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Hydrologic Statistics

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P (getting a club from a deck of playing cards) = 13/52 = 0.25 = 25 ... Sort the data from highest to lowest. Rank the data (m=1 for the highest value and m=N ... – PowerPoint PPT presentation

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Title: Hydrologic Statistics


1
Hydrologic Statistics
04/04/2006
  • Reading Chapter 11 in Applied Hydrology
  • Some slides by Venkatesh Merwade

2
Hydrologic Models
Classification based on randomness.
  • Deterministic (eg. Rainfall runoff analysis)
  • Analysis of hydrological processes using
    deterministic approaches
  • Hydrological parameters are based on physical
    relations of the various components of the
    hydrologic cycle.
  • Do not consider randomness a given input
    produces the same output.
  • Stochastic (eg. flood frequency analysis)
  • Probabilistic description and modeling of
    hydrologic phenomena
  • Statistical analysis of hydrologic data.

3
Probability
  • A measure of how likely an event will occur
  • A number expressing the ratio of favorable
    outcome to the all possible outcomes
  • Probability is usually represented as P(.)
  • P (getting a club from a deck of playing cards)
    13/52 0.25 25
  • P (getting a 3 after rolling a dice) 1/6

4
Random Variable
  • Random variable a quantity used to represent
    probabilistic uncertainty
  • Incremental precipitation
  • Instantaneous streamflow
  • Wind velocity
  • Random variable (X) is described by a probability
    distribution
  • Probability distribution is a set of
    probabilities associated with the values in a
    random variables sample space

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6
Sampling terminology
  • Sample a finite set of observations x1, x2,..,
    xn of the random variable
  • A sample comes from a hypothetical infinite
    population possessing constant statistical
    properties
  • Sample space set of possible samples that can be
    drawn from a population
  • Event subset of a sample space
  • Example
  • Population streamflow
  • Sample space instantaneous streamflow, annual
    maximum streamflow, daily average streamflow
  • Sample 100 observations of annual max.
    streamflow
  • Event daily average streamflow gt 100 cfs

7
Types of sampling
  • Random sampling the likelihood of selection of
    each member of the population is equal
  • Pick any streamflow value from a population
  • Stratified sampling Population is divided into
    groups, and then a random sampling is used
  • Pick a streamflow value from annual maximum
    series.
  • Uniform sampling Data are selected such that the
    points are uniformly far apart in time or space
  • Pick steamflow values measured on Monday midnight
  • Convenience sampling Data are collected
    according to the convenience of experimenter.
  • Pick streamflow during summer

8
Summary statistics
  • Also called descriptive statistics
  • If x1, x2, xn is a sample then

m for continuous data
Mean,
s2 for continuous data
Variance,
s for continuous data
Standard deviation,
Coeff. of variation,
Also included in summary statistics are median,
skewness, correlation coefficient,
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10
Graphical display
  • Time Series plots
  • Histograms/Frequency distribution
  • Cumulative distribution functions
  • Flow duration curve

11
Time series plot
  • Plot of variable versus time (bar/line/points)
  • Example. Annual maximum flow series

Colorado River near Austin
12
Histogram
  • Plots of bars whose height is the number ni, or
    fraction (ni/N), of data falling into one of
    several intervals of equal width

Dividing the number of occurrences with the total
number of points will give Probability Mass
Function
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14
Using Excel to plot histograms
1) Make sure Analysis Tookpak is added in
Tools. This will add data analysis command in
Tools
2) Fill one column with the data, and another
with the intervals (eg. for 50 cfs interval, fill
0,50,100,)
3) Go to Tools?Data Analysis?Histogram
4) Organize the plot in a presentable form
(change fonts, scale, color, etc.)
15
Probability density function
  • Continuous form of probability mass function is
    probability density function

pdf is the first derivative of a cumulative
distribution function
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17
Cumulative distribution function
  • Cumulate the pdf to produce a cdf
  • Cdf describes the probability that a random
    variable is less than or equal to specified value
    of x

P (Q 50000) 0.8
P (Q 25000) 0.4
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22
Flow duration curve
  • A cumulative frequency curve that shows the
    percentage of time that specified discharges are
    equaled or exceeded.
  • Steps
  • Arrange flows in chronological order
  • Find the number of records (N)
  • Sort the data from highest to lowest
  • Rank the data (m1 for the highest value and mN
    for the lowest value)
  • Compute exceedance probability for each value
    using the following formula
  • Plot p on x axis and Q (sorted) on y axis

23
Flow duration curve in Excel
Median flow
24
Statistical analysis
  • Regression analysis
  • Mass curve analysis
  • Flood frequency analysis
  • Many more which are beyond the scope of this
    class!

25
Linear Regression
  • A technique to determine the relationship between
    two random variables.
  • Relationship between discharge and velocity in a
    stream
  • Relationship between discharge and water quality
    constituents

A regression model is given by
yi ith observation of the response (dependent
variable) xi ith observation of the explanatory
(independent) variable b0 intercept b1
slope ei random error or residual for the ith
observation n sample size
26
Least square regression
  • We have x1, x2, , xn and y1,y2, , yn
    observations of independent and dependent
    variables, respectively.
  • Define a linear model for yi,
  • Fit the model (find b0 and b1) such at the sum
    of the squares of the vertical deviations is
    minimum
  • Minimize

Regression applet http//www.math.csusb.edu/facul
ty/stanton/m262/regress/regress.html
27
Linear Regression in Excel
  • Steps
  • Prepare a scatter plot
  • Fit a trend line

Data are for Brazos River near Highbank, TX
  • Alternatively, one can use Tools?Data
    Analysis?Regression

28
Coefficient of determination (R2)
  • It is the proportion of observed y variation that
    can be explained by the simple linear regression
    model

Total sum of squares, Ybar is the mean of yi
Error sum of squares
The higher the value of R2, the more successful
is the model in explaining y variation. If R2 is
small, search for an alternative model (non
linear or multiple regression model) that can
more effectively explain y variation
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