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首页> 外文期刊>Environmental Geology >Evaluation of water quality parameters for the Mamasin dam in Aksaray City in the central Anatolian part of Turkey by means of artificial neural networks
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Evaluation of water quality parameters for the Mamasin dam in Aksaray City in the central Anatolian part of Turkey by means of artificial neural networks

机译:利用人工神经网络评估土耳其中部安那托利亚地区阿克萨赖市马马辛大坝的水质参数

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Sustaining the human ecological benefits of surface water requires carefully planned strategies for reducing the cumulative risks posed by diverse human activities. The municipality of Aksaray city plays a key role in developing solutions to surface water management and protection in the central Anatolian part of Turkey. The responsibility to provide drinking water and sewage works, regulate the use of private land and protect public health provides the mandate and authority to take action. The present approach discusses the main sources of contamination and the result of direct wastewater discharges into the Melendiz and Karasu rivers, which recharge the Mamasin dam sites by the use of artificial neural network (ANN) modeling techniques. The present study illustrates the ability to predict and/or approve the output values of previously measured water quality parameters of the recharge and discharge areas at the Mamasin dam site by means of ANN techniques. Using the ANN model is appreciated in such environmental research. Here, the ANN is used for estimating if the field parameters are agreeable to the results of this model or not. The present study simulates a situation in the past by means of ANN. But in caseany field measurements of some relative parameters at the outlet point "discharge area" have been missed, it could be possible to predict the approximate output values from the detailed periodical water quality parameters. Because of the high variance and the inherentrnnon-linear relationship of the water quality parameters in time series, it is difficult to produce a reliable model with conventional modeling approaches. In this paper, the ANN modeling technique is used to establish a model for evaluating the change in electrical conductivity (EC) and dissolved oxygen (DO) values in recharge (input) and discharge (output) areas of the dam water under pollution risks. A general ANN modeling scheme is also recommended for the water parameters. The modeling process includes four main stages: (1) source data analysis, (2) system priming, (3) system fine-tuning and (4) model evaluation. Results of the ANN modeling scheme indicate that the output values are agreeable to the water quality parameters, which were measured at the field in the static water mass of the Mamasin dam lake. Water contamination at the dam site is caused by the continuous increase of nutrient contents and decrease of the O_2 level in water causing an anaerobic condition. It may stimulate algae growth flow in such water bodies, consequently reducing water quality.
机译:为了维持地表水对人类的生态效益,需要精心规划的策略来减少人类各种活动造成的累积风险。阿克萨赖市政府在开发土耳其中部安那托利亚地区地表水管理和保护解决方案方面发挥着关键作用。提供饮用水和污水处理工程,规范私人土地的使用以及保护公共健康的责任提供了采取行动的授权和授权。本方法讨论了污染的主要来源以及直接废水排放到Melendiz和Karasu河中的结果,这些废水通过使用人工神经网络(ANN)建模技术为Mamasin大坝站点补给。本研究说明了通过ANN技术预测和/或批准Mamasin坝址补给和排放区先前测得的水质参数的输出值的能力。在此类环境研究中,使用ANN模型受到赞赏。在这里,ANN用于估计场参数是否与该模型的结果一致。本研究通过人工神经网络模拟了过去的情况。但是,如果错过了在出口“排放区”的某些相对参数的现场测量,则有可能从详细的定期水质参数中预测出近似的输出值。由于时间序列中水质参数的高方差和固有的非线性关系,使用常规建模方法很难生成可靠的模型。在本文中,使用ANN建模技术来建立模型,以评估污染风险下坝水补给(输入)和排放(输出)区域的电导率(EC)和溶解氧(DO)值的变化。对于水参数,还建议使用通用的ANN建模方案。建模过程包括四个主要阶段:(1)源数据分析,(2)系统准备,(3)系统微调和(4)模型评估。 ANN建模方案的结果表明,输出值与水质参数相吻合,这些参数是在Mamasin坝湖的静态水量场中实测的。大坝现场的水污染是由于营养物含量的不断增加和水中O_2含量的降低而引起的厌氧状态。它可能会刺激藻类在此类水体中的生长,从而降低水质。

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