Hydrologic Data Assimilation
This section presents an extensive collection of research on hydrologic data assimilation theory and practice, a critical process that integrates observational data with hydrologic model outputs to improve predictions to manage water resources more effectively. The featured studies cover a wide range of topics from uncertainty quantification and parameter estimation to the application of advanced data assimilation techniques in operational hydrology. One core area of focus is the use of sequential data assimilation methods such as the particle filter and ensemble Kalman filter to refine the estimation of model states and parameters. These techniques address the dynamic nature of hydrological processes and their inherent uncertainties, allowing for more accurate forecasting of key hydrologic variables such as snow water equivalent, soil moisture, and streamflow. These variables play crucial roles in flood control, agricultural planning, and effective water resource management, making their accurate prediction essential for operational decision-making. Moreover, the integration of Bayesian Model Averaging (BMA) with data assimilation techniques is explored as a method to reduce model uncertainty. This approach adjusts model weights dynamically, offering a more refined handling of uncertainties compared to traditional methods that rely on fixed probability distributions. The research also delves into the challenges and opportunities of implementing data assimilation in real-world operational settings. It discusses the barriers to integrating the latest scientific advancements into practice, such as the complexity of models and the difficulty in quantifying certain types of uncertainties. Additionally, it outlines potential solutions, including the development of community-based tools and frameworks that could facilitate the adoption of these advanced methods by practitioners. Overall, the papers in this section collectively emphasize the transformative potential of hydrologic data assimilation in enhancing the predictability and management of water resources. They contribute significantly to the field by providing sophisticated tools and methodologies that can lead to more informed and effective hydrological practices and disaster management strategies.
- Moradkhani, H., K. Hsu, H.V. Gupta, and S. Sorooshian (2005), Uncertainty Assessment of Hydrologic Model States and Parameters: Sequential Data Assimilation Using Particle Filter, Water Resources Research, 41, W05012, doi:10.1029/2004WR003604.
- Moradkhani, H. and S. Sorooshian (2008), General Review of Rainfall-Runoff Modeling: Model Calibration, Data Assimilation, and Uncertainty Analysis, in Hydrological Modeling and Water Cycle, Coupling of the Atmospheric and Hydrological Models, Springer, Water Science and Technology Library, volume 63, Part 1, 1-24, DOI: 10.1007/978-3-540-77843-1-1.
- Moradkhani, H. (2008), Hydrologic Remote Sensing and Land Surface Data Assimilation, Sensors, 8, 2986-3004; DOI: 10.3390/s8052986.
- Leisenring, M., H. Moradkhani (2011), Snow Water Equivalent Estimation using Bayesian Data Assimilation Methods, Stochastic Environmental Research and Risk Assessment, 25 (2), 253-270.
- DeChant, C., H. Moradkhani (2011), Radiance Data Assimilation for operational Snow and Streamflow Forecasting, Advances in Water Resources, 34, 351–364.
- DeChant, C., and H. Moradkhani, (2011), Improving the Characterization of Initial Condition for Ensemble Streamflow Prediction Using Data Assimilation, Hydrol. Earth Syst. Sci., 15, 3399-3410, doi:10.5194/hess-15-3399.
- Parrish, M., H. Moradkhani, and C.M. DeChant (2012), Towards Reduction of Model Uncertainty: Integration of Bayesian Model Averaging and Data Assimilation, Water Resources Research, 48, W03519, doi:10.1029/2011WR011116.
- DeChant, C.M., and H. Moradkhani (2012), Examining the Effectiveness and Robustness of Data Assimilation Methods for Calibration and Quantification of Uncertainty in Hydrologic forecasting, Water Resources Research, vol. 48, W04518, doi:10.1029/2011WR011011.
- Moradkhani, H., C.M. DeChant and S. Sorooshian (2012), Evolution of Ensemble Data Assimilation for Uncertainty Quantification using the Particle Filter-Markov Chain Monte Carlo Method, Water Resources Research,48,W12520, doi:10.1029/2012WR012144.
- Liu, Y., A.H. Weerts, M. Clark, H.J. Hendricks Franssen, S. Kumar, H. Moradkhani, D.J. Seo, et al., (2012), Toward Advancing Data Assimilation in Operational Hydrologic Forecasting and Water Resources Management: Current Status, Challenges, and Emerging Opportunities, Hydrol. Earth Syst. Sci., 16, 3863-3887.
- Montzka, C., J. Grant, H. Moradkhani, H.J., Hendricks Franssen, L. Weihermüller, M. Drusch, and H. Vereecken (2013), Estimation of radiative transfer parameters from L-Band passive microwave brightness temperatures using data assimilation, Vadose Zone Hydrology, Special Issue of Remote Sensing, doi:102136/vzj2012.0040.
- Samuel, J., P. Coulibaly, G. Dumedah, H. Moradkhani (2014), Assessing Model State Variation in Hydrologic Data Assimilation, Journal of Hydrology, 513, 127–141, DOI: 10.1016/j.jhydrol.2014.03.048.
- DeChant C.M., and H. Moradkhani (2014), Toward a Reliable Prediction of Seasonal Forecast Uncertainty: Addressing Model and Initial Condition Uncertainty with Ensemble Data Assimilation and Sequential Bayesian Combination, Journal of Hydrology, special issue on Ensemble Forecasting and data assimilation, 519, 2967-2977, DOI: 10.1016/j.jhydrol.2014.05.045.
- Seo, DJ, Y Liu, H. Moradkhani, A. Weerts (2014), Ensemble prediction and data assimilation for operational hydrology, Journal of Hydrology, special issue, 519, 2661–2662, DOI:10.1016/j.jhydrol.2014.11.035.
- Pathiraja, S., L. Marshall, A. Sharma, and H. Moradkhani (2016), Hydrologic Modeling in Dynamic catchments: A Data Assimilation Approach, Water Resources Research, doi: 10.1002/2015WR017192.
- Pathiraja, S., L. Marshall, A. Sharma, and H. Moradkhani (2016), Detecting non-stationary hydrologic model parameters in a paired catchment system using Data Assimilation, Advances in Water Resources, 94, 103–119, doi:10.1016/j.advwatres.2016.04.021.
- Ahmadalipour, A., H. Moradkhani, H. Yan, M. Zarekarizi (2016), Remote Sensing of Drought: Vegetation, Soil Moisture and Data Assimilation, Remote Sensing of Hydrological Extremes, Springer International Publishing Switzerland 2017, DOI 10.1007/978-3-319-43744-6_7.
- Pathiraja, S., D. Anghileri, P. Burlando, A. Sharma, L. Marshall, and H. Moradkhani (2018), Insights on the impact of systematic model errors on data assimilation performance in changing catchments, Advances in Water Resources, 113,202-222.
- Abbaszadeh, P., H. Moradkhani, and H. Yan (2018), Enhancing Hydrologic Data Assimilation by Evolutionary Particle Filter and Markov Chain Monte Carlo , Advances in Water Resources, 111, 192-204, doi: 10.1016/j.advwatres.2017.11.011.
- Pathiraja, S., H. Moradkhani, L. Marshall, A. Sharma, G, Geenens (2018), Data Driven Model Uncertainty Estimation in Data Assimilation, Water Resources Research, doi: 10.1002/2018WR022627.
- Moradkhani H., Nearing G., Abbaszadeh P., Pathiraja S. (2018), Fundamentals of Data Assimilation and Theoretical Advances. In: Duan et al. (eds), Handbook of Hydrometeorological Ensemble Forecasting. Springer, Berlin, Heidelberg, doi: 10.1007/978-3-642-40457-3_30-1.
- Abbaszadeh, P., H. Moradkhani, and D.N. Daescu (2019), The Quest for Model Uncertainty Quantification: A Hybrid Ensemble and Variational Data Assimilation Framework, Water Resources Research, 55, doi: 10.1029/2018WR023629.
- Abbaszadeh, P., K. Gavahi, and H. Moradkhani (2020) Multivariate Remotely Sensed and In-situ Data Assimilation for Enhancing Community WRF-Hydro Model Forecasting, Advances in Water Resources, doi:10.1016/j.advwatres.2020.103721
- Xu, Lei., P.Abbaszadeh, H. Moradkhani, N. Chen, X. Zhang (2020) Continental drought monitoring using satellite soil moisture, data assimilation and an integrated drought index, Remote Sensing of Environment, doi: 10.1016/j.rse.2020.112028
- Zarekarizi, M, H. Yan, A. Ahmadalipour, H. Moradkhani (2021), A Probabilistic Framework for Agricultural Drought Forecasting Using the Ensemble Data Assimilation and Bayesian Multivariate Modeling, Book Series: Geophysical Monograph Series, Book, doi: 10.1002/9781119427339.ch8
- Jafarzadehan, K., P. Abbaszadeh, and H. Moradkhani (2021) Sequential Data Assimilation for Real-Time Probabilistic Flood Inundation Mapping, Hydrol. Earth Syst. Sci., 25, 4995–5011, doi: 10.5194/hess-25-4995-2021.
- Muñoz, D.F., P. Abbaszadeh, H. Moftakhari, and H. Moradkhani (2021), Accounting for uncertainties in compound flood hazard assessment: The value of data assimilation, Coastal Engineering, doi:10.1016/j.coastaleng.2021.104057.
- Gavahi, K., P. Abbaszadeh, and H. Moradkhani, (2022), How does precipitation data influence the land surface data assimilation for drought monitoring?, Science of the Total Environment, doi:10.1016/j.scitotenv.2022.154916.
- Deb, P., P. Abbaszadeh, and H. Moradkhani, (2022), An ensemble data assimilation approach to improve farm-scale actual evapotranspiration estimation, Agricultural and Forest Meteorology, doi:10.1016/j.agrformet.2022.108982