Enhancing hydrochar production and proprieties from biogenic waste: Merging response surface methodology and machine learning for organic pollutant remediation

IF 5.8 2区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY Journal of Saudi Chemical Society Pub Date : 2024-09-01 DOI:10.1016/j.jscs.2024.101920
Fatima Moussaoui , Faiçal El Ouadrhiri , Ebraheem-Abdu Musad Saleh , Soukaina El Bourachdi , Raed H. Althomali , Asmaa F. Kassem , Abderrazzak Adachi , Kakul Husain , Ismail Hassan , Amal Lahkimi
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Abstract

The valorization of biogenic waste by hydrothermal carbonization is widely discussed in research. However, to our knowledge, no study has combined almond shells and olive pomace to synthesize a solid carbon material. The purpose of this study is to enhance the hydrochar process from AS and OP using RSM methodology and machine learning models: ANN, SVM and XG-Boost. Subsequently, a study was carried out on the removal of organic pollutants by the synthesized material. The optimum Co-HTC operating conditions obtained at 180 C, 90 min with acid catalyst corresponding to 71.51 % and 87.13 % for mass yield and carbon retention rate respectively according to RSM-CCD. The comparison between RSM-CCD and ML in terms of prediction concludes that RSM remains more efficient in terms of planning and optimization. However, ANN is more suitable for modeling and predicting mass yields and carbon retention rates. Hydrochar’s physicochemical properties were evaluated by the use of spectroscopic methods like FTIR, SEM, XRD, and CHNO. To conclude, we studied the performance of HCop in methylene blue adsorption, varying the following parameters: pH, contact time, initial dye concentration, adsorbent dose and temperature. In addition, kinetic and isothermal models were studied to describe the dominant mechanisms in the MB adsorption process. The MB maximal adsorption using HCop obtained at pH 9, with an initial dye concentration of 100 mg. L−1, 40-min contact time, 0.1 g/L adsorbent dose, and a temperature between 25 and 30 °C. In conclusion, these results provide important information on the use of Co-HTC to convert biogenic wastes into high-performance carbon materials for the appropriate removal of organic pollutants. More studies are needed to use the material in other fields of application.

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提高生物废弃物的水炭产量和特性:将响应面方法与机器学习相结合,实现有机污染物修复
研究人员广泛讨论了通过水热碳化法对生物废料进行增值的问题。然而,据我们所知,还没有研究将杏仁壳和橄榄渣结合起来合成固体碳材料。本研究的目的是利用 RSM 方法和机器学习模型来提高 AS 和 OP 的水炭化工艺:ANN、SVM 和 XG-Boost。随后,对合成材料去除有机污染物的情况进行了研究。根据 RSM-CCD,在 180 摄氏度、90 分钟的酸性催化剂条件下,Co-HTC 的最佳操作条件分别为 71.51% 和 87.13%。对 RSM-CCD 和 ML 的预测进行比较后得出结论,RSM 在规划和优化方面仍然更有效。然而,ANN 更适合用于建模和预测质量产量和碳保留率。使用傅立叶变换红外光谱、扫描电子显微镜、XRD 和 CHNO 等光谱方法对水炭的理化性质进行了评估。最后,我们研究了 HCop 在亚甲基蓝吸附中的性能,并改变了以下参数:pH 值、接触时间、初始染料浓度、吸附剂剂量和温度。此外,我们还研究了动力学模型和等温模型,以描述甲基溴吸附过程中的主要机制。在 pH 值为 9、初始染料浓度为 100 mg.L-1,接触时间为 40 分钟,吸附剂剂量为 0.1 g/L,温度为 25 至 30 °C。总之,这些结果为使用 Co-HTC 将生物废料转化为高性能碳材料以适当去除有机污染物提供了重要信息。要将这种材料用于其他应用领域,还需要进行更多的研究。
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来源期刊
Journal of Saudi Chemical Society
Journal of Saudi Chemical Society CHEMISTRY, MULTIDISCIPLINARY-
CiteScore
8.90
自引率
1.80%
发文量
120
审稿时长
38 days
期刊介绍: Journal of Saudi Chemical Society is an English language, peer-reviewed scholarly publication in the area of chemistry. Journal of Saudi Chemical Society publishes original papers, reviews and short reports on, but not limited to: •Inorganic chemistry •Physical chemistry •Organic chemistry •Analytical chemistry Journal of Saudi Chemical Society is the official publication of the Saudi Chemical Society and is published by King Saud University in collaboration with Elsevier and is edited by an international group of eminent researchers.
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