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Prediction of bed load via suspended sedimentload using soft computing methods

机译:使用软计算方法通过悬浮泥沙负荷预测河床负荷

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Appropriate and acceptable prediction of bed load being carried by streams is vitally important for water resources quantity and quality studies. Although measuring the rate of bed load in situ is the most consistent method, it is very expensive and cannot be conducted for as many streams as the measurement of suspended sediment load. Therefore, in this study the role of suspended load on bedload prediction was examined by using sensitivity analysis. On the other hand, conventional sediment rating curves and equations can not predict sediment load accurately so recently the usage of machine learning algorithms increase rapidly. Accordingly, soft computational methods are used in the study. These are; artificial neural network (ANN), support vector machine (SVM) models and a decision tree (CHAID) model that is not used before in sediment studies. Some particular parameters are frequently used in these soft computational methods to form input sets. Hence, well known and commonly used three input sets and a new generated set are used as inputs to predict bedload and then the suspended load variable is added in these input sets. The performances of models with respect to input sets are compared to each other. To generate the results and to push the limits of models a very skewed and heterogeneous data is col?lected from distributed locations. The results indicate that the performance of ANN and CHAID tree models are good when compared to SVM models. The usage of a suspended load as an additional input for the models boosts the model performances and the suspended load has significant contributions to all models.
机译:对河流所承载的河床负荷进行适当且可接受的预测对于水资源数量和质量研究至关重要。尽管现场测量床荷载的速率是最一致的方法,但它非常昂贵,并且无法像测量悬浮泥沙荷载那样对多条河流进行测量。因此,在这项研究中,通过使用敏感性分析检查了悬浮负荷在床负荷预测中的作用。另一方面,传统的泥沙等级曲线和方程无法准确预测泥沙负荷,因此最近机器学习算法的使用迅速增加。因此,在研究中使用了软计算方法。这些是;人工神经网络(ANN),支持向量机(SVM)模型和决策树(CHAID)模型,以前在沉积物研究中没有使用过。在这些软计算方法中经常使用一些特定的参数来形成输入集。因此,将众所周知且常用的三个输入集和一个新生成的集用作预测床载的输入,然后将悬浮的负载变量添加到这些输入集中。将模型相对于输入集的性能进行比较。为了生成结果并突破模型的限制,需要从分布位置收集非常偏斜且异构的数据。结果表明,与SVM模型相比,ANN和CHAID树模型的性能良好。将悬吊负载用作模型的附加输入可以提高模型性能,并且悬吊负载对所有模型都具有重要作用。

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