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首页> 外文期刊>Ecological restoration >SUSPENDED SEDIMENT LOAD PREDICTION IN RIVERS BY USING HEURISTIC REGRESSION AND HYBRID ARTIFICIAL INTELLIGENCE MODELS
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SUSPENDED SEDIMENT LOAD PREDICTION IN RIVERS BY USING HEURISTIC REGRESSION AND HYBRID ARTIFICIAL INTELLIGENCE MODELS

机译:利用启发式回归和混合人工智能模型暂停沉积物荷载预测

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摘要

Accurate prediction of amount of sediment load in rivers is extremely important for river hydraulics. The solution of the problem has been become complicated since the explanation of hydraulic phenomenon between the flow and the sediment on the river is dependent many parameters. The usage of different regression methods and artificial intelligence techniques allows the development of predictions as the traditional methods do not give enough accurate results. In this study, data of the flow and suspended sediment load (SSL) obtained from Karsikoy Gauging Station, located on Coruh River in the north-eastern of Turkey, modelled with different regression methods (multiple regression, multivariate adaptive regression splines) and artificial neural network (ANN) (ANN-back propagation, ANN teaching-learning-based optimization algorithm and ANN-artificial bee colony). When the results were evaluated, it was seen that the models of ANN method were close to each other and gave better results than the regression models. It is concluded that these models of ANN method can be used successfully in estimating the SSL.
机译:对于河流河流,准确预测河流中的沉积物负荷量非常重要。问题的解决方案已经变得复杂,因为在河流上的流动与沉积物之间的液压现象的解释是依赖的许多参数。不同回归方法和人工智能技术的使用允许在传统方法不给予足够的准确结果时开发预测。在本研究中,由位于土耳其东北部的Coruh河上的Karsikoy测量站(SSL)获得的流动和悬浮沉积物(SSL)的数据建模(多元回归,多变量自适应回归花键)和人工神经网络网络(ANN)(基于ANN教学 - 学习优化算法和ANN-人工蜂菌落)。当评估结果时,可以看出,ANN方法的模型彼此接近,并且比回归模型得到更好的结果。得出结论,这些ANN方法的模型可以成功地用于估计SSL。

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