Water level prediction of pumping station pre-station based on machine learning methods

被引:2
作者
Wang, Weilin [1 ]
Sang, Guoqing [1 ]
Zhao, Qiang [1 ]
Lu, Longbin [1 ]
机构
[1] Univ Jinan, Sch Water Conservancy & Environm, Jinan 250000, Peoples R China
关键词
evaluation systems; PSO-BP; PSO-SVR; pumping station pre-station; SVR; water level prediction; MODEL; NETWORK;
D O I
10.2166/ws.2023.242
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Water level prediction is an essential factor for the safe operation of pumping stations. However, due to the complex nonlinear relationship between the water level of the front pool of the pumping station and the influencing factors, the prediction of the water level is still inaccurate and untimely. Backpropagation (BP) neural network, improved particle swarm optimization-BP neural network (PSO-BP), support vector machine regression (SVR), and improved PSO-SVR were used to construct 4-h and 8-h ahead prediction models for pumping station pre-station water levels. Mean absolute error, mean squared error (MSE), root mean square error (RMSE), mean absolute percentage error (MAPE), and R correlation coefficient were used as prediction evaluation metrics. This method is applied in the Baliwan Pumping Station, the highest pumping station in the South-to-North Water Diversion Eastern Route Project (SNWDERP). The results showed that the MSE, RMSE, and MAPE of the improved PSO-BP model were smaller than other models, whereas the R correlation coefficient was larger, confirming its high prediction accuracy. All models had higher prediction accuracy 4 h ahead than 8 h ahead. Combining the time-phased water level prediction method and hybrid machine learning can enhance the water level prediction accuracy of a pumping station pre-station.
引用
收藏
页码:4092 / 4111
页数:20
相关论文
共 26 条
[1]   Comparative Study of SVMs and ANNs in Aquifer Water Level Prediction [J].
Behzad, Mohsen ;
Asghari, Keyvan ;
Coppola, Emery A., Jr. .
JOURNAL OF COMPUTING IN CIVIL ENGINEERING, 2010, 24 (05) :408-413
[2]   A Support Vector Machine Forecasting Model for Typhoon Flood Inundation Mapping and Early Flood Warning Systems [J].
Chang, Ming-Jui ;
Chang, Hsiang-Kuan ;
Chen, Yun-Chun ;
Lin, Gwo-Fong ;
Chen, Peng-An ;
Lai, Jihn-Sung ;
Tan, Yih-Chi .
WATER, 2018, 10 (12)
[3]   Using Genetic Algorithm and Particle Swarm Optimization BP Neural Network Algorithm to Improve Marine Oil Spill Prediction [J].
Cheng, Xueyan ;
Hu, Xupeng ;
Li, Zhenzhen ;
Geng, Chuanhui ;
Liu, Jiaxing ;
Liu, Mei ;
Zhu, Baikang ;
Li, Qian ;
Chen, Qingguo .
WATER AIR AND SOIL POLLUTION, 2022, 233 (08)
[4]   Open boundary conditions for the Diffuse Interface Model in 1-D [J].
Desmarais, J. L. ;
Kuerten, J. G. M. .
JOURNAL OF COMPUTATIONAL PHYSICS, 2014, 263 :393-418
[5]   Comparative evaluation of 1D and quasi-2D hydraulic models based on benchmark and real-world applications for uncertainty assessment in flood mapping [J].
Dimitriadis, Panayiotis ;
Tegos, Aristoteles ;
Oikonomou, Athanasios ;
Pagana, Vassiliki ;
Koukouvinos, Antonios ;
Mamassis, Nikos ;
Koutsoyiannis, Demetris ;
Efstratiadis, Andreas .
JOURNAL OF HYDROLOGY, 2016, 534 :478-492
[6]   Development of wavelet network model for accurate water levels prediction with meteorological effects [J].
El-Diasty, Mohammed ;
Al-Harbi, Salim .
APPLIED OCEAN RESEARCH, 2015, 53 :228-235
[7]  
[高学平 Gao Xueping], 2018, [南水北调与水利科技, South-to-North Water Transfers and Water Science & Technology], V16, P8
[8]   Comparison of Machine Learning Algorithms for Discharge Prediction of Multipurpose Dam [J].
Hong, Jiyeong ;
Lee, Seoro ;
Lee, Gwanjae ;
Yang, Dongseok ;
Bae Hyun, Joo ;
Kim, Jonggun ;
Kim, Kisung ;
Lim Jae, Kyoung .
WATER, 2021, 13 (23)
[9]   Towards hydrological model calibration using river level measurements [J].
Jian, Jie ;
Ryu, Dongryeol ;
Costelloe, Justin F. ;
Su, Chun-Hsu .
JOURNAL OF HYDROLOGY-REGIONAL STUDIES, 2017, 10 :95-109
[10]   Machine learning: Trends, perspectives, and prospects [J].
Jordan, M. I. ;
Mitchell, T. M. .
SCIENCE, 2015, 349 (6245) :255-260