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Application of chemometric analysis and self Organizing Map-Artificial Neural Network as source receptor modeling for metal speciation in river sediment

机译:化学计量学分析和自组织图人工神经网络作为河流沉积物中金属形态的源受体模拟的应用

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Present study deals with the river Ganga water quality and its impact on metal speciation in its sediments. Concentration of physico-chemical parameters was highest in summer season followed by winter and lowest in rainy season. Metal speciation study in river sediments revealed that exchangeable, reducible and oxidizable fractions were dominant in all the studied metals (Cr, Ni, Cu, Zn, Cd, Pb) except Mn and Fe. High pollution load index (1.64-3.89) recommends urgent need of mitigation measures. Self-organizing Map-Artificial Neural Network (SOM-ANN) was applied to the data set for the prediction of major point sources of pollution in the river Ganga. (C) 2015 Elsevier Ltd. All rights reserved.
机译:目前的研究涉及恒河的水质及其对沉积物中金属形态的影响。理化参数的浓度在夏季最高,其次是冬季,在雨季最低。在河流沉积物中的金属形态研究表明,在所有研究的金属(Cr,Ni,Cu,Zn,Cd,Pb)中,除了Mn和Fe外,可交换,可还原和可氧化的组分占主导地位。高污染负荷指数(1.64-3.89)建议迫切需要采取缓解措施。自组织地图人工神经网络(SOM-ANN)被应用于预测恒河主要污染源的数据集。 (C)2015 Elsevier Ltd.保留所有权利。

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