Publication
2024
- Li, Y. 2024. Leveraging deep learning for energy consumption prediction in selective laser sintering. PhD Thesis , Cardiff University.
- Li, Y. et al. 2024. Towards an energy consumption optimisation framework in selective laser sintering system: Leveraging deep learning and FPGA technologies. Presented at: 4th ICPR AEM Poznań 2024 Poznan, Poland 28 June- 3 July 2024.
2023
- Hu, F. et al. 2023. Task-driven data fusion for additive manufacturing: framework, approaches, and case studies. Journal of Industrial Information Integration 34 100484. (10.1016/j.jii.2023.100484)
- Li, Y. et al. 2023. A hybrid model compression approach via knowledge distillation for predicting energy consumption in additive manufacturing. International Journal of Production Research 61 (13), pp.4525-4547. (10.1080/00207543.2022.2160501)
2022
- Li, Y. et al. 2022. Knowledge distillation for energy consumption prediction in additive manufacturing. Presented at: 14th IFAC Workshop on Intelligent Manufacturing Systems (IMS 2022) Tel-Aviv, Israel 28-30 March 2022. IFAC-PapersOnLine. Vol. 55(2).Elsevier. , pp.390-395. (10.1016/j.ifacol.2022.04.225)
2021
- Hu, F. et al. 2021. Deep fusion for energy consumption prediction in additive manufacturing. Presented at: 54th CIRP Conference on Manufacturing Systems (CMS 2021) Virtual 22-24 September 2021. 54th CIRP CMS 2021 - Towards Digitalized Manufacturing 4.0. Vol. 104.Procedia CIRP Elsevier. , pp.1878-1883. (10.1016/j.procir.2021.11.317)
- Li, Y. et al. 2021. A hybrid machine learning approach for energy consumption prediction in additive manufacturing. Presented at: 25th International Conference on Pattern Recognition (ICPR 2020) Virtual 15 January 2021. Pattern Recognition. ICPR International Workshops and Challenges Virtual Event, January 10–15, 2021, Proceedings, Part IV. Lecture Notes in Computer Science/Image Processing, Computer Vision, Pattern Recognition, and Graphics Vol. 12664. Springer. , pp.622-636. (10.1007/978-3-030-68799-1_45)
Articles
- Hu, F. et al. 2023. Task-driven data fusion for additive manufacturing: framework, approaches, and case studies. Journal of Industrial Information Integration 34 100484. (10.1016/j.jii.2023.100484)
- Li, Y. et al. 2023. A hybrid model compression approach via knowledge distillation for predicting energy consumption in additive manufacturing. International Journal of Production Research 61 (13), pp.4525-4547. (10.1080/00207543.2022.2160501)
Conferences
- Hu, F. et al. 2021. Deep fusion for energy consumption prediction in additive manufacturing. Presented at: 54th CIRP Conference on Manufacturing Systems (CMS 2021) Virtual 22-24 September 2021. 54th CIRP CMS 2021 - Towards Digitalized Manufacturing 4.0. Vol. 104.Procedia CIRP Elsevier. , pp.1878-1883. (10.1016/j.procir.2021.11.317)
- Li, Y. et al. 2021. A hybrid machine learning approach for energy consumption prediction in additive manufacturing. Presented at: 25th International Conference on Pattern Recognition (ICPR 2020) Virtual 15 January 2021. Pattern Recognition. ICPR International Workshops and Challenges Virtual Event, January 10–15, 2021, Proceedings, Part IV. Lecture Notes in Computer Science/Image Processing, Computer Vision, Pattern Recognition, and Graphics Vol. 12664. Springer. , pp.622-636. (10.1007/978-3-030-68799-1_45)
- Li, Y. et al. 2022. Knowledge distillation for energy consumption prediction in additive manufacturing. Presented at: 14th IFAC Workshop on Intelligent Manufacturing Systems (IMS 2022) Tel-Aviv, Israel 28-30 March 2022. IFAC-PapersOnLine. Vol. 55(2).Elsevier. , pp.390-395. (10.1016/j.ifacol.2022.04.225)
- Li, Y. et al. 2024. Towards an energy consumption optimisation framework in selective laser sintering system: Leveraging deep learning and FPGA technologies. Presented at: 4th ICPR AEM Poznań 2024 Poznan, Poland 28 June- 3 July 2024.
Thesis
- Li, Y. 2024. Leveraging deep learning for energy consumption prediction in selective laser sintering. PhD Thesis , Cardiff University.
Supervisors
Contact Details
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Queen's Buildings - East Building, Room Room W2.14, 5 The Parade, Newport Road, Cardiff, CF24 3AA
Queen's Buildings - East Building, Room Room W2.14, 5 The Parade, Newport Road, Cardiff, CF24 3AA