Giri Anil Kumar, Mishra Prakash Chandra
Centre of Excellence for Bioresource Management and Energy Conservation Material Development, Fakir Mohan University, Vyasa Vihar, Odisha, 756089, Balasore, India.
Department of Environmental Science, Fakir Mohan University, Balasore, Odisha, 756089, India.
Environ Sci Pollut Res Int. 2023 Feb;30(9):23997-24012. doi: 10.1007/s11356-022-23593-6. Epub 2022 Nov 4.
The present research work approaches the removal of fluoride from aqueous medium using neutralized activated red mud (NARM) in a continuous fixed bed column. Artificial neural network (ANN) technique was applied effectively for optimization of the model for the practicability of the removal process. The consequences of various experimental variables, like bed length, adsorbate concentration, experimental time, and adsorbate solution flow rate are studied to know the breakthrough point and saturation times. The highest removal potentiality of NARM was considered to be 3.815 mg g of F in the bed height of 15 cm, starting concentration 1 ppm, susceptible time 120 min, adsorbate solution flow rate 0.5 mL min, and constant room temperature, respectively. Bohart-Adams and Thomas models were considered to describe the fixed bed column effect to the bed height and adsorbate concentrations. The experimental data were applied to a back propagation (BP) learning algorithm programme with a four-seven-one architecture model. The artificial neural network model was considered to be functioning correctly as absolute relative percentage error throughout the learning period. Differentiation between the predicted outcomes from ANN model and actual results from experimental analysis affords a high degree of correlation (R = 0.998) stipulating that the model was able to predict the adsorption efficiency. Experimented adsorbent materials were characterized using different instrumental analysis that is scanning electron microscopy-energy dispersive X-ray spectroscopy (SEM-EDS), Fourier transform infrared spectroscopy (FTIR), and X-ray diffraction (XRD).
本研究工作采用中和活性赤泥(NARM)在连续固定床柱中从水介质中去除氟化物。人工神经网络(ANN)技术被有效地应用于优化去除过程实用性的模型。研究了各种实验变量的影响,如床层长度、吸附质浓度、实验时间和吸附质溶液流速,以了解突破点和饱和时间。在床层高度15 cm、起始浓度1 ppm、作用时间120 min、吸附质溶液流速0.5 mL/min和恒定室温条件下,NARM的最高去除潜力被认为分别为3.815 mg/g F。采用Bohart-Adams和Thomas模型来描述固定床柱对床层高度和吸附质浓度的影响。将实验数据应用于具有四-七-一架构模型的反向传播(BP)学习算法程序。在整个学习期间,人工神经网络模型被认为运行正确,绝对相对百分比误差较小。人工神经网络模型预测结果与实验分析实际结果之间的差异具有高度相关性(R = 0.998),表明该模型能够预测吸附效率。使用不同的仪器分析方法对实验吸附剂材料进行了表征,即扫描电子显微镜-能量色散X射线光谱(SEM-EDS)、傅里叶变换红外光谱(FTIR)和X射线衍射(XRD)。