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Prediction of Watershed Runoff

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Title: Prediction of Watershed Runoff


1
Prediction of Watershed Runoff
  • Tom Dunne
  • Winter 2008

2
Intent of Computer Modeling in the Course (Type A)
  • Only very few of you are likely to become
    modelers or users of software developed by
    agencies, consulting firms, or academics.
  • Most of this activity involves software developed
    or promoted by agencies to discharge their
    regulatory function and control/standardize/facili
    tate outside design work that they must evaluate.
  • Most public-access agency software now being made
    user-friendly and marketed, including by private
    firms
  • You will eventually become familiar with these
    and other computer models to a degree which is
    not possible in a course.
  • The labs in this course will introduce you to
    examples of what is available and how careful,
    thorough, and insightful application is
    necessary. These things will run themselves, but
    not necessarily intelligently.

3
Intent of Computer Modeling in the Course (Type B)
  • Most of you will not become modelers
  • Not a management function
  • Not high-status (just inaccessible!). Extent to
    which some modelers pull wool over managers eyes
    remains impressive.
  • The servant of management
  • Allows examination of the implications of various
    policy or design options
  • Managers need some appreciation of what modeling
    involves, and what modelers think they are doing
    (both your own agencys and a consulting firms)
  • Managers need to understand the limits of
    modeling applicability --- what is the basic
    conceptual model underlying the construction of
    the model? Is it applicable to the situation
    under review? What is the expected reliability
    of predictions? What can be done to assure
    intelligent application, improved reliability,
    diligent application over the realistic range of
    conditions, and transparency?
  • Managers and policy-makers should not frame a
    policy or management question the resolution of
    which requires predictions of an unattainable
    level of precision.

4
  • For these reasons, we are going to introduce you
    to various forms of hydrologic modeling for doing
    the most widely applied tasks in water resources
    management
  • Remember that there is a large number of models
    for doing each task, and new ones are being
    generated continually --- though new conceptual
    models are very rare.
  • So, dont grab on to any model as the way of
    making calculations. If two models give
    radically different answers, work to reconcile or
    resolve the differences. There is a reason for it
    --- may lie in choice of parameter values,
    inappropriateness of one model for the
    conditions, etc.
  • Differences in predictions often result from
    decisions made about how to set up and apply the
    models, and the different questions being asked
    or emphasized by competing interests.

5
Prediction of watershed storm runoff
What do we want to know?
  • Volumes of storm runoff
  •  Entire storm hydrographs
  • Continuous simulation of streamflow (storm and
    dry-weather flow)
  • Deterministic prediction of peak rates of runoff
    from small watersheds
  • Probabilistic prediction of peak flows (from any
    size of watershed)

6
---- There is a quasi-infinite number of methods
of predicting watershed storm runoff----
Increasingly codified, computerized, and promoted
with acronyms such as SWMM, SWAT, other
four-letter words are available---- But all
based on one of a a few concepts
  • Soil moisture accounting (SMA) (Like water
    balance from ESM 203 applied to short time
    periods)
  • Constant speed of runoff over a plane
  • A Curve Number index of watershed
    responsiveness to rainfall
  • Some are lumped models (basin is a single
    space)
  • Some are distributed models (represent spatial
    variation of watershed characteristics and runoff
    itself)

7
Prediction of storm runoff volume (expressed as
depth of runoff --- i.e. volume per unit
area)Thompson, 1999, Hydrology for Water
Management
  • Baseflow is added to predicted storm flow, using
    the water balance method (see previous, or ESM
    203)

8
Prediction of Volume of Flood Runoff
  • Need some mechanism ( a runoff model) to convert
    a portion of the rain/melt into runoff to the
    channel system, and of representing the empirical
    observation that this proportion tends to
    increase through time during a storm or season as
    the watershed becomes wetter (stores more water)
  • i.e. there is a feedback between the water stored
    in a watershed and the proportion of rain that is
    converted to runoff

9
Runoff models to choose
  • Calculate the entire water balance including
    quickflow
  • Precipitation-Runoff Modeling System (US
    Geological Survey)
  • HEC-Hydrologic Modeling System (US Army Corps of
    Engineers)
  • Soil Water Assessment Tool (US Dept of
    Agriculture)
  • BASINS 3.0 (US Environmental Protection Agency)
  • In lab we will concentrate on a use of HEC-HMS
    that emphasizes the quickflow component, and so
    is useful mainly for tributaries that have little
    or no baseflow
  • The full models are combinations of the
    water-balance approach practiced in ESM 203 and
    several options for computing quickflow.

10
Representation of runoff in HEC-HMS, promoted by
the US Army Corps of Engineers
11
HEC-HMS uses separate sub-models to compute each
component of runoff
  • Runoff volume (per storm or per day/month)
  • Timing of direct runoff (quickflow)
  • Baseflow (delayed flow)
  • Speed and timing of channel and floodplain flow
    to a river basin outlet

12
There are options (models) for each step in
runoffe.g. for computing runoff volume
  • Initial abstraction and constant loss
    (infiltration, as expressed by the Findex in
    previous lecture)
  • Green-Ampt infiltration model
  • Soil Conservation Curve Number
  • Individual rainstorms
  • small basins or Hydrologic Response Units (HRUs)
  • Soil Moisture Accounting (SMA)
  • Water balance model
  • Best for continuous modeling through many time
    steps in large basins or their HRUs or pixels
  • Gridded SMA

13
There are options (models) for each step in
runoffe.g. for computing runoff volume
  • Initial abstraction and constant loss
    (infiltration, as expressed by the Findex in
    previous lecture)
  • Green-Ampt infiltration model
  • Soil Conservation Curve Number
  • Individual rainstorms
  • small basins or Hydrologic Response Units (HRUs)
  • Soil Moisture Accounting (SMA)
  • Water balance model
  • Best for continuous modeling through many time
    steps in large basins or their HRUs or pixels
  • Gridded SMA

http//www.ce.utexas.edu/prof/maidment
14
There are options (models) for each step in
runoff e.g. for computing runoff volume
  • Initial abstraction and constant loss
    (infiltration)
  • Green-Ampt infiltration model
  • Soil Conservation Service Curve Number
  • Individual rainstorms
  • small basins or HRUs
  • Soil Moisture Accounting (SMA)
  • Water balance model
  • Best for continuous modeling through many time
    steps in large basins or their HRUs or pixels
  • Gridded SMA

Forested watershed in Danville, NE Vermont
15
SCS method for prediction of storm runoff
(QKFLO) volume (R, as a depth per unit area)
  • Very widely used in prediction software
  • Accounts for effects of soil, properties, land
    cover, and antecedent moisture
  • Prediction of storm flow depends on total
    rainfall rather than intensity
  • Based on a very simple conceptual model, as
    follows.

16
Prediction of storm runoff volume (SCS
method)All quantities expressed in inches of
water
  • Total precipitation, P, is partitioned into
  •  An initial abstraction, Ia , the amount of
    storage that must be satisfied before any flow
    can begin. This is poorly defined in terms of
    process, but is roughly equivalent to
    interception and the infiltration that occurs
    before runoff.
  • --Thus, P Ia is the excess precipitation
    (after the initial abstraction) or the potential
    runoff.
  •  Retention, F, the amount of rain falling after
    the initial abstraction is satisfied which does
    not contribute to the storm flow.
  • Storm runoff Rs
  • Thus P Ia F Rs

17
  • It is assumed that a watershed has a maximum
    retention capacity, Smax
  • (1)
  •  
  • where F8 is the total amount of water retained
    as t becomes very large (i.e. in a long, large
    storm.) It is the cumulative amount of
    infiltration
  •  
  • It is also assumed that during the storm (and
    particularly at the end of the storm)
  • (2)

18
  • The idea is that the more of the potential
    storage that has been exhausted (cumulative
    infiltration, F, converges on Smax), the more of
    the excess rainfall, or potential runoff,
    P-Ia, will be converted to storm runoff.
  • The scaling is assumed to be linear.
  • One more relationship that is known by
    definition
  • (3)
  • Combination of (2) and (3) leads to
  • (4)

19
  • Another generalized approximation made on the
    basis of measuring storm runoff in small,
    agricultural watersheds under normal conditions
    of antecedent wetness is that
  • (5)
  • The few values actually tabulated in the
    original report are 0.15-0.2 Smax.
  • Thus
  • (6)

20
  • Combination of these relations yields
  • (7)

for all PgtIa . ELSE R 0.
  • Thus, the problem of predicting storm runoff
    depth is reduced to estimating a single value,
    the maximum retention capacity of the watershed,
    Smax.
  • How to estimate Smax?

21
Soil Conservation Service Storm Runoff
Relationship
Rs
P
22
  • The entire rainfall-runoff response for various
    soil-plant cover complexes is represented by a
    single index called (with exquisite creativity!)
    the Curve Number.
  • A higher curve indicates a large runoff response
    from a watershed with a fairly uniform soil with
    a low infiltration capacity.
  • A lower curve is the smaller response expected
    from a watershed with a permeable soil, with a
    relatively high spatial variability in
    infiltration capacity.
  • SCS developed an index of storm-runoff
    generation capacity, (the Curve Number), which
    would vary from 0 to 100 (implying roughly the
    percent of effective rainfall or potential
    runoff that is converted to flood runoff).

23
  • This curve number was then related to
    back-calculated values of Smax (inches) from
    measured storm hydrographs and equation (2) above
    to yield a relationship of the form
  • or
  • or

24
CNs were then evaluated for many watersheds and
related to
  • soil type (SCS soil types classified into Soil
    Hydrologic Groups on the basis of their measured
    or estimated infiltration behavior)
  • vegetation cover and or land use practice 
  • antecedent soil-moisture content
  • A spatially weighted average CN is computed for a
    watershed.

25
Hydrologic Soil Groups are defined in SCS County
Soil Survey reports
26
Classification of hydrologic properties of
vegetation covers for estimating curve
numbers(US Soil Conservation Service, 1972)
27
Runoff Curve Numbers for hydrologic soil-cover
complexes under average antecedent moisture
conditions
28
Curve Numbers for urban/suburban land covers (US
Soil Conservation Service , 1975)
Hydrologic Soil Groups are defined in SCS County
Soil Survey reports
29
SCS Curve Number Method
  • No consideration is given to rainstorm intensity
    or duration.
  • Method can be applied successively to parts of a
    rainstorm, and volume of runoff could be
    calculated separately for each increment.
    HEC-HMS does this in your lab exercise
  • the form of the rainfall mass curve that is
    imagined by the user makes a very large
    difference to the predicted volume of runoff and
    its peak rate.
  • orographic influences on rainfall also have a
    critical effect on predicted runoff volumes. See
    lab exercise

30
SCS Curve Number Method
  • No guidance given about the watershed size to
    which the method is applicable, except that the
    empirical relations were established for small
    watersheds.
  • Now that the method is computerized, it is
    relatively easy to separate a watershed into
    sub-watersheds, and to the runoff calculation for
    each one separately, and then combine the runoff
    hydrographs that result (see lab exercise)

31
  • Since rainfall is the largest term in any
    hydrologic calculation, its estimation is
    critical to runoff predictions
  • No consideration is given to rainstorm intensity
    or duration.
  • Method can be applied successively to parts of a
    rainstorm, and volume of runoff could be
    calculated separately for each increment.
    HEC-HMS does this in your lab exercise
  • The form of the rainfall mass curve that is
    imagined by the user makes a very large
    difference to the predicted volume of runoff and
    its peak rate (about which more later).
  • Orographic influences on rainfall also have a
    critical effect on predicted runoff volumes. See
    lab exercise

32
  • No guidance given about the watershed size to
    which the method is applicable, except that the
    empirical relations were established for small
    watersheds.
  • Now that the method is computerized, it is
    relatively easy to separate a watershed into
    sub-watersheds, and to the runoff calculation for
    each one separately, and then combine the runoff
    hydrographs that result (see lab exercise)

33
 Where tested against measured storm runoff
volumes, method is notoriously inaccurate. BUT
  • 1. Method entrenched in runoff prediction
    practice and is acceptable to regulatory agencies
    and professional bodies. 2.   Attractively
    simple to use. 3.   Required data available in
    SCS county soil maps in paper and digital
    form. 4.   Method packaged in handbooks and
    computer programs 5.   Appears to give
    reasonable results --- big storms yield a lot
    of runoff, fine-grained, wet soils, with thin
    vegetation covers yield more storm runoff in
    small watersheds than do sandy soils under
    forests, etc. 6.   No easily available
    competitor that does any better. The method is
    already hidden in various larger computer
    models, such as HEC-HMS). 7. The task for a
    watershed analyst or regulator is to decide how
    to interpret and use the results.

34
There are options (models) for each step in
runoff e.g. for computing runoff volume
  • Initial abstraction and constant loss
    (infiltration)
  • Green-Ampt infiltration model
  • Soil Conservation Curve Number
  • Individual rainstorms
  • small basins or HRUs
  • Soil Moisture Accounting (SMA)
  • Water balance model
  • Best for continuous modeling through many time
    steps in large basins or their HRUs or pixels
  • Gridded SMA

35
Soil Moisture Accounting Method (SMA) in HEC-HMS
36
Prediction of Flood Runoff
  • Problem is that many runoff processes act
    simultaneously in a large basin and we have no
    hope of specifying the conditions affecting all
    of them at all times in a large diverse basin.
  • Instead we use a simplified statement of runoff
    from each HRU or cell in a tributary watershed,
    such as a short-time-step (1-30 day) water
    balance

37
Prediction of runoff volume (R) generated during
a time stepin a Hydrologic Response Unit
38
Timing of stormflow runoff
  • The various procedures outlined above calculate
    the volume of storm runoff, which in general must
    be added to the base flow, calculated by the
    soil-water balance or recession-curve method ESM
    203.
  • We call this amount what to route.
  • We call the topic of calculating the time
    distribution of runoff how to route.
  • These are the two components of runoff hydrograph
    prediction

39
Options for routing flow down a channel network
in HEC-HMS
  • Lag --- constant flow velocity
  • Puls storage reservoir method
  • views each channel reach as a small reservoir
  • Muskingum method
  • Kinematic wave
  • Many others

40
Verify predictions wherever possible by
comparison with measured hydrographs
41
CalibrationAdjust values (parameters) in
various components of the models until prediction
fits observation well enough
42
How to route three options for a conceptual
model (1)
  • Lag the water by a fixed time after it is
    generated. OK for small watersheds

Rs in each time unit
600 meters of channel/flow speed of 1 m/sec
Flow arrives 10 min after generation
43
How to route three options for a conceptual
model (2)
  • View the watershed as an open book consisting of
    two planes and calculate the flow down these
    representative hillslopes, using Mannings
    equation and an equivalent roughness.
  • Mannings roughness represents all the
    complications of the surface (including its
    spatial variability and flow paths) that will
    delay flow

v flow speed h flow depth s slope n
roughness
44
How to route three options for a conceptual
model (3)The unit hydrograph
  • The fixed geometry of a watershed --- topography
    (gradients, elevation, effect on rainfall
    distribution), distribution of soil properties,
    channel network structure --- is the dominant
    control on the timing of storm runoff.
  • A unit depth of storm runoff generated in a fixed
    time interval will always drain from the
    watershed at the same rate.
  • This unit hydrograph can be estimated by
    superimposing and averaging storm runoff
    hydrographs, each of which has been reduced to a
    unit depth If total is 3 inches, divide all
    ordinates by 3
  • The unit hydrograph is a characteristic of the
    watershed

45
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46
Unit hydrograph averaged from four recorded
hydrographs, normalized to one inch of
runoff(27.4 sq mi. watershed, Coshocton Ohio)
47
The Synthetic Unit Hydrograph of a watershed
  • We could (it used to be done)
  • derive a unit hydrograph for each of a sample of
    watersheds in a region
  • correlate the various features of these
    hydrographs (e.g. peak discharge, lag to peak,
    duration) with watershed geometrical
    characteristics (e.g. area, steepness,)
  • Use the resulting regression equation to estimate
    parameters of a synthetic unit hydrograph for
    ungauged basins
  • A few regional regressions of this type were
    derived, before

48
The Synthetic Unit Hydrograph of a watershed
  • Taking an even more abstract view of storm runoff
    timing, hydrologists concluded that the
    geometrical characteristics of most watersheds
    were sufficiently similar that a unit of storm
    runoff would drain from any landscape with
    approximately the same timing.
  • Note, in their defense, these hydrologists were
    working in the rural US, and mostly in small
    watersheds
  • This concept was enshrined in various
    approximations such as all unit hydrographs
    approximate triangles

49
The Soil Conservation Service Triangular
Synthetic Unit Hydrograph
P
Q
50
The Soil Conservation Service Triangular
Synthetic Unit Hydrograph
Q
51
The Soil Conservation Service Triangular
Synthetic Unit Hydrograph
52
Tests of the SCS unit hydrograph method
  • 1600 runoff plots in SW US prediction of peak
    runoff greater than /- 50 in 67 of cases.
  • 139 watersheds in E. Australia Marked lack of
    agreement between CN values obtained by
    conventional means and those back-calculated from
    recorded flows of previously chosen frequencies

53
Emerging Forms of Flood Prediction and Forecasting
  • Higher resolution spatially distributed modeling
  • Greater use of topographic information in
    hydrologic predictions because of availability of
    Digital Elevation Models
  • Greater use of computerized spatial databases of
    watershed characteristics (soil, land use,
    channel networks, etc.)
  • Greater use of satellite records of rainfall,
    radiation, temperature, etc. for driving energy-
    and water-balance calculations.

54
Peak flows
  • Can be predicted deterministically or estimated
    probabilistically (i.e. the risk of them can be
    imagined) 

55
The Rational Runoff Formula
  • Unspoken conceptual model is Horton overland flow

t75
Watershed boundary
t45
t60
Isochrones of runoff
t15
t30

tequilib 75 minutes
56
Rational runoff model of a hydrograph
Qpeak
Q
tequilib
t 0
t
57
How to estimate tequilib (also called the time
of concentration)?
  • Various handbook empiricisms from the
    1940s-50s, like the formula used by the National
    Resources Conservation Service (former Soil
    Conservation Service)

Where L is channel length and H is basin relief
Where S is the average channel gradient
Origin of such formulas is difficult to discern
(second one based on 6 small agricultural
basins!), but they are accepted by the
engineering community as proven useful. Other
formulas separate the time of concentration of
the average hillslope length and add it to the
tequilib of the maximum channel length, both
obtained from Mannings equation. Another
approach is to make your own estimate based on
observations and calculations using Mannings
equation
58
Derivation of runoff rate
59
Computation of rational runoff hydrograph (1)
  • For rainstorms with duration, t gt tequilib 
  • Qpeak C I A  
  • Read Water in Environmental Planning pp 298-305
    for an attempt to elucidate this equation.
  • A area
  • I rainfall intensity of the storm with duration
    tequilib.
    Its duration, and
    therefore the estimation of tequilib strongly
    affect the chosen value of I because of the
    strong inverse relationship between rainfall
    intensity and duration and frequency.
  • C f(land surface condition). Represents the
    loss rate of rainfall to infiltration.

60
Computation of rational runoff hydrograph
  • For rainstorms with duration, t gt tequilib 
  • Qpeak C I A  
  • As if by magic . If I is in inches/hr, A in
    acres (!), Q will be in cu. ft./s for a
    dimensionless C. This confirms our confidence
    that God gave this equation to our forefathers
    along with feet and inches.

61
Metric Rational Runoff Formula is
  • For rainstorms with duration, t gt tequilib 
  • Qpeak 0.278C I A
  •  
  • Where Qpeak is in cu. m/sec
  • I is in mm/hr
  • A is in sq km.

62
Rational equation predicts maximum discharge
values for a given drainage area --- for
conditions when the whole area is contributing
runoff.Therefore, rational formula only used
for small watersheds
Suppose rainstorm only lasts for tend minutes
63
Choice of rainstorm intensity is critical, but
not arbitrary
  • Suppose the watershed is rural, has an area of
    400 acres, and has a tequilib of 30 min.
  • And suppose we are interested in calculating the
    peak discharge in the 100-yr rainstorm (see
    later)
  • Choose the intensity for a 30-minute storm with a
    recurrence interval of 100 yr.
  • But then suppose you are asked what the 100 year
    peak discharge will be if the watershed is
    urbanized and its tequilib is reduced to 20
    minutes.
  • Choose the 20-min, 100 yr rainstorm intensity,
    which will be higher than c.
  • A conservative approach to choosing the critical
    intensity for design is to calculate the peak
    discharge for a range of durations and choose the
    largest predicted value. (transparency)

64
Rational runoff coefficient, C, for land
surfaces(Amer. Soc. Civil Engrs.)
65
  • In fact, C is not truly a constant, but varies
    with recurrence interval of storm.
  • This is probably because infiltration capacity
    measured at a point varies spatially, and more
    intense, rarer storms bring a larger fraction of
    the watershed up to saturation.
  • Most values are estimated for the 2- and 10-yr
    storms. For comparison, C10/C2 1.33 C100/C10
    1.50  
  • Variation of C with recurrence interval can be
    estimated by plotting measured values of rainfall
    intensity (over the duration of tequilib) and of
    flood peak against recurrence interval.Otherwise
    use values of C tabulated in handbooks and
    textbooks.

66
Prediction errors for the Rational Runoff Formula
are very large
  • Australian study 271 small basins
  •  
  • 63 gave errors of gt 50 42 gt100.
  •  
  • Locally calibrated version behaved much better,
    but requires a lot of data and work (i.e. no
    one wants to analyze data any more!).
  • C values did not vary with watershed
    characteristics as much as the tables of data in
    handbooks would have one believe.
  • Considerable judgment and experience are
    required in selecting satisfactory values of C
    for design
  • Check values against observed flows

67
Probabilistic prediction of peak discharges
  • What has happened and the frequency of events in
    a record are the best indicators of what can
    happen and its probability of happening in the
    future.
  • Requires a streamflow record of peaks at a
    station.
  • The record is analyzed to estimate the
    probability of flood peaks of various sizes, as
    if they were independent of one another I.e. no
    persistent runs of wet and dry years)
  • And then is extrapolated to larger, rarer floods.
  • BUT most hydrologic records are short and
    non-stationary (i.e. conditions of climate and
    watershed condition change during the recording
    period). Magnitude of this problem varies, but
    needs to be checked in each case.

68
Flood-frequency Analysis and Prediction
  • Analysis of empirical records of a flood at a
    place on a river network
  • i.e. point-based, rather than spatial
  • Concerned with events at a place, rather than
    processes distributed over a watershed
  • Cannot be used for estimating the effects of
    environmental change on floods.
  • Concept of stationarity is crucial. Mmm!

69
Basic IdeaApplication of your PStat course
  • Because of the hydroclimatology and watershed
    conditions upstream of a point, the probability
    distribution of floods to be expected at the
    point can be estimated from the frequency
    distribution of past floods recorded there
  • The observed frequency distribution is a sample
    from which the parameters of a theoretical
    probability distribution fitting the observations
    can be estimated
  • Once fitted to the observed record, the
    theoretical probability distribution can be used
    to estimate the probabilities of other
    hypothetical expected discharges, either through
    interpolation or extrapolation of the recorded
    range of flows.

70
Probabilistic prediction of peak discharges
  • Data used are the annual-maximum flow series
    the list of the largest flow of each year in a
    record of length n years.
  • Annual-maximum instantaneous peak discharges and
    stages are available from the National Water Data
    Storage and Retrieval system (WATSTORE) at
    www.usgs.gov
  • Arrange the flow values in descending order with
    rank m (largest rank 1).
  • mI is the rank of the ith flood peak in a set of
    n peaks

the Weibull formula
71
Probabilistic prediction of peak discharges
  • T is the recurrence interval (yr). The
    long-term average interval between floods greater
    than Qi
  • Plot calculated values of T against Qi to
    develop a flood-frequency curve.
  • See examples in Water in Environmental Planning,
    pp. 307-308.

72
Modifications
  • Other plotting formulae are sometimes used
    instead of the Weibull formula
  • They are chosen (and argued about) by their
    proponents to avoid a variety of numerical biases
    that arise when the data series are extrapolated
    to estimate rare flows.
  • An example is the Cunnane formula

73
Probabilistic prediction based on 49 peak
discharges
?
  • In principle, we could plot the two datasets on
    any kind of graph
  • But if we intend to extrapolate to the relation
    to larger recurrence intervals, we need some more
    guidance
  • We use theoretical probability distributions for
    this

74
Fitting curves to flood-frequency data for
extrapolation
  • Several theoretical probability distributions fit
    the various observed frequency distributions of
    floods
  • Each probability distribution can be represented
    by a straight-line fit to its cumulative form
    pQgtQi plotted on the appropriate graphical
    scale (analogous to the normal distribution graph
    paper in your PStat course).

75
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76
Probabilistic prediction of peak discharges
  • Note that this procedure involves fitting a
    theoretical probability distribution to an
    observed sample drawn from an imaginary (but not
    well-understood) population
  • The true theoretical probability distribution
    of flood discharges is not known, and we have no
    reason to believe it is simple or has only 1 or
    parameters.
  • Plotting the data set on various types of graph
    paper with different scales, designed to
    represent various theoretical probability
    distributions as straight lines, yields graphs of
    different shapes, which when extrapolated beyond
    the limits of measurement predict a range of peak
    flood discharges.

77
Typical flood frequency curve(27.4 sq mi.
watershed at Coshocton Ohio)
78
Flood frequency plots of same record on different
probability papers
Log-extreme value paper Gumbel Type III
Log-probability paper
79
Probabilistic prediction of peak discharges
  • Note that this procedure involves fitting a
    theoretical probability distribution to an
    observed sample drawn from an imaginary (but not
    well-understood) population
  • There is no unique theoretical probability
    distribution of flood discharges, and we have no
    reason to believe it would be simple or have only
    1 or 2 parameters.
  • Plotting the data set on various types of graph
    paper with different scales, designed to
    represent various theoretical probability
    distributions as straight lines, yields graphs of
    different shapes, which when extrapolated beyond
    the limits of measurement predict a range of peak
    flood discharges.

80
Bedient, P.B. and W.C. Huber, Hydrology and
Floodplain Analysis, (1992), Addison-Wesley Pub.
Co.
81
Plethora of proposed theoretical probability
distributions. How to choose?
  • One common approach to choice of flood frequency
    plotting paper is to choose one on which the
    observed data plot as a straight line that can be
    extrapolated to estimate rare, large flood
    discharges. But .
  • A second is to choose one of the common ones, but
    this still leads to different predictions among
    analysts
  • So, in 1967, with later refinements, US
    Interagency Advisory Committee on Water Data
    published A Uniform Technique for Determining
    Flood Flow Frequencies, Bulletin 17B, US
    Geological Survey.

82
Faced with the dilemma that several probability
distributions might be chosen by different
analysts and used for extrapolation of the size
of rare floods
  • So, in 1967 (updated in 1982), US federal
    agencies got together and decided that the
    theoretical probability distribution that most
    reliably fits observed annual-maximum flood
    frequencies is the Log Pearson Type III
    distribution. US Interagency Advisory Committee
    on Water Data published A Uniform Technique for
    Determining Flood Flow Frequencies, Bulletin
    17B, US Geological Survey. In 1982,
  • Easiest way to fit such a flood-frequency curve
    to observed data is to obtain a sheet of the
    appropriate cumulative probability graph paper
    and plot each observed Qi against its calculated
    Ti and then draw a line (or a curve) through the
    data points.

83
Cookbook procedure for curve fitting of
log-Pearson Type III distribution to a flood
series from one station 1 (early steps should
be recognizable from your PStat class)
  • Obtain all annual-maximum flows for a station
    from (for example www.usgs.gov)
  • Download to Excel and rank them Q1,Qn.
  • Convert each Qi to its logQi
  • Use Excel to calculate Meanlog Qi , STDEV log
    Qi , SKEW log Qi , and Ti
  • Convert Ti back to probability of exceedence, pi

84
Cookbook procedure for curve fitting of
log-Pearson Type III distribution to a flood
series from one station 2 (early steps should
be recognizable from your PStat class)
  • Calculate the average of SKEW log Qi for the
    station, ---- called Cs
  • A single-station value of Cs can be inaccurate
    and biased, so it is corrected using data from
    other stations in its region, according to
  • Cw WCs (1-W)Cm
  • Cw is the weighted skew coefficient
  • W is a weighting factor
  • Cs is the coefficient of skewness computed using
    the sample data,
  • Cm is a generalized regional skewness, which is
    determined from a published map of the US

85
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86
Cookbook procedure for curve fitting of
log-Pearson Type III distribution to a flood
series from one station 3
  • VarCm obtained from mapped values for US in
    Tech Bull 17B
  • VarCs is obtained from
  • A -0.330.88Cs if Cs 0.90 or
  • A -0.520.30 Cs if Cs gt0.90
  • B 0.94 0.26 Cs if Cs 1.50 or
  • B 0.55 Cs gt1.50

87
Cookbook procedure for curve fitting of
log-Pearson Type III distribution to a flood
series from one station 4
  • Then calculate the log Q for any Q value (such
    as your original Qi) from
  • log Q MEANlog Qi KSTDEVlogQi
  • K is a frequency factor that depends on Cs and Ti
    (tabulated in Bull. 17B)
  • Plot the values of Q against T
  • Extrapolate by choosing larger values of T and
    calculating Q

88
Sample frequency factor table (Haan, 1977)
89
Published example
Recurrence Interval (years)
90
Published example
Length of observed record used for illustration !!
91
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92
Bulletin 17Bhttp//acwi.gov/hydrology/Frequency/B
17bFAQ.html
  • Instructions for plotting formula
  • Fits data with a Log Pearson Type III
    distribution
  • Instructions for how to estimate the skew of the
    distribution that should fit your station,
    based on regional skew patterns
  • How to deal with outliers

93
Bulletin 17B Instructions for incorporating
historical information
  • Overcome the short length of most flood
  • Written records
  • Flood marks chiseled on structures
  • Dated tree scars (from tree rings)
  • Dates sediment deposits
  • Indicate maximum flood in n years, or number of
    floods greater than some stage or discharge in a
    fixed interval

94
Outliers
  • Where should the outlier be plotted?
  • Does it really represent the discharge with a
    70-yr recc. interval, or was it the 300-yr
    flood that fortuitously occurred in the 49-yr
    long record?

?
95
Bulletin 17B Instructions for incorporating
historical information
  • Overcome the short length of most flood
  • Written records
  • Flood marks chiseled on structures
  • Dated tree scars (from tree rings)
  • Dates sediment deposits
  • Indicate maximum flood in n years, or number of
    floods greater than some stage or discharge in a
    fixed interval

96
Uncertainty in assessing flood risk
  • Short records (Bulletin 17B suggests using at
    least 10 years of record!)
  • There is no fundamentally representative
    theoretical probability distribution. Policy for
    using (say) Log Pearson Type III is based on the
    assessment that applying it to many flood records
    yields minimum standard errors of estimate. But
    reasons that are not understood physically.
  • Persistence problem
  • Climate change
  • Watershed change --- e.g how to assess the
    influence of the non-steady expansion of logging
    through the Oregon Cascades?
  • Some changes are reversible (e.g. canopy
    re-establishment)
  • Others are not (e.g. many roads and ditches)

97
Uncertainty in assessing flood risk
  • So, use the accepted methodology (remember that
    the acceptability of these and similar techniques
    is based on professional agreements), and THEN
    for important decisions focus on the evidence for
    extreme events, even if you cant quantify their
    probability.
  • Examine potential for non-hydrologic floods,
    or conditions that would aggravate a hydrologic
    flood
  • Landslide dam-break flood
  • Trestle bridge that could block floating woody
    debris

98
Recurrence interval (return period) of the T-year
flood
  • Recurrence interval is the average interval
    between floods that are greater than a specified
    discharge
  • E.g. if the probability of exceeding 20 m3/sec in
    any year at a station is 0.01, there should be on
    average 10 events larger than 20 m3/sec in 1000
    years, if the conditions affecting floods at the
    site do not change.
  • The average recurrence interval between floods is
    100 years, so we refer to such a discharge as
    the 100-year flood..
  • The floods will not occur regularly every 100
    years

99
Recurrence interval
  • The probability of exceedence of the 100-year
    flood remains the same in any year
  • It is 0.01 the year after a flood of this size
    occurred
  • Probability that a discharge of this size will
    not occur in any year is (1-p)
  • Probability that such a discharge will not be
    exceeded in N years is 1 pN
  • Probability that such a discharge would be
    exceeded in n years is
  • Best way to refer to a T-year flood is by means
    of its odds ratio --- it has a 1 in 100 chance
    of being exceeded in each year.

100
Regional flood-frequency curves
  • Multiple-regression formulae based on data from
    all the USGS gauging stations in a region.
  • Typical formula
  •  
  • where A drainage area
  • Ei are watershed characteristics, such as mean
    annual precipitation, average elevation, average
    slope, etc.
  • Obtained from US Geological Survey publications
    entitled Regional flood-frequency analysis for
    (State).
  • Average estimation errors for the Potomac R.
    basin 20 for 2-yr flood 25 for 10-yr
    flood 40 for 50-yr flood.

101
Uncertainty in assessing flood risk
  • Short records (Bulletin 17B suggests using at
    least 10 years of record!).
  • There is no fundamentally representative
    theoretical probability distribution. Policy for
    using (say) Log Pearson Type III is based on the
    assessment that applying it to many flood records
    yields minimum standard errors of estimate. But
    reasons that are not understood physically.
  • Best to try fitting more than one distribution
    and examining the uncertainty
  • Methodological uncertainties (e.g. the outlier
    problem)

102
Uncertainty in assessing flood risk (contd.)
  • Persistence problem
  • Climate change
  • Effects of dams --- confine analysis to post-dam
    period
  • Watershed change --- e.g how to assess the
    influence of the non-steady expansion of logging
    through the Oregon Cascades?
  • Some changes are reversible (e.g. canopy
    re-establishment)
  • Others are not (e.g. many roads and ditches)
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