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Artificial neural network use in ortho-phosphate and total phosphorus removal prediction in horizontal subsurface flow constructed wetlands

机译:人工神经网络在水平地下流动人工湿地中正磷酸盐和总磷去除量预测中的应用

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Artificial neural networks are used and an equation is presented to model phosphorus removal in horizontal subsurface flow constructed wetlands (CWs). Analysis was based on experimental data from five pilot-scale CWs, which had various set-ups in terms of size and origin of the porous media and vegetation type, and operated continuously for more than 2 years under four different hydraulic residence times (HRTs) (6, 8, 14 and 20 days) and various temperature ranges. For the proper selection of the components entering the neural network, a principal component analysis was performed first, which revealed the main factors affecting phosphorus removal: porous media porosity, wastewater temperature and HRT. Two neural networks were examined: the first included only the aforementioned three main factors; the second included, in addition, the month, substrate aluminium content and meteorological parameters (barometric pressure, rainfall, wind speed, solar radiation and humidity). The first model predicted the removal quite satisfactorily and the second resulted in even better predictions. Based on the predictions of the neural networks, a hyperbolic design equation was developed to predict phosphorus removal. Modelling results were validated against available data from the literature and showed a satisfactory correlation. (C) 2008 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:使用了人工神经网络,并提出了一个方程来模拟水平地下流动人工湿地(CWs)中的除磷。分析基于来自五个中试规模的连续波的实验数据,这些连续波在多孔介质的大小和来源以及植被类型方面具有不同的设置,并且在四种不同的水力停留时间(HRT)下连续运行了两年以上(6、8、14和20天)和各种温度范围。为了正确选择进入神经​​网络的成分,首先进行了主要成分分析,揭示了影响除磷效果的主要因素:多孔介质的孔隙率,废水温度和HRT。研究了两个神经网络:第一个仅包含上述三个主要因素;第二个仅包含上述三个主要因素。第二,此外,还包括月份,基质铝含量和气象参数(气压,降雨,风速,太阳辐射和湿度)。第一个模型相当令人满意地预测了去除量,第二个模型甚至得出了更好的预测。基于神经网络的预测,建立了一个双曲线设计方程来预测磷的去除。建模结果已根据文献中的可用数据进行了验证,并显示出令人满意的相关性。 (C)2008年。由Elsevier Ltd.出版。保留所有权利。

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