A Machine Learning-Based Ensemble Framework for Forecasting PM2.5 Concentrations in Puli, Taiwan

被引:3
|
作者
Yin, Peng-Yeng [1 ]
Yen, Alex Yaning [2 ]
Chao, Shou-En [3 ]
Day, Rong-Fuh [3 ]
Bhanu, Bir [4 ]
机构
[1] China Univ Technol, Dept Comp Sci & Informat Engn, Taipei 11695, Taiwan
[2] China Univ Technol, Ctr Conservat Cultural Heritage, Taipei 11695, Taiwan
[3] Natl Chi Nan Univ, Dept Informat Management, Nantou 54561, Taiwan
[4] Univ Calif Riverside, Visualizat & Intelligent Syst Lab, Riverside, CA 92521 USA
来源
APPLIED SCIENCES-BASEL | 2022年 / 12卷 / 05期
关键词
PM2; 5; short-term learning; long-term learning; multi-model framework; forecast; NEURAL-NETWORKS; PREDICTION; MODEL; COUNTY;
D O I
10.3390/app12052484
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Forecasting of PM2.5 concentration is a global concern. Evidence has shown that the ambient PM2.5 concentrations are harmful to human health, climate change, plant species mortality, etc. PM2.5 concentrations are caused by natural and anthropogenic activities, and it is challenging to predict them due to many uncertain factors. Current research has focused on developing a new model while overlooking the fact that every single model for PM2.5 prediction has its own strengths and weaknesses. This paper proposes an ensemble framework which combines four diverse learning models for PM2.5 forecasting in Puli, Taiwan. It explores the synergy between parametric and non-parametric learning, and short-term and long-term learning. The feature set covers periodic, meteorological, and autoregression variables which are selected by a spiral validation process. The experimental dataset, spanning from 1 January 2008 to 31 December 2019, from Puli Township in central Taiwan, is used in this study. The experimental results show the proposed multi-model framework can synergize the advantages of the embedded models and obtain an improved forecasting result. Further, the benefit obtained by blending short-term learning with long-term learning is validated, in surpassing the performance obtained by using just single type of learning. Our multi-model framework compares favorably with deep-learning models on Puli dataset. It also shows high adaptivity, such that our multi-model framework is comparable to the leading methods for PM2.5 forecasting in Delhi, India.
引用
收藏
页数:21
相关论文
共 50 条
  • [1] Deep Ensemble Machine Learning Framework for the Estimation of PM2.5 Concentrations
    Yu, Wenhua
    Li, Shanshan
    Ye, Tingting
    Xu, Rongbin
    Song, Jiangning
    Guo, Yuming
    [J]. ENVIRONMENTAL HEALTH PERSPECTIVES, 2022, 130 (03)
  • [2] Comment on "Deep Ensemble Machine Learning Framework for the Estimation of PM2.5 Concentrations"
    Stafoggia, Massimo
    Cattani, Giorgio
    Ancona, Carla
    Gasparrini, Antonio
    Ranzi, Andrea
    [J]. ENVIRONMENTAL HEALTH PERSPECTIVES, 2022, 130 (06)
  • [3] An Ensemble Deep Learning Model for Forecasting Hourly PM2.5 Concentrations
    Mohan, Anju S.
    Abraham, Lizy
    [J]. IETE JOURNAL OF RESEARCH, 2023, 69 (10) : 6832 - 6845
  • [4] Forecasting hourly PM2.5 concentrations based on decomposition-ensemble-reconstruction framework incorporating deep learning algorithms
    Cai, Peilei
    Zhang, Chengyuan
    Chai, Jian
    [J]. Data Science and Management, 2023, 6 (01): : 46 - 54
  • [5] A Machine Learning Based PM2.5 Forecasting Framework Using Internet of Environmental Things
    Mahajan, Sachit
    Liu, Hao-Min
    Chen, Ling-Jyh
    Tsai, Tzu-Chieh
    [J]. IOT AS A SERVICE, IOTAAS 2017, 2018, 246 : 170 - 176
  • [6] Evaluation of Different Machine Learning Approaches to Forecasting PM2.5 Mass Concentrations
    Karimian, Hamed
    Li, Qi
    Wu, Chunlin
    Qi, Yanlin
    Mo, Yuqin
    Chen, Gong
    Zhang, Xianfeng
    Sachdeva, Sonali
    [J]. AEROSOL AND AIR QUALITY RESEARCH, 2019, 19 (06) : 1400 - 1410
  • [7] A Study on Machine Learning-Based Approaches for PM2.5 Prediction
    Lakshmi, V. Santhana
    Vijaya, M. S.
    [J]. SUSTAINABLE COMMUNICATION NETWORKS AND APPLICATION, ICSCN 2021, 2022, 93 : 163 - 175
  • [8] Modelling and Forecasting Temporal PM2.5 Concentration Using Ensemble Machine Learning Methods
    Ejohwomu, Obuks Augustine
    Shamsideen Oshodi, Olakekan
    Oladokun, Majeed
    Bukoye, Oyegoke Teslim
    Emekwuru, Nwabueze
    Sotunbo, Adegboyega
    Adenuga, Olumide
    [J]. BUILDINGS, 2022, 12 (01)
  • [9] Machine learning-based ozone and PM2.5 forecasting: Application to multiple AQS sites in the Pacific Northwest
    Fan, Kai
    Dhammapala, Ranil
    Harrington, Kyle
    Lamb, Brian
    Lee, Yunha
    [J]. FRONTIERS IN BIG DATA, 2023, 6
  • [10] Machine learning-based prediction of hazards fine PM2.5 concentrations: a case study of Delhi, India
    Ram Pravesh Kumar
    Aditya Prakash
    Ranjit Singh
    Pradeep Kumar
    [J]. Discover Geoscience, 2 (1):