CIVL253 –HYDROLOGY Final Examination (25 October 2006) Name (English/Chinese) Student Number: Problem 1 / 20 Problem 2 / 15 Problem 3 / 20 Problem 4 / 45 Total Score / 100 Declaration on Academic Integrity I declare that the answers submitted for this examination are my own work. I understand that sanctions will be imposed, if I am found to have violated the University regulations governing academic integrity. Student's Signature: Note: (1) This is a close-book examination. No reference material of any kind can be used during the examination. (2) All computation steps must be shown clearly - without them, no score will be given. (3) Assumptions made must be clearly stated and justified. (4) Proper units must be attached. Problem-1 (20%) Consider a rainfall event having 5-min cumulative rainfall record given below: Time (min) Cumulative Rainfall (mm) Time (min) Cumulative Rainfall (mm) Time (min) Cumulative Rainfall (mm) 0 5 10 15 20 25 30 0 7 14 23 34 45 58 35 40 45 50 55 60 65 70 81 91 100 110 119 125 70 75 80 85 90 131 136 140 140 140 (a) What is the duration of the entire rainfall event and the corresponding total rainfall amount? (5%) (b) Find the rainfall depth hyetograph (in tabular form) with 10-min time interval for the storm event. (7%) (c) Find the maximum 10-min and 20-min average rainfall intensities (in mm/hr) for the storm event (8%) Problem-2 (15%) A 600-hectare farm land receives annual rainfall of 2,500 mm. There is a river flowing through the farm land with inflow rate of 5 m3/s and outflow rate of 4 m3/s. It is measured that the annual water storage in the farm land increases by 2.5×106 m3. Based on the hydrologic budget equation, determine the annual evaporation amount (in mm). (15%) [Note: 1 hectare = 10,000 m2] Problem-3 (20%) You are hired as a consultant to help design a coffer dam for protecting the construction of bridge piers in a river (see figure). Based on 30 years of flood data in the river, the largest flood is 7,800 m3/s and the smallest is 2,400 m3/s. The probability plot indicates that the flood magnitude and the corresponding return period, estimated by the Weibull plotting position formula, Pr[X≥x(m)]≈m/(n+1), reveal a linear relation. Assume that the bridge piers have a construction period of 3 years and the required overtopping probability over the construction period must not exceed 10 percents. (a) Determine the required design return period for the coffer dam. (10%) (b) Determine the magnitude of flood to be protected against for the coffer dam. (10%) Problem-4 (45%) Given flood data in a river a shown in the table below. Peak Discharge (m3/s) 95 300 Year 1963 Date 1 June 3 August 1964 7 June 60 1965 2 August 80 1966 28 May 15 August 100 90 1967 11 July 25 August 4 September 800 700 90 (a) Determine the data set for both annual maximum series and annual exceedance series. (5%) (b) Determine the first three sample Lmoments based on the annual exceedance series using plotting position formula Pr[X≤x(m)]≈(m0.35)/n. (15%) (c) Suppose the sample L-kurtosis (t4) is 0.05. Identify the best-fit distribution for the annual exceedance series between two candidate distribution models: lognormal and generalized Pareto distributions. (15%) (d) Based on the best-fit distribution identified for the annual exceedance series in Part(c), determine the magnitude of 50-year flood. (10%). FORMULA SHEETS L-moments: Population Sample r E X F ( X ) r ^ 1 n br x m F [ x( m ) ] n m 1 r for r 0, 1, ... 1 = 0 2 = 2 1 0 3 = 6 2 6 1 + 0 4 = 20 3 30 2 + 12 1 0 l1 = b 0 l 2 = 2 b1 b0 l 3 = 6 b2 6 b1 + b0 l 4 = 20 b3 30 b2 + 12 b1 b0 2 = 2 / 1 ; 3 = 3 / 2 ; 4 = 4 / 2 t 2 = l 2 / l1 ; t 3 = l 3 / l 2 ; t 4 = l 4 / l 2 Sample Product-Moments: E( X ) x E X 2 2 s 2 E X 3 2 g x i n x x 2 n 1 n xi x x 2 i i nx 2 n 1 2 (n 1)(n 2) s 3 n x 3x x 2nx 3 i 2 i 3 (n 1)(n 2) s 3 Approximating formula for frequency factor of Pearson and log-Pearson type 3 distribution: g 1 g KT zT z 1 zT3 6 zT 6 3 6 2 2 T 3 4 g g 1 g zT2 1 zT 6 6 3 6 5 where zT is the standard normal quantile corresponding to 1/T exceedance probability and g is the skewness coefficient. Approximated 3 4 relations for selected distribution models: Lognormal distribution: 4 = 0.1228 + 0.7752 32 + 0.1228 34 0.1364 36 + 0.1137 38 Generalized Pareto distribution: 4 = 0.202 3 + 0.959 32 0.201 33 + 0.0406 34 Relations between moments and parameters of selected distribution models Distribution Normal PDF or CDF f x (x) 1 x 1 exp 2 2 1 Log-normal f x (x) Rayleigh f x (x) Range 2 ln x 2 1 ln ( x ) 2 ln x exp ln x x 2 x exp 1 2 x 2 2 1 x 1 ( ) ( x ) / Pearson 3 f x (x) Exponential f x (x) e x / Gumbel (EV1 for maxima) f x (x) = Weibull fx ( x ) = GEV (Generalized Extreme Value) (x ) 1/ Fx (x) = exp 1 GPA (Generalized Pareto) e x x exp exp 1 x 1 x exp 1/ ( x ) Fx (x) 1 1 Product Moments L-moments 1=; 2= < x < ln x ln( x ) ln2 x / 2 ; ln2 x ln x2 1 ; x>0 x 3 x x3 x< 2 ; 2 2 >0 for >0: x> for <0: x< ; 2 2 ; sign( ) x>0 = 2 >0; x>0 x <0: x >0: x <0: x<; ; 2 1 1=; 2=/2; 3=1/3; 4=1/6 2 2 1=; 2= 3=0.1699; 4=0.1504 ; 1.1396 6 1 2 1 1 1 ; 2 2 1 2 2 1 1 2 2 1 ; 2 1 2(1 ) (1 2 )1 / 2 (1 3 ) 2 1 3 2 (1 2 ) 1 1 1 / 1 1 1 ; 2 1 2 ; [1 (1 ) ] ; 2 3=0.1140; 4=0.1054 1 ; 2 2 1 2 1 >0: Eq. (2.68); Eq. (2.70) 1 2 ; 0.5772 ; < x < ; 3=0; 4=0.1226 ; 2 1 3 1 2 1 3 ; 3 4 1 1 3 ; 2 1 2 1 ; 1 5 4 10 3 6 2 ; 2 1 2 (1 )(2 ) (1 )(2 ) 4 (3 )(4 )