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基于支持向量机的缺氧河流系统溶解氧浓度预测:以中国温瑞塘河为例

Prediction of dissolved oxygen concentration in hypoxic river systems using support vector machine: a case study of Wen-Rui Tang River, China.

作者信息

Ji Xiaoliang, Shang Xu, Dahlgren Randy A, Zhang Minghua

机构信息

Zhejiang Province Key Laboratory of Watershed Science and Health, Southern Zhejiang Water Research Institute (iWATER), Wenzhou Medical University, Wenzhou, 325035, China.

Department of Land, Air and Water Resources, University of California, Davis, CA, 95616, USA.

出版信息

Environ Sci Pollut Res Int. 2017 Jul;24(19):16062-16076. doi: 10.1007/s11356-017-9243-7. Epub 2017 May 23.

Abstract

Accurate quantification of dissolved oxygen (DO) is critically important for managing water resources and controlling pollution. Artificial intelligence (AI) models have been successfully applied for modeling DO content in aquatic ecosystems with limited data. However, the efficacy of these AI models in predicting DO levels in the hypoxic river systems having multiple pollution sources and complicated pollutants behaviors is unclear. Given this dilemma, we developed a promising AI model, known as support vector machine (SVM), to predict the DO concentration in a hypoxic river in southeastern China. Four different calibration models, specifically, multiple linear regression, back propagation neural network, general regression neural network, and SVM, were established, and their prediction accuracy was systemically investigated and compared. A total of 11 hydro-chemical variables were used as model inputs. These variables were measured bimonthly at eight sampling sites along the rural-suburban-urban portion of Wen-Rui Tang River from 2004 to 2008. The performances of the established models were assessed through the mean square error (MSE), determination coefficient (R ), and Nash-Sutcliffe (NS) model efficiency. The results indicated that the SVM model was superior to other models in predicting DO concentration in Wen-Rui Tang River. For SVM, the MSE, R , and NS values for the testing subset were 0.9416 mg/L, 0.8646, and 0.8763, respectively. Sensitivity analysis showed that ammonium-nitrogen was the most significant input variable of the proposal SVM model. Overall, these results demonstrated that the proposed SVM model can efficiently predict water quality, especially for highly impaired and hypoxic river systems.

摘要

准确量化溶解氧(DO)对于水资源管理和污染控制至关重要。人工智能(AI)模型已成功应用于在数据有限的情况下对水生生态系统中的溶解氧含量进行建模。然而,这些人工智能模型在预测具有多个污染源和复杂污染物行为的缺氧河流系统中的溶解氧水平方面的效果尚不清楚。鉴于这一困境,我们开发了一种很有前景的人工智能模型,即支持向量机(SVM),来预测中国东南部一条缺氧河流中的溶解氧浓度。具体建立了四种不同的校准模型,即多元线性回归、反向传播神经网络、广义回归神经网络和支持向量机,并系统地研究和比较了它们的预测准确性。总共使用了11个水化学变量作为模型输入。这些变量在2004年至2008年期间沿着温瑞塘河的农村-城郊-城市段的八个采样点每两个月测量一次。通过均方误差(MSE)、决定系数(R)和纳什-萨特克利夫(NS)模型效率来评估所建立模型的性能。结果表明,支持向量机模型在预测温瑞塘河的溶解氧浓度方面优于其他模型。对于支持向量机,测试子集的MSE、R和NS值分别为0.9416mg/L、0.8646和0.8763。敏感性分析表明,铵态氮是所提出的支持向量机模型中最显著的输入变量。总体而言,这些结果表明所提出的支持向量机模型能够有效地预测水质,特别是对于高度受损的缺氧河流系统。

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