Title: Modelling agents of change in the fluvial system
1Modelling agents of change in the fluvial system
2Model approaches
- Model approach governed by variety of factors
- what we model (e.g. behaviour of todays
landscape vs. landscape change) - scale of prediction (single event vs. evolution
of a drainage network or a mountain range) - why we model (exploratory or explanatory
modelling versus specific prediction), and - to an unknown extent, backgrounds and tastes of
individual modellers - In a river
- Spatially and/or temporally averaged properties?
e.g. Reynolds-averaging, 2-D or even 1-D flow
modelling, bulk sediment transport - Or movement of individual particles or fluid
units - Somewhere in the middle?
3Model approaches
- Four options for large scale modelling (Haff
1996) - integrate observable, verifiable formulas for
erosion and sediment transport over large times
and distances - define mid-scale spatially integrated relations,
or define modified transport laws that hold over
larger time and space scales - find emergent behaviour and define new relations
consistent with scale of larger features and
behaviour of emergent landforms - define empirical relations at necessary scale
local physics represents details of landscape,
but immense information requirements limit scale
of prediction
process-based relations on a coarse scale predict
landscapes at very large time and space scales,
making interpretation of causal mechanisms
difficult
general rules focus on summarising landscape
properties with goal of exploring common elements
rather than suite of mechanisms that produce any
particular landscape
erosion and transport laws capable of independent
parameterisation and can be applied at landscape
scale, such that cause and effect can be
determined
4Model Approaches
- Range from
- Reductionist- reveal emergent behaviour by
scaling up small-scale dynamics - through
- Synthesist- ignore collective dynamics to
characterise emergent behaviour of complex
systems - to
- Zero process dynamics- static model, study
long-term evolution to equilibrium conditions,
but ignore path to equilibrium (e.g. Optimal
Channel Networks (OCN) Rodriguez- Iturbe et al.,
1992) - Common principle mass or energy conservation
- Major differences equations for erosion and
sediment transport
5Issues of scale- physical models
- We generally model in the range of scales dealt
with by Newtonian physics and continuum
mechanics- both have bounds of application - Small-scale phenomena can be modelled from
physical theory. However as scale increases
physics becomes increasingly difficult to apply
because - both slow- and fast-acting geomorphological
processes - different mechanisms dominate change at different
scales - unanticipated processes
- unknown initial and forcing conditions
- governing relations generally non-linear
6Simulating river hydraulics flow structures
- Flow in rivers is turbulent, with strongly
three-dimensional flow structures that drive
deposition and erosion - eddy sizes range from extremely small up to the
order of the channel dimensions - bedforms also occur at variety of scales
- Flow structures in rivers are extremely complex
- Examples from 3D simulations of flow over gravels
(Lane et al., in review) - downstream cross-stream vectors
- velocity
7Governing equations
- Any fluid flow is described by the Navier-Stokes
equations expressing - the temporal change in momentum
- the spatial change in momentum
- pressure gradient force
- change in momentum due to friction
- in the downstream, cross stream and vertical
directions - And the Continuity equation expressing
- the sum of change in mass (or volume) in the
downstream, cross stream and vertical directions
0 - However, these equations are too complex to solve
analytically (non-linear, four independent
variables) - To obtain approximate numerical solutions we need
simplifications and approximations
8General issues..
- Presently unfeasible to solve equations over
spatial or temporal scale large enough to be
useful for modelling rivers - Reducing dimensionality promotes reduction in
effects (e.g. turbulence and secondary
circulation) explicitly dealt with, and reduction
in simulation time. - Additional terms, representing turbulence and
secondary circulation, introduced into
2-dimensional form of equations
9Potential flow representations
EULERIAN approach
Domain split into small cells fixed in space for
which we can obtain algebraic equations
Flow described by velocity, acceleration and
density at points
- Convenient when velocity is constant at the fixed
points - Handles flow-field distortion effectively
- Material interfaces not easily handled
- Difficult to resolve sub-grid scale features
- Not suited to unsteady flow
- Artificial diffusion as contaminants
apportioned to adjacent cells
10Potential flow representations
LAGRANGIAN approach
Fluid again separated into finite zones,
characterising individual fluid elements. Flow
parameters represented with respect to the fluid
itself, providing a moving frame of reference
- Numerical approximation of equations requires
reference to points that move continuously with
respect to each other - Difficulty circumvented by utilising many fluid
elements and recalculating positions and
velocities at each timestep - Problems arise when
- Fluid becomes strongly distorted or large
slippages occur - Cavitation occurs or when material interfaces
collide with one another
11Potential flow representations
MARKER-IN-CELL approach
Can be considered to combine some of the best
features of both Eulerian and Lagrangian
approaches
- Developed as Particle-in-Cell at Los Alamos in
the late 1950s for use in particle physics - Adapted to fluvial hydraulics during 1980s by
John Harbaugh and graduate students at Stanford - Eulerian mesh used for characterising the field
variables (e.g. depth and bed elevation) - Lagrangian elements used to characterise the
fluid itself (e.g. velocity and sediment load)
12Why hasnt Marker-in-cell been used more
extensively?
13Potential flow rules
- Flow Rules
- Based on 2-D momentum equation-
- Velocity f (depth, energy slope, g, roughness)
- See later for sediment transport
- Murray-Paola (1994, 1997)-
- Velocity f (bed slope) to some power
- Sediment transport f (bedslope discharge)
- Thomas and Nicholas (2002)-
- Velocity f (bed slope, depth, g, roughness)
all raised to some power - No sediment transport
14Sediment transport
- Commonly, we distinguish three main transport
modes - dissolved load (wash load)
- layer spanning most of water column where
particles are in suspension - particles that roll, slide, or saltate, and are
transported as bed load
15Sediment transport modelling
- Model approaches range from simulating
- individual particles
- multiple size classes (split mixture into a
number of classes, each with different behaviour) - single size class
- to ignoring it! (Sediment transport is very
difficult- ask Einstein!) - Transport formulation
- suspended load
- bed load
- total load
16Governing Equations
- Sediment transport (in 2D) is described by the
following mathematical relationship - Mass conservation of sediment by size fraction
- C is depth-averaged concentration, D is particle
deposition rate, E is particle entrainment rate,
h is depth, t is time, U is downstream velocity,
V is cross stream velocity, x is downstream
distance, y is cross stream distance, es is
sediment eddy diffusivity, qs is sediment inflow,
and the subscript k denotes the kth size class
17Sediment transport modelling
- Modelling of suspended load via agent-based
methods largely unexplored (but wait..) - Modelling bed load more reasonable. In this case,
agents would be individual particles, rolling,
sliding or saltating - Rules based on
- empirical functions (e.g. Laursen, Yang,
Meyer-Peter and Mueller)- some excess quantity - stochastic formulations (e.g. Einstein, Shen)
- physical properties of particles (e.g.
coefficient of restitution, conservation of mass,
momentum and energy) - For example, Schmeeckle and Nelson 2003
18Example- bed load transport
Visualization of direct numerical simulation of
mixed grain size bedload transport in response to
turbulent sweep event that occurs near the middle
of the animation
- Equations of motion of all particles integrated
simultaneously - Distance from left to right is 20 cm, width is 5
cm. Median grain size is 5 mm and s is 2.5 mm
19SEDTRA- sediment transport capacity predictor
(Garbrecht et al. 1996)
- Total sediment transport by size fraction for
fourteen predefined size classes with suitable
transport equation for each size fraction - Wash load (particles less than 8 mm) after
entrainment, not deposited - Silts and fine sands from 8 mm to 0.25 mm
Laursen (1958) - Sands from 0.25 mm to 2.0 mm Yang (1973), and
- Gravels from 2.0 mm to 64.0 mm Meyer-Peter and
Mueller (1948).
20Sediment transport modelling
- To model sediment transport processes, three or
more layers can be distinguished - two layers through the water column, and
- one or more layers covering the streambed
- Particles exchange between the bed- and
suspended-load layers and the bed - Two options
- compute sediment transport rates in each layer
- combine suspended and bed load layers into single
total load layer
21Summary
- Range of model approaches, must be governed by
application - Agents in fluvial systems- I suspect were
already doing it, just independently - Language issues- fortran vs java
- Others??
22Outline
- Model approaches
- Scale issues
- Fluvial hydraulics
- Governing equations
- Difficulties
- Flow representations
- Sediment transport
- Governing equations
- Simulation options
23Issues of scale- physical models
- Continuum mechanics
- only works well at certain scales
- breaks down when nonlinearity promotes
localization and shocks, as in breaking waves,
hydraulic jumps, river channels, caves, etc. - Newtonian physics
- breaks down at elementary particle scale
- Quantum physics- probability functions
describing particle behaviour - breaks down at even smaller scales
- String theory or some yet to be invented theory
24Models- What? Why?
- In essence, a model is
- an idealised representation of reality
- a description or analogy used to aid
visualisation and understanding - a system of postulates, data and inferences
presented as a mathematical description of an
entity or state - Purposes
- organise scientific thought
- explore controls on landscape form and dynamics
- perform experiments beyond the spatial and
temporal range of observations - develop understanding- thought experiments (cf.
Kirkby)