ABSTRACT
This
Research work the seasonality of monthly rainfall of Umudike was Considered.
Also the time series node I suitable for the data was fitted and this was used
to forecast the future values of the data. In order to achieve these objectives
the data required for analysis were collected from the Agromet unit of National
Root Crop Research Institute Umudike, Abia State. The set of data was the
monthly rainfall of Umudike in Abia State from 2000 through 2004. The
preliminary analysis revealed that monthly rainfall was stationary, jeasonal
and without significant trend. The computer software MINITAB Package was used
to carry out series of analysis which included seasonal differencing of the
data, Autocorrelation and partial autocorrelation functions of the differenced
data, so as to fit the stochastic model to the monthly rainfall series. Also
the Akaike Information Criteria (AIC) method was applied in order to selectthe
best model. The ;~IC of about six (6) possible first order seasonal models were
calculated. In addition the Autocorrelation functions (ACF) of the residual of
models fit were calculated. The mean square of the forecasted from the actual
values of three adequate models were examined. All the analysis considered
revealed that the monthly rainfall was stationary with SARIMA(I, O, O) 1 0, l,
l),, model. Again the autocorrelation coefficients and partial autocorrelation
coefficients of the residual of the model fit was computed with the MINITAB
Package, it was discover that the residual values did not show any cut off at
any lag, which implied that the residual values are uncorrelated. This jrther
explained the fact that the model fit was the best for the data set with
minimum error. Hence <n (o, 6°) secondly the et is independently and
identically distributed (i i d). The model and estimate of the parameters were
obtained and this showed that the model of the monthly rainfall of Umudike in
Abia State ,} non-seasonal autoregressive of orde 1, seasonal differencing 1
and seasonal moving average of order ~ by acronym SARIMA(1, 0, 0) (0. 1, 1),
The model revealed that monthly rainfall data in one year has a aasonal
influence on proceeding year's value. In addition the values were being
influenced by seasonalast year's random shocks. Finally, the future forecast of
monthly rainfall indicated a seasonal fluctuating future time series .
ALAGO, A (2022). Analysis Of Monthly Rainfall Data (2000-2004) Using Box Ano Jenkins Method.. Repository.mouau.edu.ng: Retrieved Nov 22, 2024, from https://repository.mouau.edu.ng/work/view/analysis-of-monthly-rainfall-data-2000-2004-using-box-ano-jenkins-method-7-2
ALAGO, ALAGO. "Analysis Of Monthly Rainfall Data (2000-2004) Using Box Ano Jenkins Method." Repository.mouau.edu.ng. Repository.mouau.edu.ng, 28 Nov. 2022, https://repository.mouau.edu.ng/work/view/analysis-of-monthly-rainfall-data-2000-2004-using-box-ano-jenkins-method-7-2. Accessed 22 Nov. 2024.
ALAGO, ALAGO. "Analysis Of Monthly Rainfall Data (2000-2004) Using Box Ano Jenkins Method.". Repository.mouau.edu.ng, Repository.mouau.edu.ng, 28 Nov. 2022. Web. 22 Nov. 2024. < https://repository.mouau.edu.ng/work/view/analysis-of-monthly-rainfall-data-2000-2004-using-box-ano-jenkins-method-7-2 >.
ALAGO, ALAGO. "Analysis Of Monthly Rainfall Data (2000-2004) Using Box Ano Jenkins Method." Repository.mouau.edu.ng (2022). Accessed 22 Nov. 2024. https://repository.mouau.edu.ng/work/view/analysis-of-monthly-rainfall-data-2000-2004-using-box-ano-jenkins-method-7-2