Qing Liu | Engineering | Best Researcher Award

Prof Dr. Qing Liu | Engineering | Best Researcher Award

University of Science and Technology Beijing | China

Author Profile

Orcid

Early Academic Pursuits 📚

Prof. Dr. Qing Liu's academic journey began with a Bachelor of Metallurgical Engineering from the University of Science and Technology Beijing (USTB). His pursuit of advanced knowledge led him to earn a Master’s and Ph.D. in Metallurgical Engineering from the same institution, focusing on Ferrous Metallurgy. His foundational education was further enriched by a visiting scholar position at La Trobe University, Australia.

Professional Endeavors 🔬

Prof. Liu has made significant strides in his professional career at USTB, where he has served in various roles, including Professor, Deputy Director of the State Key Laboratory of Advanced Metallurgy, and Vice Dean of the School of Metallurgical Engineering. His leadership extends beyond USTB, with positions such as Foreign Member of the Russian Academy of Natural Sciences and Fellow of the International Association of Advanced Materials. He has also contributed to the field through his roles in numerous technical committees and research centers, focusing on steel manufacturing and metallurgical processes.

Contributions and Research Focus 🔍

Prof. Liu's research emphasizes optimization and quality control in steelmaking and continuous casting processes. His work in metallurgical process engineering and intelligence has led to significant advancements in simulation, optimization, and the high-efficiency utilization of metallic resources. His research has been recognized with several prestigious awards, including the Golden Scientist Grand Award and the Invention Entrepreneurship and Innovation Award.

Accolades and Recognition 🏆

Prof. Liu's innovative contributions have earned him numerous accolades. These include the Golden Scientist Grand Award for “Multiscale modeling and collaborative manufacturing for steelmaking plants,” the Gold Medal at the World Invention Innovation Contest, and multiple awards for his advancements in steel casting and refining processes. His achievements are a testament to his impact and leadership in the field of metallurgy.

Impact and Influence 🌟

Prof. Liu's work has profoundly influenced the field of metallurgical engineering, particularly in steel manufacturing processes. His research has not only advanced theoretical understanding but also led to practical innovations that improve industry practices. His leadership roles and active participation in various international and national committees reflect his commitment to advancing metallurgy.

Legacy and Future Contributions 🔮

Prof. Liu's legacy is defined by his groundbreaking research and contributions to metallurgical engineering. His future work promises to continue advancing the field, particularly through further innovations in steelmaking processes and resource utilization. His ongoing commitment to education and research ensures that his impact will be felt by future generations of engineers and researchers.

 

Publications


  • 📜 Simulation Model of a Steelmaking–Continuous Casting Process Based on Dynamic-Operation Rules
    • Author: Xin Shao, Qing Liu, Hongzhi Chen, Jiangshan Zhang, Shan Gao, Shaoshuai Li
    • Journal: Materials
    • Year: 2024

  • 📜 Influence of Different Submerged Entry Nozzles for Continuous Casting of Ultrathick Slab
    • Author: Quanhui Li, Qing Liu, Qiangqiang Wang, Shengping He, Xinping Mao
    • Journal: Steel Research International
    • Year: 2024

  • 📜 Numerical Simulation of Heat Transfer Behavior in Hot Spot Zone of Converter Molten Bath
    • Author: Rui Jiang, Jiankun Sun, Xinping Mao, Qing Liu
    • Journal: Steel Research International
    • Year: 2024

  • 📜 Modeling of LF Refining Process: A Review
    • Author: Zi-cheng Xin, Jiang-shan Zhang, Kai-xiang Peng, Jun-guo Zhang, Chun-hui Zhang, Qing Liu
    • Journal: Journal of Iron and Steel Research International
    • Year: 2024

  • 📜 Analysis and Control of the Slab Hot Ductility Behaviors Based on Nozzle Arrangement during Continuous Casting
    • Author: Huisheng Wang, Jiangshan Zhang, Chao Wang, Zhigang Yang, Jun Wu, Min Guan, Qing Liu
    • Journal: Steel Research International
    • Year: 2024

 

Harikumar Rajaguru | Engineering | Best Researcher Award

Dr. Harikumar Rajaguru | Engineering | Best Researcher Award

Bannari Amman Institute of Technology | India

Author Profile

Scopus

Orcid

Google Scholar

Early Academic Pursuits

Dr. Harikumar Rajaguru began his academic journey in electronics and communication engineering. He completed his Bachelor of Engineering in Electronics and Communication Engineering from Regional Engineering College, Trichy, affiliated with Bharathidasan University, in 1988. He then pursued a Master of Engineering in Applied Electronics at the College of Engineering, Guindy, under Anna University Chennai, graduating in 1990. His passion for biomedical signal processing led him to obtain a Ph.D. in Information and Communication Engineering, with a specialization in Bio Signal Processing, from Thiagarajar College of Engineering, Madurai, under Anna University Chennai in 2009. His Ph.D. thesis focused on the use of soft computing techniques and non-linear models for the performance analysis and classification of epilepsy risk levels from EEG signals.

Professional Endeavors

Dr. Rajaguru's professional career spans over 33 years in academia. He began as a lecturer and senior lecturer at PSNA College of Engineering and Technology, Dindigul, where he served for ten years. He then worked as an Assistant Professor at PSG College of Technology, Coimbatore, for one year. His journey continued at Amrita Institute of Technology, Coimbatore, as a Senior Lecturer and Assistant Professor for over two years. Dr. Rajaguru also spent time as a research scholar at Thiagarajar College of Engineering, Madurai. Since 2006, he has been a professor at Bannari Amman Institute of Technology, Sathyamangalam, where he has contributed significantly to the field of biomedical signal processing and soft computing.

Contributions and Research Focus

Dr. Rajaguru has made substantial contributions to biomedical signal processing, particularly in the classification of epilepsy risk levels from EEG signals. He has been involved in several funded projects, including the development of an ASIC fuzzy processor for diabetic epilepsy risk level classification, wavelet networks for epilepsy risk levels classification from EEG signals, and a non-invasive photo plethysmographic-based glucometer for mass diabetes screening. His research primarily focuses on applying soft computing techniques and developing non-linear models for analyzing and classifying biomedical signals.

Accolades and Recognition

Throughout his career, Dr. Rajaguru has received numerous accolades and recognition for his contributions to engineering and biomedical signal processing. He has published multiple papers in SCI-indexed journals and conferences, showcasing his research findings and innovations. His work has been recognized with patents for various biomedical devices, including an electro gastrogram system for detecting gastric disorders, a sensor for stress measurement using photo plethysmography, and a device for detecting ventricular tachycardia. These patents highlight his innovative approach to solving complex biomedical problems.

Impact and Influence

Dr. Rajaguru's work has significantly impacted biomedical signal processing, particularly in the analysis and classification of epilepsy risk levels and the development of non-invasive diagnostic tools. His research has provided new insights into the use of soft computing and wavelet networks in biomedical applications. His contributions have influenced both academic research and practical applications in the medical field, improving diagnostic techniques and patient outcomes.

Legacy and Future Contributions

Dr. Rajaguru's legacy lies in his dedication to advancing biomedical signal processing through innovative research and teaching. He has guided numerous students in their research projects, fostering the next generation of engineers and researchers. As he continues his work at Bannari Amman Institute of Technology, he is poised to make further contributions to the field, particularly in developing new diagnostic tools and techniques for medical applications. His commitment to research and education ensures that his influence will be felt for years to come, both in academia and the broader field of biomedical engineering.

 

Notable Publications

Wavelet feature extraction and bio-inspired feature selection for the prognosis of lung cancer − A statistical framework analysis 2024

Processing of digital mammogram images using optimized ELM with deep transfer learning for breast cancer diagnosis 2023 (5)

Exploration and Enhancement of Classifiers in the Detection of Lung Cancer from Histopathological Images 2023 (6)

Detection of Diabetes through Microarray Genes with Enhancement of Classifiers Performance 2023 (1)

Evaluation and Exploration of Machine Learning and Convolutional Neural Network Classifiers in Detection of Lung Cancer from Microarray Gene—A Paradigm Shift 2023 (6)