Asgharinia S, Petroselli A (2020) A comparison of statistical methods for evaluating missing data of monitoring wells in the Kazeroun Plain, Fars Province, Iran. Groundwater for Sustainable Development 10:100294
Andreadis K M, Lettenmaier D P (2006) Assimilating remotely sensed snow observations into a macroscale hydrology model. Advances in Water Resources 29(6):872-886
Bosilovich M G, Radakovich J D, da SILVA A, Todling R, Verter F (2007) Skin temperature analysis and bias correction in a coupled land-atmosphere data assimilation system. Journal of the Meteorological Society of Japan Ser. II 85:205-228
Coulibaly P, Baldwin C K (2005) Nonstationary hydrological time series forecasting using nonlinear dynamic methods. Journal of Hydrology 307(1-4):164-174
Crow W T, Wood E F (2003) The assimilation of remotely sensed soil brightness temperature imagery into a land surface model using ensemble Kalman filtering: A case study based on ESTAR measurements during SGP97. Advances in Water Resources 26(2):137-149
Dastorani M T, Moghadamnia A, Piri J, Rico-Ramirez M (2010) Application of ANN and ANFIS models for reconstructing missing flow data. Environmental monitoring and assessment 166(1):421-434
Dikbas F, Yasar M (2020) Data-driven modeling of flows of Antalya basin and reconstruction of missing data. Iranian Journal of Science and Technology, Transactions of Civil Engineering 44(4):1335-1344
Hirsch R M (1979) An evaluation of some record reconstruction techniques. Water Resources Research 15(6):1781-1790
Jadidoleslam N, Mantilla R, Krajewski W F (2021) Data assimilation of satellite-based soil moisture into a distributed hydrological model for streamflow predictions. Hydrology 8(1):52
Kashif Gill M, Kemblowski M W, McKee M (2007) Soil moisture data assimilation using support vector machines and ensemble Kalman filter1. Journal of the American Water Resources Association 43(4):1004-1015
Khalil M, Panu U S, Lennox W C (2001) Groups and neural networks based streamflow data infilling procedures. Journal of Hydrology 241(3-4):153-176
Kuligowski R J, Barros A P (1998) Using artificial neural networks to estimate missing rainfall data 1. Journal of the American Water Resources Association 34(6):1437-1447
Kumar S V, Reichle R H, Peters-Lidard C D, Koster R D, Zhan X, Crow W T, Houser P R (2008) A land surface data assimilation framework using the land information system: Description and applications. Advances in Water Resources 31(11):1419-1432
Langhammer J, Česák J (2016) Applicability of a nu-support vector regression model for the completion of missing data in hydrological time series. Water 8(12):560
Li X L, Lü H, Horton R, An T, Yu Z (2014) Real-time flood forecast using the coupling support vector machine and data assimilation method. Journal of Hydroinformatics 16(5):973-988
Liu D, Yu Z B, Lue H S (2010) Data assimilation using support vector machines and ensemble Kalman filter for multi-layer soil moisture prediction. Water Science and Engineering 3(4):361-377
McCulloch J A W, Booth M (1970) Estimation of basin precipitation by regression equation. Water Resources Research 6(6):1753-1758
Mehrparvar M, Asghari K (2018) Modular optimized data assimilation and support vector machine for hydrologic modeling. Journal of Hydroinformatics 20(3):728-738
Mehrparvar M, Asghari K, Golmohammadi M (2019) Reducing error of rainfall-runoff simulation using coupled hydrological SWAT Model and data assimilation technique. Iran-Water Resources Research 14(5):85-102 (In Persian)
Noori R, Karbassi A R, Moghaddamnia A, Han D, Zokaei-Ashtiani M. H, Farokhnia A, Gousheh M G (2011) Assessment of input variables determination on the SVM model performance using PCA, Gamma test, and forward selection techniques for monthly stream flow prediction. Journal of hydrology 401(3-4):177-189
Petty T R, Dhingra P (2018) Streamflow hydrology estimate using machine learning (SHEM). Journal of the American Water Resources Association 54(1):55-68
Raman H, Mohan S, Padalinathan P (1995) Models for extending streamflow data: A case study. Hydrological Sciences Journal 40(3):381-393
Sattari M T, Falsafian K, Irvem A, Qasem S N (2020) Potential of kernel and tree-based machine-learning models for estimating missing data of rainfall. Engineering Applications of Computational Fluid Mechanics 14(1):1078-1094
Sattari M T, Rezazadeh-Joudi A, Kusiak A (2017) Assessment of different methods for estimation of missing data in precipitation studies. Hydrology Research 48(4):1032-104
Smola A J, Schölkopf B (2004) A tutorial on support vector regression. Statistics and Computing 14(3):199-222
Vapnik V (1995) The nature of statistical learning theory. New York, Springer
Wallis J R, Lettenmaier D P, Wood E F (1991) A daily hydroclimatological data set for the continental United States. Water Resources Research 27(7):1657-1663
Zhu Q, Wang Y, Luo Y (2021) Improvement of multi‐layer soil moisture prediction using support vector machines and ensemble Kalman filter coupled with remote sensing soil moisture datasets over an agriculture dominant basin in China. Hydrological Processes 35(4):e14154