Hang Xu | Mechanical Engineering | Best Researcher Award

Dr Hang Xu | Mechanical Engineering | Best Researcher Award

Assistant Professor, Concordia University, Canada

Dr. Hang Xu is an Assistant Professor in the Department of Mechanical, Industrial, and Aerospace Engineering at Concordia University, Montreal, Canada. With a Ph.D. in Mechanical Engineering from McGill University and an MSc in Aircraft Design from Beijing University of Aeronautics and Astronautics, Dr. Xu specializes in mechanical metamaterials, aerospace structures, soft robotics, and composite materials. His research focuses on developing advanced materials with programmable morphing and motion for applications in aerospace, sensors, actuators, and medical devices. Prior to joining Concordia, he held research positions at Imperial College London, Siemens Canada, and McGill University. Dr. Xu is recognized for his contributions to materials science and engineering, earning awards such as the Best Presentation Award at CSME/CFD2024 and the Teaching Excellence Award at Concordia University.

Professional Profile

Orcid

Scopus

Education 🎓

Dr. Hang Xu earned his Ph.D. in Mechanical Engineering from McGill University (2013–2018), where he worked under the supervision of Dr. Damiano Pasini. He completed his Master’s in Aircraft Design at Beijing University of Aeronautics and Astronautics (2011–2013) under Dr. Yuanming Xu. His Bachelor’s degree in Aircraft Design and Engineering was obtained from Shenyang Aerospace University (2007–2011), supervised by Dr. Weiping Zhang. His academic journey reflects a strong foundation in aerospace and mechanical engineering, with a focus on advanced materials and structural design. Dr. Xu’s education has equipped him with expertise in multiscale mechanics, composite materials, and mechanical metamaterials, which he now applies to cutting-edge research and teaching at Concordia University.

Experience 💼

Dr. Hang Xu has a diverse professional background, including roles as a Research Associate at Imperial College London (2020–present), a Postdoctoral Intern at Siemens Canada (2019–2020), and a Postdoctoral Researcher at McGill University (2018–2019). Since 2022, he has been an Assistant Professor at Concordia University, where he teaches and leads research in aerospace and mechanical engineering. His industrial experience at Siemens involved working on aero-derivative gas turbines, while his academic roles have focused on mechanical metamaterials, soft robotics, and composite materials. Dr. Xu’s career bridges academia and industry, combining theoretical research with practical applications in aerospace, robotics, and medical devices.

Awards and Honors 🏆

Dr. Hang Xu has received several accolades, including the Best Presentation Award at the 2024 Canadian Society for Mechanical Engineering (CSME) International Congress and the Teaching Excellence Award from Concordia University in 2023 for his course on Aircraft Design. He was also recognized for his contributions to COVID-19 research at Imperial College London in 2021. His work on mechanical metamaterials and aerospace structures has earned him a reputation as a leading researcher in his field. These awards highlight his excellence in both research and teaching, underscoring his commitment to advancing engineering knowledge and mentoring the next generation of engineers.

Research Focus 🔬

Dr. Hang Xu’s research focuses on mechanical metamaterialssoft roboticscomposite materials, and multiscale mechanics. He aims to develop advanced materials with programmable morphing and motion for innovative applications in aerospace structures, sensors, actuators, and medical devices. His work explores the design and optimization of materials with tailored properties, such as controllable thermal expansion, high stiffness, and programmable deformations. By integrating computational modeling and experimental validation, Dr. Xu’s research bridges the gap between material science and engineering, enabling the creation of next-generation technologies for aerospace, robotics, and healthcare.

Publication Top Notes 📚

  1. Generalized tessellations of superellipitcal voids in low porosity architected materials for stress mitigation
  2. Thermally Actuated Hierarchical Lattices With Large Linear and Rotational Expansion
  3. Routes to program thermal expansion in three-dimensional lattice metamaterials built from tetrahedral building blocks
  4. Multiscale isogeometric topology optimization for lattice materials
  5. Multilevel hierarchy in bi-material lattices with high specific stiffness and unbounded thermal expansion
  6. Structurally Efficient Three-dimensional Metamaterials with Controllable Thermal Expansion

Conclusion 🌟

Dr. Hang Xu is a distinguished researcher and educator in mechanical and aerospace engineering, with a strong focus on mechanical metamaterials, soft robotics, and composite materials. His academic and professional journey, marked by prestigious awards and impactful research, demonstrates his commitment to advancing engineering solutions for real-world challenges. Through his innovative work and dedication to teaching, Dr. Xu continues to inspire and shape the future of engineering.

Qi Liang | Mechanical Engineering | Best Paper Award

Mr . Qi Liang | Mechanical Engineering | Best Paper Award

Mechanical Engineering at Tongji University, China

Qi Liang is a dedicated researcher and master’s student at Tongji University, PR China, specializing in Mechanical Engineering. With a foundational degree in Industrial Engineering from Jiangsu University of Science and Technology, Qi has cultivated a strong passion for integrating advanced technologies into industrial applications. He has made significant strides in the field of computer vision, particularly through his groundbreaking work on self-supervised learning methods. Qi is committed to addressing challenges in the semiconductor industry, emphasizing cost-effective and efficient solutions. He is recognized for his collaborative spirit and innovative mindset, which have led to impactful research contributions and a growing publication record. Qi aspires to push the boundaries of engineering through research and development, making significant contributions to both academia and industry.

Profile:

ORCID Profile

Strengths for the Award:

  1. Innovative Research: Qi Liang has introduced a novel self-supervised learning method in the context of few-shot learning for wafer map pattern recognition. This pioneering approach addresses a significant challenge in the semiconductor industry, showcasing both creativity and relevance.
  2. Impactful Contributions: The research indicates potential for low-cost, efficient methods with high applicability, which can lead to substantial advancements in industrial practices. This aligns with current trends toward automation and efficiency.
  3. Strong Publication Record: Qi’s publication in a reputable journal (Engineering Applications of Artificial Intelligence) demonstrates his ability to contribute to high-impact research. His citation index further establishes the relevance and recognition of his work within the academic community.
  4. Diverse Research Interests: His focus on various aspects of computer vision and machine learning, including keypoint detection and fault diagnosis, illustrates a comprehensive skill set that can lead to interdisciplinary innovations.

Areas for Improvement:

  1. Broaden Collaboration: While Qi has engaged in some consultancy and industry projects, expanding his collaborative efforts with industry partners could enhance the practical application of his research.
  2. Increase Visibility: Greater participation in conferences and workshops could raise Qi’s profile in the academic community, potentially leading to more networking opportunities and collaborations.
  3. Patent Development: Actively pursuing patents related to his research could strengthen his contributions to the field and provide practical tools for industry adoption.

Education:

Qi Liang graduated with a degree in Industrial Engineering from Jiangsu University of Science and Technology, where he laid the foundation for his analytical and problem-solving skills. Currently, he is in the third year of his Master’s program in Mechanical Engineering at Tongji University. Here, he has honed his expertise in advanced engineering principles, particularly in the realms of computer vision and machine learning. His academic journey is characterized by a rigorous exploration of self-supervised learning techniques and their applications in industrial contexts. Qi’s education has provided him with a robust understanding of both theoretical and practical aspects of mechanical engineering, preparing him to tackle real-world challenges. His pursuit of knowledge is fueled by a desire to innovate and contribute to the evolving landscape of engineering technologies.

Experience:

Qi Liang has actively engaged in five completed and ongoing research projects during his academic career. His work primarily focuses on self-supervised learning and its application in few-shot learning tasks for wafer map pattern recognition, a significant advancement in the semiconductor industry. Alongside his research, Qi has participated in three consultancy and industry projects, collaborating with professionals to bridge the gap between theory and practice. His recent publication in the prestigious journal Engineering Applications of Artificial Intelligence highlights his ability to produce high-quality research that addresses contemporary issues in technology and industry. In addition to his research and industry experience, Qi’s commitment to collaboration has fostered valuable partnerships, enhancing the impact of his work. As he progresses in his studies, Qi remains dedicated to expanding his experience and contributing meaningfully to the field of mechanical engineering.

Research Focus:

Qi Liang’s research interests lie primarily in the intersection of computer vision and machine learning, with a particular emphasis on pattern recognition, keypoint detection, and object detection. His innovative approach incorporates self-supervised learning techniques, allowing for effective few-shot learning in challenging scenarios such as wafer map pattern recognition. Qi is dedicated to exploring multi-modal learning, signal processing, and fault diagnosis to develop robust solutions for industrial applications. By focusing on low-cost and efficient methodologies, his work has significant implications for the semiconductor industry, where traditional supervision signals are often limited. Qi’s research not only aims to enhance existing technologies but also seeks to pave the way for new strategies that leverage advanced learning algorithms. Through his contributions, he aspires to influence the future of mechanical engineering and promote the adoption of cutting-edge technologies in real-world applications.

Publications Top Notes:

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

Conclusion:

Qi Liang’s innovative research, impactful contributions, and strong publication record make him a compelling candidate for the Best Researcher Award. With a focus on broadening collaborations and enhancing visibility, he has the potential to further elevate his research profile and impact. His work not only contributes to academic knowledge but also addresses real-world industrial challenges, underscoring his suitability for this prestigious recognition.