Haosen Yang | Energy data analytics | Best Researcher Award

Dr. Haosen Yang | Energy data analytics | Best Researcher Award

Dr. Haosen Yang,  Hong Kong Polytechnic University, Hong Kong.

Haosen Yang is a dedicated researcher specializing in smart grids, renewable energy, and machine learning. Born in 1996 in Shandong, China, he has developed expertise in high-dimensional statistics, energy systems modeling, and fault detection. Currently working on enhancing the resilience of power grids, Haosen’s research focuses on integrating transportation systems and battery fault detection using advanced data-driven methods. He has published multiple journal articles and served as an editor for Power System Protection and Control, contributing significantly to the field. His interdisciplinary approach combines energy systems with cutting-edge machine learning techniques to improve energy forecasting and system operation.

Profile

Google Scholar

 

Early Academic Pursuits 🎓

Haosen Yang, born in 1996 in Shandong, China, has demonstrated a passion for research and learning from a young age. His academic journey began at Shanghai Jiao Tong University, where he honed his skills and knowledge in the fields of smart grids, renewable energy, and machine learning. His dedication to his studies allowed him to develop a deep understanding of high-dimensional statistics, power grid resilience, and fault detection in various energy systems. Throughout his academic years, Haosen exhibited a strong aptitude for interdisciplinary research, combining technical expertise in energy systems with cutting-edge statistical methods. His commitment to academic excellence set the foundation for his future contributions to the field of energy systems.

Professional Endeavors 💼

Currently, Haosen Yang is focused on high-dimensional statistics-based modeling for the resilience of power grids, specifically integrating transportation systems, battery fault detection, and related technologies. His professional work extends into the areas of data-driven energy system modeling and operation, where he employs innovative methods to analyze and improve energy forecasting techniques. As an active researcher, he continues to contribute to the development of smarter, more efficient energy systems. In addition to his technical work, Haosen has taken on an editorial role for the SCI journal Power System Protection and Control, where he actively contributes to the advancement of knowledge in the field.

Contributions and Research Focus 🔬

Haosen’s research interests revolve around the intersection of smart grids, renewable energy, and machine learning. His primary focus is on improving the resilience and efficiency of power grids through the application of high-dimensional statistics and machine learning techniques. His contributions span several areas, including fault detection in energy devices, data-driven modeling of energy systems, and predictive energy forecasting. By incorporating machine learning algorithms into energy systems, Haosen is helping to create smarter and more reliable grids that are better equipped to handle fluctuations in energy demand and supply. His interdisciplinary approach has allowed him to explore innovative solutions for complex problems in energy systems.

Accolades and Recognition 🏆

Haosen Yang has gained recognition for his exceptional contributions to energy systems and machine learning. With 11 journal papers and 1 conference paper published as the first author, his research has garnered significant attention in the academic community. His expertise has led to invitations to serve as an editor for the Power System Protection and Control journal, where he plays a vital role in shaping the direction of research in the field. His work has been praised for its practical applications and theoretical rigor, earning him respect among his peers and colleagues.

Impact and Influence 🌍

The impact of Haosen Yang’s work extends beyond the academic sphere, influencing real-world applications in energy systems. His focus on the resilience of power grids and fault detection systems has the potential to improve the reliability and sustainability of energy infrastructure, particularly in the face of growing demands for renewable energy. His research into smart grid technologies and machine learning is helping to shape the future of energy systems by making them more adaptive, efficient, and secure. Haosen’s contributions to the field of renewable energy and power grid resilience are making a lasting impact on both academic research and industry practices.

Legacy and Future Contributions 🚀

Haosen Yang’s work is poised to leave a lasting legacy in the field of energy systems and renewable energy. His interdisciplinary approach and innovative use of machine learning techniques are laying the groundwork for future advancements in smart grids, energy forecasting, and fault detection. Looking ahead, Haosen is committed to continuing his research and contributing to the development of sustainable and resilient energy systems. His dedication to improving the efficiency and reliability of energy infrastructure will undoubtedly lead to new breakthroughs that will have a positive impact on the global energy landscape for years to come.

Research Philosophy and Vision 🔭

Haosen Yang’s research philosophy is centered around using advanced statistical methods and machine learning techniques to solve complex challenges in energy systems. His vision for the future of energy is one where smart grids and renewable energy sources work seamlessly together, offering more resilient, efficient, and sustainable solutions. Haosen believes that interdisciplinary collaboration is key to unlocking new potential in energy systems and is dedicated to continuing his work in this area. Through his research, he aims to push the boundaries of what is possible, shaping the future of energy systems and ensuring their long-term sustainability.

Publication

  1. Title: Detection and classification of transmission line transient faults based on graph convolutional neural network
    Authors: H Tong, RC Qiu, D Zhang, H Yang, Q Ding, X Shi
    Year: 2021

 

  1. Title: Spatio-temporal correlation analysis of online monitoring data for anomaly detection and location in distribution networks
    Authors: X Shi, R Qiu, Z Ling, F Yang, H Yang, X He
    Year: 2019

 

  1. Title: A deep learning approach for fault type identification of transmission line
    Authors: X Shuwei, Q Caiming, Z Dongxia, HE Xing, CHU Lei, Y Haosen
    Year: 2019

 

  1. Title: Blind false data injection attacks against state estimation based on matrix reconstruction
    Authors: H Yang, X He, Z Wang, RC Qiu, Q Ai
    Year: 2022

 

  1. Title: Distributed event-triggered fixed-time fault-tolerant secondary control of islanded AC microgrid
    Authors: Z Wang, J Wang, M Ma, H Yang*, D Chen, L Wang, P Li
    Year: 2022

 

  1. Title: Unsupervised feature learning for online voltage stability evaluation and monitoring based on variational autoencoder
    Authors: H Yang, RC Qiu, X Shi, X He
    Year: 2020

 

  1. Title: Improving power system state estimation based on matrix-level cleaning
    Authors: H Yang, RC Qiu, L Chu, T Mi, X Shi, CM Liu
    Year: 2020

 

  1. Title: A Distributed Event-Triggered Fixed-Time Fault-Tolerant Secondary Control Framework of Islanded AC Microgrid Against Faults and Communication Constraints
    Authors: Z Wang, W Jie, M Ma, H Yang*, D Chen, L Xiong, P Li
    Year: 2022

 

Conclusion 🌟

Haosen Yang’s work stands at the forefront of the intersection between renewable energy, smart grid technology, and machine learning. His innovative contributions to power grid resilience and fault detection promise to shape the future of energy systems, making them more efficient, reliable, and adaptable. With a commitment to both academic excellence and practical applications, Haosen is set to leave a lasting legacy in the field. As he continues to explore and develop new solutions for complex energy challenges, his work will undoubtedly influence the development of more sustainable energy infrastructures globally.

Peishun Ye | Image Classification | Best Researcher Award

Prof. Peishun Ye | Image Classification | Best Researcher Award

Prof. Peishun Ye, Yulin University, China.

Peishun Ye is a distinguished researcher and educator specializing in artificial intelligence and big data technology. His contributions to AI-driven image classification, particularly through the MobileTransNeXt model, have significantly enhanced remote sensing applications. With a strong academic background and extensive professional experience, he has led multiple research projects, published influential papers, and played a crucial role in advancing AI methodologies. His work continues to inspire and drive progress in the field.

Profile

Scopus

🎓 Early Academic Pursuits

Peishun Ye’s journey into the world of technology began with a strong academic foundation. He graduated from Shaanxi Normal University in 2005 with a degree in Computer Science and Technology. This formative education laid the groundwork for his expertise in computing, programming, and technological advancements. His passion for innovation and problem-solving led him to pursue further studies, culminating in a Master’s degree in Computer Technology Engineering from Northwestern Polytechnical University in 2016. These academic pursuits provided him with the knowledge and skills necessary to make groundbreaking contributions in the field of artificial intelligence and big data technology.

🏛️ Professional Endeavors

Upon completing his undergraduate degree, Peishun Ye embarked on a professional career at Yulin University. His dedication to research and teaching has made a significant impact on the institution. Over the years, he has been actively involved in scientific exploration and has contributed extensively to the field of computer science. With a focus on artificial intelligence and big data, he has been instrumental in developing new methodologies and refining existing technologies. His work has not only shaped the academic curriculum but also provided industry-driven solutions that address real-world challenges.

💡 Contributions and Research Focus

Peishun Ye’s research is centered on big data technology and artificial intelligence, with a particular emphasis on deep learning models. His latest work introduces MobileTransNeXt, an innovative hybrid deep learning architecture that integrates CNN, Transformer, and BiLSTM to enhance image classification performance in remote sensing applications. MobileTransNeXt has demonstrated exceptional results, achieving 96.90% test accuracy on the UC-MERCED dataset and 95.18% on NWPU-RESISC45. To further optimize these results, he developed the MobileTransNeXt-based DFE model, which extracts features from pretrained MobileTransNeXt and boosts classification accuracy to 98.81% and 95.29% on the respective datasets. His groundbreaking work has set new benchmarks in AI-driven image classification.

🎯 Accolades and Recognition

Throughout his career, Peishun Ye has been recognized for his outstanding contributions to the field of computer science. He has successfully led and completed one key research and development project for the Shaanxi Provincial Department of Science and Technology, as well as two industry-university research projects under the Yulin Science and Technology Bureau—one completed and one still ongoing. His research findings have been widely acknowledged in the academic community, with over ten published papers, including three indexed in EI. These accomplishments underscore his commitment to advancing knowledge and fostering technological innovation.

🌐 Impact and Influence

Peishun Ye’s research has significantly influenced the fields of artificial intelligence and big data analytics. His work on MobileTransNeXt and its advanced DFE-based version has contributed to improving the efficiency and accuracy of remote sensing image classification. By integrating cutting-edge deep learning techniques, his models have opened new avenues for AI applications in environmental monitoring, urban planning, and geospatial analysis. His contributions continue to inspire fellow researchers, students, and industry professionals, driving progress in AI-driven solutions.

 

Publication

  • Title: “A Secure Routing Protocol for Wireless Sensor Networks”

  • Author: Ye, Peishun

  • Year: 2010

🎨 Conclusion

Peishun Ye’s journey in academia and research is a testament to his dedication and vision in artificial intelligence and big data. His innovations have set new standards in AI-driven image classification, and his commitment to knowledge dissemination ensures a lasting impact. As he continues to explore new frontiers in AI, his work will undoubtedly contribute to the evolution of technology, leaving a legacy of excellence and inspiration for future generations.


Chen Wang | neural network application | Best Researcher Award

Prof Dr.Chen Wang | neural network application | Best Researcher Award

Prof Dr Chen Wang School of Mining, Guizhou University China

Wang Chen is a distinguished professor at Guizhou University, specializing in mining engineering and resources and environment. He holds a PhD from the China University of Mining and Technology and has significant expertise in mining methods, rock mechanics, mining system engineering, and the kinematic behavior of rock layers in karst regions.

profile

scopus

📚 Recruitment Discipline Direction

Mining Engineering, Resources and Environment

🔬 Main Research Fields and Directions

Mining Methods,Rock Mechanics,Mining System Engineering,Roadway Support,Kinematic Mechanisms of Rock Layers in Karst Mountainous Areas.

💼 Key Research Projects (2018 – Present)

National Natural Science Foundation General Project (52174072)“Study on the Mechanisms of Rock Layer Movement under Repeated Mining in Karst Mountainous Areas,” 2022.01-2025.12, 580,000 RMB, Principal Investigator, ongoing. 💰National Natural Science Foundation Youth Science Fund Project (51904081)“Study on the Mechanisms of Instability Induced by Mining in Shallowly Buried Coal Layers in Karst Terrain,” 2020.01-2022.12, 240,000 RMB, Principal Investigator, ongoing. 🔍

✍️ Journal Articles:

Wang Chen et al. “An Expert System for Equipment Selection of Thin Coal Seam Mining.” (2019) .Wang Chen et al. “Optimal Selection of a Longwall Mining Method for a Thin Coal Seam Working Face.” (2016) .Wang Chen, Zhou Jie. “New Advances in Automatic Shearer Cutting Technology.” (2021) ⚙️

🥇 Achievements

Patents: 5 granted invention patents related to coal mining technology. Awards: Multiple research awards for contributions to mining technology. 🏆

📚 Publications

  1. Title: Study on strength prediction and strength change of Phosphogypsum-based composite cementitious backfill based on BP neural network
    Authors: Wu, M., Wang, C., Zuo, Y., Zhang, J., Luo, Y.
    Year: 2024
    Journal: Materials Today Communications
    Volume: 41
    Article Number: 110331

 

  1. Title: Correction: Determination of working resistance of support parameter variation of large mining height support: the case of Caojiatan coal mine
    Authors: Xue, B., Zhang, W., Wang, C.
    Year: 2024
    Journal: Geomechanics and Geophysics for Geo-Energy and Geo-Resources
    Volume: 10
    Issue: 1
    Pages: 14

 

  1. Title: Determination of working resistance of support parameter variation of large mining height support: the case of Caojiatan coal mine
    Authors: Xue, B., Zhang, W., Wang, C.
    Year: 2024
    Journal: Geomechanics and Geophysics for Geo-Energy and Geo-Resources
    Volume: 10
    Issue: 1
    Pages: 1

 

  1. Title: Evolution of Broken Coal’s Permeability Characteristics under Cyclic Loading–Unloading Conditions
    Authors: Luo, L., Zhang, L., Pan, J., Wang, C., Li, S.
    Year: 2024
    Journal: Natural Resources Research
    Volume: 33
    Issue: 5
    Pages: 2279–2297

 

  1. Title: Preparation and characterization of green lignin modified mineral cementitious firefighting materials based on uncalcined coal gangue and coal fly ash
    Authors: Dou, G., Wang, C., Zhong, X., Qin, B.
    Year: 2024
    Journal: Construction and Building Materials
    Volume: 435
    Article Number: 136799

 

  1. Title: Mining Technology Evaluation for Steep Coal Seams Based on a GA-BP Neural Network
    Authors: Li, X., Wang, C., Li, C., Luo, Y., Jiang, S.
    Year: 2024
    Journal: ACS Omega
    Volume: 9
    Issue: 23
    Pages: 25309–25321

 

  1. Title: Capturing rate- and temperature-dependent behavior of concrete using a thermodynamically consistent viscoplastic-damage model
    Authors: Tao, J., Yang, X.-G., Lei, Y., Wang, C.
    Year: 2024
    Journal: Construction and Building Materials
    Volume: 422
    Article Number: 135791

Conclusion

Wang Chen’s extensive research and numerous publications significantly contribute to the field of mining engineering. His focus on the complexities of karst geology and the development of intelligent mining technologies positions him as a leader in advancing mining safety and efficiency. His ongoing projects reflect a commitment to addressing contemporary challenges in the mining sector, particularly in relation to environmental sustainability and resource management.