Eungyeong Kim
Chonbuk National University
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Publication
Featured researches published by Eungyeong Kim.
Sensors | 2012
Eungyeong Kim; Seok Lee; Jae Hun Kim; Chulki Kim; Young Tae Byun; Hyung Seok Kim; Taikjin Lee
This paper presents a new pattern recognition approach for enhancing the selectivity of gas sensor arrays for clustering intelligent odor detection. The aim of this approach was to accurately classify an odor using pattern recognition in order to enhance the selectivity of gas sensor arrays. This was achieved using an odor monitoring system with a newly developed neural-genetic classification algorithm (NGCA). The system shows the enhancement in the sensitivity of the detected gas. Experiments showed that the proposed NGCA delivered better performance than the previous genetic algorithm (GA) and artificial neural networks (ANN) methods. We also used PCA for data visualization. Our proposed system can enhance the reproducibility, reliability, and selectivity of odor sensor output, so it is expected to be applicable to diverse environmental problems including air pollution, and monitor the air quality of clean-air required buildings such as a kindergartens and hospitals.
international symposium on information technology convergence | 2007
Eungyeong Kim; Malrey Lee; Hyogun Yoon; Thomas M. Gatton
The present study proposes a management system combining fuzzy c-means (FCM) and evolutionary computation in order to provide an optimal treatment method based on the patients context information in ubiquitous environment. Because FCM has the shortcoming of falling easily into a local solution, we adjusted the initial values sensitively through evolutionary computation. In fitness evaluation, we used Bayesian validation so that superior solutions are selected, and in performance evaluation, experiment and evaluation were made with type 2 diabetic patients.
Sensors | 2009
Eungyeong Kim; Malrey Lee; Thomas M. Gatton; Jaewan Lee; Yu-Peng Zang
A biosensor is composed of a bioreceptor, an associated recognition molecule, and a signal transducer that can selectively detect target substances for analysis. DNA based biosensors utilize receptor molecules that allow hybridization with the target analyte. However, most DNA biosensor research uses oligonucleotides as the target analytes and does not address the potential problems of real samples. The identification of recognition molecules suitable for real target analyte samples is an important step towards further development of DNA biosensors. This study examines the characteristics of DNA used as bioreceptors and proposes a hybrid evolution-based DNA sequence generating algorithm, based on DNA computing, to identify suitable DNA bioreceptor recognition molecules for stable hybridization with real target substances. The Traveling Salesman Problem (TSP) approach is applied in the proposed algorithm to evaluate the safety and fitness of the generated DNA sequences. This approach improves efficiency and stability for enhanced and variable-length DNA sequence generation and allows extension to generation of variable-length DNA sequences with diverse receptor recognition requirements.
international conference on information security | 2008
Hyogun Yoon; Eungyeong Kim; Malrey Lee; Jeawan Lee; Thomas M. Gatton
software engineering research and applications | 2007
Hyogun Yoon; Eungyeong Kim; Malrey Lee
Journal of Korean Society for Internet Information | 2013
Eungyeong Kim; Seok Lee; Young Tae Byun; Hyuk-jae Lee; Taikjin Lee
Advanced Science Letters | 2013
Eungyeong Kim; Jung Ho Lee; Beom Ju Shin; Seok Lee; Young Tae Byun; Jae Hun Kim; Hyung Seok Kim; Taikjin Lee
agent and multi agent systems technologies and applications | 2008
Eungyeong Kim; Hyogun Yoon; Malrey Lee; Thomas M. Gatton
international conference on convergence information technology | 2007
Eungyeong Kim; Malrey Lee
international conference on artificial intelligence | 2008
Eungyeong Kim; Yupeng Zhang; Malrey Lee