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Prediction of full-scale filtration plant performance using artificial neural networks based on principal component analysis

机译:基于主成分分析的人工神经网络预测满量程过滤植物性能

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摘要

To obtain standard water quality is one of the most crucial issues must be discussed. To get higher water quality, the separation and purification processes must be applied. In this study, 44 water quality parameters were monitored between May 2018 and February 2019 in order to evaluate the efficiency of a full-scale filtration plant which uses particulate-, micro- and ultrafiltration processes as a pre-treatment and applied reverse osmosis as the post-treatment. A crucial research question of this study was thus whether the Ultrafiltration (UF) and Reverse Osmosis (RO) systems performance about the elimination of monitored parameters. The most striking results from the monitoring study reveal that the pre-treatment processes are not suitable for separation of uni/polyvalent ions. The hypothesis that will be tested for both systems; the UF process was efficient for microbial and nitrogen parameters and the RO was efficient for separation of anions and metals that are identified priority hazardous substance. Then, the purification performance of a filtration plant was evaluated using the Artificial Neural Network (ANN) model based on the Principal Component Analysis (PCA) that used to reduce the number of input water parameters. PCA components were used as input in the model and according to the results of Pearson Correlation Analysis, the conductivity parameter which was directly or indirectly related with almost all parameters was used as output. Consistency of created ANN model with real data was 98.758% and mean square errors was 0.00293.
机译:为了获得标准水质,是必须讨论最重要的问题之一。为了获得更高的水质,必须施加分离和净化工艺。在本研究中,在2018年5月和2019年5月之间监测了44个水质参数,以评估使用颗粒,微滤网和超滤过程作为预处理和施加的反渗透的全尺寸过滤工厂的效率后治疗。因此,本研究的一个重要研究问题是无论是超滤(UF)和反渗透(RO)系统对消除监测参数的性能。监测研究中最引人注目的结果表明,预处理过程不适合分离Uni / PolyValent离子。对两个系统进行测试的假设; UF过程对于微生物和氮参数有效,并且RO对于分离鉴定的危险物质的阴离子和金属是有效的。然后,使用基于用于减少输入水参数的数量的主要成分分析(PCA)来评估过滤设备的净化性能。 PCA组件用作模型中的输入,并根据Pearson相关性分析的结果,与几乎所有参数直接或间接相关的电导率参数用作输出。创建的ANN模型的一致性具有实际数据为98.758%,均值为0.00293。

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