Evaluation of Best-Fit Probability Distribution Models for the Prediction of Inflows of Kainji Reservoir, Niger State, Nigeria

Author:

Mamman Mohammed J1,Martins Otache Y2,Ibrahim Jibril1,Shaba Mohammed I2

Affiliation:

1. Department of Agricultural Technology, Niger State College of Agriculture, Mokwa, Nigeria

2. Department of Agricultural and Bioresources Engineering, Federal University of Technology, Minna, Minna, Nigeria

Abstract

The analysis of time series is essential for building mathematical models to generate synthetic hydrologic records, to forecast hydrologic events, to detect intrinsic stochastic characteristics of hydrologic variables, as well as to fill missing and extend records. To this end, various probability distribution models were fitted to river inflows of Kainji Reservoir in New Bussa, Niger State, Nigeria. This is to evaluate the probability function that is best suitable for the prediction of their values and subsequently using the best model to predict for both the expected maximum and minimum monthly inflows at some specific return periods. Three models, ie, Gumbel extreme value type I (EVI), log-normal (LN), and normal (N), were evaluated for the inflows and the best model was selected based on the statistical goodness-of-fit test. The values of goodness-of-fit test for Kainji hydropower dam are as follows: r = 0.96, R2 = 0.99, SEE = 0.0087, χ2 = 0.0054, for Gumbel (EVI); r = 0.79, R2 = 0.85, SEE = 0.02, χ2 = 0.31 for LN; and r = 0.0.75, R2 = 0.0.68, SEE = 0.056, χ2 = 1376.39 for N. For the Kainji hydropower dams, the Gumbel (EVI) model gave the best fit. These probability distribution models can be used to predict the near-future reservoir inflow at the Kainji hydropower dams.

Publisher

SAGE Publications

Subject

General Environmental Science

Reference20 articles.

1. Stochastic Characteristics and Modelling of Monthly Rainfall Time Series of Ilorin, Nigeria

2. Stochastic Water Resources Technology

3. Larry JS, Murray RS. Theory and Problems of Statistics. 3rd ed. New Delhi, India: McGraw-Hill; 2000:314–316.

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