Using Machine Learning Models to Forecast the Conversion Coefficient between Electricity Consumption and Water Pumped for Irrigation Wells in Baicheng City, China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Field Tests for EWCC
2.3. Methodology
2.3.1. Pearson Correlation Analysis
2.3.2. MLR
2.3.3. SVM
2.3.4. BP
3. Results and Discussion
3.1. Field Investigation
3.2. Correlation Analysis
3.3. Model Development
3.4. Analysis of Influencing Factors
3.5. Comparison and Analysis of the Models
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
- Li, S.; Yang, G.; Wang, H.; Song, X.; Chang, C.; Du, J.; Gao, D. A spatial-temporal optimal allocation method of irrigation water resources considering groundwater level. Agric. Water Manag. 2023, 275, 108021. [Google Scholar] [CrossRef]
- Singh, O.; Kasana, A.; Bhardwaj, P. Understanding energy and groundwater irrigation nexus for sustainability over a highly irrigated ecosystem of north western India. Appl. Water Sci. 2022, 12, 44. [Google Scholar] [CrossRef]
- Bajaj, A.; Singh, S.P.; Nayak, D. Are farmers willing to pay for groundwater irrigation? Insights from informal groundwater markets in Western Uttar Pradesh, India. Agric. Water Manag. 2023, 288, 108458. [Google Scholar] [CrossRef]
- Shen, Y. Determination of statistical methodology for agricultural irrigation water consumption in China and work carried out. China Rural Water Conserv. Hydropower 2016, 11, 133–134+138. [Google Scholar]
- Esteban, E.; Dinar, A. Modeling sustainable groundwater management: Packaging and sequencing of policy interventions. J. Environ. Manag. 2013, 119, 93–102. [Google Scholar] [CrossRef] [PubMed]
- Zekri, S.; Madani, K.; Bazargan-Lari, M.R.; Kotagama, H.; Kalbus, E. Feasibility of adopting smart water meters in aquifer management: An integrated hydro-economic analysis. Agric. Water Manag. 2017, 181, 85–93. [Google Scholar] [CrossRef]
- Mohapatra, S.P.; Mitchell, A. Groundwater Demand Management in the Great Lakes Basin—Directions for New Policies. Water Resour. Manag. 2009, 23, 457–475. [Google Scholar] [CrossRef]
- Akbari, M.; Toomanian, N.; Droogers, P.; Bastiaanssen, W.; Gieske, A. Monitoring irrigation performance in Esfahan, Iran, using NOAA satellite imagery. Agric. Water Manag. 2007, 88, 99–109. [Google Scholar] [CrossRef]
- Castaño, S.; Sanz, D.; Gómez-Alday, J.J. Methodology for Quantifying Groundwater Abstractions for Agriculture via Remote Sensing and GIS. Water Resour. Manag. 2010, 24, 795–814. [Google Scholar] [CrossRef]
- Chebaane, M.; El-Naser, H.; Fitch, J.; Hijazi, A.; Jabbarin, A. Participatory groundwater management in Jordan: Development and analysis of options. Hydrogeol. J. 2004, 12, 14–32. [Google Scholar] [CrossRef]
- Jahromi, H.N.; Hamedani, M.J.; Dolatabadi, S.F.; Abbasi, P. Smart Energy and Water Meter: A Novel Vision to Groundwater Monitoring and Management. Procedia Eng. 2014, 70, 877–881. [Google Scholar] [CrossRef]
- Tong, D. Methodologies of metering water with electricity in pumping stations of plain river systems—Application of comprehensive reform of agricultural water pricing. China Water Resour. 2019, 21, 43–45. [Google Scholar]
- Wang, X.; Shao, J.; Van Steenbergen, F.; Zhang, Q. Implementing the Prepaid Smart Meter System for Irrigated Groundwater Production in Northern China: Status and Problems. Water 2017, 9, 379. [Google Scholar] [CrossRef]
- Alnaim, M.A.; Mohamed, M.S.; Mohammed, M.; Munir, M. Effects of Automated Irrigation Systems and Water Regimes on Soil Properties, Water Productivity, Yield and Fruit Quality of Date Palm. Agriculture 2022, 12, 343. [Google Scholar] [CrossRef]
- Wang, L.; Kinzelbach, W.; Yao, H.; Steiner, J.; Wang, H. How to Meter Agricultural Pumping at Numerous Small-Scale Wells?—An Indirect Monitoring Method Using Electric Energy as Proxy. Water 2020, 12, 2477. [Google Scholar] [CrossRef]
- Fan, L.; Ma, S. Analysis on Influencing Factors of Water-electricity Conversion Coefficient of Irrigation Wells in Cangxian County. Water Sav. Irrig. 2023, 6, 117–123+131. [Google Scholar]
- Rattan, P.; Penrice, D.D.; Simonetto, D.A. Artificial Intelligence and Machine Learning: What You Always Wanted to Know but Were Afraid to Ask. Gastro Hep Adv. 2022, 1, 70–78. [Google Scholar] [CrossRef]
- Soori, M.; Arezoo, B.; Dastres, R. Artificial intelligence, machine learning and deep learning in advanced robotics, a review. Cogn. Robot. 2023, 3, 54–70. [Google Scholar] [CrossRef]
- Zhao, T.; Zhu, Y.; Ye, M.; Mao, W.; Zhang, X.; Yang, J.; Wu, J. Machine-Learning Methods for Water Table Depth Prediction in Seasonal Freezing-Thawing Areas. Ground Water 2020, 58, 419–431. [Google Scholar] [CrossRef] [PubMed]
- Chen, C.; Zhang, H.; Shi, W.; Zhang, W.; Xue, Y. A novel paradigm for integrating physics-based numerical and machine learning models: A case study of eco-hydrological model. Environ. Model. Softw. 2023, 163, 105669. [Google Scholar] [CrossRef]
- Chen, W. Tianjin groundwater well pumps to electricity discount water coefficient measurement and analysis of research. Haihe River Water Resour. 2019, 5, 42–47. [Google Scholar]
- Biswas, P.; Samanta, T. A Method for Fault Detection in Wireless Sensor Network Based on Pearson’s Correlation Coefficient and Support Vector Machine Classification. Wirel. Pers. Commun. 2022, 123, 2649–2664. [Google Scholar] [CrossRef]
- Navid, M. Multiple Linear Regressions for Predicting Rainfall for Bangladesh. Communications 2018, 6, 1. [Google Scholar] [CrossRef]
- Villegas, M.A.; Pedregal, D.J.; Trapero, J.R. A support vector machine for model selection in demand forecasting applications. Comput. Ind. Eng. 2018, 121, 1–7. [Google Scholar] [CrossRef]
- Zhang, B.; Chen, M.; Ma, Z.; Zhang, Z.; Yue, S.; Xiao, D.; Zhu, Z.; Wen, Y.; Lü, G. An online participatory system for SWMM-based flood modeling and simulation. Environ. Sci. Pollut. Res. 2022, 29, 7322–7343. [Google Scholar] [CrossRef]
- Serikov, T.; Zhetpisbayeva, A.; Mirzakulova, S.; Zhetpisbayev, K.; Ibrayeva, Z.; Soboleva, L.; Tolegenova, A.; Zhumazhanov, B. Application of the NARX neural network for predicting a one-dimensional time series. East.-Eur. J. Enterp. Technol. 2021, 5, 12–19. [Google Scholar] [CrossRef]
- Li, F.; Tao, P.; Qi, Y. Factors influencing electricity-to-water conversion metering method for irrigation water consumption in Hebei Plain. Chin. J. Eco-Agric. 2022, 30, 1993–2001. [Google Scholar]
- Yin, S.; Wu, W.; Liu, H.; Sun, Z. Experiments on conversion coefficient between electricity consumed and water pumped for agricultural wells in Beijing plain. J. Drain. Irrig. Mach. Eng. 2014, 32, 998–1004. [Google Scholar]
- Fan, H.; Liu, X.; Wang, W. Estimating Water Consumption from Electricity Consumption: How to Calculate the Conversion Coefficient. J. Irrig. Drain. 2021, 40, 98–105. [Google Scholar]
- Yue, S.; Qie, Z.; Liu, Y. Interpolation prediction of conversion coefficient between the consumed electricity and pumped water in Hebei plain based on SVM. J. Hebei Agric. Univ. 2020, 43, 133–139+147. [Google Scholar]
- Sahoo, S.; Russo, T.A.; Elliott, J.; Foster, I. Machine learning algorithms for modeling groundwater level changes in agricultural regions of the U.S. Water Resour. Res. 2017, 53, 3878–3895. [Google Scholar] [CrossRef]
County | Number of Wells | EWCC (m3/kW·h) | Groundwater Depth (m) | Usage Life of the Well (a) | Well Depth (m) | Pump Type |
---|---|---|---|---|---|---|
Taobei | 57 | 3.14–8.75 | 3.11–12.42 | 1–20 | 14–120 | 1, 3, 5 |
Taonan | 48 | 3.64–10.48 | 1.52–12.13 | 4–23 | 15–75 | 1, 2, 3 |
Zhenlai | 39 | 3.57–11.28 | 2.26–10.88 | 5–21 | 45–87 | 1, 2 |
Tongyu | 38 | 3.13–10.46 | 1.71–8.24 | 3–25 | 25–100 | 1, 2 |
Da’an | 24 | 3.86–11.38 | 3.25–8.36 | 6–20 | 83–100 | 3, 4 |
Method | Maximum Prediction Error (%) | Minimum Prediction Error (%) | Average Prediction Error (%) | MSE | R2 |
---|---|---|---|---|---|
MLR | 65.68 | 0.95 | 16.74 | 1.40 | 0.63 |
SVM | 42.58 | 0.34 | 8.57 | 0.54 | 0.83 |
BP | 31.72 | 0.14 | 6.29 | 0.48 | 0.87 |
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Ke, H.; Zhang, F.; Sikai, Y.; Zhe, M.; Bin, X. Using Machine Learning Models to Forecast the Conversion Coefficient between Electricity Consumption and Water Pumped for Irrigation Wells in Baicheng City, China. Water 2024, 16, 523. https://doi.org/10.3390/w16040523
Ke H, Zhang F, Sikai Y, Zhe M, Bin X. Using Machine Learning Models to Forecast the Conversion Coefficient between Electricity Consumption and Water Pumped for Irrigation Wells in Baicheng City, China. Water. 2024; 16(4):523. https://doi.org/10.3390/w16040523
Chicago/Turabian StyleKe, Hao, Fang Zhang, Yang Sikai, Ma Zhe, and Xu Bin. 2024. "Using Machine Learning Models to Forecast the Conversion Coefficient between Electricity Consumption and Water Pumped for Irrigation Wells in Baicheng City, China" Water 16, no. 4: 523. https://doi.org/10.3390/w16040523
APA StyleKe, H., Zhang, F., Sikai, Y., Zhe, M., & Bin, X. (2024). Using Machine Learning Models to Forecast the Conversion Coefficient between Electricity Consumption and Water Pumped for Irrigation Wells in Baicheng City, China. Water, 16(4), 523. https://doi.org/10.3390/w16040523