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首页> 外文期刊>Journal of industrial and engineering chemistry >Application of artificial neural network and genetic algorithm to modeling and optimization of removal of methylene blue using activated carbon
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Application of artificial neural network and genetic algorithm to modeling and optimization of removal of methylene blue using activated carbon

机译:人工神经网络和遗传算法在活性炭脱除亚甲基蓝的建模与优化中的应用

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摘要

The activated carbon (AC) prepared from low cost available source (peanut sticks) were identified with various techniques such as FT-IR and SEM analysis. The influence of variables was simulated using artificial neural network (ANN) subsequent of application of genetic algorithm (GA) for the optimization of effective variables. The adsorption kinetics was modeled via the trained ANN as fitness function with acceptable accuracy of ADD = 1.65% and R~2 = 0,998. Following application of hybrid ANN-GA under the optimal operating conditions, maximum dye removal (96.2%) has been achieved.
机译:使用多种技术(例如FT-IR和SEM分析)鉴定了从低成本可用来源(花生棒)制备的活性炭(AC)。在应用遗传算法(GA)优化有效变量之后,使用人工神经网络(ANN)模拟了变量的影响。吸附动力学通过训练后的神经网络作为适应度函数进行建模,其可接受的精度为ADD = 1.65%和R〜2 = 0,998。在最佳操作条件下应用混合ANN-GA之后,已实现最大的染料去除率(96.2%)。

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