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Prediction of standard aeration efficiency of a propeller diffused aeration system using response surface methodology and an artificial neural network

Subha M. Roy, Mohammad Tanveer, Debaditya Gupta, C.M. Pareek, B. C. Mal

2021Water Science & Technology Water Supply26 citationsDOIOpen Access PDF

Abstract

Abstract Aeration experiments were conducted in a masonry tank to study the effects of operating parameters on the standard aeration efficiency (SAE) of a propeller diffused aeration (PDA) system. The operating parameters included the rotational speed of shaft (N), submergence depth (h), and propeller angle (α). The response surface methodology (RSM) and an artificial neural network (ANN) were used for modelling and optimizing the standard aeration efficiency (SAE) of a PDA system. The results of both approaches were compared for their modelling abilities in terms of coefficient of determination (R2), root mean square error (RMSE), and mean absolute error (MAE), computed from experimental and predicted data. ANN models were proved to be superior to RSM. The results indicate that for achieving the maximum standard aeration efficiency (SAE), N, h and α should be 1,000 rpm, 0.50 m, and 12°, respectively. The maximum SAE was found to be 1.711 kg O2/ kWh. Cross-validation results show that best approximation of the optimal values of input parameters for maximizing SAE is possible with a maximum deviation (absolute error) of ±15.2% between the model predicted and experimental values.

Topics & Concepts

AerationResponse surface methodologyPropellerMean squared errorArtificial neural networkApproximation errorStandard deviationCoefficient of determinationAbsolute deviationMathematicsRotational speedRoot mean squareEnvironmental scienceEngineeringStatisticsComputer scienceMarine engineeringMechanical engineeringMachine learningElectrical engineeringWaste managementHydraulic flow and structuresHydrological Forecasting Using AIWater Systems and Optimization
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