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Article Abstract

Secondary datasets of 42 low organic loading Vertical flow constructed wetlands (LOLVFCWs) were assessed to optimize their area requirements for N and P (nutrients) removal. Significant variations in removal rate coefficients (k) (0.002-0.464 md) indicated scope for optimization. Data classification based on nitrogen loading rate, temperature and depth could reduce the relative standard deviations of the k values only in some cases. As an alternative method of deriving k values, the effluent concentrations of the targeted pollutants were predicted using two machine learning approaches, MLR and SVR. The latter was found to perform better (R = 0.87-0.9; RMSE = 0.08-3.64) as validated using primary data of a lab-scale VFCW. The generated model equations for predicting effluent parameters and computing corresponding k values can assist in a customized design for nutrient removal employing minimal surface area for such systems for attaining the desired standards.

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http://dx.doi.org/10.1016/j.biortech.2023.128909DOI Listing

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