代表性论文专著
SCI期刊论文
34. Wang, Y., Li, F., Wang, D.*, and Qin, W. (2024) “A restricted-learning network with observation credibility inference for few-shot degradation modeling,” IEEE Transactions on Automation Science and Engineering, in press.
33. Wang, D., Xian, X., and Li, H. (2024) “Spatiotemporal interactive modeling of event-based dynamic networks,” Technometrics, in press.
32. Wang, Y., Wang, A., Wang, D.*, and Wang, D. (2024) “Deep learning-based sensor selection for failure mode recognition and prognostics under time-varying operating conditions,” IEEE Transactions on Automation Science and Engineering, in press.
31. Wang, D.*, Wang, A., and Song, C. (2024) “Flexible degradation modeling via the integration of local models and importance sampling,” IEEE Transactions on Instrumentation and Measurement, in press.
30. Wang, D., Xian, X., Li, H., and Wang, D. (2024) “Distribution-agnostic probabilistic few-shot learning for multimodal recognition and prediction,” IEEE Transactions on Automation Science and Engineering, in press.
29. Wang, D., Wang, Y., and Pan, E. (2024) “Multimodal recognition and prognostics based on features extracted via multisensor degradation modeling,” Journal of Quality Technology, in press.
28. Wang, D., Wang, Y., and Xian, X. (2024) “A latent variable-based multitask learning approach for degradation modeling of machines with dependency and heterogeneity,” IEEE Transactions on Instrumentation and Measurement, in press.
27. An, Y., Wang, D., Chen, L., and Zhang, X. (2023) “TCP-ARMA: A tensor-variate time series forecasting method,” IEEE Transactions on Automation Science and Engineering, in press, doi: 10.1109/TASE.2023.3322298.
26. Wang, D., Wang, Y., Xian, X., and Cheng, B. (2023) “An adaptation-aware interactive learning approach for multiple operational condition-based degradation modeling,” IEEE Transactions on Neural Networks and Learning Systems, in press, doi: 10.1109/TNNLS.2023.3305601.
25. Wang, D., Song, C., and Zhang, X. (2023) “Multimodal regression and mode recognition via an integrated deep neural network,” IISE Transactions, in press, doi: 10.1080/24725854.2023.2223245.
24. Wang, D.*, and Liu, K. (2023) “An integrated deep learning-based data fusion and degradation modeling method for improving prognostics,” IEEE Transactions on Automation Science and Engineering, in press, doi: 10.1109/TASE.2023.3242355.
23. Wang, D.*, Xian, X., and Song, C. (2023) “Joint learning of failure mode recognition and prognostics for degradation processes,” IEEE Transactions on Automation Science and Engineering, in press, doi: 10.1109/TASE.2023.3239004.
22. Zhao, C., Liu, F., Du, S., Wang, D., and Shao, Y. (2022) “An earth mover’s distance based multivariate generalized likelihood ratio control chart for effective monitoring of 3D point cloud surface,” Computers and Industrial Engineering, vol. 175, no. 2022, pp. 108911, 1–12.
21. Wang, D., Li, F., Liu, K., and Zhang, X. (2022) “Real-time IoT security solution leveraging an integrated learning-based approach,” ACM Transactions on Sensor Networks, in press, doi: 10.1145/3582009.
20. Zan, X., Wang, D., and Xian, X. (2023) “Spatial rank-based augmentation for nonparametric online monitoring and adaptive sampling of big data streams,” Technometrics, vol. 65, no. 2, pp. 243–256.
19. Yu, G., Wang, D., Liu, J., and Zhang, X. (2023) “Distribution-agnostic few-shot industrial fault diagnosis via adaptation-aware optimal feature transport,” IEEE Transactions on Industrial Informatics, vol. 19, no. 4, pp. 5623–5632.
18. Wang, D.*, Li, F., and Liu, K. (2023) “Modeling and monitoring of a multivariate spatio-temporal network system,” IISE Transactions, vol. 55, no. 4, pp. 331–347.
17. Wang, D., Liu, K., and Zhang, X. (2022) “A generic indirect deep learning approach for multisensor degradation modeling,” IEEE Transactions on Automation Science and Engineering, vol. 19, no. 3, pp. 1924–1940.
16. Wang, D., Liu, K., and Zhang, X. (2022) “A spatiotemporal prediction approach for a 3D thermal field from sensor networks,” Journal of Quality Technology, vol. 54, no. 2, pp. 215–235.
• 论文获得2019年INFORMS Annual Meeting数据挖掘分会最佳学生论文奖
• 论文获得2019年中国优选法统筹法与经济数学研究会工业工程分会年会优秀论文奖
15. An, Y., Wang, D., and Zhang, X. (2020) “A novel local temperature change detection approach in a 3D thermal field,” Quality Technology and Quantitative Management, vol. 17, no. 6, pp. 723–737.
14. Wang, D., Liu, K., Zhang, X., and Wang, H. (2020) “Spatiotemporal multitask learning for 3-D dynamic field Modeling,” IEEE Transactions on Automation Science and Engineering, vol. 17, no. 2, pp. 708–721.
• 论文获得2019年IISE Annual Conference数据分析和信息系统分会最佳学生论文提名奖
• 论文获得2018年中国质量与可靠性技术国际研讨会最佳展示二等奖
13. Wang, D., Liu, K., and Zhang, X. (2020) “Spatiotemporal thermal field modeling using partial differential equations with time-varying parameters,” IEEE Transactions on Automation Science and Engineering, vol. 17, no. 2, pp. 646–657.
12. Wang, D., Liu, K., and Zhang, X. (2019) “Modeling of a three-dimensional dynamic thermal field under grid-based sensor networks in grain storage,” IISE Transactions, vol. 51, no. 5, pp. 531–546.
• 论文获得2020年IISE Transactions最佳应用论文奖
• 论文入选2019年ISE Magazine专题文章
11. Wang, D., and Zhang, X. (2019) “Dynamic field monitoring based on multitask learning in sensor networks,” Sensors, vol. 19, no. 7, 1533, pp. 1–17.
10. Wang, D., and Zhang, X. (2019) “Modeling of a 3D temperature field by integrating a physics-specific model and spatiotemporal stochastic processes,” Applied Sciences, vol. 9, no. 10, 2108, pp. 1–13.
EI会议论文
9. Wang, Y., Li, F., and Wang, D.* (2024) “Few-shot RUL prediction with a Hypernetwork structure incorporating uncertainty quantification and calibration,” Proceedings of IEEE International Conference of Automation Science and Engineering, pp. 1–6.
8. Lin, J., Li, F., Wang, D., and Han, H. (2024) “Empowering industrial cybersecurity: dynamic temporal graph evolution with GNN edge updates,” Proceedings of Chinese Process Control Conference, pp. 1–6.
7. Li, H., Wang, L., Peng, Y., and Wang, D. (2023) “Kernel density estimation with efficient bandwidth selection,” Proceedings of the Winter Simulation Conference, pp. 1–12.
6. Yu, G. Xiao, L., Wang, Y., Wang, D., Liu, J., and Zhang, X. (2023) “UGG-DA: Uncertainty-guided gradual distribution adaptation and dynamic prediction with streaming data”, Proceedings of Chinese Control and Decision Conference, pp. 1–6.
5. Wang, Y. and Wang, D.* (2023) “An entropy- and attention-based feature extraction and selection network for multi-target coupling scenarios,” Proceedings of IEEE International Conference of Automation Science and Engineering, pp. 1–6.
4. Wang, X. and Wang, D.* (2023) “A control chart for monitoring multivariate spatiotemporal correlated data during grain storage,” Proceedings of IEEE International Conference of Automation Science and Engineering, pp. 1–6.
3. Wang, Y. and Wang, D.* (2022) “A data fusion-based LSTM network for degradation modeling under multiple operational conditions,” Proceedings of IEEE International Conference of Automation Science and Engineering, pp. 16–21.
2. Wang, D. and Zhang, X. (2017) “Modeling grain quality characteristics via dynamic models using sensing data,” Proceedings of the IEEE/SICE International Symposium on System Integration, pp. 336–341.
• 论文获得2017年IEEE/SICE-SII国际会议最佳论文奖
1. Wang, D., and Zhang, X. (2015) “A prediction method for interior temperature of grain storage via dynamics model: a simulation study,” Proceedings of IEEE International Conference of Automation Science and Engineering, pp. 1477–1483.