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Ammonium estimation in an ANAMMOX SBR treating anaerobically digested domestic wastewater

机译:ANAMMOX SBR处理厌氧消化的生活污水中的氨估算

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Artificial neural networks (ANNs) were used to estimate from online pH measurements the ammonium concentration in an anaerobic ammonium oxidation (ANAMMOX) sequencing batch reactor (SBR) treating reject water (RW) from the anaerobic treatment of domestic wastewater. The SBR was initially fed with a synthetic autotrophic medium (SM) to assure a stable and ANAMMOX dominating process. After the SBR had been operating stable for 1 month, the removal efficiencies of ammonium and nitrite were equal to 9122 +/- 3.92% and 94.16 +/- 8.76%, respectively. The experimental data obtained in this period was taken as basis but not used directly for the training of the ANNs. Instead, the data was used for the calibration of an ordinary differential equations (ODE) model implemented to simulate the nitrogen removal processes that took place in the SBR. This action helped to increase the amount of available data, thereby improving the teaming capacity of the networks and reducing the need of extensive experimental analysis. After parameter calibration, the experimental data agreed well with the simulation results in the case of ammonium and nitrite. The simulated ammonium concentration (broadened data set) was then used as target data for the training of different structures of two types of ANNs: multilayer feedforward neural network (MLFNN) and adaptive-network-based fuzzy inference system (ANFIS). The ANNs structures with the best performance after training yielded correlation coefficients (R) of R-MLFNN=0.9924 and R-ANFIS=0.9922. Afterwards, the selected ANNs were validated by comparing the predicted ammonium concentration with the experimental values obtained during the adaptation from SM to the targeted RW. Both types of ANNs were able to predict with good accuracy the ammonium removal inside the SBR even while dealing with the largely fluctuating influent conditions without the need of further training. The results obtained after validation were R-MFLNN=0.8440 and R-ANFIS=0.8454. This shows the potential that ANNs have to model the ANAMMOX process if enough and representative data is available for training. (C) 2015 Elsevier Ltd. All rights reserved.
机译:人工神经网络(ANN)用于从在线pH测量值估计厌氧铵氧化(ANAMMOX)测序间歇反应器(SBR)中的铵浓度,该反应器处理生活废水的厌氧处理中的废水(RW)。首先向SBR喂入合成自养培养基(SM),以确保稳定和ANAMMOX占主导地位的过程。 SBR稳定运行1个月后,铵和亚硝酸盐的去除效率分别等于9122 +/- 3.92%和94.16 +/- 8.76%。在此期间获得的实验数据作为基础,但未直接用于神经网络的训练。取而代之的是,将数据用于校准用于模拟SBR中发生的脱氮过程的常微分方程(ODE)模型。此操作有助于增加可用数据量,从而提高网络的分组能力并减少了广泛的实验分析的需要。经过参数校准后,在铵盐和亚硝酸盐的情况下,实验数据与模拟结果吻合得很好。然后将模拟的铵浓度(扩展的数据集)用作目标数据,以训练两种类型的人工神经网络的不同结构:多层前馈神经网络(MLFNN)和基于自适应网络的模糊推理系统(ANFIS)。训练后具有最佳性能的ANNs结构产生的相关系数(R)为R-MLFNN = 0.9924和R-ANFIS = 0.9922。然后,通过将预测的铵浓度与从SM适应目标RW的过程中获得的实验值进行比较,来验证所选的ANN。两种类型的人工神经网络都能够很好地预测SBR内的铵去除量,即使在处理波动较大的进水条件时也无需进一步培训。验证后获得的结果为R-MFLNN = 0.8440和R-ANFIS = 0.8454。这表明,如果有足够的代表性数据可用于训练,则人工神经网络必须对ANAMMOX过程建模。 (C)2015 Elsevier Ltd.保留所有权利。

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