An artificial neural network model for predicting volumetric mass transfer coefficient in the biological aeration unit

IF 1.7 4区 环境科学与生态学 Q4 ENVIRONMENTAL SCIENCES Water and Environment Journal Pub Date : 2024-04-01 DOI:10.1111/wej.12925
Mpho Muloiwa, Megersa Olumana Dinka, Stephen Nyende‐Byakika
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Abstract

The solubility of oxygen in a liquid is limited/restricted by the gas–liquid film that prevents gas from dissolving in wastewater. Oxygen in the biological aeration unit (BAU) is required by microorganisms to survive and eliminate organic and inorganic matter. This study developed a volumetric mass transfer coefficient (KLa) model using Artificial Neural Network (ANN) algorithm. The performance of the KLa model was evaluated using coefficient of determination (R2), mean squared error (MSE), and root mean squared error (RMSE). KLa model produced R2 (0.852), MSE (0.0006), and RMSE (0.0245) during the testing phase. Biomass concentration (22.29%), aeration period (20.55%), and temperature (19.63%) contributed the highest towards the KLa model. KLa model showed that the BAU should be operated at high temperatures (35°C), low biomass concentration (1.65 g/L), and low aeration period (1 h) instead of high airflow (30 L/min). Temperature should be included in the modelling of the BAU, to achieve optimum KLa.
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预测生物曝气装置容积传质系数的人工神经网络模型
氧气在液体中的溶解度受到气液膜的限制/制约,气液膜阻止气体溶解在废水中。生物曝气装置(BAU)中的氧气是微生物生存和消除有机物和无机物所必需的。本研究利用人工神经网络(ANN)算法建立了一个体积传质系数(KLa)模型。KLa 模型的性能使用决定系数 (R2)、均方误差 (MSE) 和均方根误差 (RMSE) 进行评估。在测试阶段,KLa 模型产生了 R2(0.852)、MSE(0.0006)和 RMSE(0.0245)。生物质浓度(22.29%)、曝气时间(20.55%)和温度(19.63%)对 KLa 模型的贡献最大。KLa 模型显示,生物曝气装置应在高温(35°C)、低生物质浓度(1.65 克/升)和低曝气时间(1 小时)下运行,而不是在高气流(30 升/分钟)下运行。应将温度纳入 BAU 的建模中,以获得最佳 KLa。
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来源期刊
Water and Environment Journal
Water and Environment Journal 环境科学-湖沼学
CiteScore
4.80
自引率
0.00%
发文量
67
审稿时长
18-36 weeks
期刊介绍: Water and Environment Journal is an internationally recognised peer reviewed Journal for the dissemination of innovations and solutions focussed on enhancing water management best practice. Water and Environment Journal is available to over 12,000 institutions with a further 7,000 copies physically distributed to the Chartered Institution of Water and Environmental Management (CIWEM) membership, comprised of environment sector professionals based across the value chain (utilities, consultancy, technology suppliers, regulators, government and NGOs). As such, the journal provides a conduit between academics and practitioners. We therefore particularly encourage contributions focussed at the interface between academia and industry, which deliver industrially impactful applied research underpinned by scientific evidence. We are keen to attract papers on a broad range of subjects including: -Water and wastewater treatment for agricultural, municipal and industrial applications -Sludge treatment including processing, storage and management -Water recycling -Urban and stormwater management -Integrated water management strategies -Water infrastructure and distribution -Climate change mitigation including management of impacts on agriculture, urban areas and infrastructure
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