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Evaluation of Sediment Flux in a part of the Brahmaputra River and application of ANN and Linear Regression Models

机译:沉积物通量的沉积物源在Brahmaputra河的一部分中的评价及Ann和Linear回归模型的应用

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Estimation of sediment load can provide basic information on a range of problems related to the design and operation of river system and for water resources engineering as well as environmental problems. High sediment load is an integral component of the Brahmaputra River system, and its role, despite being critical in the overall systemic behaviour of the river, is little understood. Due to its sheer quantity and complex behavior during transport, sediment control has remained a challenge. Sediment flux depends on sediment properties, characteristics of the sediment load, and properties of the fluid flow. Artificial Neural Network (ANN) and Multiple Linear Regression (MLR) models were utilized to predict both sediment and particulate heavy metal concentration. Samples from river suspended and bank materials were analyzed with the help of X-Ray Diffraction, Scanning Electron Microscope, Laser Particle Size analyzer and Atomic Absorption Spectrometer. EDX spectra were generated for individual grains to understand compositional characters of the samples. Results of all these investigations were combined to develop a comprehensive understanding of the sediment load of the Brahmaputra River. The performances of the desired models confirmed that the model derived using ANNs gave a better prediction than the model derived using MLR.
机译:沉积物负荷的估计可以提供关于与河流系统的设计和运营以及水资源工程以及环境问题有关的一系列问题的基本信息。高沉积物负荷是Brahmaputra River系统的一体组成部分,尽管在河流的整体系统行为至关重要,但它的作用很少。由于运输过程中的纯粹数量和复杂的行为,沉积物控制仍然是一个挑战。沉积物助焊剂取决于沉积物特性,沉积物的特征,以及流体流动的性质。人工神经网络(ANN)和多元线性回归(MLR)模型用于预测沉积物和颗粒重金属浓度。借助X射线衍射,扫描电子显微镜,激光粒度分析仪和原子吸收光谱仪,分析来自河流悬浮和银行材料的样品。为个体晶粒产生EDX光谱,以了解样品的组成特征。所有这些调查的结果都被组合,以了解胸草河河沉积物的全面了解。所需模型的性能证实,使用ANNS导出的模型比使用MLR导出的模型提供了更好的预测。

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