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优化石油工业废水处理系统,并利用电凝聚提出化学需氧量去除的经验关联,通过人工神经网络预测系统性能。

Optimization of oil industry wastewater treatment system and proposing empirical correlations for chemical oxygen demand removal using electrocoagulation and predicting the system's performance by artificial neural network.

机构信息

Department of Chemical Engineering, College of Engineering, King Khalid University, Abha, King Saudi Arabia.

Department of Computer Science, Al-Turath University College Al Mansour, Baghdad, Iraq.

出版信息

PeerJ. 2023 Sep 25;11:e15852. doi: 10.7717/peerj.15852. eCollection 2023.

Abstract

The alarming pace of environmental degradation necessitates the treatment of wastewater from the oil industry in order to ensure the long-term sustainability of human civilization. Electrocoagulation has emerged as a promising method for optimizing the removal of chemical oxygen demand (COD) from wastewater obtained from oil refineries. Therefore, in this study, electrocoagulation was experimentally investigated, and a single-factorial approach was employed to identify the optimal conditions, taking into account various parameters such as current density, pH, COD concentration, electrode surface area, and NaCl concentration. The experimental findings revealed that the most favorable conditions for COD removal were determined to be 24 mA/cm for current density, pH 8, a COD concentration of 500 mg/l, an electrode surface area of 25.26 cm, and a NaCl concentration of 0.5 g/l. Correlation equations were proposed to describe the relationship between COD removal and the aforementioned parameters, and double-factorial models were examined to analyze the impact of COD removal over time. The most favorable outcomes were observed after a reaction time of 20 min. Furthermore, an artificial neural network model was developed based on the experimental data to predict COD removal from wastewater generated by the oil industry. The model exhibited a mean absolute error (MAE) of 1.12% and a coefficient of determination (R) of 0.99, indicating its high accuracy. These findings suggest that machine learning-based models have the potential to effectively predict COD removal and may even serve as viable alternatives to traditional experimental and numerical techniques.

摘要

环境恶化的惊人速度要求我们处理来自石油工业的废水,以确保人类文明的长期可持续性。电凝聚已成为优化从炼油厂获得的废水的化学需氧量 (COD) 去除的一种很有前途的方法。因此,在这项研究中,进行了电凝聚的实验研究,并采用单因素方法确定了最佳条件,考虑了各种参数,如电流密度、pH 值、COD 浓度、电极表面积和 NaCl 浓度。实验结果表明,COD 去除的最有利条件被确定为电流密度为 24 mA/cm、pH 值为 8、COD 浓度为 500 mg/l、电极表面积为 25.26 cm 和 NaCl 浓度为 0.5 g/l。提出了相关方程来描述 COD 去除与上述参数之间的关系,并检验了双因素模型来分析 COD 去除随时间的影响。在反应时间为 20 分钟后观察到了最有利的结果。此外,根据实验数据开发了一个基于人工神经网络的模型,用于预测石油工业产生的废水中的 COD 去除。该模型的平均绝对误差 (MAE) 为 1.12%,决定系数 (R) 为 0.99,表明其具有很高的准确性。这些发现表明,基于机器学习的模型有可能有效地预测 COD 去除,甚至可能成为传统实验和数值技术的可行替代方案。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1a72/10538301/614f2ef731ec/peerj-11-15852-g001.jpg

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