An interactive multiple model method to identify the in-vessel phenomenon of a nuclear plant during a severe accident from the outer wall temperature of the reactor vessel |
Khambampati, Anil Kumar
(Department of Electronic Engineering, Jeju National University)
Kim, Kyung Youn (Department of Electronic Engineering, Jeju National University) Hur, Seop (Research Div. of Autonomous Control, Korea Atomic Energy Research Institute) Kim, Sung Joong (Department of Nuclear Engineering, Hanyang University) Kim, Jung Taek (Research Div. of Autonomous Control, Korea Atomic Energy Research Institute) |
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