Research Center for Low Carbon Technology of Water Environment, School of Environment and Natural Resource, Renmin University of China, Beijing, 100872, China.
School of Environment and Natural Resource, Renmin University of China, Beijing, 100872, China.
Environ Res. 2023 Dec 1;238(Pt 1):117142. doi: 10.1016/j.envres.2023.117142. Epub 2023 Sep 21.
In wastewater treatment plants (WWTPs), aeration is vital for microbial oxygen needs. To achieve carbon neutrality, optimizing aeration for energy and emissions reduction is imperative. Machine learning (ML) is used in wastewater treatment to reveal complex rules in large data sets has become a trend. In this vein, the present paper proposes an aeration optimization approach based on the extreme gradient boosting-bidirectional long short-term memory (XGB-Bi-LSTM) model via the online monitoring of oxygen transfer efficiency (OTE) and oxygen uptake rate (OUR), thus allowing WWTPs to conserve energy and reduce indirect carbon emissions. The approach uses gain algorithm of XGB to calculate the importance of features and identify important parameters, and then uses Bi-LSTM to predict the target with important parameters as features. Operational data from a WWTP in Suzhou, China, is employed to train and test the approach, the performance of which is compared with ML models suitable for regression prediction tasks (XGB, random forest, light gradient boosting machine, gradient boosting and LSTM). Experimental results show the approach requires only a small number of input parameters to achieve good performance and outperforms other machine-learning models. When OTE and dissolved oxygen (DO) are used as features to predict the alpha factor (αF; since diffusers were used, multiply by the pollution factor F), the R-squared (R) is 0.9977, the root mean square error (RMSE) is 0.0043, the mean absolute percentage error (MAPE) is 0.0069 and the median absolute error (MedAE) is 0.0032. When the predicted αF and the OUR are used as features to predict the air flow rate of an aeration unit, the R is 0.9901, the RMSE is 3.6150, the MAPE is 0.0209 and the MedAE is 1.5472. Using our optimized aeration approach, the energy consumption can be reduced by 23%.
在废水处理厂 (WWTP) 中,曝气对于微生物的氧气需求至关重要。为了实现碳中和,优化曝气以减少能源和排放是当务之急。机器学习 (ML) 在废水处理中的应用越来越多,通过在线监测氧转移效率 (OTE) 和需氧量 (OUR),揭示大数据集中的复杂规律已成为一种趋势。有鉴于此,本研究提出了一种基于极端梯度提升-双向长短期记忆 (XGB-Bi-LSTM) 模型的曝气优化方法,从而使 WWTP 能够节约能源并减少间接碳排放。该方法使用 XGB 的增益算法计算特征的重要性并识别重要参数,然后使用 Bi-LSTM 以重要参数作为特征来预测目标。采用中国苏州某 WWTP 的运行数据对该方法进行训练和测试,将其性能与适用于回归预测任务的 ML 模型(XGB、随机森林、轻梯度提升机、梯度提升和 LSTM)进行比较。实验结果表明,该方法仅需少量输入参数即可获得良好的性能,优于其他机器学习模型。当 OTE 和溶解氧 (DO) 用作特征来预测α因子 (αF;由于使用了扩散器,乘以污染因子 F) 时,R 方 (R) 为 0.9977,均方根误差 (RMSE) 为 0.0043,平均绝对百分比误差 (MAPE) 为 0.0069,中位数绝对误差 (MedAE) 为 0.0032。当预测的αF 和 OUR 用作特征来预测曝气单元的空气流量时,R 为 0.9901,RMSE 为 3.6150,MAPE 为 0.0209,MedAE 为 1.5472。使用我们优化的曝气方法,可以将能耗降低 23%。