Qualitative evaluation of wastewater treatment plant performance by a neural network model optimized by genetic algorithm

B. Đurin, Sara Dadar, Atena Pezeschi, Dragana Dogančić
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引用次数: 2

Abstract

: The adverse effects of improper disposal of collected and treated wastewater have become inevitable. To achieve the desired environmental standards, in addition to the construction of wastewater treatment plants, there is also a need to evaluate the continuous performance of treatment systems. In Iran, treated wastewater is mostly used in agriculture. Therefore, the use of wastewater with poor quality characteristics can endanger health. In this study, the neural network model's efficiency was investigated to predict the performance of the Perkandabad wastewater treatment plant in Mashhad in Iran. To achieve this, first, the factors affecting the TBOD parameter were identified as one of the quality indicators of the effluent. In the next step, using a genetic algorithm and network input factors, the performance of the treatment plant was predicted and evaluated. The highest correlation coefficient for the TBOD parameter was 0.89%. The results show that among the input parameters in the model, the amount of organic matter pollution load has the greatest effect on this prediction.
基于遗传算法优化的神经网络模型对污水处理厂性能进行定性评价
收集和处理后的废水处置不当造成的不良影响已不可避免。为了达到理想的环境标准,除了污水处理厂的建设外,还需要评估处理系统的持续性能。在伊朗,处理过的废水主要用于农业。因此,使用水质特性差的废水会危害健康。在这项研究中,研究了神经网络模型的效率,以预测伊朗马什哈德的Perkandabad污水处理厂的性能。为此,首先将影响TBOD参数的因素确定为出水水质指标之一。下一步,利用遗传算法和网络输入因子,对处理厂的性能进行预测和评价。TBOD参数的最高相关系数为0.89%。结果表明,在模型的输入参数中,有机物污染负荷量对预测的影响最大。
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