Ecological application of evolutionary computation: Improving water quality forecasts for the Nakdong River, Korea
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Nguyen Xuan Hoai | Robert I. McKay | Yun-Geun Lee | Dong-Kyun Kim | Haisoo Shin | R. McKay | Haisoo Shin | Yun-Geun Lee | Dong-Kyun Kim | N. X. Hoai
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