Please use this identifier to cite or link to this item: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/3796
Title: Analysis of the stochastic Characteristics and Modelling of Monthly Rainfall Time Series of Abeokuta, Nigeria.
Other Titles: NONE
Authors: Musa, John Jiya
JIBRIL, I.
Otache, Martins Yusuf
KUTI, A. I.
DADA, P. O. O.
Keywords: STOCHASTIC CHARACTERISTIC
SEASONALITY
TREND
ARIMA
SIMULATION
Issue Date: 2016
Publisher: NIGERIAN JOURNAL OF HYDROLOGICAL SCIENCE
Citation: 82. Musa J. J., Ibrahim J., Otache, M. Y., Kuti, A. I., and Dada P. O. O. (2016): Analysis of the stochastic Characteristics and Modelling of Monthly Rainfall Time Series of Abeokuta, Nigeria. Nigerian Journal of Hydrological Sciences, Vol. 4, 83-92.
Abstract: This study attempts to analyse the stochastic characteristics of rainfall for Abeokuta, Nigeria and its probable simulation. to this end, rainfall time series data of Abeokuta was obtained from the Nigerian Meteorological Agency (NIMET) for a period of 28 years. the analysis of the stochastic characteristics entails the assessment of temporal trend and periodicity while modeling the time series was done by employing the seasonal multiplicative Autoregressive Moving Average (ARIMA) modeling technique. Results obtained indicate that there is high periodicity and degree of randomness, a multiplicative seasonally differenced ARIMA model was found appropriate for the simulation of the monthly rainfall regime; model choice was on the basis of Akaike Information Criterion (AIC) and Autocorrection functions. On the basis of the two criteria, ARIMA (0, 0.1) X (0, 1.1) X (0,1,1)12 and ARIMA (1, 0,1) X (1,1,1) respectively were adjudged probable candidate models for simulation studies. However considering the fact that rainfall phenomenon exhibits high spatio-temporal variability, the seasonal persistence can only be explained relatively by the autoregressive component rather than solely the moving average component; thus, the second model is preferable. Despite this though, for effective generalisation of simulation results, Artificial Neural Network and Wavelet models are recommended and in this regard too, conditional probability of rainfall occurrence should be considered.
Description: HYDROLOGY
URI: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/3796
Appears in Collections:Agric. and Bioresources Engineering

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