神经遗传建模在水处理厂输入水质实时监测优化中的应用

Pub Date : 2019-07-01 DOI:10.4018/IJEOE.2019070105
Paulami De
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引用次数: 1

摘要

本文介绍了根据流入系统的水的性质调整水处理厂(WTP)运行要求的方法,以提高水处理厂的效率。过去,各种研究表明,流入水处理厂的水质会影响处理厂的运行效率和经济可行性。在所有其他水质参数中,溶解氧(DO)浓度是衡量水质的基本指标之一。时间模式的识别可以帮助工程师调整WTP操作,并可以节省不必要的工厂资源浪费。这就是为什么本文提出了一个新的模型,可以在分析神经元网络的帮助下预测各种化学参数的时间模式。该模型被应用于WTP对城市周边集水区的响应,导致进水DO的规律变化。根据所使用的性能指标,该模型能够预测滞后1小时的时间模式。
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Application of Neurogenetic Modeling in Optimization of Water Treatment Plant Based on the Temporal Monitoring of Water Input Quality
This article addresses methods to adjust operating requirements in water treatment plants (WTPs) in order to increase the efficiency of water treatment plants based on the nature of the water inflows into the systems. In the past, various studies have suggested that the quality of water inflow into the WTP has an impact on the efficiency and economic viability of operating treatment plants. Among all other quality parameters, the concentration of dissolved oxygen (DO) is one of the basic indicators about the overall quality of the water. Identification of a temporal pattern can help the engineers to adapt the WTP operations and can save the unnecessary wasting of plant resources. That is why the present article has proposed a new model that can predict the temporal patterns of various chemical parameters with the help of an analytic neuronal network. The model was applied to the case of a WTP that responds to a peri-urban catchment, leading to regular variations in the DO of water inflow. According to the performance metrics utilized the model was able to predict the temporal pattern at a lag of 1 hour.
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