J
Jung-Yeul Jung
Researcher at Korean Ocean Research and Development Institute
Publications - 83
Citations - 2333
Jung-Yeul Jung is an academic researcher from Korean Ocean Research and Development Institute. The author has contributed to research in topics: Nanofluid & Thermal conductivity. The author has an hindex of 24, co-authored 82 publications receiving 1975 citations. Previous affiliations of Jung-Yeul Jung include Kyung Hee University & Arizona State University.
Papers
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Characteristics analysis of the developed surface modification technologies to improve the anti-corrosion performances for offshore equipments
Jae-Won Oh,Jung-Yeul Jung,Kyounghwan Song,Youngsuk Nam,Ki-Young Sung,Seungtae Oh,Jaehwan Shim +6 more
TL;DR: In this paper, the authors carried out the characteristics analysis and experiment research of the developed technologies based on surface modifications to enhance the anti-corrosion performance of offshore equipments.
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Initial environmental risk assessment of hazardous and noxious substances (HNS) spill accidents to mitigate its damages
TL;DR: The method and system developed in this study, which includes the physical/chemical properties of 158 priority HNS, can be readily used to perform an initial environmental risk assessment for future HNS spill accidents.
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Development of a new simulation model of spin coating process and its application to optimize the 450 mm wafer coating process
TL;DR: In this article, a one-dimensional simulation model was developed to predict the surface coverage and average thickness of coating films obtained from spin coating processes adopting moving mesh technique, and the effects of initial profile, dispensed volume, solvent vapor pressure, relative humidity and initial viscosity on the coating film geometry were investigated numerically.
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A comparative study of deep learning-based network model and conventional method to assess beach debris standing-stock.
TL;DR: In this paper, an automatic detection method using a deep learning-based network model was developed to detect and quantify the beach debris in order to overcome the disadvantages of the conventional survey of marine debris standing stock.
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On-board measurement methodology for the liquid-solid slurry production of deep-seabed mining
TL;DR: In this article, the authors studied on-board measurement methodology to estimate the production rate and the solid fraction of the deep-seabed mining and proposed a measurement technique using the measured data and physical properties of materials.