Tian Yuqing, Zhao Yanhui, Yin Zhiqiang, Deng Ning, Li Sen, Zhao Hailong, Huang Bo
School of Environment, Tsinghua University, Beijing, 100084, PR China.
Changjiang Basin Ecology and Environment Monitoring and Scientific Research Center, Changjiang Basin Ecology and Environment Administration, Ministry of Ecology and Environment, Wuhan 430010, PR China.
J Environ Manage. 2025 Jan;373:123522. doi: 10.1016/j.jenvman.2024.123522. Epub 2024 Dec 3.
Forecasting potential water pollution areas (PWPA) is essential for effective watershed management. However, there remains a limited understanding of the spatial-temporal features that influence water quality (WQ), and advanced technical methods for WQ forecasting. This study developed an integrated framework utilizing spatial-temporal graph convolution networks (STGCN) to enhance comprehension of the spatial-temporal features influencing WQ and to develop a practical module for integrating features into the WQ prediction. The Pearson correlation method and seasonal decomposition analysis described the WQ features. Subsequently, the spatial-temporal distribution of PWPA was assessed using both the comprehensive pollution index method and Cressman space interpolation technique. Data from 403 monitoring stations was collected from the Yangtze River basin (YZR), encompassing pollutants such as COD, TP and NH₄⁺-N. The finding revealed that maximum concentrations of COD (36.4 mg/L), TP (4.078 mg/L) and NH₄⁺-N (13.58 mg/L) exceeded the standard thresholds necessitating early warnings. A significant correlation among pollutants was observed with coefficients ranging from 0.356 to 0.475 (P < 0.001), indicating their potential utility in predicting PWPA. Seasonality components exhibited strong correlations with the original WQ (correlation coefficients ranging from 0.62 to 0.89), followed by residuals (from 0.37 to 0.61) and trend components (from 0.25 to 0.53). The geographic layout of WQ monitoring stations along river lines resembled a graph network structure, suggesting that watershed WQ prediction can be classified as a spatial-temporal prediction task. The STGCN model achieved R values ranging from 0.607 to 0.844 for each pollutant on the test datasets, surpassing traditional models such as RNN, LSTM, and GRU in predictive accuracy. PWPA occurrences were predominantly identified in the southwestern regions as well as within the middle and lower reaches of the YZR. These results validated that the developed framework is capable of forecasting PWPA in large-scale watersheds while supporting effective watershed management.
预测潜在水污染区域(PWPA)对于有效的流域管理至关重要。然而,人们对影响水质(WQ)的时空特征以及水质预测的先进技术方法的了解仍然有限。本研究开发了一个利用时空图卷积网络(STGCN)的综合框架,以增强对影响水质的时空特征的理解,并开发一个将特征整合到水质预测中的实用模块。皮尔逊相关法和季节分解分析描述了水质特征。随后,使用综合污染指数法和克雷斯曼空间插值技术评估了潜在水污染区域的时空分布。从长江流域(YZR)收集了403个监测站的数据,包括化学需氧量(COD)、总磷(TP)和铵态氮(NH₄⁺-N)等污染物。研究结果表明,COD(36.4毫克/升)、TP(4.078毫克/升)和NH₄⁺-N(13.58毫克/升)的最大浓度超过了需要预警的标准阈值。观察到污染物之间存在显著相关性,系数范围为0.356至0.475(P < 0.001),表明它们在预测潜在水污染区域方面具有潜在效用。季节性成分与原始水质表现出很强的相关性(相关系数范围为0.62至0.89),其次是残差(0.37至0.61)和趋势成分(0.25至0.53)。沿河流的水质监测站的地理布局类似于图网络结构,这表明流域水质预测可归类为时空预测任务。STGCN模型在测试数据集上对每种污染物的R值范围为0.607至0.844,在预测准确性方面超过了传统模型,如递归神经网络(RNN)、长短期记忆网络(LSTM)和门控循环单元(GRU)。潜在水污染区域主要出现在长江流域的西南部地区以及中下游地区。这些结果验证了所开发的框架能够在大型流域中预测潜在水污染区域,同时支持有效的流域管理。