Comparative analysis of water quality prediction performance based on LSTM in the Haihe River Basin, China

被引:0
作者
Qiang Li
Yinqun Yang
Ling Yang
Yonggui Wang
机构
[1] China University of Geosciences,Key Laboratory of Regional Ecology and Environmental Change, School of Geography and Information Engineering
[2] Changjiang Water Resources Protection Institute,undefined
来源
Environmental Science and Pollution Research | 2023年 / 30卷
关键词
Water quality prediction; Long short-term memory (LSTM); Haihe River Basin; Performance comparative analysis;
D O I
暂无
中图分类号
学科分类号
摘要
As the most water shortage and water polluted area in China, the water quality prediction is of utmost needed and important in Haihe River Basin for its water resource management. The long short-term memory (LSTM) has been a widely used tool for water quality forecast in recent years. The performance and adaptability of LSTM for water quality prediction of different indicators needs to be discussed before it adopted in a specific basin. However, literature contains very few studies on the comparative analysis of the various prediction accuracy of different water quality indicators and the causes, especially in Haihe River Basin. In this study, LSTM was employed to predict biochemical oxygen demand (BOD), permanganate index (CODMn), dissolved oxygen (DO), ammonia nitrogen (NH3–N), total phosphorus (TP), hydrogen ion concentration (pH), and chemical oxygen demand digested by potassium dichromate (CODCr). According to results under 24 different input conditions, it is demonstrated that LSTMs present better predicting on BOD, CODMn, CODCr, and TP (median Nash–Sutcliffe efficiency reaching 0.766, 0.835, 0.837, and 0.711, respectively) than NH3–N, DO, and pH (median Nash–Sutcliffe efficiency of 0.638, 0.625, and 0.229, respectively). Besides, the performance of LSTM to predict water quality is linearly related to the maximum value of temporal autocorrelation and cross-correlation coefficients of water quality indicators calculated by maximal information coefficient with the coefficients of determination of 0.79 to approximately 0.80. This study would provide new knowledge and support for the practical application and improvement of the LSTM in water quality prediction.
引用
收藏
页码:7498 / 7509
页数:11
相关论文
共 200 条
  • [1] Albanese D(2013)Minerva and minepy: a C engine for the MINE suite and its R, Python and MATLAB wrappers Bioinformatics 29 407-408
  • [2] Filosi M(2013)Modelling of dissolved oxygen content using artificial neural networks: Danube River, North Serbia, case study Environ Sci Pollut Res 20 9006-9013
  • [3] Visintainer R(2015)Using the mutual information technique to select explanatory variables in artificial neural networks for rainfall forecasting Meteorol Appl 22 610-616
  • [4] Riccadonna S(2012)Attribution for decreasing streamflow of the Haihe River basin, northern China: climate variability or human activities? J Hydrol 460–461 117-129
  • [5] Jurman G(2013)Characterising performance of environmental models Environ Model Softw 40 1-20
  • [6] Furlanello C(2021)Monitoring water quality of the Haihe River Based on ground-based hyperspectral remote sensing Water 14 22-91
  • [7] Antanasijević D(2017)Conjugative multi-resistant plasmids in Haihe River and their impacts on the abundance and spatial distribution of antibiotic resistance genes Water Res 111 81-176
  • [8] Pocajt V(2009)Selection of input variables for data driven models: an average shifted histogram partial mutual information estimator approach J Hydrol 367 165-51
  • [9] Povrenović D(2014)An evaluation framework for input variable selection algorithms for environmental data-driven models Environ Model Softw 62 33-1780
  • [10] Perić-Grujić A(1972)Robust estimates, residuals, and outlier detection with multiresponse data Biometrics 28 81-95