Zhen Guo | Renewable Energy | Editorial Board Member

Dr. Zhen Guo | Renewable Energy | Editorial Board Member

Dr. Zhen Guo | Wuhan University of Technology | China

Dr. Zhen Guo is an emerging researcher specializing in intelligent fault diagnosis, deep learning, anomaly detection, and engineering signal processing, with emphasis on developing reliable data-driven methods for modern industrial systems. His work addresses key challenges in rotating machinery, gearboxes, propellers, and wind turbines by integrating advanced machine learning models with domain-specific signal processing techniques to enhance diagnostic accuracy under real-world constraints. Dr. Guo’s research explores multi-scale wavelet decomposition, adaptive feature fusion, and high-dimensional sampling strategies to mitigate multi-level class imbalance and improve the robustness of condition-monitoring frameworks. He has introduced innovative unsupervised anomaly detection approaches using deep convolutional support generative adversarial networks, enabling effective detection in scenarios where labeled data are insufficient or costly. His contributions also include transfer-learning architectures with channel-attention residual networks and LLM-assisted fine-tuning to achieve few-shot fault recognition in complex systems such as autonomous underwater vehicle propellers. Additionally, he has advanced wavelet-random-forest methods for modeling high-dimensional imbalance samples and proposed unified pattern-fusion strategies for mining alarm data in large-scale industrial facilities using adaptive discretization and time-clustering mechanisms. Dr. Guo’s work published in leading journals such as Mechanical Systems and Signal Processing, Scientific Reports, Ocean Engineering, Measurement, and Measurement Science and Technology demonstrates his commitment to bridging the gap between theoretical advances and practical reliability engineering. Supported by competitive research funding, he continues to design predictive frameworks that improve equipment health assessment, Remaining Useful Life estimation, and maintenance decision-making across industrial environments, contributing significantly to the advancement of intelligent diagnostic technologies.

Profile: Scopus | ORCID

Featured Publications

Guo, Z. (2025). Multi-scale wavelet decomposition and feature fusion for rotating machinery fault diagnosis under multi-level class imbalance. Mechanical Systems and Signal Processing.

Guo, Z. (2025). Unsupervised anomaly detection for gearboxes based on the deep convolutional support generative adversarial network. Scientific Reports, (Published July 1, 2025).

Guo, Z. (2025). Channel attention residual transfer learning with LLM fine-tuning for few-shot fault diagnosis in autonomous underwater vehicle propellers. Ocean Engineering.

Guo, Z. (2025). Fault diagnosis of rotating machinery with high-dimensional imbalance samples based on wavelet random forest. Measurement.

Guo, Z. (2025). Alarm data mining in complex industrial facilities using adaptive discretization based on time clustering and unified pattern fusion mining. Measurement Science and Technology, (Published January 31, 2025).

Lourdes Casas Cardoso | Green Technology | Best Researcher Award

Prof. Dr. Lourdes Casas Cardoso | Green Technology | Best Researcher Award

Professor, Universidad de Cádiz, Spain

Prof. Dr. Lourdes Casas Cardoso is a distinguished academic and researcher specializing in supercritical fluids, advanced separation processes, and supercritical impregnation, with a strong focus on sustainable applications in the agri-food and biomedical sectors. She earned her Bachelor’s Degree in Chemistry from the Marta Abreu Central University of Las Villas (UCLV), Cuba, in 1996, followed by a Master’s in Organic Chemistry with a specialization in Natural Products from the University of Havana in 2001, a Diploma in Advanced Studies from the University of Cádiz in 2004, and a PhD from the same university in 2006. She began her academic career as a professor at UCLV, Cuba, where she served for a decade, before joining the University of Cádiz, Spain, in 2007, where she advanced from researcher to full professor. Since May 2023, she has held the position of University Professor at UCA. Her research has concentrated on the reutilization of byproducts and industrial waste using innovative separation techniques, including supercritical carbon dioxide and pressurized liquids, leading to significant advancements in green technologies. She has published 80 indexed articles, six book chapters, and participated in over 80 international conferences, accumulating 1,420 citations and an h-index of 26. She has supervised four doctoral theses, directed funded research projects, coordinated multiple industry collaborations, and co-authored three patents. Additionally, she has held leadership roles such as Coordinator of the Chemical Engineering Degree at UCA and has received recognition for excellence in teaching. Her career reflects a remarkable integration of research, teaching, and innovation.

Profile:  Scopus  |  ORCID  |  Google Scholar

Featured Publications

Otero-Pareja, M. J., Casas, L., Fernández-Ponce, M. T., Mantell, C., & de la Ossa, E. M. (2015). Green extraction of antioxidants from different varieties of red grape pomace. Molecules, 20(6), 9686–9702.

Fernández-Ponce, M. T., Casas, L., Mantell, C., Rodríguez, M., & de la Ossa, E. M. (2012). Extraction of antioxidant compounds from different varieties of Mangifera indica leaves using green technologies. The Journal of Supercritical Fluids, 72, 168–175.

Fernández-Ponce, M. T., Casas, L., Mantell, C., & de la Ossa, E. M. (2015). Use of high pressure techniques to produce Mangifera indica L. leaf extracts enriched in potent antioxidant phenolic compounds. Innovative Food Science & Emerging Technologies, 29, 94–106.

Fernández-Ponce, M. T., Parjikolaei, B. R., Lari, H. N., Casas, L., Mantell, C., & de la Ossa, E. M. (2016). Pilot-plant scale extraction of phenolic compounds from mango leaves using different green techniques: Kinetic and scale up study. Chemical Engineering Journal, 299, 420–430.

El Marsni, Z., Torres, A., Varela, R. M., Molinillo, J. M. G., Casas, L., Mantell, C., & de la Ossa, E. M. (2015). Isolation of bioactive compounds from sunflower leaves (Helianthus annuus L.) extracted with supercritical carbon dioxide. Journal of Agricultural and Food Chemistry, 63(28), 6410–6421.