Soti Abhishek, Singh Saurabh, Verma Vishesh, Mohan Kulshreshtha Niha, Brighu Urmila, Kalbar Pradip, Bhushan Gupta Akhilendra
Department of Civil Engineering, Malaviya National Institute of Technology, JLN Marg, Jaipur 302017, India.
Department of Civil Engineering, Malaviya National Institute of Technology, JLN Marg, Jaipur 302017, India; Department of Civil Engineering, Swami Keshvanand Institute of Technology, Management and Gramothan, Jaipur 302017, India.
Bioresour Technol. 2023 May;376:128909. doi: 10.1016/j.biortech.2023.128909. Epub 2023 Mar 17.
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.
对42个低有机负荷垂直流人工湿地(LOLVFCW)的二次数据集进行了评估,以优化其去除氮和磷(养分)所需的面积。去除速率系数(k)(0.002 - 0.464 md)存在显著差异,表明有优化空间。基于氮负荷率、温度和深度的数据分类仅在某些情况下能降低k值的相对标准偏差。作为推导k值的另一种方法,使用两种机器学习方法MLR和SVR预测了目标污染物的出水浓度。使用实验室规模VFCW的原始数据进行验证后发现,后者表现更好(R = 0.87 - 0.9;RMSE = 0.08 - 3.64)。生成的用于预测出水参数和计算相应k值的模型方程,可有助于为这类系统采用最小表面积实现养分去除的定制设计,以达到预期标准。