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Adsorptive removal of arsenic by calcined Mg-Fe-(CO3) LDH:An artificial neural network model

机译:煅烧Mg-Fe-(CO3)LDH:一种人工神经网络模型的吸附去除砷

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The multivariate modeling of adsorptive removal of arsenic from aqueous solution by a calcined Mg-Fe-(CO3) layer double hydroxide,synthesized by a co-precipitation method at a low supersaturation,was conducted by an artifician neural network (ANN).The major influencing parameters of the adsorption process,i.e.,adsorbent dose (0.25-4 g L~(-1)),reaction time (2-240 min),pH of the solution (3-12) and agitation rate (80-220rpm) were varied through a'one variable at a time'(OVAT) experiment to assess their individual effect on the arsenic removal efficiency.The OVAT experimental data were used for multivariate modeling through a feed forward ANN network with back propagation algorithm.The optimized network showed a correlation coefficient for the training,validation,testing and overall process above 0.99 and the mean square of error as 0.996.The analysis of variance conducted on the predicted values from the model and the actual experimental value exhibited a high F value of and low p value less than 0.001,which showed the applicability of ANN model in delineating the adsorption process of arsenic removal.
机译:由煅烧的Mg-Fe-(CO3)层双氢氧化物从水溶液中砷的多变量建模,通过共沉淀法在低过沉积中合成,由非线性神经网络(ANN)进行。专业影响吸附过程的参数,即吸附剂剂量(0.25-4g L〜(-1)),反应时间(2-240分钟),溶液的pH(3-12)和搅拌速率(80-220rpm)在时间'(Ovat)实验中通过A'one变量变化,以评估它们对砷去除效率的各个效果。OVAT实验数据用于通过馈送前向ANN网络进行多变量建模,具有反向传播算法。优化的网络显示0.99以上训练,验证,测试和整体过程的相关系数和误差的均方为0.996.从模型的预测值和实际实验值上进行的方差分析表现出高于和低p的高值价值小于0.001,显示了ANN模型在划清砷除去的吸附过程中的适用性。

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