Machine Learning Model for Predicting the Performance of Activated Carbon Column for the Removal of Volatile Organic Compounds (VOCs)

Mita Nurhayati, Bum Ui Hong, Ho Geun Kang, Sungyun Lee
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Abstract

Objectives : In this study, a performance prediction model for a pilot-scale VOC adsorption column was developed using ANN algorithm. We compared the prediction accuracy of the mathematical models (Thomas model and Yan model) and the multiple linear regression model with that of ANN. This study showed the applicability of the ANN model for predicting the performance of activated carbon columns.Methods : The adsorption module contained 79.8 kg/module of wood-based activated carbon. The gas with 800 ppm-THC of toluene flowed downward from the top at about 5,700 m3/h. The breakthrough point was taken as 200 ppm-THC, the same as VOC emission regulation. The desorption was carried out using 130 m3/h of hot gas flowing upwards with reduced pressure (-150 to -200 mbar) and high heat (170℃). Adsorption and desorption cycles were conducted 6 times using 3 batches of activated carbon modules. Thomas model, Yan model, multiple linear regression model, and ANN model were developed to predict the breakthrough of Cout/Cin .Results and Discussion : The Thomas model and the Yan model provided the R2 values of 0.25 and 0.28, respectively, for predicting the Cout/Cin of all adsorption module batches and cycles, and the prediction accuracies were low. This could be because these two models do not consider temperature and pressure change operating conditions in the models. Also, the prediction accuracy of Cout/Cin was low when the initial inlet concentration and flow rate conditions were different for each batch. The multiple linear regression model considers all operating factors in the model, but the prediction accuracy of Cout/Cin was low as R2 of 0.45. On the other hand, the ANN model predicted the Cout/Cin with R2 higher than 0.97 for all adsorption module batches. In particular, even with the non-ideal data, the ANN model derived a breakthrough of Cout/Cin close to the experimental value.Conclusion : The ANN model provided high prediction performance for the breakthrough of Cout/Cin even under non-ideal operation conditions and was expected to be helpful for actual THC adsorption column operation. The accuracy of the ANN model will be further improved if data are accumulated under various conditions.
预测活性炭柱去除挥发性有机化合物 (VOC) 性能的机器学习模型
目的:本研究使用 ANN 算法为中试规模的挥发性有机化合物吸附塔建立了性能预测模型。我们比较了数学模型(Thomas 模型和 Yan 模型)和多元线性回归模型与 ANN 的预测精度。这项研究表明,ANN 模型适用于预测活性炭柱的性能。方法:吸附模块包含 79.8 公斤/模块的木质活性炭。含有 800 ppm-THC 的甲苯气体以约 5,700 m3/h 的速度从顶部向下流动。突破点取为 200 ppm-THC,与挥发性有机化合物排放规定相同。解吸使用 130 立方米/小时的热气,以较低的压力(-150 至 -200 毫巴)和较高的热量(170℃)向上流动。使用 3 批活性炭模块进行了 6 次吸附和解吸循环。结果与讨论:Thomas 模型和 Yan 模型预测所有吸附模块批次和周期的 Cout/Cin 的 R2 值分别为 0.25 和 0.28,预测精度较低。这可能是因为这两个模型没有考虑温度和压力变化的工作条件。此外,当每个批次的初始入口浓度和流速条件不同时,Cout/Cin 的预测精度也较低。多元线性回归模型考虑了模型中的所有操作因素,但 Cout/Cin 的预测精度较低,R2 为 0.45。而 ANN 模型对所有吸附模块批次的 Cout/Cin 的预测 R2 均高于 0.97。结论:即使在非理想的操作条件下,ANN 模型对 Cout/Cin 的突破也能提供较高的预测性能,有望对 THC 吸附柱的实际操作有所帮助。如果能积累各种条件下的数据,ANN 模型的准确性将得到进一步提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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