Abstract:
Water Resources Management is key for economic growth and sustainable development.
Monthly Water Balance Models are widely applied for its easy and simple structure
characteristics. Many research efforts have been carried out using Two Parameter Monthly
Water Balance Model for water resources management in Sri Lanka in which model estimation
are influenced by rainfall and the approach for the selection of parameters which can be
performed using rainfall station weights optimization ;on the contrary, the non-availability of
gauged streamflow data in hydrological modelling for optimization remains one of the major
challenges where many modelers suggests parameter estimation using physical characteristic
of a watershed as solution.
The objective of the study is to evaluate monthly water balance model incorporating
optimization of rainfall station weights and physical parameters of the catchment for water
resources planning and development. Two parameter model was used for monthly water
resource estimation of Nilwala Ganga basin in Sri Lanka. The model was calibrated and
verified for Pitabeddara (324km2) watershed using 24 years’ monthly rainfall, pan evaporation
and streamflow data successfully. Initially, the model parameters values C and Sc estimated
with Thiessen method later rainfall stations weights were optimized while keeping the model
parameters C and Sc unchanged for calibration and verification. Secondly C and Sc
parameters of two parameters monthly water balance model with station weights were
optimized simultaneously where parameters were estimated using physical characteristics of
the catchment taking into account rainfall, pan evaporation and landuse variables. Rainfall and
pan evaporation relationship was utilized for estimation of C and Sc parameter was estimated
using correlation of curve number (CN). After Two Parameter Monthly Water Balance Model
Applied using Thiessen method on Pitabeddara watershed.
The value for C and Sc were 1.5 and 1700 respectively with average MRAE of 0.22 and 0.31
during calibration and verification periods. Rainfall station weights optimization only resulted
in values of 1.3 and 1600 for C and Sc parameters respectively with average MRAE of 0.22
during calibration and 0.27 during verification, stations weights of (0.47, 0.31, 0.07, 0.12,
0.03) for Deniyaya, Dampahala, Anningkanda, Goluwawatta, Kirama stations respectively.
Obtained C and Sc values of 1.41 and 1550 while station weights are parameters are optimized
simultaneously with average MRAE of 0.19 and 0.25 for calibration and verification
respectively, stations weights of (0.12, 0.22, 0.32, 0.22,0.12) for mentioned stations
respectively. Also, value of C and Sc parameters were 1.40 and 1500 were retrieved by
accounting physical characteristics of catchment and MRAE of 0.23 and 0.28 for calibration
and verification. The station weights optimization improved the MRAE results of model by
(10%) which is significant with indication of better MRAE than conventional rainfall
averaging method. Estimation using physical characteristics of model resulted in (5%) superior
results than empirical approach.
This research effort concludes that rainfall station weights optimization method results are
superior then Thiessen Method and parameters estimation using physical characteristics of the
catchment can be useful for ungauged catchments and it can provide acceptable results.
Keywords: Ungauged streamflow estimation, Physical catchment characteristics, Spatial
Variability of Rainfall, Water balance modelling,