Dr . likui qiao | Engineering | Best Researcher Award

PhD student at shenyang university of technology , China

Qiao Likui is a highly capable and promising early-career researcher specializing in fault diagnosis and intelligent monitoring of complex electromechanical systems. With a strong academic record, he has published multiple first-author papers in top-tier journals such as Mechanical Systems and Signal Processing and Expert Systems With Applications, showcasing expertise in deep learning, meta-learning, and multi-task learning. His research demonstrates both theoretical depth and practical relevance, particularly in the field of wind energy. He has received prestigious honors including the National Scholarship and President’s Scholarship, and actively contributes to the academic community as a reviewer for leading journals. Additionally, his involvement in patents and book chapters reflects a commitment to knowledge application and dissemination. While further international exposure and independent research leadership could enhance his profile, Qiao’s outstanding achievements, technical skills, and dedication to advancing the field make him a strong and deserving candidate for the Best Researcher Award.

Professional Profile 

Education🎓

Qiao Likui has pursued his entire higher education at Shenyang University of Technology, demonstrating consistent academic excellence. He earned his Bachelor’s degree in Automation from the School of Electrical Engineering in 2019, where he built a strong foundation in electrical and control systems. Immediately after, he entered a direct Ph.D. program in Electrical Engineering (rated B+), continuing at the same institution. His doctoral studies, expected to be completed by June 2025, have focused on advanced topics including fault diagnosis, machine learning, and intelligent energy systems. During his academic journey, he has undertaken rigorous coursework in subjects such as circuits, power electronics, digital and analog electronics, automatic control principles, artificial intelligence, and specialized studies in wind power generation. This educational background, combining theoretical knowledge with practical application, has prepared him well for high-impact research and innovation in intelligent fault monitoring and predictive maintenance of electromechanical systems.

Professional Experience📝

Qiao Likui has developed a robust professional research profile through his doctoral studies and collaborative projects at Shenyang University of Technology. Although primarily engaged in academia, he has amassed significant experience in applied research related to intelligent fault diagnosis, condition monitoring, and predictive maintenance of complex electromechanical systems. He has actively contributed to multiple high-impact research projects, co-authoring journal papers and conference proceedings that involve cutting-edge techniques such as meta-learning, deep learning, and multi-task learning. His work often bridges theoretical innovation with engineering application, particularly in wind turbine systems. Qiao also played a key role in drafting a national patent and contributed a chapter to a professional textbook on virtual power plant management. His software proficiency in MATLAB, SolidWorks, PyCharm, and LaTeX has supported his research execution and publication. In addition, his role as a peer reviewer for leading IEEE and international journals reflects his growing influence and credibility in the research community.

Research Interest🔎

Qiao Likui’s research interests lie at the intersection of intelligent systems and advanced diagnostics for complex electromechanical equipment. His primary focus is on fault diagnosis, fault prediction, and condition monitoring, with an emphasis on improving the reliability and efficiency of systems such as wind turbines and integrated energy networks. He is particularly interested in leveraging cutting-edge machine learning techniques, including deep learning, meta-learning, and multi-task learning, to develop intelligent models capable of accurate detection and prediction under limited data conditions. His work aims to enhance the operational performance and predictive maintenance of energy systems by enabling smarter, data-driven decision-making. Qiao is also passionate about exploring the integration of artificial intelligence with renewable energy applications, contributing to sustainable and intelligent energy management. His research not only addresses academic challenges but also targets real-world engineering problems, positioning him to make meaningful advancements in the field of intelligent monitoring and energy system optimization.

Award and Honor🏆

Qiao Likui has received numerous prestigious awards and honors in recognition of his outstanding academic and research performance. He was awarded the National Scholarship in 2023, one of the highest honors for graduate students in China, reflecting his excellence in both academic achievement and research contributions. He has also been the recipient of the President’s Scholarship and multiple First-Class Scholarships from Shenyang University of Technology between 2022 and 2025. His consistent dedication earned him titles such as Outstanding Graduate Student and Excellent League Member. In addition to academic honors, he has demonstrated innovation and problem-solving skills through national competitions, securing prizes such as the Third Prize in the 7th “Internet+” Innovation and Entrepreneurship Competition, and Second Prize in the National College Students’ Electrical Mathematics Modeling Competition. These accolades highlight his academic rigor, innovative thinking, and strong potential as a leading young researcher in the field of intelligent energy systems.

Research Skill🔬

Qiao Likui possesses a strong set of research skills that underpin his success as an emerging scholar in intelligent electromechanical systems. He is proficient in applying advanced machine learning techniques—such as deep learning, meta-learning, and multi-task learning—to complex problems in fault diagnosis and predictive maintenance. His ability to design, train, and optimize data-driven models enables him to extract meaningful insights from limited or noisy data, making his research both robust and applicable to real-world energy systems. Qiao is highly skilled in using industry-standard engineering and analysis software, including MATLAB, SolidWorks, Origin, and PyCharm, which supports both simulation and experimental validation of his research. He is also adept in academic writing and LaTeX typesetting, ensuring clarity and professionalism in his publications. His experience as a peer reviewer for top-tier journals further reflects his critical thinking, technical judgment, and deep understanding of the research landscape in artificial intelligence and energy systems.

Conclusion💡

Qiao Likui is a highly promising early-career researcher with significant achievements in AI-driven fault detection for energy systems, excellent publication record, strong academic awards, and active peer-review roles. His work demonstrates both technical depth and research impact, particularly in the fields of wind energy systems and machine learning applications.

Verdict:
He is a strong candidate for the Best Researcher Award in the Ph.D. or Early Career Researcher category. While a few areas—like international visibility and leadership independence—could be enhanced, his current trajectory clearly reflects excellence, innovation, and commitment to solving critical real-world problems.

Publications Top Noted✍

  • Title: Fault detection in wind turbine generators using a meta-learning-based convolutional neural network
    Authors: L. Qiao, Y. Zhang, Q. Wang
    Year: 2023
    Citations: 32

  • Title: Fault diagnosis for wind turbine generators using normal behavior model based on multi-task learning
    Authors: Y. Zhang, L. Qiao, M. Zhao
    Year: 2023
    Citations: 11

  • Title: Fault diagnosis of permanent magnet synchronous motor based on improved probabilistic neural network
    Authors: X. Dai, Y. Zhang, L. Qiao, D. Sun
    Year: 2021
    Citations: 9

  • Title: Deep reinforcement learning based approach for real-time dispatch of integrated energy system with hydrogen energy utilization
    Authors: Y. Han, Y. Zhang, L. Qiao
    Year: 2022
    Citations: 6

  • Title: Cathode sheath parameters and their influences on arc root behavior after liquid metal bridge rupture in atmospheric air
    Authors: S. Peng, J. Li, J. Yang, L. Yu, Y. Cao, S. Liu, L. Qiao
    Year: 2023
    Citations: 5

  • Title: Fault diagnosis for wind turbine generators based on Model-Agnostic Meta-Learning: A few-shot learning method
    Authors: L. Qiao, Y. Zhang, Q. Wang, D. Li, S. Peng
    Year: 2024
    Citations: 3

  • Title: Joint forest fire rescue strategy based on multi-agent proximal policy optimization
    Authors: J. Zhang, Y. Zhang, L. Qiao
    Year: 2022
    Citations: 3

  • Title: A deep neural networks based on multi-task learning and its application
    Authors: M. Zhao, Y. Zhang, L. Qiao, D. Sun
    Year: 2021
    Citations: 3

  • Title: Few-shot fault diagnosis for pitch system of wind turbines based on prototypical network with Mahalanobis distance
    Authors: J.J. Yao, Y. Zhang, L. Qiao
    Year: Not listed (assumed 2023/2024)
    Citations: Not listed

 

likui qiao | Engineering | Best Researcher Award

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