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响应面法和人工神经网络优化MDEA脱硫溶液中热稳定盐脱除

Optimization of thermally stable salt removal from MDEA desulfurization solution by response surface methodology and artificial neural network

  • 摘要:
    目的 延长甲基二乙醇胺(MDEA)溶液的使用寿命并提高胺液吸收效果。
    方法 采用电渗析法脱除MDEA废液中的热稳定盐,通过单因素实验考查实验电压、运行时间、电极间距和极液浓度对溶液脱盐率的影响,利用方差分析筛选出显著影响因素。采用响应面法(response surface methodology, RSM)和径向基函数(radial basis function, RBF)神经网络模型,在实验的基础上进行模型优化。
    结果 建立了RSM与RBF神经网络模型,以70%的Box-Behnken实验数据进行训练、15%的实验数据分别用作测试和验证,其训练集、测试集、验证集和全部集的决定系数(R2)分别为0.998 35、0.997 83、0.999 95和0.997 79,拟合能力良好。对比RSM和RBF模型发现,RBF模型的各项指标均优于RSM模型。将RBF神经网络与遗传算法耦合寻优,经过135次迭代后,得到最佳工艺条件。当实验电压为28.7 V、运行时间为14.92 h、极液浓度为0.158 mol/L时,溶液脱盐率可达到96.4%。t检验结果表明,预测值与实际验证值无显著差异,为MDEA溶液中热稳定盐的脱除提供了可靠的依据。
    结论 所确定的最优工艺参数可为同类装置提供参考。

     

    Abstract:
    Objective The aim is to prolong the service life of methyl diethanolamine (MDEA) solution and enhance the absorption effect of amine liquid.
    Method The electrodialysis method was used to remove thermally stable salts from MDEA waste liquid. Single-factor experiments were conducted to investigate the effects of experimental voltage, operation time, electrode spacing, and polar liquid concentration on solution desalination rate, with variance analysis employed to screen out significant influencing factors. Response surface methodology (RSM) and radial basis function (RBF) neural network model were used to optimize the model on the basis of the experiments.
    Result RSM and RBF neural network models were established. The training was conducted with 70% of the Box-Behnken experimental data, and 15% of the experimental data were used for testing and validation, respectively. The coefficients of determination (R2) of the training set, test set, validation set, and the overall data set were 0.998 35, 0.997 83, 0.999 95 and 0.997 79, respectively, indicating a good fitting ability. Comparison of RSM and RBF models showed that the RBF model outperformed the RSM model in all indicators. By coupling the RBF neural network with a genetic algorithm for optimization, the optimal process conditions were obtained after 135 iterations. When the experimental voltage was 28.7 V, the running time was 14.92 h, and the polar liquid concentration was 0.158 mol/L, the solution desalination rate could reach 96.4%. The t-test results showed that there was no significant difference between the predicted value and the actual verification value, which provided a reliable basis for the removal of thermally stable salts in MDEA solution.
    Conclusion The determined optimal process parameters can provide a reference for similar devices.

     

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