Analysis of Influence of Land Use Land Cover and Climate Changes on Streamflow of Netravati Basin, India
Date
2023
Authors
Jose, Dinu Maria
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute Of Technology Karnataka Surathkal
Abstract
Massive Land Use/Land Cover (LULC) change is a result of human activities. These
changes have, in turn, affected the stationarity of climate, i.e., climate change is beyond
the past variability. Studies indicate the effect of LULC change and climate change on
the hydrological regime and mark the necessity of its timely detection at
watershed/basin scales for efficient water resource management. This study aims to
analyse and predict the influence of climate change and LULC change on streamflow
of Netravati basin, a tropical river basin on the south-west coast of India.
For future climate data, researchers depend on general circulation models (GCMs)
outputs. However, significant biases exist in GCM outputs when considered at a
regional scale. Hence, six bias correction (BC) methods were used to correct the biases
of high-resolution daily maximum and minimum temperature simulations.
Considerable reduction in the bias was observed for all the BC methods employed
except for the Linear Scaling method. While there are several BC methods, a BC
considering frequency, intensity and distribution of rainfall are few. This study used an
effective bias correction method which considers these characteristics of rainfall. This
study also assessed and ranked the performance of 21 GCMs from the National
Aeronautics Space Administration (NASA) Earth Exchange Global Daily Downscaled
Projections (NEX-GDDP) dataset and bias-corrected outputs of 13 Coupled Model
Inter-comparison Project, Phase 6 (CMIP6) GCMs in reproducing precipitation and
temperature in the basin. Four multiple-criteria decision-making (MCDM) methods
were used to identify the best GCMs for precipitation and temperature projections. For
the CMIP6 dataset, BCC-CSM2-MR was seen as the best GCM for precipitation, while
INM-CM5-0 and MPIESM1-2-HR were found to be the best for minimum and
maximum temperature in the basin by group ranking procedure. However, the best
GCMs for precipitation and temperature projections of the NEX-GDDP dataset were
found to be MIROCESM-CHEM and IPSL-CM5A-LR, respectively. Multi-Model
Ensembles (MMEs) are used to improve the performance of GCM simulations. This
study also evaluates the performance of MMEs of precipitation and temperature
developed by six methods, including mean and Machine Learning (ML) techniques.The results of the study reveal that the application of an LSTM model for ensembling
performs significantly better than models. In general, all ML approaches performed
better than the mean ensemble approach.
Analysis and mapping of LULC is essential to improve our understanding of the
human-nature interactions and their effects on land-use changes. The effects of
topographic information and spectral indices on the accuracy of LULC classification
were investigated in this study. Further, a comparison of the performance of Support
Vector Machine (SVM) and Random Forest (RF) classifiers was evaluated. The RF
classifier outperformed SVM in terms of accuracy. Finally, the classified maps by RF
classifier using reflectance values, topographic factors and spectral indices, along with
other driving factors are used for making the future projections of LULC in the Land
Change Modeler (LCM) module of TerrSet software. The results reveal that the area of
built-up is expected to increase in the future. In contrast, a drop in forest and barren
land is expected.
The SWAT model is used to study the impacts of LULC and climate change on
streamflow. The results indicate a reduction in annual streamflow by 2100 due to
climate change. While an increase in streamflow of 13.4 % is expected due to LULC
change by the year 2100 when compared to the year 2020. The effect of climate change
on streamflow is more compared to LULC change. A reduction in change is seen in the
streamflow from near to far future.
Description
Keywords
Climate change, Bias correction, GCM, LULC