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Biometrics & Biostatistics International Journal

Research Article Volume 8 Issue 6

Rainfall probability analysis for crop planning in Sambalpur district of Odisha, India

Dr. C.R. Subudhi,1 Nibedita Jena,2 Sukanya Suryavanshi,2 R. Subudhi

1Professor, CAET, OUAT, India
2Ex. student, CAET, OUAT, India

Correspondence: Rajendra Subudhi, Professor, CAET, OUAT, Bhubaneswar-751003, Odisha, India

Received: November 14, 2019 | Published: December 26, 2019

Citation: Subudhi CR, Jena N, Suryavanshi S, et al. Rainfall probability analysis for crop planning in Sambalpur district of Odisha, India. Biom Biostat Int J. 2019;8(6):217-221. DOI: 10.15406/bbij.2019.08.00292

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Abstract

This study was under taken in the U.G. thesis work in the Dept. Of SWCE, CAET, OUAT, Bhubaneswar during the year 2018-19. Sambalpur district has a geographical area of 6702 sq.km. Sambalpur district has latitude of 21° 28' 5.4660'' N and longitude of 83° 58' 31.4508'' E. The average rainfall at Sambalpur district is around 1377.9 mm, though it receives high amount rainfall but most of the rainfall occurred during kharif. So most of the crops get low yield due to improper crop planning. Thus, this study is proposed to be undertaken with the following objective: Probability analysis of annual, seasonal and monthly rainfall data of Sambalpur district. So rainfall data were collected from OUAT, Agril Meteorology Dept. from 2001 to 2017(17 years) monthly, seasonal and annual rainfall were analyzed .Probability analysis have been made and equations were fitted to different distributions and best fitted equations were tested. Monthly, Annual and seasonal probability analysis of rainfall data shows the probability rainfall distribution of Sambalpur district in different months, years and seasons. It is observed that rainfall during June to Sep is slightly less than 1000 mm and cropping pattern like paddy(110 days) may be followed by mustard is suitable to this region. Also if the kharif rain can be harvested and it can be reused for another rabi crop by using sprinkler or drip irrigation, which will give benefit to the farmers. Annual rainfall of Sambalpur district is 1377.9 mm at 50% probability level.

Keywords: rainfall, probability analysis, crop planning

Sambalpur district has a geographical area of 6702 sq.km. Sambalpur district has latitude of 21° 28' 5.4660'' N and longitude of 83° 58' 31.4508'' E. The average rainfall at Sambalpur district is 1377.9 mm, most of the rainfall occurred during kharif. Thus, this study is proposed to be undertaken with the following objective: Probability analysis of annual, seasonal and monthly rainfall data of Sambalpur district.

Thom1 employed mixed gamma probability distribution for describing skewed rainfall data and employed approximate solution to non-linear equations obtained by differentiating log likelihood function with respect to the parameters of the distribution. Subsequently, this methodology along with variance ratio test as a goodness- of-fit has been widely employed Kar et al.,2 Jat et al.,3 Senapati et al.,4 and Subudhi et al.,5 applied incomplete gamma probability distribution for rainfall analysis. In addition to gamma probability distribution, other two-parameter probability distributions (normal, log-normal, Weibull, smallest and largest extreme value), and three-parameter probability distributions (log-normal, gamma, log-logistic and Weibull) have been widely used for studying flood frequency, drought analysis and rainfall probability analysis.

Gumbel6 Chow.,7 have applied gamma distribution with two and three parameter, Pearson type-III, extreme value, binomial and Poisson distribution to hydrological data.

Sachan S et al.,8 attempted probability analysis using the rainfall data of 30 years(1976-2005) in various influencing raingauge stations viz., Damoh, Hatta, Jabera, and Deori falling in Bearma basin of Bundelkhand region, Madhyapradesh.

Gumbel,6 Hershfield & Kohlar.9 have applied gamma distribution with two and three parameter, Pearson type-III, extreme value, binomial and Poisson distribution to hydrological data.

Materials and methods

The data were collected from District Collector’s Office, Gajapati district for this study. Rainfall data for17 years from 2001 to 2017 are collected for the present study to make rainfall forecasting using different methods. 

Probability distribution functions

For seasonal rainfall analysis of Gajapati district, three seasons- kharif (June-September), rabi (October to January) and summer (February to May) are considered.

The data is fed into the Excel spreadsheet, where it is arranged in a chronological order and the Weibull plotting position formula is then applied. The Weibull plotting position formula is given by

p=mN+1

where m=rank number

 N=number of years

The recurrence interval is given by

T=1p=N+1m

The values are then subjected to various probability distribution functions namely- normal, log-normal (2-parameter), log-normal (3-parameter), gamma, generalized extreme value, Weibull, generalized Pareto distribution, Pearson, log-Pearson type-III and Gumbel distribution. Some of the probability distribution functions are described as follows:

Normal distribution

The probability density is

p(x)=(1/σ2π) e(xμ)2/2σ2

where x is the variate, is the mean value of variateand is the standard deviation. In this distribution, the mean, mode and median are the same. The cumulative probability of a value being equal to or less than x is

p(x)=1/σ2πxe(xμ)2/2σ2dx

This represents the area under the curve between and x.

Log-normal (2-parameter) distribution

The probability density is

p(x)=(1/σyey2π)e(yμy)2/2σy

where y=lnx, where x is the variate,μy is the mean of y and σy is the standard deviation of y.

Log-normal (3-parameter) distribution

A random variable X is said to have three-parameter log-normal probability distribution if its probability density function (pdf) is given by:

f(x)={1(xλ)σ2πexp{12(log(xλ)μσ)2},λx,μ0,σ00,otherwise}

where μ, σ and λ  MathType@MTEF@5@5@+= feaagKart1ev2aqatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqr1ngB PrgifHhDYfgasaacPi=BMqFfpeea0xh9v8qiW7rqqrFfpeea0xe9Lq =Jc9vqaqpepm0xbba9pwe9Q8fs0=yqaqpepae9pg0FirpepeKkFr0x fr=xfr=xb9adbaqaaeGaciGaaiaabeqaamaabaabaaGcbaaeaaaaaa aaa8qacqaH8oqBcaGGSaGaaiiOaiabeo8aZjaacckacaqGHbGaaeOB aiaabsgacaGGGcGaeq4UdWMaaiiOaaaa@460D@ are known as location, scale and threshold parameters, respectively. 

Pearson distribution

The general and basic equation to define the probability density of a Pearson distribution

p(x)=exa+xb0+b1x+b2x2dx

where a,b0,b1 and b2 are constants.

The criteria for determining types of distribution are β1,β2 and k where

β1=μ32μ23

β2=μ4μ22

k=β1(β2+3)24(4β23β1)(2β23β16)

Where μ2,μ3 and μ4  are second, third and fourth moments about the mean.

Log-Pearson type III distribution

In this the variate is first transformed into logarithmic form (base 10) and the transformed data is then analyzed. If X is the variate of a random hydrologic series, then the series of Z variates where

z=logx

σz= are first obtained. For this z series, for any recurrence interval T and the coefficient of skew Cs,

standard deviation of the Z variate sample

  =(zz)¯2/(N1)

And Cs= coefficient of skew of variate Z

    =N(zz¯)3(N1)(N2)σz3

z¯= mean of z values

N= sample size = number of years of record 

Generalized pareto distribution

The family of generalized Pareto distributions (GPD) has three parameters μ,σ and ξ.

The cumulative distribution function is

 F(ε,μ,σ)(x)={1(1+ξ(xμ)σ) 1ξ for ξ01exp(xμσ)   for ξ=0}

for xμ  when ξ0 and xμσξ when ξ<0, where μ is the location parameter,σ>0 the scale parameter and ξ the shape parameter.

The probability density function is

f(ξ,μ,σ)(x)=1σ(1+ξ(xμ)σ)(1ξ1)

Or

f(ξ,μ,σ)(x)=σ1ξ(σ+ξ(xμ))(1ξ+1)

again, for xμ, and xμσξ when ξ<0  

Generalized extreme value distribution

Generalized extreme value distribution has cumulative distribution function

F(x;μ,σ,ξ)=1σ[1+ξ(xμσ)](1ξ1)exp{[1+ξ(xμσ)1ξ]}

For 1+ξ(xμ)/σ>0, where μ is the location parameter,σ>0  the scale parameter and ξ the shape parameter. The density function is, consequently f(x;μ,σ,ξ)=1σ[1+ξ(xμσ)](1ξ1)exp{[1+ξ(xμσ)1ξ]}again, for 1+ξ(xμ)/σ>0

Gumbel’s method

The extreme value distribution was introduced by Gumbel (1941) and is commonly known as Gumbel’s distribution. It is one of the most widely used probability-distribution functions for extreme values in hydrologic and meteorological studies. According to this theory of extreme events, the probability of occurrence of an event equal to or larger than a value x0 is

P(Xx0)=1eey

in which y is a dimensionless variable and is given by

y=α(xa)

a=x¯0.45005σx

Thus y=1.2825(xx)¯σx+0.577........ (i)

where x¯= mean and σx= standard deviation of the variate X. In practice it is the value of X for a given P that is required and such Eq. (i) is transposed as

yp=ln[ln(1P)]

Noting that the return period T=1P and designating yT= the value of y, commonly called the reduced variate, for a given T

yT=[ln.lnTT1]

Or yT=[0.834+2.303loglogTT1]

Now rearranging Eq. (i), the value of the variate X with a return period T is xT=x¯+Kσx

where K=(yT0.577)1.2825

The above equations constitute the basic Gumbel’s equations and are applicable to an infinite sample size10-16 (i.e.N).

Result and discussion

The various parameters like mean, standard deviation, RMSE value were obtained and noted for different distributions. The rainfall at 90%,75%,50%,25% and 10% probability levels are determined. The distribution “best” fitted to the data is noted down in a tabulated form in Table 1.

Months

Best-fit Distribution

RMSE Value

Rainfall at probability levels

90%

75%

50%

25%

10%

January

EV type III

0.06126

-

-

2.17

17.48

34.45

February

Log Pearson

0.03782

-

-

3.35

14.19

40.33

March

GEV

0.0752

-

-

-

11.46

26.87

April

Pareto

0.05627

-

-

4.76

19.85

36.06

May

Log Pearson

0.03945

-

4.68

12.99

28.42

55.89

June

Pareto

0.04644

77.20

107.93

170.47

261.13

355.21

July

Log Pearson

0.04237

289.08

347.71

420.13

499.62

576.5

August

Weibull

0.08646

199.83

298.53

424.23

559.63

685.42

September

Weibull

0.05028

67.40

124.84

214.14

327.67

447.36

October

Exponential

0.07427

3.58

18.17

50.64

106.13

179.5

November

Gamma

 

-

-

-

1.93

29.18

December

Pearson

0.08093

-

-

-

12.59

39.38

Annual

Pareto

0.0609

1121.05

1204.49

1377.9

1638.9

1925.39

Kharif
(June-Sept)

EV type III

0.07416

975.43

1083.18

1250.4

1462.76

1686.40

Rabi
(Oct-Jan)

Exponential

0.05306

11.04

30.15

72.7

145.31

241.36

Summer
(Feb-May)

Log Pearson

0.03216

12.36

30.69

54.7

81.36

104.64

Table 1: Rainfall analysis of Sambalpur Block at different probability levels for different months and seasons

In the present study, the parameters of distribution for the different distributions have been estimated by FLOOD frequency analysis software. The rainfall data is the input to the software programme. The best fitted distribution of different month and seasons and annual were presented in Table 1.The annual rainfall in 50% probability was found to be 1377.9 mm for Sambalpur block of Odisha. During Kharif at 50% probability level, the rainfall is 1250.4mm where as only 72.7 mm and 54.7 mm was received during rabi and summer respectively.

In the present study, the parameters of distribution for the different distributions have been estimated by FLOOD-flood frequency analysis software. The rainfall data is the input to the software programme. The best fitted distribution of different month and season and annual were presented in Table 1. The annual rainfall in 50% probability was found to be 1377.9 mm for Sambalpur district of Odisha. During Kharif at 50 % probability level, the rainfall is 1250.4mm where as only 72.7 mm and 54.7 mm was received during rabi and summer respectively.

In the present study, the parameters of distribution for the different distributions have been estimated by FLOOD-flood frequency analysis software. The rainfall data is the input to the software programme. The best fitted distribution of different month and season and annual were presented in Table 1. The annual rainfall in 50% probability was found to be 1377.9 mm for Sambalpur district of Odisha. During Kharif at 50 % probability level, the rainfall is 1250.4mm where as only 72.7 mm and 54.7 mm was received during rabi and summer respectively, so water harvesting structures may be made to grow crops during rabi and summer to utilize the water from the water harvesting structures to increase the cropping intensity of the area. It is also observed that at 75 % probability level the June ,July , Aug and Sept received more than 100 mm, so farmers of these area can grow crops in upland areas suitably paddy can be grown followed by any rabi crop in rabi season like mustard or kulthi in upland areas. In Figure 1 the plot between different months and amount of rainfall in different probabilities were shown, It is observed that September month gets highest amount of rainfall compared to other months. Figure 2 shows the different cropping pattern in Sambalpur district as per the rainfall available in different weeks.

Figure 1 Rainfall at different probabilities of monthly, seasonal and annual at Sambalpur block.

Figure 2 Different cropping patterns for Sambalpur district.

Conclusion

Forecasting of rainfall is essential for proper planning of crop production. About 70% of cultivable land of Odisha depends on rainfall for crop production. Prediction of rainfall in advance helps to accomplish the agricultural operations in time. It can be concluded that, excess runoff should be harvested for irrigating post-monsoon crops. It becomes highly necessary to provide the farmers with high-yielding variety of crops and such varieties which require less water and are early-maturing in Sambalpur district of Mahanadi command area of Odisha. It is also observed that at 75 % probability level the June ,July , Aug and Sept received more than 100 mm, so farmers of these area can grow crops in upland areas suitably paddy can be grown followed by any rabi crop in rabi season like mustard or kulthi in upland areas. Annual rainfall of Sambalpur district is 1377.9 mm at 50% probability level. It is observed that September month gets highest amount of rainfall compared to other months. Different cropping pattern selected may be may be practiced in this district.

Acknowledgments

None.

Conflicts of interest

None.

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