Mr. Wenpo Yao | Time Series | Best Researcher Award

Mr. Wenpo Yao | Time Series | Best Researcher Award 

Mr. Wenpo Yao, Nanjing University of Posts and Telecommunications, China

Dr. Wenpo Yao is a researcher in Biomedical Engineering at Nanjing University of Posts and Telecommunications, with expertise spanning statistical physics, nonlinear dynamics, time series analysis, and biomedical signal processing. He earned his Ph.D. and Master’s degrees in Signal Processing from Nanjing University of Posts and Telecommunications in 2019 and 2013, respectively, following a Bachelor’s degree in Telecommunication Engineering from Jiangsu University in 2010. Dr. Yao has made significant contributions to the field of nonlinear time series analysis, particularly in developing and applying permutation-based methods to assess time irreversibility in physiological and complex systems. His work has been published in leading journals such as Physical Review E, Chaos, Solitons & Fractals, Communications in Nonlinear Science and Numerical Simulation, and Physics Letters A. His recent research emphasizes the application of nonlinear metrics to sleep EEG and heart rate variability, offering insights into nonequilibrium dynamics in biomedical signals.

Professional Profile:

SCOPUS

Summary of Suitability: Dr. Wenpo Yao – Best Researcher Award

Dr. Wenpo Yao, currently engaged in Biomedical Engineering at Nanjing University of Posts and Telecommunications, is a highly accomplished researcher with deep expertise in statistical physics, nonlinear dynamics, time series analysis, and biomedical signal processing. His extensive publication record, innovative methodologies, and interdisciplinary research contributions mark him as a highly suitable candidate for the Best Researcher Award.

👨‍🎓 Education

  • 🎓 Ph.D. in Signal Processing
    Nanjing University of Posts and Telecommunications
    (Sept. 2016 – July 2019)

  • 🎓 Master’s in Signal Processing
    Nanjing University of Posts and Telecommunications
    (Sept. 2010 – April 2013)

  • 🎓 Bachelor’s in Telecommunication Engineering
    Jiangsu University
    (Sept. 2006 – June 2010)

💼 Work Experience

  • 🧑‍🏫 Researcher / Faculty in Biomedical Engineering
    Nanjing University of Posts and Telecommunications
    (Exact position title not specified, but actively involved in research and publication in the field)
    📧 Email: yaowp@njupt.edu.cn

🧠 Research Interests

  • 📈 Statistical Physics

  • 🔁 Nonlinear Dynamics

  • 📊 Time Series Analysis

  • 🧬 Biomedical Signal Processing

🏆 Achievements & Honors

  • 📝 Published 12+ high-impact journal papers, many in top-tier journals such as:

    • Physical Review E

    • Chaos, Solitons & Fractals

    • Physics Letters A

    • Communications in Nonlinear Science and Numerical Simulation

    • Nonlinear Dynamics

    • Applied Physics Letters

  • 🧩 Contributed significantly to the field of time irreversibility analysis, especially in biomedical signals like EEG and heart rate variability.

  • 🌟 Collaborative work with notable researchers like M. Perc, indicating international collaboration and interdisciplinary impact.

  • 📈 Developed novel methods and parameters for analyzing nonequilibrium and nonlinear dynamics in complex systems.

Publication Top Notes:

Spectral, phase, and their interacting components for complexity analysis of depression electroencephalogram

Fuzzy permutation time irreversibility for nonequilibrium analysis of complex system

Permutation time irreversibility in sleep electroencephalograms: Dependence on sleep stage and the effect of equal values

Mr. Xincheng Guo | Time Series Awards | Best Machine Learning for Sensing Award

Mr. Xincheng Guo | Time Series Awards | Best Machine Learning for Sensing Award

Mr. Xincheng Guo, Shanghai University of Engineering Science, China

Xincheng Guo is a graduate student pursuing a Master’s degree in Electronic Information at Shanghai University of Engineering Science, with research focused on intelligent signal processing, deep learning, and IoT systems. His notable contributions include the development of an innovative CEEMDAN-WT-VMD framework for multi-source noise suppression in power load data and the design of advanced neural network models such as Bidirectional Temporal Convolutional Networks and Attention-based BiGRU for spatiotemporal modeling and signal denoising. He has published first-authored research on short-term power load forecasting in the journal Electronics (2025, Q1). Xincheng has also engineered a multi-sensor fire detection and patrol system integrating improved YOLOv5s vision algorithms with sensor fusion and high-precision positioning technologies. His technical expertise spans sensing algorithms, embedded systems, and AI frameworks like PyTorch and TensorFlow. He has received multiple honors, including the 2nd Prize in the 19th China Graduate Electronics Design Competition (Shanghai Division) and the National Graduate Scholarship.

Professional Profile:

ORCID

Summary of Suitability for Best Machine Learning for Sensing Award conclusion

Xincheng Guo is a highly promising candidate for the Research for Best Machine Learning for Sensing Award, demonstrating strong expertise in intelligent signal processing and deep learning applied to multi-modal sensing systems. Currently pursuing a Master’s degree in Electronic Information at Shanghai University of Engineering Science, Guo has developed innovative methods for sensing signal denoising and prediction, including a novel CEEMDAN-WT-VMD framework that achieves significant noise reduction and a Bidirectional Temporal Convolutional Network that outperforms state-of-the-art models in power load forecasting. His research is supported by the National Natural Science Foundation of China, reflecting its scientific merit and relevance. Beyond theoretical contributions, Guo has designed practical embedded sensing systems integrating advanced vision algorithms and multi-sensor fusion for real-time fire detection, showcasing his ability to translate machine learning innovations into impactful applications. With published Q1 journal papers, recognized technical skills in AI frameworks, and awards in national electronics competitions, Xincheng Guo embodies the excellence and innovation that the Best Machine Learning for Sensing Award seeks to honor.

🎓 Education

  • Master of Electronic Information (2023.09 – 2026.09)
    Shanghai University of Engineering Science
    Focus: Intelligent Signal Processing, Deep Learning, IoT Systems

💼 Work Experience

  • Graduate Student
    China Education and Research Network (CERNET), Beijing (Since 2023.09)

🏆 Achievements & Key Contributions

  • Developed CEEMDAN-WT-VMD framework for multi-source noise suppression, achieving a 46.3% noise reduction (SNR 227.1 dB)

  • Created Bidirectional Temporal Convolutional Network (BiTCN) with 0.65% MAPE on power load forecasting, outperforming top models

  • Designed an Attention-based BiGRU model for dynamic temporal feature weighting in noisy data

  • Published first-author paper:
    Short-Term Power Load Forecasting Based on CEEMDAN-WT-VMD Joint Denoising” in Electronics (2025, Q1, IF=3.0)

  • Built a Multi-Sensor Fire Detection and Patrol System using Raspberry Pi and MM32 with improved YOLOv5s vision algorithm (+8.2% mAP), flame/smoke sensor fusion, and GPS positioning

🎖️ Awards & Honors

  • 🥈 2nd Prize, 19th China Graduate Electronics Design Competition (Shanghai Division), 2024

  • 🥉 3rd Prize, 6th Yangtze River Delta Smart City Competition, 2024

  • 🎓 National Graduate Scholarship, 2023-2024

  • 🛫 Aerospace Inspirational Scholarship, 2022-2023

  • 🏅 CET-4 Certificate (English Proficiency)

  • 💻 National Computer Technology and Software Professional Qualification (Primary Level)

Publication Top Notes:

Short-Term Power Load Forecasting Based on CEEMDAN-WT-VMD Joint Denoising and BiTCN-BiGRU-Attention