Evaluation of the Water Budget Components of the Brahmaputra River Basin Using Satellite Data
Date
2023
Authors
Barma, Surajit Deb
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute Of Technology Karnataka Surathkal
Abstract
The water budget can be described as the volume of water that enters a land area, remains
stored within it, and eventually exits the land system during a specific time interval. The
water budget of a river basin can be represented by equating key components of the
hydrological cycle, which include precipitation, actual evapotranspiration (ET), runoff (Q),
and changes in terrestrial water storage.
The current research is centred on the assessment of the water budget elements
within the Brahmaputra river basin by utilizing satellite-derived data. The motivation for
this PhD research is grounded in the complex and transboundary nature of the Brahmaputra
River basin, which extends through several countries. A key challenge is the scarcity of
hydrometeorological data within the basin, making it difficult to conduct comprehensive
hydrological studies. To address this data deficiency, the study turns to space-borne data,
as it can offer a more complete and cohesive view of the basin's water budget. The satellite
precipitation data were evaluated against updated Brahmaputra River basin gauge data. We
also assessed different precipitation data to determine the risk of hydrometeorological
variables using dependence measures. We further assessed precipitation data for
reconstructing significant water budget variables and innovative trend analysis (ITA) of
those variables. The study
Five daily satellite precipitation products were evaluated against an updated Asian
Precipitation Highly-Resolved Observational Data Integration Towards Evaluation of the
Extreme Events version 2 (APHRODITE v2) using categorical and continuous metrics.
Global precipitation measurement (GPM) resulted in the program known as the Integrated
Multi-satellitE Retrievals for GPM (IMERG) was found to be the best-performing product
daily, considering the spatial and temporal mean for the whole time series. The Climate
Prediction Center (CPC) Morphing technique (CMORPH) was found to be the best-
performing product considering the evaluation of metrics on a seasonal basis. The soil
moisture to rain (SM2RAIN) of the European Space Agency (ESA) climate changeinitiative (CCI) precipitation product was found to be the least-performing product on all
counts.
Given precipitation quantity, the conditional bivariate copula concept predicted
evapotranspiration, the Gravity Recovery and Climate Experiment terrestrial water storage
change (GRACE TWSC), and river discharge. The optimal copula is Frank for all three
precipitation-TWSC pairs, the European Centre for Medium-Range Weather and
Forecasting (ECMWF) reanalysis ET (ERA5-ET) and ERA5-ET, and Clayton for the
remaining pairs. Pearson's linear and Spearman's rank correlations for all the pairs of
variables are significant for observed and simulated values. The non-exceedance
probability of all the dependent variables (lower percentile) decreases with increased
precipitation. However, the exceedance probability of the same variables (upper percentile)
increases gradually with increased precipitation.
The water budget equation of a large basin based on the conservation of mass was used to
reconstruct TWSC, ET, and runoff for the Brahmaputra basin. The reconstructed water
budget variables are further assessed using a correlation coefficient to know the linear
strength. Also, error metrics like absolute mean error and bias were used to determine how
far we can see the variation, such as reconstruction against a gauge or quasi-gauge data.
The ERA5-derived TWSCs and Qs tend to provide the highest linear strength expressed in
the correlation coefficient on a monthly and seasonal basis. To a greater extent, the Tropical
Rainfall Measuring Mission (TRMM), IMERG and the Climate Hazards group Infrared
Precipitation with Stations (CHIRPS) also depict a closer correlation coefficient to that of
ERA5-derived TWSCs and Qs. The linear strength of derived ETs shows that the inherent
uncertainties in the water budget variables did not reconstruct ETs well. On a monthly
basis, the TRMM-based TWSC reconstruction was the most optimal, and IMERG-driven
ET and runoff were the most optimal. SM2RAIN-driven TWSC, ET, and Q were reported
to be the least optimal. For most of the seasons, it was either TRMM or IMERG with the
least error. However, the error in terms of the percentage of gauge precipitation for winter
and post-monsoon seasons is staggeringly high. Even on a seasonal basis, SM2RAIN was
iithe least performing. Overall, TRMM, IMERG, and CHIRPS show much lesser
uncertainties than other precipitation datasets, as evidenced by the raincloud plots.
The recently developed ITA and innovative polygon trend analysis (IPTA) were
used to determine the trend of individual months, including the sub-trends based on
different clusters (low, medium, and high) for complete time series and transition of trend
between months, respectively. In addition, the traditional Mann-Kendall (MK) test was also
conducted to compare the findings of trends.
The monthly precipitation of seven
precipitation data, four evapotranspiration data, river basin discharge, and GRACE TWSC
were used in the study. The present findings are consistent, as reported in several studies
on ITA and a few on sub-trends. What was commonly observed in all the water budget
variables is the higher percentage of months detecting either increasing or decreasing
significant trends using ITA compared to the classical MK test, which in most cases could
not detect any significant trend. The sub-trends provided us with the trends in each of the
three clusters. Only APHRODITE, TRMM, and IMERG showed more than 2.5 mm/month
decreasing trend in the high category. Numerically, ETs showed insignificant trend
variation in all the clusters. Discharge of the basin shows a high decreasing trend in the
high cluster (339.01 m3/s) and a decreasing trend in the low cluster by a rate of 176.79
m3/s. Similarly, GRACE TWSC shows a decreasing trend of 7.75 mm/month in the high
cluster and an 8.69 mm/month decreasing trend in the low cluster.
Description
Keywords
innovative polygon trend analysis, innovative trend analysis, risk assessment, satellite precipitation