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首页> 外文期刊>Journal of Water Resources Planning and Management >Contamination source identification in water systems: A hybrid model trees-linear programming scheme
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Contamination source identification in water systems: A hybrid model trees-linear programming scheme

机译:水系统中污染源识别:混合模型树-线性规划方案

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This paper presents a new approach for contamination source identification in water distribution systems through a coupled model trees-linear programming algorithm. Model trees are an extension of regression trees (regression trees: tree-based models used to solve prediction problems in which the response variable is a numerical value) in the sense that they associate leaves with multivariate linear models. The model trees replace EPANET through learning (i.e., training and cross validation) after which a linear programming formulation uses the model trees linear rule classification structure to solve the inverse problem of contamination source identification. The use of model trees represents, forward modeling (i.e., from root to leaves). The implementation of linear programming on the linear tree structure allows backward (inverse) modeling (i.e., from leaves to root) where the contamination injections characteristics are the problem unknowns. The proposed methodology provides an estimation of the time, location, and concentration of the contamination injection sources. The model is demonstrated using two example applications.
机译:本文提出了一种通过耦合模型树-线性规划算法识别供水系统中污染源的新方法。模型树是回归树(回归树:用于解决预测问题(其中响应变量为数值)的基于树的模型)的扩展,它们将叶子与多元线性模型相关联。模型树通过学习(即训练和交叉验证)代替EPANET,之后线性规划公式使用模型树线性规则分类结构来解决污染源识别的反问题。模型树的使用表示正向建模(即从根到叶)。在线性树结构上执行线性编程允许进行反向(逆向)建模(即从叶到根),其中污染物的注入特性是未知的问题。所提出的方法提供了污染物注入源的时间,位置和浓度的估计。使用两个示例应用程序演示了该模型。

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