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Use of Model Tree and Gene Expression Programming to Predict the Suspended Sediment Load in Rivers

机译:模型树和基因表达规划的使用预测河流中的悬浮沉积物负荷

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This paper presents two recent machine learning techniques namely M5 Model Tree (MT) and Gene Expression Programming (GEP) to predict suspended sediment Loads (SSL) in rivers. The MT is a kind of decision tree that has the capability to predict the numeric values with linear regression function at the leaves, whereas GEP is an extension of genetic programming which uses population of individuals and 'survival of the fittest' concept in its evolution, with one or more genetic operators. Both MT and GEP methods are applied for a case study and established relations between SSL and river discharges. To evaluate the performance of developed models, the model results are compared with the results of conventional methods, such as sediment raring curve (SRC) and multiple linear regression (MLR) techniques. The results show that MT gives good performance as compared with the SRC, MLR and GEP models.
机译:本文介绍了最近的两个机器学习技术即M5模型树(MT)和基因表达编程(GEP),以预测河流中的悬浮沉积物(SSL)。 MT是一种决策树,该决策树具有预测叶子的线性回归功能的能力,而GEP是遗传编程的延伸,其使用个人人群和在其演进中的“适用”概念的概念的“生存”。 与一个或多个遗传算子。 MT和GEP方法都适用于案例研究和建立SSL和河流排放之间的关系。 为了评估开发模型的性能,将模型结果与传统方法的结果进行比较,例如沉积物曲线(SRC)和多元线性回归(MLR)技术。 结果表明,与SRC,MLR和GEP型号相比,MT提供了良好的性能。

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