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Euntai Kim

Researcher at Yonsei University

Publications -  297
Citations -  5907

Euntai Kim is an academic researcher from Yonsei University. The author has contributed to research in topics: Fuzzy logic & Fuzzy control system. The author has an hindex of 34, co-authored 280 publications receiving 5184 citations. Previous affiliations of Euntai Kim include Hankyong National University.

Papers
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New approaches to relaxed quadratic stability condition of fuzzy control systems

TL;DR: Two new conditions are proposed and shown to be useful in analyzing and designing fuzzy control systems that relax the existing conditions reported in the previous literatures.
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A new approach to fuzzy modeling

TL;DR: This paper proposes a new approach to fuzzy modeling that can express a given unknown system with a few fuzzy rules as well as Takagi and Sugeno's model (1985) because it has the same structure as that of Takagi & Sugeno (1985), because its identification mimics the simple identification procedure of Sugeno and Yasukawa's model.
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A fuzzy disturbance observer and its application to control

TL;DR: The relationships between the suggested FDO-based control and the conventional adaptive fuzzy controls reported in the previous literatures are discussed and it is shown in a rigorous manner that the disturbance observation error or the augmented error converges to a region of which size can be kept arbitrarily small.
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A soft computing approach to localization in wireless sensor networks

TL;DR: The two schemes introduced in this paper exhibit range-free localization, which utilize the received signal strength from the anchor nodes, and approximate the entire sensor location mapping from the anchored node signals by a neural network.
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Output feedback tracking control of robot manipulators with model uncertainty via adaptive fuzzy logic

TL;DR: A new output feedback tracking control approach is developed for the robot manipulators with model uncertainty that does not require velocity measurements and employs the adaptive fuzzy logic.