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Evaluation of neuro-fuzzy and Bayesian techniques in estimating suspended sediment loads

机译:估计悬浮沉积物荷载作用下神经模糊和贝叶斯技术的评价

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摘要

Sediment is considered the largest surface water pollutant by volume, which is crucial for surface water planning and management. Different management scenario evaluations require multiple in-stream suspended sediment forecasts and estimations. Physically-based models are considered to be good modeling techniques for suspended sediment estimation; nevertheless, they require a large number of parameters and intensive calculations. This study aims to enhance suspended sediment predicting techniques using efficient fusion modeling that can be used for evaluations by watershed managers and stakeholders. Adaptive neuro-fuzzy inference system (ANFIS) and Bayesian regression models were tested to find the best alternative to a calibrated and validated Soil and Water Assessment Tool (SWAT) model to predict suspended sediment loads in the Saginaw River watershed. For both methods, four different method-types were tested, namely General, Temporal, Spatial and Spatiotemporal. Results of the study showed that both methods can be used as good alternatives to the SWAT model at the global level for watershed estimations. The best suspended sediment replicating models, the Bayesian Spatiotemporal and ANFIS Spatial, produced results with Nash-Sutcliffe model efficiency values of 0.95 and 0.94, respectively. For the subbasin level, Bayesian and ANFIS techniques showed satisfactory results for 84 and 77 subbasins, respectively, out of 155 subbasins in the watershed. Box-Cox transformation of suspended sediment load values, made the use of the Bayesian model feasible and improved the prediction of the ANFIS models. However, suspended sediment data exhibited a bimodal distribution after transformation, making the modeling process challenging and complex.
机译:沉积物被认为是体积最大的表面水污染物,这对于地表水规划和管理至关重要。不同的管理场景评估需要多个流悬浮沉积物预测和估算。基于物理的模型被认为是悬浮沉积物估计的良好建模技术;尽管如此,它们需要大量参数和密集的计算。本研究旨在通过有效的融合建模来增强悬浮沉积物预测技术,可用于分水岭管理人员和利益相关者的评估。测试自适应神经模糊推理系统(ANFIS)和贝叶斯回归模型进行了测试,以找到校准和验证的土壤和水评估工具(SWAT)模型的最佳替代方案,以预测Saginaw河流域中的悬浮沉积物。对于这两种方法,测试了四种不同的方法类型,即一般,时间,空间和时空。研究结果表明,两种方法都可以用作流域估计的全球水平的SWAT模型的良好替代品。最佳悬浮沉积物复制模型,贝叶斯时尚和ANFIS空间,产生的结果,纳什 - Sutcliffe模型效率值分别为0.95和0.94。对于亚比巴水平,贝叶斯和ANFIS技术分别显示出84和77个子酶的令人满意的结果,分别在流域中的155个亚替代酶中出现了令人满意的结果。 Box-Cox转换悬浮的沉积物负载值,使得使用贝叶斯模型可行并改善了ANFIS模型的预测。然而,悬浮沉积物数据在转化后表现出双峰分布,使得建模过程具有挑战性和复杂。

著录项

  • 来源
    《Sustainable Water Resources Management》 |2019年第2期|639-654|共16页
  • 作者单位

    Department of Biosystems and Agricultural Engineering Michigan State University 225 Farrall Hall East Lansing MI 48824 USA Department of Civil Engineering University of Sulaimani Sulaimani KRG Iraq;

    Department of Biosystems and Agricultural Engineering Michigan State University 225 Farrall Hall East Lansing MI 48824 USA Department of Plant Soil and Microbial Sciences Michigan State University 159 Plant and Soil Science Building East Lansing MI 48824 USA;

    Physical Sciences Division Department of Statistics University of Chicago Chicago IL 60637 USA;

    Department of Biosystems and Agricultural Engineering Michigan State University 225 Farrall Hall East Lansing MI 48824 USA;

    Department of Biosystems and Agricultural Engineering Michigan State University 225 Farrall Hall East Lansing MI 48824 USA;

    Department of Biosystems and Agricultural Engineering Michigan State University 225 Farrall Hall East Lansing MI 48824 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Suspended sediment; SWAT; ANFIS; Bayesian; Saginaw river watershed;

    机译:悬浮沉积物;扑打;ANFIS;贝叶斯;Saginaw河流域;

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