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Applying the Back-Propagation Neural Network model and fuzzy classification to evaluate the trophic status of a reservoir system

机译:应用反向传播神经网络模型和模糊分类评估储层系统的营养状态

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摘要

The trophic state index, and in particular, the Carlson Trophic State Index (CTSI), is critical for evaluating reservoir water quality. Despite its common use in evaluating static water quality, the reliability of the CTSI may decrease when water turbidity is high. Therefore, this study examines the reliability of the CTSI and uses the Back-Propagation Neural Network (BPNN) model to create a new trophic state index. Fuzzy theory, rather than binary logic, is implemented to classify the trophic status into its three grades. The results show that compared to the CTSI with traditional classification, the new index with fuzzy classification can improve trophic status evaluation with high water turbidity. A reliable trophic state index can correctly describe reservoir water quality and allow relevant agencies to address proper water quality management strategies for a reservoir system.
机译:营养状态指数,尤其是卡尔森营养状态指数(CTSI),对于评估储层水质至关重要。尽管它通常用于评估静态水质,但是当水混浊度很高时,CTSI的可靠性可能会降低。因此,本研究检查了CTSI的可靠性,并使用了反向传播神经网络(BPNN)模型来创建新的营养状态指数。采用模糊理论而不是二进制逻辑将营养状态分为三个等级。结果表明,与传统分类的CTSI相比,模糊分类的新指标可以改善高浊度地区的营养状况评价。可靠的营养状态指数可以正确描述水库水质,并允许有关机构针对水库系统制定适当的水质管理策略。

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