Department of Chemical Engineering, College of Engineering, Qatar University, P. O. Box 2713, Doha, Qatar.
Sci Total Environ. 2020 Nov 20;744:140854. doi: 10.1016/j.scitotenv.2020.140854. Epub 2020 Jul 14.
Complexity, uncertainty, and high dynamic nature of nutrient removal through biological processes (BPs) makes it difficult to model and control these processes, forcing designers to rely on approximations, probabilities, and assumptions. To cope with this difficult task and perform an effective and well-controlled BP operation, an artificial neural network (ANN) algorithm was developed to simulate, model, and control a three-stage (anaerobic/anoxic and MBBR) enhanced nutrient removal biological process (ENR-BP) challenging real wastewater. The effect of surface area loading rate (SALR), organic matters (OMs), nutrients (N & P), feed flow rate (Q), hydraulic retention time (HRT), and internal recycle flow (IRF) on the performance of the ENR-BP to fulfil rigorous discharge limitations were evaluated. Experimental data was used to develop the appropriate architecture for the AAN using iterative steps of training and testing. Significant removals of chemical oxygen demand (COD) (89.2 to 98.3%), NH (88.5 to 98.9%), and total phosphorus (TP) (77.9 to 99.9%) were achieved at a total HRT of 13.3 h (HRT = 3 h, HRT = 6 h and HRT = 5.3 h) and an IRF value of 1.75. The ENR-BP treatment mechanism relies on the use of OMs as a source of energy for phosphorus bio-uptake and the simultaneous nitrification and denitrification (SND) of nitrogen compounds. The removal efficiencies in the proposed ENR-BP were four fold higher than the suspended growth process and in the same order of magnitude of 5-stage Bardenpho-MBBR. The developed ANN-based model provides an efficient and robust tool for predicting and forecasting the performance of the ENR-BP.
通过生物过程(BPs)去除营养物质的复杂性、不确定性和高度动态性使得这些过程难以建模和控制,迫使设计师依赖于近似值、概率和假设。为了应对这一艰巨任务并进行有效和良好控制的 BP 操作,开发了一种人工神经网络(ANN)算法,以模拟、建模和控制具有挑战性的实际废水的三阶段(厌氧/缺氧和 MBBR)强化营养去除生物过程(ENR-BP)。评估了表面积负荷率(SALR)、有机物(OMs)、营养物(N 和 P)、进料流量(Q)、水力停留时间(HRT)和内部回流流量(IRF)对满足严格排放限制的 ENR-BP 性能的影响。使用迭代的训练和测试步骤,使用实验数据来为 AAN 开发合适的架构。在总 HRT 为 13.3 h(HRT = 3 h、HRT = 6 h 和 HRT = 5.3 h)和 IRF 值为 1.75 的情况下,实现了 COD(89.2%至 98.3%)、NH(88.5%至 98.9%)和总磷(TP)(77.9%至 99.9%)的显著去除。ENR-BP 处理机制依赖于使用 OMs 作为磷生物吸收的能源,以及同时进行氮化合物的硝化和反硝化(SND)。所提出的 ENR-BP 的去除效率比悬浮生长过程高四倍,与 5 阶段 Bardenpho-MBBR 的去除效率相当。基于 ANN 的开发模型提供了一种高效且强大的工具,用于预测和预测 ENR-BP 的性能。