AboutHydrology
My reflections and notes about hydrology and being a hydrologist in academia. The daily evolution of my work. Especially for my students, but also for anyone with the patience to read them.
Friday, February 6, 2026
The 2026 Hydrology Class
Classes and Related Materials
Available Resources
- Storyboards – A summary of the lecture, usually in Italian.
- Whiteboard – A detailed explanation of a specific topic, presented using Notability on an iPad.
- Slides – Commented in English.
- Videos – Commentary on the slides, typically recorded during lectures with no editing (as post-production would be too time-consuming).
- 2025 Videos are available on a Vimeo Showcase [link here].
- Additional Information & References – For those eager to explore more, supplementary details and references are provided in italics.
Class Schedule & Materials
📅 24 February 2025 – Introduction to the Course and Hydrology
- Syllabus (Vimeo 2026)
- A very short introduction to hydrology (Vimeo 2025)
- Mass & Energy budgets (Vimeo 2025)
- A short Lab introductions. Go to the installation page or (look at here for a short video summary)
- 🔎 Complementary Reference:
- Blöschl, Günter. 2022. Flood Generation: Process Patterns from the Raindrop to the Ocean. DOI: 10.5194/hess-2022-2.
Sunday, January 25, 2026
Leveraging LLMs in Hydrological Research: A Personal Workflow and Supporting Literature
In the rapidly shifting landscape of scientific research, Large Language Models (LLMs) have emerged as more than just productivity tools; they are powerful engines for augmenting human creativity. As a hydrologist navigating complex phenomena like percolation theory and soil water dynamics, I have developed a hybrid workflow that integrates a suite of LLMs—including Gemini, Grok, ChatGPT, and Claude—into my daily practice.
The Workflow: From Intuition to Iteration
1. Conceptualization and Targeted Drafting
2. The Multi-Model Reasoning Loop
- Structural Refinement: Improving the logical flow and hierarchy of arguments.
- Cross-Verification: I use a multi-model approach, asking ChatGPT to critique the mathematical derivations provided by Gemini, or vice versa.
- Fact-Checking: Any discrepancies identified between models are looped back for revision until the logic holds across all platforms.
3. Traditional Validation
- Direct discussion with colleagues.
- Implementation of toy models or full-scale simulations to empirically verify the AI-assisted hypotheses.
4. Use impressions
The Environmental "Metabolism" of Research
Metric | Per Standard Query | Per Reasoning Query | Total for Research Cycle (est. 15-20 interactions) |
Energy | ~0.34 Wh | 4.3 – 33.6 Wh | ~110 - 250 Wh |
Carbon ($CO_2e$) | ~0.15 g | ~1.5 - 12.0 g | ~25 - 50 g |
Water Withdrawal | ~0.26 ml | ~3.5 - 25.0 ml | ~150 - 500 ml |
- Energy: The ~150 Wh consumed is roughly equivalent to leaving a 10W LED bulb on for 15 hours.
- Water: At the upper end, the research for a single deep-dive commentary "drinks" about 500ml of water (one standard bottle), used for cooling data centers.
- Carbon: 50g of$CO_2$is equivalent to driving a gasoline car for approximately 250 meters.
References
Musical Coda
Monday, January 12, 2026
Five Paradoxes of Soil Hydrology (Observations that quietly undermine equilibrium soil physics)
Unsaturated flow theory is one of the cornerstones of hydrology. For nearly a century, the Richards equation has provided a mathematical framework for describing how water moves through partially saturated soils. At its core lies a powerful simplification: the hydraulic state of soil can be described by water content alone.
Yet decades of experiments tell a different story.
Across laboratories, field sites, and scales, soil water exhibits behaviors that contradict this assumption in systematic ways. These contradictions have become known, implicitly if not always explicitly, as paradoxes of vadose zone hydrology. They persist not because of experimental error, but because they expose limits in the classical conceptual model.
Below, we review five such paradoxes that continue to shape how hydrologists think about unsaturated flow.
1. Hysteresis
The same water content, different hydraulic states
Observation
During wetting, soils follow a different relationship between water content and matric potential than during drying. Hydraulic conductivity likewise differs between wetting and drying paths, even at identical water content.
Why this is paradoxical
Classical theory assumes a unique retention curve and unique conductivity function. Hysteresis directly violates this assumption and implies that soil retains memory of its past.
2. Rate Dependence
Why infiltration speed changes soil properties
Observation
Fast infiltration experiments routinely yield hydraulic conductivities several times larger than values obtained under slow, quasi-static conditions, even in the same soil.
Why this is paradoxical
Hydraulic conductivity is assumed to be a material property. If that were true, it should not depend on how quickly water is applied.
3. Scale Dependence
Why field conductivities exceed laboratory values
Observation
Field-scale saturated or near-saturated hydraulic conductivities are often one to two orders of magnitude larger than laboratory measurements on the same soil material. The discrepancy increases with measurement scale.
Why this is paradoxical
If conductivity is intrinsic to the soil, it should not depend on the size of the experiment.
4. Persistence of Compaction Effects
Why soils don’t recover hydraulically
Observation
Mechanical compaction reduces hydraulic conductivity dramatically. Even after bulk density and porosity appear to recover, conductivity often remains suppressed for years.
Why this is paradoxical
If conductivity depends primarily on porosity, it should recover once porosity does.
5. Non-Commutativity of Wetting and Drying
Why the order of processes matters
Observation
Wetting followed by drying does not lead to the same hydraulic state as drying followed by wetting, even if final water content is identical.
Why this is paradoxical
In classical physics, state variables are path-independent. Soil water violates this expectation.
A Shared Message from Five Paradoxes
Each paradox has often been addressed with a separate modeling fix—hysteresis rules, dynamic conductivity, macropore domains, or empirical memory terms. Taken together, however, they point to a single conclusion:
Water content alone is insufficient to describe the hydraulic state of soil.
Soils exhibit memory, path dependence, and sensitivity to forcing because internal processes do not instantaneously equilibrate.
Why Hydrologists Should Care
These paradoxes affect:
infiltration and runoff prediction
groundwater recharge estimates
irrigation efficiency assessments
land–surface and Earth system models
transfer of parameters from lab to field
They remind us that the vadose zone is not a passive filter but a dynamic system with internal states and history.
References
Haines, W. B. (1930). Studies in the physical properties of soil: V. The hysteresis effect. Journal of Agricultural Science, 20(1), 97–116. DOI: 10.1017/S002185960008864X
Mualem, Y. (1974). A conceptual model of hysteresis. Water Resources Research, 10(3), 514–520. DOI: 10.1029/WR010i003p00514
Smiles, D. E., Vachaud, G., & Vauclin, M. (1971). A test of the uniqueness of the soil moisture characteristic during transient, nonhysteretic flow. Soil Science Society of America Journal, 35, 534–539. DOI: 10.2136/sssaj1971.03615995003500040007x
Beven, K., & Germann, P. (1982). Macropores and water flow in soils. Water Resources Research, 18(5), 1311–1325. DOI: 10.1029/WR018i005p01311
Hamza, M. A., & Anderson, W. K. (2005). Soil compaction in cropping systems: A review. Soil and Tillage Research, 82, 121–145. DOI: 10.1016/j.still.2004.08.009
Philip, J. R. (1964). Similarity hypothesis for capillary hysteresis. Soil Science, 97(3), 155–164. DOI: 10.1097/00010694-196403000-00001
Kool, J. B., & Parker, J. C. (1987). Development and evaluation of closed-form expressions for hysteretic soil hydraulic properties. Water Resources Research, 23(1), 105–114. DOI: 10.1029/WR023i001p00105
Musical Coda
Wednesday, January 7, 2026
Various resources on Evapotranspiration, as we treat it
Following our session on Evapotranspiration, I am listing some relevant resources beyond what we have already shared. Videos from previous GEOframe Schools are available here, and recordings from this year's school will be posted soon.
Core Reading
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| https://water.usgs.gov/edu/gallery/evaporation-fog.html |
The Resistance Model for ET
Differentiating Soil Behavior from Transpiration
For Those Who Want to Go Deeper
References
- Bottazzi, M. 2020. “Transpiration Theory and the Prospero Component of GEOframe.” Supervisors: Rigon and G. Bertoldi. Ph.D., DICAM. https://paperpile.com/shared/sTnYXIdFURLC65TntLUZqUA
- D’Amato, Concetta. 2024. Supervisor: Riccardo Rigon, “Exploring the Soil-Plant-Atmosphere Continuum: Advancements, Integrated Modeling and Ecohydrological Insights.” Ph.D., Università di Trento. https://paperpile.com/shared/sPLgpgiM8Tt~egbfVu~2ISg
- D'Amato, C., and Rigon, R. (2025a). A big leaf model with layer soil water uptake for tower-scale evapotranspiration simulations. Ecohydrology, e2748. https://doi.org/10.1002/eco.2748
- D'Amato, C., Tubini, N., and Rigon, R. (2025b). GEOSPACE 1.0: An integrated numerical model for the global water and energy balance. Geoscientific Model Development, 18, 1041–1062. https://doi.org/10.5194/gmd-18-1041-2025
Musical coda
Tuesday, January 6, 2026
Minkowski functionals: Critical Limitations and Future Directions for Minkowski Functionals in Soil Hydrology
Revisiting the Hadwiger Theorem
The Problem of Motion-Invariance
- Gravity creates fundamental vertical asymmetry
- Upward capillary rise versus downward drainage follow completely different dynamics
- Preferential flow paths depend on structural orientation
- Hydraulic conductivity is often anisotropic due to soil structure (layering, aggregation, root channels)
Discontinuities and Dynamic Transitions
- Snap-off phenomena, where water films pinch off creating isolated ganglia
- Burst-like pore filling during infiltration
- Rapid redistribution events following connectivity changes
- The velocity fields during rapid interface motion
- Pressure gradients and their relaxation
- Energy dissipation during Haines jumps
- Timescales of geometric evolution
- Inertial effects during rapid events
History Dependence and Hysteresis
- Different capillary pressures (water retention hysteresis)
- Different hydraulic conductivities (conductivity hysteresis)
- Different contact angles at interfaces
- Different stability under perturbations
What's Missing from Static Geometry
- Tortuosity and path length distributions
- Bottleneck locations and their sizes
- Dead-end pores that contribute to storage but not transport
- Interface mobility and contact line pinning
- Current interfacial configurations
- Contact angles (which depend on whether surfaces are advancing or receding)
- Which pores are filled or empty at a given capillary pressure
- The distribution of trapped air or water ganglia
- Rates of geometric change and interface motion
- Relaxation times toward equilibrium configurations
- Characteristic timescales for different processes (capillary equilibration, gravity drainage, diffusive redistribution)
- Dynamic versus quasi-static flow regimes
- The energy landscape and barriers between different configurations
- Metastable states and their stability
- Energy dissipation during transitions
- The thermodynamic distance from equilibrium
- Soil deformation affecting pore geometry
- Swelling and shrinkage during wetting/drying
- Crack formation and closure
- Aggregate structural changes
Comprehensive Bibliography
Hadwiger Theorem and Integral Geometry Foundations
- Hadwiger, H. (1957). Vorlesungen über Inhalt, Oberfläche und Isoperimetrie. Springer-Verlag, Berlin.
- Hadwiger, H. (1959). Normale Körper im euklidischen Raum und ihre topologischen und metrischen Eigenschaften. Mathematische Zeitschrift, 71(1), 124-140.
- Klain, D. A., & Rota, G. C. (1997). Introduction to Geometric Probability. Cambridge University Press.
- Schneider, R., & Weil, W. (2008). Stochastic and Integral Geometry. Springer-Verlag, Berlin.
- Alesker, S. (1999). Continuous rotation invariant valuations on convex sets. Annals of Mathematics, 149(3), 977-1005.
Foundational Works on Minkowski Functionals
- Mecke, K. R. (1998). Integral geometry in statistical physics. International Journal of Modern Physics B, 12(09), 861-899.
- Mecke, K. R. (2000). Additivity, convexity, and beyond: applications of Minkowski functionals in statistical physics. In Statistical Physics and Spatial Statistics (pp. 111-184). Springer, Berlin.
- Schröder-Turk, G. E., et al. (2011). Minkowski tensor shape analysis of cellular, granular and porous structures. Advanced Materials, 23(22-23), 2535-2543.
- Michielsen, K., & De Raedt, H. (2001). Integral-geometry morphological image analysis. Physics Reports, 347(6), 461-538.
- Mantz, H., et al. (2008). Utilizing Minkowski functionals for image analysis: a marching square algorithm. Journal of Statistical Mechanics: Theory and Experiment, 2008(12), P12015.
Applications to Porous Media
- Arns, C. H., et al. (2002). Computation of linear elastic properties from microtomographic images: Methodology and agreement between theory and experiment. Geophysics, 67(5), 1396-1405.
- Mecke, K. R., & Arns, C. H. (2005). Fluids in porous media: a morphometric approach. Journal of Physics: Condensed Matter, 17(9), S503-S534.
- Armstrong, R. T., et al. (2016). Beyond Darcy's law: The role of phase topology and ganglion dynamics for two-fluid flow. Physical Review E, 94(4), 043113.
- Hilfer, R., & Manwart, C. (2001). Permeability and conductivity for reconstruction models of porous media. Physical Review E, 64(2), 021304.
- Thovert, J. F., et al. (2001). Grain reconstruction of porous media: application to a Bentheim sandstone. Physical Review E, 63(6), 061307.
- Arns, C. H., et al. (2005). Accurate estimation of transport properties from microtomographic images. Geophysical Research Letters, 28(17), 3361-3364.
Soil Science and Hydrology Applications
- Vogel, H. J., & Roth, K. (2001). Quantitative morphology and network representation of soil pore structure. Advances in Water Resources, 24(3-4), 233-242.
- Vogel, H. J., et al. (2010). Quantification of soil structure based on Minkowski functions. Computers & Geosciences, 36(10), 1236-1245.
- Schlüter, S., et al. (2014). Image processing of multiphase images obtained via X-ray microtomography: a review. Water Resources Research, 50(4), 3615-3639.
- Peth, S., et al. (2008). Three-dimensional quantification of intra-aggregate pore-space features using synchrotron-radiation-based microtomography. Soil Science Society of America Journal, 72(4), 897-907.
- Cousin, I., et al. (1996). Three-dimensional analysis of a loamy-clay soil using pore and solid chord distributions. European Journal of Soil Science, 47(4), 439-452.
- Perret, J., et al. (1999). Three-dimensional quantification of macropore networks in undisturbed soil cores. Soil Science Society of America Journal, 63(6), 1530-1543.
Topology, Connectivity, and Percolation
- Hunt, A. G., & Sahimi, M. (2017). Flow, transport, and reaction in porous media: Percolation scaling, critical-path analysis, and effective medium approximation. Reviews of Geophysics, 55(4), 993-1078.
- Vogel, H. J. (1997). Morphological determination of pore connectivity as a function of pore size using serial sections. European Journal of Soil Science, 48(3), 365-377.
- Vogel, H. J. (2000). A numerical experiment on pore size, pore connectivity, water retention, permeability, and solute transport using network models. European Journal of Soil Science, 51(1), 99-105.
- Mecke, K. R. (1994). Integral geometry in statistical physics. International Journal of Modern Physics B, 12(09), 861-899.
- Torquato, S. (2002). Random Heterogeneous Materials: Microstructure and Macroscopic Properties. Springer Science & Business Media.
- Rintoul, M. D., & Torquato, S. (1997). Precise determination of the critical threshold and exponents in a three-dimensional continuum percolation model. Journal of Physics A: Mathematical and General, 30(16), L585.
Hysteresis, Non-Equilibrium, and Dynamic Processes
- Berg, S., et al. (2013). Real-time 3D imaging of Haines jumps in porous media flow. Proceedings of the National Academy of Sciences, 110(10), 3755-3759.
- Armstrong, R. T., & Berg, S. (2013). Interfacial velocities and capillary pressure gradients during Haines jumps. Physical Review E, 88(4), 043010.
- McClure, J. E., et al. (2018). Geometric state function for two-fluid flow in porous media. Physical Review Fluids, 3(8), 084306.
- Schlüter, S., et al. (2016). Pore-scale displacement mechanisms as a source of hysteresis for two-phase flow in porous media. Water Resources Research, 52(3), 2194-2205.
- Armstrong, R. T., et al. (2014). Linking pore-scale interfacial curvature to column-scale capillary pressure. Advances in Water Resources, 46, 55-62.
- Schlüter, S., et al. (2017). Time scales of relaxation dynamics during transient conditions in two-phase flow. Water Resources Research, 53(6), 4709-4724.
- Rücker, M., et al. (2015). From connected pathway flow to ganglion dynamics. Geophysical Research Letters, 42(10), 3888-3894.
Curvature, Interfacial Area, and Thermodynamics
- Hilpert, M., & Miller, C. T. (2001). Pore-morphology-based simulation of drainage in totally wetting porous media. Advances in Water Resources, 24(3-4), 243-255.
- McClure, J. E., et al. (2016). Influence of phase connectivity on the relationship among capillary pressure, fluid saturation, and interfacial area in two-fluid-phase porous medium systems. Physical Review E, 94(3), 033102.
- Porter, M. L., et al. (2009). Measurement and prediction of the relationship between capillary pressure, saturation, and interfacial area in a NAPL-water-glass bead system. Water Resources Research, 45(8), W08402.
- Joekar-Niasar, V., & Hassanizadeh, S. M. (2012). Analysis of fundamentals of two-phase flow in porous media using dynamic pore-network models: A review. Critical Reviews in Environmental Science and Technology, 42(18), 1895-1976.
- Hassanizadeh, S. M., & Gray, W. G. (1993). Thermodynamic basis of capillary pressure in porous media. Water Resources Research, 29(10), 3389-3405.
- Niessner, J., & Hassanizadeh, S. M. (2008). A model for two-phase flow in porous media including fluid-fluid interfacial area. Water Resources Research, 44(8), W08439.
Computational Methods and Image Analysis
- Ohser, J., & Schladitz, K. (2009). 3D Images of Materials Structures: Processing and Analysis. Wiley-VCH.
- Legland, D., et al. (2016). MorphoLibJ: integrated library and plugins for mathematical morphology with ImageJ. Bioinformatics, 32(22), 3532-3534.
- Schladitz, K., et al. (2006). Design of acoustic trim based on geometric modeling and flow simulation for non-woven. Computational Materials Science, 38(1), 56-66.
- Lindquist, W. B., & Venkatarangan, A. (1999). Investigating 3D geometry of porous media from high resolution images. Physics and Chemistry of the Earth, Part A: Solid Earth and Geodesy, 24(7), 593-599.
- Lindquist, W. B., et al. (2000). Pore and throat size distributions measured from synchrotron X-ray tomographic images of Fontainebleau sandstones. Journal of Geophysical Research: Solid Earth, 105(B9), 21509-21527.
Stochastic Reconstruction and Multiscale Analysis
- Karsanina, M. V., & Gerke, K. M. (2018). Hierarchical optimization: Fast and robust multiscale stochastic reconstructions with rescaled correlation functions. Physical Review Letters, 121(26), 265501.
- Gerke, K. M., et al. (2019). Improving watershed-based pore-network extraction method using maximum inscribed ball pore-body positioning. Advances in Water Resources, 140, 103576.
- Yeong, C. L. Y., & Torquato, S. (1998). Reconstructing random media. Physical Review E, 57(1), 495-506.
- Hilfer, R. (1991). Geometric and dielectric characterization of porous media. Physical Review B, 44(1), 60-75.
- Jiao, Y., et al. (2007). Modeling heterogeneous materials via two-point correlation functions: Basic principles. Physical Review E, 76(3), 031110.
- Tahmasebi, P., & Sahimi, M. (2012). Reconstruction of three-dimensional porous media using a single thin section. Physical Review E, 85(6), 066709.
Upscaling and Effective Properties
- Wildenschild, D., & Sheppard, A. P. (2013). X-ray imaging and analysis techniques for quantifying pore-scale structure and processes in subsurface porous medium systems. Advances in Water Resources, 51, 217-246.
- Blunt, M. J., et al. (2013). Pore-scale imaging and modelling. Advances in Water Resources, 51, 197-216.
- Costanza-Robinson, M. S., et al. (2008). X-ray microtomography determination of air-water interfacial area-water saturation relationships in sandy porous media. Environmental Science & Technology, 42(7), 2949-2956.
- Arns, C. H., et al. (2001). Cross-property correlations and permeability estimation in sandstone. Physical Review E, 72(4), 046304.
- Knackstedt, M. A., et al. (2001). Percolation properties of the three-dimensional pore space in rocks. Physical Review E, 64(5), 056302.
Recent Developments and Advanced Topics
- Lin, Q., et al. (2018). Minimal surfaces in porous media: Pore-scale imaging of multiphase flow in an altered-wettability Bentheimer sandstone. Physical Review E, 99(6), 063105.
- Rabbani, A., et al. (2021). Review of data science trends and issues in porous media research with a focus on image-based techniques. Water Resources Research, 57(3), e2020WR028597.
- Bultreys, T., et al. (2016). Fast laboratory-based micro-computed tomography for pore-scale research: Illustrative experiments and perspectives on the future. Advances in Water Resources, 95, 341-351.
- Schlüter, S., et al. (2020). Time scales of relaxation dynamics during transient conditions in two-phase flow. Water Resources Research, 56(4), e2019WR025815.
- Singh, K., et al. (2017). Dynamics of snap-off and pore-filling events during two-phase fluid flow in permeable media. Scientific Reports, 7(1), 5192.
- Andrew, M., et al. (2014). Pore-scale imaging of geological carbon dioxide storage under in situ conditions. Geophysical Research Letters, 41(15), 5347-5354.
Persistent Homology and Advanced Topology
- Edelsbrunner, H., & Harer, J. (2008). Persistent homology—a survey. Contemporary Mathematics, 453, 257-282.
- Robins, V., et al. (2011). Percolating length scales from topological persistence analysis of micro-CT images of porous materials. Water Resources Research, 52(1), 315-329.
- Kramár, M., et al. (2013). Quantifying force networks in particulate systems. Physica D: Nonlinear Phenomena, 283, 37-55.
Multiphase Flow and Interface Dynamics
- Raeini, A. Q., et al. (2014). Modelling two-phase flow in porous media at the pore scale using the volume-of-fluid method. Journal of Computational Physics, 231(17), 5653-5668.
- Ferrari, A., & Lunati, I. (2013). Direct numerical simulations of interface dynamics to link capillary pressure and total surface energy. Advances in Water Resources, 57, 19-31.
- Zacharoudiou, I., et al. (2017). The impact of drainage displacement patterns and Haines jumps on CO2 storage efficiency. Scientific Reports, 8(1), 15561.






