OpenAlex Citation Counts

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OpenAlex is a bibliographic catalogue of scientific papers, authors and institutions accessible in open access mode, named after the Library of Alexandria. It's citation coverage is excellent and I hope you will find utility in this listing of citing articles!

If you click the article title, you'll navigate to the article, as listed in CrossRef. If you click the Open Access links, you'll navigate to the "best Open Access location". Clicking the citation count will open this listing for that article. Lastly at the bottom of the page, you'll find basic pagination options.

Requested Article:

A nested machine learning approach to short-term PM2.5 prediction in metropolitan areas using PM2.5 data from different sensor networks
Jing Li, James Crooks, Jennifer Murdock, et al.
The Science of The Total Environment (2023) Vol. 873, pp. 162336-162336
Closed Access | Times Cited: 14

Showing 14 citing articles:

Multi-view Stacked CNN-BiLSTM (MvS CNN-BiLSTM) for urban PM2.5 concentration prediction of India’s polluted cities
Subham Kumar, Vipin Kumar
Journal of Cleaner Production (2024) Vol. 444, pp. 141259-141259
Closed Access | Times Cited: 16

Simulating daily PM2.5 concentrations using wavelet analysis and artificial neural network with remote sensing and surface observation data
Qingchun Guo, Zhenfang He, Zhaosheng Wang
Chemosphere (2023) Vol. 340, pp. 139886-139886
Closed Access | Times Cited: 38

A Two-Stage Inference Method Based on Graph Neural Network for Wind Farm SCADA Data
Zhanhong Ye, Fan Wu, Cong Zhang, et al.
(2025), pp. 100-111
Closed Access

A deep learning approach via multifractal detrended fluctuation analysis for PM2.5 prediction
Unjin Pak, Ho Kim, Uulkje de Jong, et al.
Journal of Atmospheric and Solar-Terrestrial Physics (2025), pp. 106444-106444
Closed Access

Full-coverage estimation of PM2.5 in the Beijing-Tianjin-Hebei region by using a two-stage model
Qiaolin Zeng, Yeming Li, Jinhua Tao, et al.
Atmospheric Environment (2023) Vol. 309, pp. 119956-119956
Closed Access | Times Cited: 9

PM2.5 prediction based on modified whale optimization algorithm and support vector regression
Zuhan Liu, Xin Huang, Xing Wang
Scientific Reports (2024) Vol. 14, Iss. 1
Open Access | Times Cited: 2

Novel Particulate Matter (PM2.5) forecasting method based on deep learning with suitable spatiotemporal correlation analysis
Unjin Pak, YongBom Son, Kwang Ho Kim, et al.
Journal of Atmospheric and Solar-Terrestrial Physics (2024) Vol. 264, pp. 106336-106336
Closed Access | Times Cited: 2

Multivariate multi-step time series prediction of induction motor situation based on fused temporal-spatial features
Caifeng Chen, Yiping Yuan, Wenlei Sun, et al.
International Journal of Hydrogen Energy (2023) Vol. 50, pp. 1386-1394
Closed Access | Times Cited: 5

Application of gene expression programing in predicting the concentration of PM2.5 and PM10 in Xi’an, China: a preliminary study
Xu Wang, Kai Zhang, Peishan Han, et al.
Frontiers in Environmental Science (2024) Vol. 12
Open Access | Times Cited: 1

Enhanced urban PM2.5 prediction: Applying quadtree division and time-series Transformer with WRF-Chem
Shiyan Zhang, Manzhu Yu
Atmospheric Environment (2024) Vol. 337, pp. 120758-120758
Closed Access | Times Cited: 1

Analyzing meteorological factors for forecasting PM10 and PM2.5 levels: a comparison between MLR and MLP models
Nastaran Talepour, Yaser Tahmasebi Birgani, Frank J. Kelly, et al.
Earth Science Informatics (2024)
Closed Access | Times Cited: 1

Bayesian estimation and reconstruction of marine surface contaminant dispersion
Yang Liu, Christopher M. Harvey, Frederick E. Hamlyn, et al.
The Science of The Total Environment (2023) Vol. 907, pp. 167973-167973
Open Access | Times Cited: 4

Optimizing air quality predictions: A discrete wavelet transform and long short‐term memory approach with wavelet‐type selection for hourly PM10 concentrations
Gökçe Nur Taşağıl Arslan, Serpil Kılıç Depren
Journal of Chemometrics (2024) Vol. 38, Iss. 4
Closed Access | Times Cited: 1

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