Modelling and prediction of aeration efficiency of the venturi aeration system using ANN-PSO and ANN-GA

IF 2.6 Q2 WATER RESOURCES Frontiers in Water Pub Date : 2024-05-15 DOI:10.3389/frwa.2024.1401689
Anamika Yadav, Subha M. Roy, Abhijit Biswas, Bhagaban Swain, Sudipta Majumder
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Abstract

The significance of this study involves the optimisation of the aeration efficiency (AE) of the venturi aerator using an artificial neural network (ANN) technique integrated with an optimisation algorithm, i.e., particle swarm optimisation (PSO) and genetic algorithm (GA). To optimise the effects of operational factors on aeration efficiency by utilising a venturi aeration system, aeration experiments were conducted in an experimental tank with dimensions of 90cm×55cm×45cm. The operating parameters of the venturi aerator include throat length (TL), effective outlet pipe (EOP), and flow rate (Q) to estimate the efficacy of the venturi aerator in terms of AE. A 3–6-1 ANN model was developed and integrated with the PSO and GA techniques to find out the best possible optimal operating variables of the venturi aerator. The coefficient of determination (R2), root mean square error (RMSE), and mean absolute error (MAE) determined from the experimental and estimated data were used to assess and compare the performance of the ANN-PSO and ANN-GA modelling. It is shown that ANN-PSO provides a better result as compared to ANN-GA. The operational parameters, TL, EOP, and Q, were determined to have the most optimum values at 50 mm, 6 m, and 0.6 L/s, respectively. The optimised aeration efficiency of the venturi was found to be 0.105 kg O2/kWh at optimum operational circumstances. In fact, the neural network having an ideal design of (3-6-1) and a correlation coefficient value that is extremely close to unity has validated the results indicated above.
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利用 ANN-PSO 和 ANN-GA 对文丘里曝气系统的曝气效率进行建模和预测
本研究的意义在于利用人工神经网络(ANN)技术与优化算法(即粒子群优化(PSO)和遗传算法(GA))相结合,优化文丘里曝气器的曝气效率(AE)。为了利用文丘里曝气系统优化运行因素对曝气效率的影响,在一个尺寸为 90 厘米×55 厘米×45 厘米的实验池中进行了曝气实验。文丘里曝气器的运行参数包括喉管长度(TL)、有效出口管(EOP)和流量(Q),以估算文丘里曝气器的曝气效率。开发了一个 3-6-1 ANN 模型,并与 PSO 和 GA 技术相结合,以找出文丘里曝气器的最佳运行变量。根据实验数据和估计数据确定的判定系数(R2)、均方根误差(RMSE)和平均绝对误差(MAE)用于评估和比较 ANN-PSO 和 ANN-GA 模型的性能。结果表明,与 ANN-GA 相比,ANN-PSO 能提供更好的结果。运行参数 TL、EOP 和 Q 的最佳值分别为 50 毫米、6 米和 0.6 升/秒。在最佳运行条件下,文丘里管的最优曝气效率为 0.105 kg O2/kWh。事实上,理想设计为(3-6-1)的神经网络和极其接近于统一的相关系数值验证了上述结果。
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来源期刊
Frontiers in Water
Frontiers in Water WATER RESOURCES-
CiteScore
4.00
自引率
6.90%
发文量
224
审稿时长
13 weeks
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