation indices, five models are selected for ensemble. The results of the study show that the model proposed in this paper achieves an improvement of around 10% in terms of accuracy when compared to the conventional model. Thus, the model introduced in this study offers a more scientifically grounded approach in tackling air pollution.
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