Image recognition enhances efficient monitoring of the coagulation-settling in drinking water treatment plants

IF 9.7 1区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL
Hongbo Liu, Yang Chen, Xuwei Pan, Junbo Zhang, Jianhong Huang, Eric Lichtfouse, Gang Zhou, Haiyu Ge
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Abstract

Water pollution is a major issue in the context of increasing population and industrialization, yet many drinking water treatment plants (DWTPs) are not fully efficient countering it. In particular, coagulation-settling stage often faces multiple disturbances and time lags, which lower the efficiency because coagulant dosage cannot be accurately calculated in real-time based on the effluent turbidity. To address this issue, we developed a method using deep learning image recognition to monitor the coagulation-settling stage in real-time. For that we used 5761 operational data and images of flocs from the sedimentation tank of a DWTP in East China in 2022, to build an image recognition regression model that predict the turbidity of the sedimentation tank effluent. Results show that our deep learning regression model, performs better with r-square (R2) of 0.97, mean absolute error (MAE) of 0.016 and mean absolute percentage error (MAPE) of 2.74%, compared with the traditional machine learning giving R2 of 0.76, MAE of 0.045 and MAPE of 8.26%. The model also avoids misclassification at different turbidity intervals. The incorporation operational data of the sedimentation tank, prediction accuracy is improved by 79.6%. By adjusting the turbidity data to correct time misalignment, our model effectively handles the time lag caused by the hydraulic retention time of the sedimentation tank, thus enhancing the timeliness and accuracy of its practical application.

Abstract Image

图像识别增强了对饮用水处理厂混凝沉淀的有效监测
在人口和工业化不断增长的背景下,水污染已成为一个重大问题,但许多饮用水处理厂(DWTP)并不能完全有效地解决这一问题。尤其是混凝沉淀阶段,由于无法根据出水浊度实时准确计算混凝剂投加量,常常面临多重干扰和时滞,从而降低了效率。为解决这一问题,我们开发了一种利用深度学习图像识别来实时监控混凝沉淀阶段的方法。为此,我们使用了华东某污水处理厂沉淀池在 2022 年的 5761 次运行数据和絮凝物图像,建立了一个图像识别回归模型来预测沉淀池出水的浊度。结果表明,与传统机器学习的 R2(0.76)、MAE(0.045)和 MAPE(8.26%)相比,我们的深度学习回归模型表现更好,r-square(R2)为 0.97,平均绝对误差(MAE)为 0.016,平均绝对百分比误差(MAPE)为 2.74%。该模型还避免了不同浊度区间的错误分类。加入沉淀池的运行数据后,预测准确率提高了 79.6%。通过调整浊度数据纠正时间错位,我们的模型有效地处理了沉淀池水力停留时间造成的时滞,从而提高了实际应用的时效性和准确性。
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来源期刊
Journal of Cleaner Production
Journal of Cleaner Production 环境科学-工程:环境
CiteScore
20.40
自引率
9.00%
发文量
4720
审稿时长
111 days
期刊介绍: The Journal of Cleaner Production is an international, transdisciplinary journal that addresses and discusses theoretical and practical Cleaner Production, Environmental, and Sustainability issues. It aims to help societies become more sustainable by focusing on the concept of 'Cleaner Production', which aims at preventing waste production and increasing efficiencies in energy, water, resources, and human capital use. The journal serves as a platform for corporations, governments, education institutions, regions, and societies to engage in discussions and research related to Cleaner Production, environmental, and sustainability practices.
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