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Application of artificial neural network and random forest methods for modeling simultaneous adsorption of safranin-O and methyl violet dyes onto modified pine cone powder

机译:人工神经网络和随机森林方法在番红花O和甲基紫染料同时吸附到改性松锥粉上的模拟中

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摘要

In the present work, a new carboxylate-functionalized pine cone was prepared using isopropylidene malonate in a solvent-free reaction. It was then characterized by the FT-IR, X-ray diffraction, scanning electron microscopy, and Brunauer-Emmett-Teller analysis techniques. The performance of the modified adsorbent was investigated for the removal of the safranin-O (SO) and methyl violet (MV) dyes from the single and binary solutions. The maximum adsorption capacity for SO and MV in the single solution was 208.0 and 225.0 mg/g, respectively, whereas these values were, respectively, 112.30 and 116.7 mg/g for the binary solution. This value is much higher than those reported by some other researchers. The kinetic studies revealed that this bio-sorption is a chemisorption process. In continuation, the experimental factors involving the initial solution pH, adsorbent dosage, dye concentration, and contact time were used as the input variables to the artificial neural network (ANN) and random forest (RF) models to predict the removal percentage of SO and MV in the binary mixture. The validation of these models was tested using a test set of 81 data points. The statistical parameters involved in the prediction of the removal percentage of the test set confirmed that the ANN model had a substantially better and a more accurate prediction with respect to the RF model.
机译:在目前的工作中,使用丙二酸异亚丙基酯在无溶剂的反应中制备了一种新的羧酸酯官能化的松果。然后通过FT-IR,X射线衍射,扫描电子显微镜和Brunauer-Emmett-Teller分析技术对其进行表征。研究了改性吸附剂的性能,可从单一溶液和二元溶液中去除藏红素O(SO)和甲基紫(MV)染料。单一溶液中SO和MV的最大吸附容量分别为208.0和225.0 mg / g,而二元溶液的最大吸附容量分别为112.30和116.7 mg / g。这个值比其他一些研究人员报道的要高得多。动力学研究表明,这种生物吸附是化学吸附过程。接下来,将涉及初始溶液pH,吸附剂剂量,染料浓度和接触时间的实验因素用作人工神经网络(ANN)和随机森林(RF)模型的输入变量,以预测SO和NO的去除率。二元混合物中的MV。使用81个数据点的测试集测试了这些模型的有效性。预测测试集去除率的统计参数证实,相对于RF模型,ANN模型具有更好,更准确的预测。

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