Ms. Hyun Ju Kim | Deep Learning | Best Researcher Award
Hyun Ju Kim at Pukyong National University, South Korea
Profiles
Early Academic Pursuits
Ms. Hyun Ju Kim’s academic journey began with a strong foundation in marine engineering, earning her Bachelor’s degree from the Korea Maritime and Ocean University in 2017. She further honed her expertise by pursuing a Master’s in Industrial and Data Engineering at Pukyong National University, completing it in 2023. Now a Ph.D. student in the same department, Ms. Kim continues to explore the intersections of industrial engineering and data science, applying her research to the maritime sector.
Professional Endeavors
Ms. Kim has made significant strides in both academia and industry. Starting her professional career at the Korea Marine Equipment Research Institute (KOMERI) as a Senior Researcher, she contributed to numerous projects, including the development of integrated power management systems for hybrid vessels. In December 2024, she transitioned to the Busan Institute of Science and Technology Promotion, where she continues her research. These roles have shaped her into a leader in ship engine and navigation data analysis.
Contributions and Research Focus
Ms. Kim’s research is rooted in data-driven approaches to improving maritime energy efficiency and reducing carbon emissions. As a principal investigator, she developed an integrated power management system for hybrid vessels. Her work extends into predictive modeling, fuel consumption analysis, and environmental impact reduction in the maritime industry. Notably, her journal publications cover topics like fuel-switching behavior in dual-fuel vessels, the prediction of bulk carrier fuel consumption, and the use of explainable AI in energy efficiency optimization.
Impact and Influence
Through her innovative use of AI and machine learning, Ms. Kim has had a significant impact on both the academic and industrial sectors. Her research on fuel consumption prediction models and carbon emission reduction has influenced the maritime industry’s approach to sustainability. Furthermore, her work has been recognized with a Best Paper Award at the ICIoTC 2024 conference, solidifying her reputation as an emerging expert in the field.
Academic Citations
Ms. Kim’s scholarly contributions are steadily gaining recognition in the academic community, particularly for her first-author journal articles. Her work, such as “A Data-Driven Approach to Analyzing Fuel-Switching Behavior” and “Development of a Carbon Emission Prediction Model for Bulk Carrier,” has been published in prominent journals like the Journal of Marine Science and Engineering and the Journal of the Korean Institute of Industrial Engineers. These publications highlight her leadership in integrating AI with maritime technologies to solve pressing environmental challenges.
Technical Skills
Ms. Kim’s technical skills span across several domains, including data analysis, machine learning, and AI. She is proficient in developing predictive models using machine learning algorithms, particularly in the context of maritime fuel consumption and carbon emissions. Her expertise also extends to using Explainable AI (XAI) methodologies, which ensure transparency and interpretability in the results of her research, making her contributions highly applicable to real-world maritime applications.
Teaching Experience
Although Ms. Kim’s primary focus has been on research, her academic background and professional experience have positioned her to share her knowledge with the next generation of engineers. Through her roles at Pukyong National University and as a mentor to fellow researchers, she has contributed to the academic development of students in industrial and data engineering, especially those focusing on maritime applications of AI and data science.
Legacy and Future Contributions
As Ms. Kim continues her Ph.D. studies, her legacy is poised to shape the future of sustainable maritime practices. Her work in developing carbon emission prediction models and optimizing fuel consumption in vessels is crucial for the maritime industry’s transition to more environmentally friendly technologies. With the integration of AI, machine learning, and data analytics into her projects, she is positioned to make groundbreaking contributions to both academia and industry in the coming years.
Publications
A Data-Driven Approach to Analyzing Fuel-Switching Behavior and Predictive Modeling of Liquefied Natural Gas and Low Sulfur Fuel Oil Consumption in Dual-Fuel Vessels
- Author: Hyunju Kim, Sangbong Lee, Jihwan Lee, Donghyun Kim
- Journal: Journal of Marine Science and Engineering
- Year: 2024
Development of a Carbon Emission Prediction Model for Bulk Carrier Based on EEDI Guidelines and Factor Interpretation Using SHAP
- Authors: Hyunju Kim, Byeongseok Yu, Donghyun Kim
- Journal: International Journal of Advanced Smart Convergence
- Year: 2024
Navigating Energy Efficiency: A Multifaceted Interpretability of Fuel Oil Consumption Prediction in Cargo Container Vessel Considering the Operational and Environmental Factors
- Authors: Melia Putri Handayani, Hyunju Kim, Sangbong Lee, Jihwan Lee
- Journal: Journal of Marine Science and Engineering
- Year: 2023
Anomaly Detection and Root Cause Analysis of Ship Main Engines: Explainable Artificial Intelligence-Based Methodology Considering Internal Sensors and External Environmental Factors
- Authors: Mingyu Park, Hyunjoo Kim, Sangbong Lee, Jihwan Lee
- Journal: Journal of the Korean Institute of Industrial Engineers
- Year: 2023
A Study on the Prediction of Fuel Consumption of Bulk Ship Main Engine Using Explainable Artificial Intelligence
- Authors: Hyun-Ju Kim, Min-Gyu Park, Ji-Hwan Lee
- Journal: Journal of Navigation and Port Research
- Year: 2023