Yuxin Zhang | Energy and Sustainability | Best Researcher Award

Mr. Yuxin Zhang | Energy and Sustainability | Best Researcher Award

Tongji University | China

Mr. Yuxin Zhang is a postgraduate student at Tongji University, specializing in Energy and Power with a focus on refrigeration and high-temperature heat pump systems. His academic journey is centered on advancing sustainable thermal energy technologies, particularly in the context of rail vehicle air-conditioning. Zhang has contributed significantly to the replacement of traditional refrigerants with low-GWP refrigerant mixtures, addressing both environmental and energy efficiency challenges. His research has been published in Energies, a leading SCI-indexed journal, with over 1 citations, an h-index of 1, and multiple supporting documents available through his publication record. Building on this foundation, he has applied for two invention patents related to energy-efficient refrigeration and heating systems. His collaborations with the Shanghai Refrigeration Society and industry-based projects highlight his applied research experience and commitment to bridging academic innovation with industrial implementation. Zhang’s interests span refrigeration cycles, high-temperature heat pump technologies, and sustainable cooling solutions, reflecting his dedication to green energy transitions. Recognized for his early yet impactful contributions, he has actively participated in research addressing climate-friendly alternatives in thermal management. With a growing publication profile and strong research outputs, he aspires to advance innovation in refrigeration engineering and contribute meaningfully to global sustainability goals.

Profiles : Scopus | Google Scholar 

Featured Publications

Zhang, Y., Cao, S., Zhao, L., & Cao, J. (2022). A case application of WRF-UCM models to the simulation of urban wind speed profiles in a typhoon. Journal of Wind Engineering and Industrial Aerodynamics, 220, 104874.

Liu, C., Zhang, Y., Yao, Y., & Huang, Y. (2019). Calculation method for flexural capacity of high strain-hardening ultra-high performance concrete T-beams. Structural Concrete, 20(1), 405–419.

Zhang, Y., Cao, S., & Cao, J. (2022). An improved consistent inflow turbulence generator for LES evaluation of wind effects on buildings. Building and Environment, 223, 109459.

Zhang, Y., Cao, S., Cao, J., & Wang, J. (2023). Effects of turbulence intensity and integral length scale on the surface pressure on a rectangular 5:1 cylinder. Journal of Wind Engineering and Industrial Aerodynamics, 236, 105406.

Zhang, Y., Cao, S., & Cao, J. (2023). Implementation of an embedded LES model with parameter assessment for predicting surface pressure and surrounding flow of an isolated building. Journal of Wind Engineering and Industrial Aerodynamics. Advance online publication.

Qi Liang | Pattern Recognition | Excellence in Research

Mr Qi Liang | Pattern Recognition | Excellence in Research

Master in Tongji University at China

Qi Liang is a dedicated researcher and master’s student at Tongji University, PR China, specializing in mechanical engineering. With a strong foundation in industrial engineering from Jiangsu University of Science and Technology, Qi has a keen interest in advancing technology through innovative research. Recognized for introducing self-supervised learning methods in semiconductor applications, Qi’s work aims to solve complex challenges in pattern recognition. Their publication in Engineering Applications of Artificial Intelligence reflects a commitment to high-impact research. With multiple ongoing projects and a focus on practical applications, Qi is paving the way for efficient solutions in the semiconductor industry.

Profile

Google Scholar

Strengths for the Award

  1. Innovative Research: Qi Liang has introduced a self-supervised learning method for few-shot learning in semiconductor applications, demonstrating originality and a significant contribution to the field.
  2. Publication Record: The recent publication in Engineering Applications of Artificial Intelligence showcases a commitment to high-quality research, adding to the credibility of the work.
  3. Diverse Research Interests: With a focus on computer vision, multi-modal learning, and fault diagnosis, Qi’s work spans multiple cutting-edge areas, which increases the potential impact of the research.
  4. Practical Applications: The research addresses real-world challenges in the semiconductor industry, offering low-cost, efficient methods that have immediate applicability.
  5. Academic Engagement: Qi’s active involvement in ongoing projects and industry collaborations indicates a robust engagement with both academic and practical aspects of research.

Areas for Improvement

  1. Broader Collaboration: Expanding collaborations with international researchers could enhance the research’s visibility and applicability on a global scale.
  2. Increased Publication Volume: While the current publication is commendable, a more extensive publication record could further establish Qi’s expertise and leadership in the field.
  3. Outreach and Communication: Engaging in more outreach activities, such as conferences and seminars, could help disseminate findings and foster connections within the research community.

Education 

Qi Liang graduated with a Bachelor’s degree in Industrial Engineering from Jiangsu University of Science and Technology, where foundational principles of engineering and technology were mastered. Currently, Qi is pursuing a Master’s degree in Mechanical Engineering at Tongji University, one of China’s prestigious institutions, now in their third year of the program. This advanced education has allowed Qi to engage deeply with cutting-edge topics, particularly in computer vision and machine learning. Through rigorous coursework and research, Qi has developed expertise in areas such as pattern recognition, self-supervised learning, and fault diagnosis, equipping them with the skills necessary to tackle complex engineering problems and contribute significantly to both academic and industrial advancements.

Experience

Qi Liang has gained substantial experience through multiple research projects, totaling five completed or ongoing initiatives that emphasize practical applications of machine learning in semiconductor manufacturing. In addition to academic research, Qi has participated in three consultancy and industry-sponsored projects, bridging the gap between theoretical knowledge and real-world applications. Their collaborative efforts in research have led to valuable partnerships and a broader understanding of the industry’s challenges and needs. As the first to implement self-supervised learning techniques in few-shot learning tasks related to wafer map pattern recognition, Qi has showcased exceptional innovation. This unique approach has opened new avenues for cost-effective and efficient solutions within the semiconductor sector, positioning Qi as an emerging leader in their field.

Research Focus 

Qi Liang’s research focuses on the intersection of computer vision and machine learning, with a strong emphasis on pattern recognition, keypoint detection, and image retrieval. Specializing in self-supervised and multi-modal learning, Qi aims to develop innovative methodologies that minimize the reliance on labeled data while maximizing efficiency and applicability in industrial contexts. Current research projects explore dynamic adaptation mechanisms for few-shot learning, specifically tailored for wafer map pattern recognition in the semiconductor industry. Qi is also interested in signal processing and fault diagnosis, seeking to improve reliability and performance in manufacturing processes. This research direction not only contributes to the academic community but also addresses pressing industry challenges, promoting advancements in automation and smart manufacturing.

Publication Top Notes

  • Masked Autoencoder with Dynamic Multi-Loss Adaptation Mechanism for Few Shot Wafer Map Pattern Recognition 📄

Conclusion

Qi Liang’s innovative contributions to the field of mechanical engineering and computer vision make a strong case for the Excellence in Research award. The unique approach to self-supervised learning in few-shot learning for wafer map pattern recognition signifies both a breakthrough in methodology and practical application in the semiconductor industry. With a few strategic improvements, Qi has the potential to further amplify the impact of their research and cement their status as a leading researcher in their field.