Machine learning and response surface methodology forecasting comparison for improved spray dry scrubber performance with brine sludge-derived sorbent

IF 4.1 Q2 ENGINEERING, CHEMICAL Digital Chemical Engineering Pub Date : 2025-03-01 Epub Date: 2024-12-20 DOI:10.1016/j.dche.2024.100214
B.J. Chepkonga , L. Koech , R.S. Makomere , H.L. Rutto
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Abstract

In this study, hydrated lime (Ca(OH)₂) sorbent was prepared from industrial brine sludge waste using simple laboratory procedures and utilized in a laboratory-scale spray dry scrubber for desulfurization tests. The effects of key process parameters in spray drying (sorbent particle size, inlet gas phase temperature, and Ca:S ratio) on desulfurization efficiency were investigated using central composite design (CCD). Three machine learning (ML) models, multilayer perceptron (MLP), support vector regressor (SVR), and light gradient boosting machine (LightGBM), were assessed for their output estimation accuracy and compared to the CCD prediction model. The computational framework utilized experimental variables structured by CCD software as input metadata. Model performance was evaluated through generalization and accuracy measurements, including the coefficient of determination (R²), root mean square error (RMSE), mean square error (MSE), and mean squared logarithmic error (MSLE). Analysis of variance revealed that the Ca:S ratio had the most significant influence on SO₂ absorption. A quadratic model correlating the process variables with desulfurization efficiency was developed, yielding an R-squared value of 93.47%. Characterization of the final desulfurization products, particularly using XRD, showed the emergence of new phases such as hannebachite (CaSO3.0·5H2O), while FTIR analysis identified unreacted portlandite and calcite. Among the ML models, the MLP demonstrated superior performance over SVR and LightGBM, highlighting its efficacy in extracting and decoding information from the input data. The response surface methodology (RSM) model also proved to be a reliable forecasting tool, indicating its potential as a practical alternative to complex algorithmic computations in scenarios with limited raw data.
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机器学习和响应面方法预测与盐水污泥衍生吸附剂改进喷雾干式洗涤器性能的比较
在本研究中,利用简单的实验室程序从工业卤水污泥废物中制备了水合石灰(Ca(OH) 2)吸附剂,并在实验室规模的喷雾干燥洗涤器中进行了脱硫试验。采用中心复合设计(CCD)研究了喷雾干燥过程中关键工艺参数(吸附剂粒径、入口气相温度和Ca:S比)对脱硫效率的影响。对多层感知器(MLP)、支持向量回归器(SVR)和光梯度增强机(LightGBM)三种机器学习模型的输出估计精度进行了评估,并与CCD预测模型进行了比较。计算框架采用CCD软件构建的实验变量作为输入元数据。通过决定系数(R²)、均方根误差(RMSE)、均方误差(MSE)和均方对数误差(MSLE)来评估模型的性能。方差分析表明,Ca:S比对so2吸收的影响最为显著。建立了工艺变量与脱硫效率的二次方程,其r平方值为93.47%。最终脱硫产物的表征,特别是XRD,发现了新相的出现,如hannebacite (CaSO3.0·5H2O),而FTIR分析发现了未反应的波特兰石和方解石。在ML模型中,MLP表现出优于SVR和LightGBM的性能,突出了其从输入数据中提取和解码信息的有效性。响应面方法(RSM)模型也被证明是一种可靠的预测工具,表明它在原始数据有限的情况下作为复杂算法计算的实际替代方案的潜力。
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