RSM and ANN Comparative Modelling with a Granulation Treatment in Mixed Waters

IF 1.8 4区 工程技术 Q3 ENGINEERING, CHEMICAL
Dr. Celina Sanchez-Sanchez, Dr. Juan Morales-Rivera, Dr. Gabriela Moeller-Chávez, Dr. Ernestina Moreno-Rodríguez, Dr. Jean Flores-Gómez
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引用次数: 0

Abstract

A Box-Behnken design was used for the analysis using a gray wolf optimizer (GWO)-coupled artificial neural network (ANN) model and response surface methodology (RSM) to analyze the effect of three operating parameters (volumetric exchange ratio [VER], aeration rate [AR], and cycle time [CT]) manipulated during an aerobic granular sludge process (AGS) sequencing batch reactor on modeling the removal of chemical oxygen demand (COD) in mixed wastewater. The most efficient architecture for COD showed the highest efficiency for modeling the AGS. The RSM model and plot results indicate that the CT and AR were the most influential on COD removal efficiency. When compared with models with statistical indices, GWO-ANN demonstrated higher performance compared to RSM.

Abstract Image

Abstract Image

在混合水体中采用造粒处理的 RSM 和 ANN 比较模型
利用灰狼优化器(GWO)耦合人工神经网络(ANN)模型和响应面法(RSM)进行箱-贝肯设计,分析了好氧颗粒污泥法(AGS)序批式反应器中三个操作参数(体积交换比[VER]、曝气速率[AR]和循环时间[CT])对混合废水中化学需氧量(COD)去除模型的影响。最有效的 COD 结构显示了 AGS 建模的最高效率。RSM 模型和绘图结果表明,CT 和 AR 对 COD 去除效率的影响最大。与使用统计指数的模型相比,GWO-ANN 的性能高于 RSM。
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来源期刊
Chemical Engineering & Technology
Chemical Engineering & Technology 工程技术-工程:化工
CiteScore
3.80
自引率
4.80%
发文量
315
审稿时长
5.5 months
期刊介绍: This is the journal for chemical engineers looking for first-hand information in all areas of chemical and process engineering. Chemical Engineering & Technology is: Competent with contributions written and refereed by outstanding professionals from around the world. Essential because it is an international forum for the exchange of ideas and experiences. Topical because its articles treat the very latest developments in the field.
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