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首页> 外文期刊>Journal of Environmental Health Science and Engineering >Prediction and assessment of drought effects on surface water quality using artificial neural networks: case study of Zayandehrud River, Iran
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Prediction and assessment of drought effects on surface water quality using artificial neural networks: case study of Zayandehrud River, Iran

机译:利用人工神经网络预测和评估干旱对地表水水质的影响:伊朗扎延德鲁德河的案例研究

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Although drought impacts on water quantity are widely recognized, the impacts on water quality are less known. The Zayandehrud River basin in the west-central part of Iran plateau witnessed an increased contamination during the recent droughts and low flows. The river has been receiving wastewater and effluents from the villages, a number of small and large industries, and irrigation drainage systems along its course. What makes the situation even worse is the drought period the river basin has been going through over the last decade. Therefore, a river quality management model is required to include the adverse effects of industrial development in the region and the destructive effects of droughts which affect the river’s water quality and its surrounding environment. Developing such a model naturally presupposes investigations into pollution effects in terms of both quality and quantity to be used in such management tools as mathematical models to predict the water quality of the river and to prevent pollution escalation in the environment.The present study aims to investigate electrical conductivity of the Zayandehrud River as a water quality parameter and to evaluate the effect of this parameter under drought conditions. For this purpose, artificial neural networks are used as a modeling tool to derive the relationship between electrical conductivity and the hydrological parameters of the Zayandehrud River. The models used in this research include multi-layer perceptron and radial basis function. Finally, these two models are compared in terms of their performance using the time series of electrical conductivity at eight monitoring-hydrometric stations during drought periods between the years 1997–2012.Results show that artificial neural networks can be used for modeling the relationship between electrical conductivity and hydrological parameters under drought conditions. It is further shown that radial basis function works better for the upstream stretches of the river while multi-layer perceptron is more efficient for the downstream stretches.Keywords: Discharge, Drought, Temperature, Electrical conductivity, Artificial neural networks, Multi layer perceptron, Radial basis function
机译:尽管人们普遍认识到干旱对水量的影响,但对水质的影响却鲜为人知。伊朗高原中西部的Zayandehrud流域在最近的干旱和低流量期间污染增加。这条河沿途一直在接收来自村庄,许多小型和大型工业以及灌溉排水系统的废水和污水。使局势更加恶化的是流域在过去十年中经历的干旱时期。因此,需要一种河流质量管理模型,其中应包括该地区工业发展的不利影响以及干旱的破坏性影响,而干旱会影响河流的水质及其周围环境。开发这样的模型自然就需要对质量和数量方面的污染影响进行调查,以用于数学模型等管理工具中,以预测河流的水质并防止环境污染升级。 Zayandehrud河的电导率作为水质参数,并评估该参数在干旱条件下的影响。为此,将人工神经网络用作建模工具,以推导Zayandehrud河的电导率与水文参数之间的关系。本研究中使用的模型包括多层感知器和径向基函数。最后,使用1997-2012年干旱期间八个监测水文站的电导率时间序列,对这两个模型的性能进行了比较。结果表明,可以使用人工神经网络对电之间的关系建模干旱条件下的电导率和水文参数。进一步表明,径向基函数在河流上游部分效果更好,而多层感知器在下游部分效果更好。关键词:流量,干旱,温度,电导率,人工神经网络,多层感知器,径向基本功能

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