The assessment of response surface methodology (RSM) and artificial neural network (ANN) modeling in dry flue gas desulfurization at low temperatures.

Robert Makomere, Hilary Rutto, Lawrence Koech
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引用次数: 1

Abstract

The performance of a flue gas desulfurization (FGD) system is characterized by SO2 removal efficiency (Y1) and reagent conversion (Y2). Achieving a near-perfect reaction environment has been of concern in dry FGD (DFGD) due to the low reactivity compared to the wet and semi-dry units. This study will appraise output responses using modeling by response surface methodology (RSM) and artificial neural networks (ANN) approaches. The impacts of input parameters like hydration time, hydration temperature, diatomite to hydrated lime (Ca(OH)2), sulfation temperature and inlet gas concentration will be studied using a randomized central composite design (CCD). ANN fitting tool mapped the CCD metadata using the Levenberg-Marquardt (LM) algorithm activated by the hyperbolic tangent (tansig) function. The hidden cells ranged from 7 to 10 to ascertain the effect node architecture on modeling accuracy. Validation of each procedure was assessed using root mean square error (RMSE), mean square error (MSE) and R-Squared studies. The outcomes presented a more accurate 5-10-2 ANN model in the mapping of the DFGD from R2 data of Y1 = 0.993 and Y2 = 0.9986 with a mapping deviation from the RMSE values of Y1 = 0.48465; Y2 = 0.44971 and MSE results of Y1 = 0.23488; Y2.= 0.20229.

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响应面法(RSM)和人工神经网络(ANN)建模在低温干法烟气脱硫中的评价。
烟气脱硫(FGD)系统的性能表征是SO2去除率(Y1)和试剂转化率(Y2)。由于与湿式和半干式装置相比,反应性较低,因此实现近乎完美的反应环境一直是干式烟气脱硫(DFGD)关注的问题。本研究将使用响应面法(RSM)和人工神经网络(ANN)方法建模来评估输出响应。采用随机中心复合设计(CCD)研究水化时间、水化温度、硅藻土对水化石灰(Ca(OH)2)、磺化温度和进口气体浓度等输入参数的影响。人工神经网络拟合工具使用双曲正切函数激活的Levenberg-Marquardt (LM)算法对CCD元数据进行映射。为了确定节点结构对建模精度的影响,隐藏的单元格从7到10不等。采用均方根误差(RMSE)、均方误差(MSE)和R-Squared研究评估每个程序的有效性。结果表明,从R2数据Y1 = 0.993和Y2 = 0.9986中映射DFGD的5-10-2神经网络模型更为准确,映射偏差与RMSE值Y1 = 0.48465;Y2 = 0.44971, MSE结果Y1 = 0.23488;Y2。= 0.20229。
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来源期刊
CiteScore
4.10
自引率
4.80%
发文量
93
审稿时长
3.0 months
期刊介绍: 14 issues per year Abstracted/indexed in: BioSciences Information Service of Biological Abstracts (BIOSIS), CAB ABSTRACTS, CEABA, Chemical Abstracts & Chemical Safety NewsBase, Current Contents/Agriculture, Biology, and Environmental Sciences, Elsevier BIOBASE/Current Awareness in Biological Sciences, EMBASE/Excerpta Medica, Engineering Index/COMPENDEX PLUS, Environment Abstracts, Environmental Periodicals Bibliography & INIST-Pascal/CNRS, National Agriculture Library-AGRICOLA, NIOSHTIC & Pollution Abstracts, PubSCIENCE, Reference Update, Research Alert & Science Citation Index Expanded (SCIE), Water Resources Abstracts and Index Medicus/MEDLINE.
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