Title: The Calibration Process
1The Calibration Process
- Calibration of a flow model refers to a
demonstration that the model is capable of
producing field-measured heads and flows which
are the calibration values. - Calibration is accomplished by finding a set of
parameters, boundary conditions, and stresses
that produce simulated heads and fluxes that
match field-measured values within a
pre-established range of error.
2Targets in Model Calibration
- Head measured in an observation well is known
as a target. Baseflow measurements or other
fluxes are also used as targets during
calibration.
- The simulated head at a node representing an
observation well is compared with the measured
head in the well. (Similarly for flux targets) - Residual error observed - simulated
- During model calibration, parameter values
(e.g., R and T) are adjusted until the simulated
head matches the observed value within some
acceptable range of error. Hence, model
calibration solves the inverse problem.
3Target Values
4Inverse Problem
- Objective is to determine values of the
parameters and hydrologic stresses from
information about heads, whereas in the forward
problem system parameters such as hydraulic
conductivity, specific storage, and hydrologic
stresses such as recharge rate are specified and
the model calculates heads. - The inverse problem is an estimation of boundary
conditions, hydrologic stresses, and the spatial
distribution of parameters by methods that do not
involve consideration of heads.
5- Calibration can be performed
- steady-state
- Requires some flux input to the system
- transient data sets.
6Information needed for calibration
- head values and fluxes or other calibration data
(called sample information), - parameter estimates (called prior information)
that will be used during the calibration process.
7Sample Information
- Heads
- Sources of error
- transient effects that are not represented in the
model. - measurement error associated with the accuracy of
the water level measuring device - Interpolation Error
- Calibration values ideally should coincide with
nodes, but in practice this will seldom be
possible. This introduces interpolation errors
caused by estimating nodal head values. This type
of error may be 10 feet or more in regional
models. The points for which calibration values
are available should be shown on a map to
illustrate the locations of the calibration
points relative to the nodes. Ideally, heads and
fluxes should be measured at a large number of
locations, uniformly distributed over the modeled
region.
8Examples of Sources of Error
- Surveying errors
- Errors in measuring water levels
- Interpolation error
- Transient effects
- Scaling effects
- Unmodeled heterogeneities
9Sample Information
- Fluxes
- Field-measured fluxes, such as baseflow,
springflow, infiltration from a losing stream, or
evapotranspiration from the water table may also
be selected as calibration values. - associated errors for flux are usually larger
than errors associated with head measurements. - Calibration to flows gives an independent check
on hydraulic conductivity values.
10Prior Information
- Calibration is difficult because values for
aquifer parameters and hydrologic stresses are
typically known at only a few nodes and, even
then, estimates are influenced by uncertainty. - Prior information on hydraulic conductivity
and/or transmissivity and storage parameters is
usually derived from aquifer tests. - Prior information on discharge from the aquifer
may be available from field measurements of
springflow or baseflow. - Direct field measurements of recharge are usually
not available but it may be possible to identify
a plausible range of values. - Uncertainty associated with estimates of aquifer
parameters and boundary conditions must also be
evaluated.
11Calibration Techniques
- two ways of finding model parameters to achieve
calibration - (1) manual trial-and-error adjustment of
parameters - (2) automated parameter estimation.
- Manual trial-and-error calibration was the first
technique to be used and is still the technique
preferred by most practitioners.
12Calibration parameters are parameters whose
values are uncertain. Values for these
parameters are adjusted during model calibration.
Typical calibration parameters include hydraulic
conductivity and recharge rate.
Parameter values can be adjusted manually by
trial and error. This requires the user to do
multiple runs of the model.
or parameter adjustment can be done with the
help of an inverse code.
13Trial-and-Error Calibration
- Parameter values assigned to each node or element
in the grid. - The values are adjusted in sequential model runs
to match simulated heads and flows to the
calibration targets. - For each parameter an uncertainty value is
quantified. Some parameters may be known with a
high degree of certainty and therefore should be
modified only slightly or not at all during
calibration. - The results of each model execution are compared
to the calibration targets adjustments are made
to all or selected parameters and/or boundary
conditions, and another trial calibration is
initiated. - 10s to 100s of model runs may be needed to
achieve calibration. - No information on the degree of uncertainty in
the final parameter selection - Does not guarantee the statistically best
solution, may produce nonunique solutions when
different combinations of parameters yield
essentially the same head distribution.
14Trial and Error Process
15Automated Calibration
- Automated inverse modeling is performed using
specially developed codes - Example PEST Parameter ESTimation,
- Direct solution - unknown parameters are treated
as dependent variables in the governing equation
and heads are treated as independent variables. - The direct approach is similar to the
trial-and-error calibration in that the forward
problem is solved repeatedly. However, the code
automatically checks and updates the parameters
to obtain the best solution. - The inverse code will automatically find a set of
parameters that matches the observed head values. - An automated statistically based solution
quantifies the uncertainty in parameter estimates
and gives the statistically most appropriate
solution for the given input parameters provided
it is based on an appropriate statistical model
of errors.
16Evaluating the Calibration
- The results of the calibration should be
evaluated both qualitatively and quantitatively.
Even in a quantitative evaluation, however, the
judgment of when the fit between model and
reality is good enough is a subjective one. - There is no standard protocol for evaluating the
calibration process. - Traditional measures of calibration
- Comparison between contour maps of measured and
simulated heads - A scatterplot of measured against simulated heads
is another way of showing the calibrated fit.
Deviation of points from the straight line should
be randomly distributed.
17Basecase simulation for the Final Project
18Residual observed - simulated
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21Tabular Data
22Expressing differences between simulated and
measured heads
- The mean error (ME) is the mean difference
between measured heads (hm) and simulated heads
(hs). -
- where n is the number of calibration values.
- Simple to calculate
- Both negative and positive differences are
incorporated in the mean and may cancel out the
error. - Hence, a small mean error may not indicate a good
calibration.
23Example of Mean Error
24Tabular Data
25Expressing differences between simulated and
measured heads
- The mean absolute error (MAE) is the mean of the
absolute value of the differences in measured and
simulated heads. -
- All errors are positive.
- Hence, a small mean error may would indicate a
good calibration.
26Expressing differences between simulated and
measured heads
- The root mean squared (RMS) error or the standard
deviation is the average of the squared
differences in measured and simulated heads. -
- As with MAE, all errors are positive.
- Hence, a small mean error may would indicate a
good calibration.
27Example of Root Mean Squared Error
28- The RMS is usually thought to be the best measure
of error if errors are normally distributed.
However, ME and MAE may provide better error
measures (Figure 32).
29Sensitivity Analysis
- Purpose to quantify the uncertainty in the
calibrated model caused by uncertainty in the
estimates of aquifer parameters, stresses, and
boundary conditions. - Process Calibrated values for hydraulic
conductivity, storage parameters, recharge, and
boundary conditions are systematically changed
within the previously established plausible
range. The magnitude of change in heads from the
calibrated solution is a measure of the
sensitivity of the solution to that particular
parameter. - Sensitivity analysis is typically performed by
changing one parameter value at a time. - A sensitivity analysis may also test the effect
of changes in parameter values on something other
than head, such as discharge or leakage
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