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NTIS 바로가기Nuclear engineering and technology : an international journal of the Korean Nuclear Society, v.54 no.4, 2022년, pp.1271 - 1287
Park, Ji Hun (Department of Nuclear Engineering, Chosun University) , Jo, Hye Seon (Department of Nuclear Engineering, Chosun University) , Lee, Sang Hyun (Department of Nuclear Engineering, Chosun University) , Oh, Sang Won (Department of Nuclear Engineering, Chosun University) , Na, Man Gyun (Department of Nuclear Engineering, Chosun University)
When abnormal operating conditions occur in nuclear power plants, operators must identify the occurrence cause and implement the necessary mitigation measures. Accordingly, the operator must rapidly and accurately analyze the symptom requirements of more than 200 abnormal scenarios from the trends o...
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