Department of Materials Engineering and Convergence Technology & RIGET, Gyeongsang National University, Jinju, 52828, South Korea.
School of Materials Science and Engineering, Engineering Research Institute, Gyeongsang National University, Jinju, 52828, South Korea.
Environ Res. 2021 Jun;197:111107. doi: 10.1016/j.envres.2021.111107. Epub 2021 Apr 1.
Celestite and barite formation results in contamination of barium and strontium ions hinder oilfield water purification. Conversion of bio-waste sorbent products deals with a viable, sustainable and clean remediation approach for removing contaminants. Biochar sorbent produced from rice straw was used to remove barium and strontium ions of saline water from petroleum industries. The removal efficiency depends on biochar amount, pH, contact time, temperature, and Ba/Sr concentration ratio. The interactions and effects of these parameters with removal efficiency are multifaceted and nonlinear. We used an artificial neural network (ANN) model to explore the correlation between process variables and sorption responses. The ANN model is more accurate than that of existing kinetic and isotherm equations in assessing barium and strontium removal with adj. R values of 0.994 and 0.991, respectively. We developed a standalone user interface to estimate the barium and strontium removal as a function of sorption process parameters. Sensitivity analysis and quantitative estimation were carried out to study individual process variables' impact on removal efficiency.
天青石和重晶石的形成导致钡和锶离子的污染,阻碍了油田水的净化。生物废物吸附剂产品的转化为去除污染物提供了一种可行、可持续和清洁的修复方法。利用稻草生物炭作为吸附剂,从石油工业废水中去除钡和锶离子。去除效率取决于生物炭的用量、pH 值、接触时间、温度和钡/锶浓度比。这些参数之间的相互作用和影响是多方面的和非线性的。我们使用人工神经网络(ANN)模型来探索过程变量与吸附响应之间的相关性。ANN 模型比现有的动力学和等温线方程更准确,分别评估钡和锶的去除,调整 R 值为 0.994 和 0.991。我们开发了一个独立的用户界面,以估算吸附过程参数作为钡和锶去除的函数。进行了敏感性分析和定量估计,以研究单个过程变量对去除效率的影响。