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Rainfall Process. Professor Ke-Sheng Cheng Dept. of Bioenvironmental Systems Engineering National Taiwan University. Types of Rainfall Process. Temporal rainfall process Storm-rainfall Hourly Subhourly Daily rainfall TDP-rainfall, monthly rainfall Spatial rainfall process - PowerPoint PPT Presentation
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Applied Hydrology
RSLAB-NTU
Lab for Remote Sensing Hydrology and Spatial Modeling
Rainfall Process
Professor Ke-Sheng ChengDept. of Bioenvironmental Systems Engineering
National Taiwan University
2Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Types of Rainfall ProcessTemporal rainfall process
Storm-rainfall HourlySubhourly
Daily rainfallTDP-rainfall, monthly rainfall
Spatial rainfall processHourly rainfallSeasonal rainfallAnnual rainfall
Spatio-temporal rainfall process
Hyetograph
3Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Time series of point-rainfall data
Intermittency of storms
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Time series of point-rainfall data
Occurrences (arrivals) of storm events
Duration & total depth of storm events
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Probability distribution of storm-rainfall parameters
Arrival (or occurrence) of storm eventsPoisson or geometrical
Storm durationExponential of gamma
Total depth or average intensityGamma
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Storm-rainfall sequence models
Bartlett-Lewis rectangular pulses (BLRP) model
Neyman-Scott rectangular pluses (NSRP) model
Simple-scaling Gauss-Markov (SSGM) model
7Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Previous findings
Eagleson (1970) pointed out that for given climatic conditions, storm events of a given scale (microscale, mesoscale, or synoptic scale) exhibit similar time distributions when normalized with respect to total rainfall depths and storm durations.
Convective cells and thunderstorms are dominant types of storms at the microscale and the mesoscale, respectively. Events of synoptic scale include frontal systems and cyclones that are typically several hundred miles in extent and often have series of mesoscale subsystems.
8Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
In general, convective and frontal-type storms tend to have their peak rainfall rates near the beginning of the rainfall processes, while cyclonic events have the peak rainfall somewhere in the central third of the storm duration.
Koutsoyiannis and Foufoula-Georgiou (1993) proposed a simple scaling model to characterize the time distribution of instantaneous rainfall intensity and incremental rainfall depth within a storm event.
9Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Storm-rainfall sequence models
Simple-Scaling Gauss-Markov Model
10Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Simple Scaling Model for Storm Events
A natural process fulfills the simple scaling property if the underlying probability distribution of some physical measurements at one scale is identical to the distribution at another scale, multiplied by a factor that is a power function of the ratio of the two scales (Gupta and Waymire, 1991).
11Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Let X(t) and X(t) denote measurements at two distinct time or spatial scales t and t, respectively. We say that the process {X(t), t0} has the simple scaling property if there is some real number H such that
for every real > 0. The denotes equality in distribution, and
H is called the scaling exponent.
)}({)}({ tXtX Hd
d
12Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Scaling (Scale Invariant) Properties
Strict Sense Simple Scaling
Wide Sense Simple Scaling (Second-Order Simple Scaling)
Multiple Scaling
)()( sZsZ vn
d
v
2,1)],([)]([ ksZEsZE kv
knkv
1)],([)]([ kkv
nkkv sZEsZE k
13Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Simple Scaling Model for Storm Events – Instantaneous Rainfall
Let represent the instantaneous rainfall intensity at time t of a storm with duration D.
The simple scaling relation for is
for every .
),( Dt
)},({)},({ DtDt Hd
}0,0),,({ DtDt
0
14Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
In practice, cumulative rainfall depths over a fixed time interval, for example one hour, are recorded and we shall refer to them as the incremental rainfall depths.
The i-th incremental rainfall depth can be expressed by
),( DiX
),( DiX
i
idtDt
)1(),(
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The above equations are valid even for nonstationary random processes.
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Incremental rainfall percentage or normalized (dimensionless) rainfall rate.
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The i-th incremental rainfall percentages of storms of durations D and D are identically distributed if the time intervals areand , respectively.
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Assuming that storm events are independent, the identical distribution property allows us to combine the i-th (i = 1, 2, …, ) incremental rainfall percentages of any storm durations to form a random sample, and the parameters (e.g. mean and variance) of the underlying distribution can be easily estimated.
]/[]/[ DD
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22Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Gauss-Markov model of dimensionless hyetographs
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By the Markov property, the joint density
of Y(1), Y(2),…, Y(n) factorizes
),,,( 21 nyyyf
)|(
)|()(),,,(
1)1(|)(
12)1(|)2(1)1(21
nnnYnY
YYYn
yyf
yyfyfyyyf
26Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Application of the SSGM model
Design storm hyetographBecause the design storm hyetograph
represents the time distribution of the total storm depth determined by annual maximum rainfall data, the design storm hyetograph is optimally modeled when based on observed storm events that actually produced the annual maximum rainfall, i.e. the so-called annual maximum events .
27Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Event duration the duration of an observed storm event.
Design duration the designated time interval for a design storm.
In general, the design durations do not coincide with the actual durations of historic storm events. The design durations are artificially designated durations used to determine the corresponding annual maximum depths; whereas event durations are actual raining periods of historic storm events.
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29Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
30Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Annual maximum events tend to occur in certain periods of the year (such as a few months or a season) and tend to emerge from the same storm type. Moreover, annual maximum rainfall data in Taiwan strongly indicate that a single annual maximum event often is responsible for the annual maximum rainfall depths of different design durations. In some situations, single annual maximum event even produced annual maximum rainfalls for many nearby raingauge stations.
Dept of Bioenvironmental Systems EngineeringNational Taiwan University
Examples of annual max events in Taiwan
Design durations
Dept of Bioenvironmental Systems EngineeringNational Taiwan University
33Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Using only annual maximum events for design hyetograph development enables us not only to focus on events of the same dominant storm type, but it also has the advantage of relying on almost the same annual maximum events that are employed to construct IDF curves.
34Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Because the peak rainfall depth is a key element in hydrologic design, an ideal hyetograph should not only describe the random nature of the rainfall process but also the extreme characteristics of the peak rainfall.
Therefore, our objective is to find the incremental dimensionless hyetograph that not only represents the peak rainfall characteristics but also has the maximum likelihood of occurrence.
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Our approach to achieve this objective includes two steps: Determine the peak rainfall rate of the
dimensionless hyetograph and its time of occurrence, and
Find the most likely realization of the normalized rainfall process with the given peak characteristics.
36Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
37Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Suppose that N realizations {y(i,j): i = 1, 2, …, n; j =1, 2, …, N } of the random process Y are available.
N
jp jy
Ny
1
* )(1
N
jp jt
Nt
1
* )(1
The value of t* is likely to be non-integer and should be rounded to the nearest integer.
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Dept of Bioenvironmental Systems EngineeringNational Taiwan University
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Dept of Bioenvironmental Systems EngineeringNational Taiwan University
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The dimensionless hyetograph {yi, i =
1,2,…, n} is determined by solving the matrix equation.
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Model Application
Scale-invariant Gauss-Markov model Two raingauge stations Hosoliau and Wutu
h, located in Northern Taiwan.
48Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Annual maximum events that produced annual maximum rainfall depths of 6, 12, 18, 24, 48, and 72-hour design durations were collected.
All event durations were first divided into twenty-four equal periods i (i=1,2,…,24, D = event duration, =D/24).
Rainfalls of each annual maximum event were normalized, with respect to the total rainfall depth and event duration.
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50Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Parameters for the distributions of
normalized rainfalls
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52Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Normality check for normalized rainfalls
The Gauss-Markov model of dimensionless hyetographs considers the normalized rainfalls {Y(i), i=1,2,…, n} as a multivariate normal distribution.
Results of the Kolmogorov-Smirnov test indicate that at = 0.05 significance level, the null hypothesis was not rejected for most of Y(i)’s.
The few rejected normalized rainfalls occur in the beginning or near the end of an event, and have less rainfall rates.
53Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
54Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Evidence of Nonstationarity
In general,
Autocovariance function of a stationary process:
For a non-stationary process, the autocovariance function is NOT independent of t.
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56Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Calculation of Autocorrelation Coefficients of a Nonstationary Process
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58Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Design storm hyetographs
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60Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Translating hyetographs between storms of different durations
Some hyetograph models in the literature are duration-specific (the SCS 6-hr and 24-hr duration hyetographs) and return-period-specific (the alternating block method (Chow, et al., 1988).
The simple scaling property enables us to translate the dimensionless hyetographs between design storms of different durations.
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Translating the dimensionless hyetographs between design storms of durations D and D is accomplished by changing the incremental time intervals by the duration ratio. Values of the normalized rainfalls Y(i) (i=1,2,…,n) remain unchanged.
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For example, the incremental time intervals () of the design storms of 2-hr and 24-hr durations are five (120/24) and sixty (1440/24) minutes, respectively.
The changes in the incremental time intervals are important since they require the subsequent rainfall-runoff modeling to be performed based on the “designated” incremental time intervals.
63Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
A significant advantage of the simple scaling model is that developing two separate dimensionless hyetographs for design storms of 2-hr and 24-hr durations can be avoided.
The incremental rainfall depths of a design storm are calculated by multiplying the y-coordinates of the dimensionless hyetograph by the total depth from IDF or DDF curves.
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IDF Curves and the Scaling Property
The event-average rainfall intensity of a design storm with duration D and return period T can be represented by
From the scaling property of total rainfall
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IDF Curves and Random Variables
is a random variable and represents the total depth of a storm with duration D.
is the 100(1-p)% percentile (p =1/T) of the random variable, i.e.,
),( DDh
),( DDhT
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Random Variable Interpretation of IDF Curves
67Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
IDF Curves and the Scaling Property
Horner’s Equation:
D >> b , particularly for long-duration events.
Neglecting b
C = - H
c
m
T bD
aTDi
)()(
)()( DiDi Tc
T
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69Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
Regionalization of Design Storm Hyetographs
Cluster analysis
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DDF (IDF) curves under scaling property
Development of scaling , or scale-invariant, models enable us to transform data from one temporal or spatial model to another and help to overcome the problem of inadequacy of the available data.
Let X(t) and X(t) be the annual maximum rainfall depths corresponding to design durations t and t, respectively. The scale-invariant property of the annual maximum depths implies
)()( tt qn
q
,2,1,)]([)]([ rtXEtXE rnrr
))]()([)]()([( qttXPttXP qq
71Lab for Remote Sensing Hydrology and Spatial ModelingRSLAB-NTU
The above equation is referred to as the “wide sense simple scaling” (WSSS). The property of WSSS can be easily checked from the data since
nrnr
r
r
t
t
tXE
tXE
)]([
)]([
nrtt
tXEtXE rr
log)log(
)]([log)]([log
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Plot of log(Xr(t))~log(t) has a slope of rn, if the WSSS holds for X(t).
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Empirical evidence indicates that temporal rainfall and its extreme events sometimes may be far from simple scaling, and can exhibit a multiple scaling behavior.
The concept of wide sense multiple scaling (WSMS) is characterized by ,2,1,)]([)]([ rtXEtXE rnrr r
)1( 1
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Simple scaling DDF
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The above equation implies the coefficient of skewness and coefficient of kurtosis are invariant with duration.
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Parameters estimation
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Multiple scaling DDF
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Parameters estimation
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