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Assoc. Prof. Dr Wenting Zha | Wind power prediction | Best Researcher Award

Associate Professor at China University of Mining and Technology-Beijing, China.

Wenting Zha is a researcher at China University of Mining and Technology-Beijing. His research focuses on machine learning, data analysis, and their applications in energy and power systems.

Professional Profile

scholar

scopus

πŸŽ“ Education

– PhD, (no specific information available)

πŸ’Ό Experience

– Researcher, China University of Mining and Technology-Beijing

πŸ”¬ Research Interests

– Machine Learning: deep learning, data analysis
– Energy and Power Systems: wind power prediction, load forecasting, power transmission

πŸ† Awards

– No specific information available

πŸ“šTop NotedΒ  Publications

– A novel wind power prediction method of the lower upper bound evaluation based on GRU 🌬️
– Published in Transactions of the Institute of Measurement and Control, 2024
– 3D Data scattergram image classification based protection for transmission line connecting BESS using depth-wise separable convolution based CNN πŸ”
– Published in Journal of Modern Power Systems and Clean Energy, 2024
– Short-term load forecasting method based on secondary decomposition and improved hierarchical clustering πŸ“Š
– Published in Results in Engineering, 2024
– An aero-engine remaining useful life prediction model based on feature selection and the improved TCN ✈️
– Published in Franklin Open, 2024
– Semi-supervised learning-based satellite remote sensing object detection method for power transmission towers πŸ“‘
– Published in Energy Reports, 2023
– A wind speed vector-wind power curve modeling method based on data denoising algorithm and the improved transformer 🌟
– Published in Electric Power Systems Research, 2023
– Current trajectory image-based protection algorithm for transmission lines connected to MMC-HVDC stations using CA-CNN πŸ”Œ
– Published in Protection and Control of Modern Power Systems, 2023
– ENG-BiFPN: A remote sensing object detection model based on grouped deformable convolution for power transmission towers πŸŒ†
– Published in Multimedia Tools and Applications, 2023
– Ultra-short-term power forecast method for the wind farm based on feature selection and temporal convolution network πŸ’¨
– Published in ISA Transactions, 2022
– Adaptive mho characteristic-based distance protection for lines emanating from photovoltaic power plants under unbalanced faults

Conclusion

Wenting Zha’s prolific publication record, innovative research, and interdisciplinary approach make him a strong candidate for the Best Researcher Award. By emphasizing collaboration and knowledge translation, he could further strengthen his application and demonstrate his potential for continued excellence in research.

Assoc. Prof. Dr Wenting Zha | Wind power prediction | Best Researcher Award

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