Department of Natural Resources Engineering, University of Hormozgan, Bandar-Abbas, Hormozgan, Iran.
Department of Natural Resources Engineering, University of Hormozgan, Bandar-Abbas, Hormozgan, Iran.
Sci Total Environ. 2019 May 1;663:78-96. doi: 10.1016/j.scitotenv.2019.01.327. Epub 2019 Jan 26.
Reliable quantitative information about sediment sources is a key requirement for river catchment management, especially in settings with high sediment loads. This study explores the potential for using source fingerprinting techniques to establish the relative contribution of three sub-basins to the sediment deposited in a reservoir impounded by an earth dam located at the outlet of the Lavar watershed, in Hormozgan Province, southern Iran. The three sub-basins feeding the reservoir are characterized by complex topography and underlying geology. The source material and target sediment samples were analyzed for 53 potential geochemical tracers, including trace elements and rare earth elements (REEs) and their ratios. Stepwise discriminant function analysis (DFA) was applied to select optimum composite fingerprints from those fingerprint properties passing the range test and we compared two different modelling procedures to estimate the relative contribution of the three sub-basins to the sediment deposited in the reservoir. The first involves a Bayesian mixing model within a Markov Chain Monte Carlo framework (BM) and, the second, an un-mixing model within a Monte Carlo simulation framework (UM). The latter model permits the use of ratio properties, which represents a novel aspect of our study. Particular attention was directed to the uncertainty associated with the source contribution estimates provided by the two models. A goodness of fit estimator was employed to evaluate the results of the UM. Both modelling procedures demonstrated that the southern sub-basin was the main source of the majority of samples we collected from the reservoir. The BM model indicated that the central sub-basin was the dominant source of two samples (S6 and S8). Overall, the results provided by the BM model for the source of seven sediment samples (S1, S2, S3, S4, S5, S7 and S9) are compatible with those provided by the UM model and the central sub-basin was recognized as the most important source supplying sediment in the study area. Both approaches offer potential for using geochemical fingerprinting to quantify spatial sediment source contributions and the uncertainty associated with those estimates.
关于泥沙来源的可靠定量信息是河流流域管理的关键要求,特别是在泥沙负荷较高的地区。本研究探讨了利用源指纹技术来确定三个子流域对位于伊朗南部霍尔木兹甘省拉瓦尔流域出口处的土坝水库淤积泥沙的相对贡献的潜力。为水库供水的三个子流域具有复杂的地形和底层地质。对源材料和目标沉积物样本进行了 53 种潜在地球化学示踪剂的分析,包括微量元素和稀土元素(REE)及其比值。逐步判别函数分析(DFA)用于从通过范围检验的指纹特性中选择最佳组合指纹,并比较了两种不同的建模程序来估计三个子流域对水库淤积泥沙的相对贡献。第一种涉及贝叶斯混合模型内的马尔可夫链蒙特卡罗框架(BM),第二种涉及蒙特卡罗模拟框架内的解混模型(UM)。后者模型允许使用比值特性,这是我们研究的一个新方面。特别关注两种模型提供的源贡献估计的不确定性。采用拟合优度估计器来评估 UM 的结果。两种建模程序都表明,南部子流域是我们从水库采集的大多数样本的主要来源。BM 模型表明,中部子流域是两个样本(S6 和 S8)的主要来源。总体而言,BM 模型对七个沉积物样本(S1、S2、S3、S4、S5、S7 和 S9)来源的结果与 UM 模型提供的结果一致,并且中部子流域被认为是研究区提供沉积物的最重要来源。两种方法都有可能利用地球化学指纹来量化空间泥沙源贡献及其相关的不确定性。