Characteristics Detection of Hydrological and Water Quality Data in Jangseong Reservoir by Application of Pattern Classification Method
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Park, Sung-Chun
(Department of Civil Engineering, Dongshin University)
Jin, Young-Hoon (Department of Civil Engineering, Dongshin University) Roh, Kyong-Bum (Startup Assistance Foundation, Mokpo National University) Kim, Jongo (Department of Environmental Education, Mokpo National University) Yu, Ho-Gyu (Jeollanamdo Provincial Office) |
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