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

被引:0
|
作者
Xiaoliang Ji
Xu Shang
Randy A. Dahlgren
Minghua Zhang
机构
[1] Southern Zhejiang Water Research Institute (iWATER),Zhejiang Province Key Laboratory of Watershed Science and Health
[2] Wenzhou Medical University,Department of Land, Air and Water Resources
[3] University of California,undefined
关键词
Dissolved oxygen; Hypoxic river systems; Support vector machine; Artificial neural networks; Water quality prediction; Wen-Rui Tang River;
D O I
暂无
中图分类号
学科分类号
摘要
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 (R2), 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, R2, 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.
引用
收藏
页码:16062 / 16076
页数:14
相关论文
共 50 条
  • [1] Prediction of dissolved oxygen concentration in hypoxic river systems using support vector machine: a case study of Wen-Rui Tang River, China
    Ji, Xiaoliang
    Shang, Xu
    Dahlgren, Randy A.
    Zhang, Minghua
    [J]. ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2017, 24 (19) : 16062 - 16076
  • [2] Monitoring and modeling dissolved oxygen dynamics through continuous longitudinal sampling: a case study in Wen-Rui Tang River, Wenzhou, China
    Li, Jun
    Liu, Huixia
    Li, Yancheng
    Mei, Kun
    Dahlgren, Randy
    Zhang, Minghua
    [J]. HYDROLOGICAL PROCESSES, 2013, 27 (24) : 3502 - 3510
  • [3] Tracing dissolved inorganic nitrogen sources in plain river networks using stable isotopes: a case study of the Wen-Rui Tang River
    Liu, Yin-Li
    Liao, Zhong-Lu
    Wang, Peng-Wei
    Zhan, Chen-Can
    Tan, Xin-Min
    Wang, Yu-Hao
    Ma, Hao-Xiang
    Ji, Xiao-Liang
    [J]. Zhongguo Huanjing Kexue/China Environmental Science, 2024, 44 (12): : 6874 - 6885
  • [4] River water quality assessment based on Monte Carlo simulation: A case study of Wen-Rui Tang River
    Huang, Hong
    Shang, Xu
    Mei, Kun
    Wang, Zhen-Feng
    Xia, Fang
    Huang, Shu-Hui
    Zhang, Ming-Hua
    Ji, Xiao-Liang
    [J]. Zhongguo Huanjing Kexue/China Environmental Science, 2019, 39 (05): : 2210 - 2218
  • [5] Spatial and temporal variations of nitrogen pollution in Wen-Rui Tang River watershed, Zhejiang, China
    Ping Lu
    Kun Mei
    Yujin Zhang
    Lingling Liao
    Bibo Long
    Randy A. Dahlgren
    Minghua Zhang
    [J]. Environmental Monitoring and Assessment, 2011, 180 : 501 - 520
  • [6] Spatial and temporal variations of nitrogen pollution in Wen-Rui Tang River watershed, Zhejiang, China
    Lu, Ping
    Mei, Kun
    Zhang, Yujin
    Liao, Lingling
    Long, Bibo
    Dahlgren, Randy A.
    Zhang, Minghua
    [J]. ENVIRONMENTAL MONITORING AND ASSESSMENT, 2011, 180 (1-4) : 501 - 520
  • [7] Optimizing water quality monitoring networks using continuous longitudinal monitoring data: a case study of Wen-Rui Tang River, Wenzhou, China
    Mei, Kun
    Zhu, Yuanli
    Liao, Lingling
    Dahlgren, Randy
    Shang, Xu
    Zhang, Minghua
    [J]. JOURNAL OF ENVIRONMENTAL MONITORING, 2011, 13 (10): : 2755 - 2762
  • [8] Innovative approach for the development of a water quality identification index-a case study from the Wen-Rui Tang River watershed, China
    Ma, Xiaoxue
    Shang, Xu
    Wang, Lachun
    Dahlgren, Randy A.
    Zhang, Minghua
    [J]. DESALINATION AND WATER TREATMENT, 2015, 55 (05) : 1400 - 1410
  • [9] Risk analysis of heavy metal concentration in surface waters across the rural-urban interface of the Wen-Rui Tang River, China
    Qu, Liyin
    Huang, Hong
    Xia, Fang
    Liu, Yuanyuan
    Dahlgren, Randy A.
    Zhang, Minghua
    Mei, Kun
    [J]. ENVIRONMENTAL POLLUTION, 2018, 237 : 639 - 649
  • [10] Urban River Dissolved Oxygen Prediction Model Using Machine Learning
    Moon, Juhwan
    Lee, Jaejoon
    Lee, Sangwon
    Yun, Hongsik
    [J]. WATER, 2022, 14 (12)