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Analysis and modeling of algal blooms in the Nakdong River, Korea

机译:韩国中河东河藻类盛开的分析与建模

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The purpose of this study is to improve the prediction accuracy of algal blooms in the Nakdong River, Korea, to support improved management practices. To improve algal bloom predictions, it is necessary to consider the microbiological characteristics of algal groups. Therefore, Korean governmental data, including water quality, flow rate, and meteorological data, over 12 years (2004-2015) were analyzed to characterize chlorophyll a (Chia) concentration dynamics in the Nakdong River, as the primary indicator of algae. The correlation between water temperature and Chl-a concentration differed by region at the study site. While a positive correlation (R = 0.63) was found in the relatively clean (i.e., mesotrophic) upstream area, a negative correlation (R = -0.51) was found in the more eutrophic downstream area. These results indicate that nutrients are a dominant factor of algal blooms in mesotrophic upstream areas, but other factors may have greater impacts in eutrophic downstream areas. Moreover, the dominance of different algal groups differed spatially and temporally at the study site. The three-dimensional hydrodynamics and water quality modeling-capable Environmental Fluid Dynamics Code model was applied to represent the hydrodynamics and kinetics of water quality variables, including Chl-a. Four statistics, the coefficient of determination (R-2), Nash-Sutcliffe model efficiency (ME), percentage model bias (Pbias), and cost function (CF), were used to evaluate the model prediction accuracy against field observation data. Compared to the case in which only a single algal group was modeled, modeling multiple algal groups together improved the R-2, ME, Pbias, and CF values from 0.25 to 0.50, 0.15 to 0.50, 30.43 to 4.98, and 0.56 to 0.48, respectively. The degree of improvement in the model prediction accuracy was greater for more eutrophic regions at the study site. These results show that there should be greater focus on studying multiple algal groups together when
机译:本研究的目的是提高韩国中龙河藻类盛开的预测准确性,以支持改进的管理实践。为了改善藻类绽放预测,有必要考虑藻类组的微生物特征。因此,分析了韩国政府数据,包括水质,流速和气象数据,超过12年(2004-2015),以表征Nakdong河中的叶绿素A(Chia)浓度动态,作为藻类的主要指标。水温与CHL-A浓度之间的相关性在研究现场的区域不同。虽然在相对清洁(即型营养性)上游区域中发现阳性相关(R = 0.63),但在更富营养的下游区域中发现了负相关(R = -0.51)。这些结果表明,营养素是植物营养性上游区域中藻类绽放的显性因素,但其他因素可能对富营养性下游区域产生更大的影响。此外,不同藻类组的优势在于研究现场在空间上和时间差异。应用了三维流体动力学和水质建模的环境流体动力学代码模型来表示水质变量的流体动力学和动力学,包括CHL-A。四个统计数据,确定系数(R-2),NASH-SUTCLIFFE模型效率(ME),百分比模型偏置(PBIAS)和成本函数(CF),用于评估对现场观察数据的模型预测精度。与仅建模单次藻类组的情况相比,将多个藻类组建模一起改善了0.25至0.50,0.15至0.50,30.43至4.98和0.56至0.48的R-2,ME,PBIAS和CF值。分别。对于研究部位的更多Eutrophic区,模型预测精度的改善程度更大。这些结果表明,应该更加注重研究多个藻类组

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