- Changyuan Sun, Jingjing Li, Riza Sulaiman, Badr S. Alotaibi, Samia Elattar, Mohammed Abuhussain, “Air Quality Prediction and Multi-Task Offloading based on Deep Learning Methods in Edge Computing”, J Grid Computing, 21, no. 2, 2023, 32
- Weinian Guo, Ping Xu, Chengxing Yang, Jingpu Guo, Liting Yang, Shuguang Yao, “Machine learning-based crashworthiness optimization for the square cone energy-absorbing structure of the subway vehicle”, Struct Multidisc Optim, 66, no. 8, 2023, 182
- Amin Wu, Fouzi Harrou, Abdelkader Dairi, Ying Sun, “Machine learning and deep learning‐driven methods for predicting ambient particulate matters levels: A case study”, Concurrency and Computation, 34, no. 19, 2022, e7035
- Yue-Shan Chang, Hsin-Ta Chiao, Satheesh Abimannan, Yo-Ping Huang, Yi-Ting Tsai, Kuan-Ming Lin, “An LSTM-based aggregated model for air pollution forecasting”, Atmospheric Pollution Research, 11, no. 8, 2020, 1451
- I Nyoman Kusuma Wardana, Julian William Gardner, Suhaib A. Fahmy, “Collaborative Learning at the Edge for Air Pollution Prediction”, IEEE Trans. Instrum. Meas., 73, 2024, 1
- Shiyun Zhou, Wei Wang, Long Zhu, Qi Qiao, Yulin Kang, “Deep-learning architecture for PM2.5 concentration prediction: A review”, Environmental Science and Ecotechnology, 21, 2024, 100400
- R. D. Aishwarya, C. Sahana, V. J. Deepa, J. Durgashree, S. Gowrishankar, A. Veena, 563, Inventive Computation and Information Technologies, 2023, 307
- Hai Guo, Qun Ding, Yifan Song, Haoran Tang, Likun Wang, Jingying Zhao, “Predicting Temperature of Permanent Magnet Synchronous Motor Based on Deep Neural Network”, Energies, 13, no. 18, 2020, 4782
- S. Sachdeva, R. Kaur, Kimmi, H. Singh, K. Aggarwal, S. Kharb, “Meteorological AQI and pollutants concentration-based AQI predictor”, Int. J. Environ. Sci. Technol., 21, no. 5, 2024, 4979
- Farheen, Rajeev Kumar, Proceedings of 3rd International Conference on Artificial Intelligence: Advances and Applications, 2023, 527