Department of Civil Engineering, University of Louisiana at Lafayette, P. O. Box 43598, Lafayette, LA, 70504, USA; Wastewater Infrastructure Planning, Houston Water, Houston Public Works, 611 Walker Street, 18th Floor, Houston, TX, 77008, USA.
Henan Key Laboratory of Ecological Security, Collaborative Innovation Center of Water Security for Water Source Region of Mid-line of South-to-North Diversion Project of Henan Province, Nanyang Normal University, 1638 Wolong Rd, Nanyang, Henan, PR China.
Chemosphere. 2020 Oct;256:127081. doi: 10.1016/j.chemosphere.2020.127081. Epub 2020 May 15.
Discharging coloring products in water bodies has degraded water quality irreversibly over the past several decades. Order mesoporous carbon (OMC) was modified by embedding neodymium(III) chloride on the surface of OMC to enhance the adsorptive removal towards these contaminants. This paper represents an artificial neural network (ANN) based approach for modeling the adsorption process of sunset yellow onto neodymium modified OMC (OMC-Nd) in batch adsorption experiments. Neodymium modified OMC was characterized using N adsorption-desorption isotherm, TEM micrographs, FT-IR and XPS spectra analysis techniques. 2.5 wt% Nd loaded OMC was selected as the final adsorbent for further experiments because OMC-2.5Nd showed highest removal efficiency of 93%. The ANN model was trained and validated with the adsorption experiments data where initial concentration, reaction time, and adsorbent dosage were selected as the variables for the batch study, whereas the removal efficiency was considered as the output. The ANN model was first developed using a three-layer back propagation network with the optimum structure of 3-6-1. The model employed tangent sigmoid transfer function as input in the hidden layer whereas a linear transfer function was used in the output layer. The comparison between modeled data and experimental data provided high degree of correlation (R = 0.9832) which indicated the applicability of ANN model for describing the adsorption process with reasonable accuracy.
在过去几十年中,水体中排放的着色剂产品已不可逆转地降低了水质。有序介孔碳(OMC)通过在 OMC 表面嵌入氯化钕(III)进行改性,以增强对这些污染物的吸附去除能力。本文提出了一种基于人工神经网络(ANN)的方法,用于对批式吸附实验中日落黄在改性 OMC(OMC-Nd)上的吸附过程进行建模。采用 N 吸附-解吸等温线、TEM 显微照片、FT-IR 和 XPS 谱图分析技术对改性 OMC 进行了表征。负载 2.5wt%Nd 的 OMC 被选为进一步实验的最终吸附剂,因为 OMC-2.5Nd 表现出最高的去除效率为 93%。ANN 模型是使用吸附实验数据进行训练和验证的,其中初始浓度、反应时间和吸附剂剂量被选为批处理研究的变量,而去除效率被视为输出。该模型首先使用具有 3-6-1 最佳结构的三层反向传播网络进行开发。该模型在隐藏层中采用正切 S 型传递函数作为输入,而在输出层中采用线性传递函数。模型数据与实验数据之间的比较提供了高度的相关性(R=0.9832),这表明 ANN 模型具有合理的准确性,适用于描述吸附过程。