Department of Range and Watershed Management, Gonbad Kavous University, Gonbad Kavous, Golestan Province, Iran.
Department of Range and Watershed Management, Gonbad Kavous University, Gonbad Kavous, Golestan Province, Iran.
Sci Total Environ. 2022 Apr 20;818:151760. doi: 10.1016/j.scitotenv.2021.151760. Epub 2021 Nov 18.
Suspended sediment transport in river system is a complex process influenced by many factors that their interactions lead to nonlinear and high scatter of concentration-discharge relationships. This makes the model prediction subject to high uncertainty and providing one value as the model prediction is somehow useless and cannot provide adequate information about the model accuracy and associated uncertainty. Current study compares the efficiency of Bayesian (i.e. Bayesian segmented linear regression (BSLR) and Bayesian linear model (BLR)), Gaussian Process Regression (GPR) and k-Nearest Neighbor (k-NN) in quantifying uncertainty of the suspended sediment concentration prediction in three watersheds namely Arazkoseh, Oghan and Jajrood located in Iran. Three input combinations including, contemporary discharge, slow and quick flow components and contemporary, one and two antecedent days discharge, were used. The BSLR model was able to identify threshold value, furthermore, pre-threshold and post-threshold slopes of BSLR model indicated that for Arazkoseh watershed channel and for Oghan and Jajrood watersheds, upland area are dominate sediment sources. In all three studied cases, given prediction interval width and the percent of enclosed observed data by prediction interval, k-NN model provided more reliable prediction interval. Moreover, separation stream flow into slow and quick flow components lead to improved performance of GPR and k-NN models in the studied watersheds, and the best results for Arazkoseh and Oghan watersheds were obtained when slow and quick flow components were used as the model input.
河流系统中的悬移质输移是一个复杂的过程,受到许多因素的影响,这些因素的相互作用导致浓度-流量关系的非线性和高度离散。这使得模型预测存在高度的不确定性,提供一个值作为模型预测是无用的,并且不能提供有关模型准确性和相关不确定性的足够信息。本研究比较了贝叶斯(即贝叶斯分段线性回归(BSLR)和贝叶斯线性模型(BLR))、高斯过程回归(GPR)和 k-最近邻(k-NN)在量化伊朗阿拉兹克塞、奥甘和贾鲁德三个流域悬移质浓度预测不确定性方面的效率。使用了三种输入组合,包括当代流量、慢流和快流分量以及当代、一天和两天前的流量。BSLR 模型能够识别阈值,此外,BSLR 模型的预阈值和后阈值斜率表明,对于阿拉兹克塞流域的河道以及奥甘和贾鲁德流域,高地是主要的泥沙来源。在所有三个研究案例中,给定预测区间宽度和预测区间包含的观测数据的百分比,k-NN 模型提供了更可靠的预测区间。此外,将水流分为慢流和快流分量可以提高 GPR 和 k-NN 模型在研究流域中的性能,当慢流和快流分量用作模型输入时,阿拉兹克塞和奥甘流域的结果最佳。