dc.description.abstract |
Threat of global warming is a major concern to the world. It is determined to change the future
climate, which might cause an adverse impact on agriculture, water resources, environments,
hydrological cycle, etc. It can affect the economy related to agricultural production or
agricultural based economy leading to food shortages. However, adverse impacts can be
mitigated to some extent if proper management plans can be applied.
In the present study, historical data have been used for the climate trend analysis and future
projection of precipitation is done for analysing climate change of the study area. Landuse
change detection and future prediction has been carried out to estimate the effect of future
changes of landuse on soil erosion. The soil erosion modelling is done and soil organic carbon
is estimated in the laboratory to evaluate the impact of climate and landuse changes on soil
erosion and soil organic carbon loss in future.
Historical recorded data of rainfall and temperature have been used for trend analysis by
suitable statistical techniques using data of more than 100 years. The trend analysis is
illustrated in different scales (India, State and basin scale). Projection of future rainfall has been
generated by LS-SVM (Least-Square Support Vector Machine) and SDSM (Statistical
Downscaling Model) methods using GCM (General Circulation Model) data. Supervised Fuzzy
C-Mean (FCM) was used for classification of landuse using satellite imagery. Classified
images were further used for future prediction of landuse scenario for analysing the change
detection. Soil erosion models of USLE (Universal Soil Loss Equation), RUSLE (Revised
Universal Soil Loss Equation) and MMF (Morgan-Morgan-Finney) are applied for estimating
the soil erosion and to identify the suitable model for the study area. Assessment of the impact
of climate and landuse changes on soil erosion has been carried out in past, present and future
time period. SOC (Soil Organic Carbon) is tested from the soil samples collected from the
field. Locations of sample points are spatially interpolated by Regression Kriging (RK) method.
Finally, analysis of SOC loss has been carried out using soil erosion and SOC stock.
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In India, rainfall has shown a negative trend in annual and monsoon season. The decreasing
rainfall trend is observed in Madhya Pradesh (MP) and the basin area within MP, except for
few locations. Maximum, minimum and mean temperatures have shown increase in different
scale for the study. The future projected rainfall has shown an increasing trend in both methods
(LS-SVM and SDSM), but the past trend was decreasing. The landuse detection have shown an
increase of settlement and water area from 1990 to 2050 and decreased area of vegetation and
fallow land. Agricultural lands have shown increase from 1990 to 2011, but in 2020 and 2050
there is a slight decrease in the agricultural land due to the encroachment of the continuously
increasing settlement in these areas. Up to 2011, vegetation and fallow lands have been
transformed into agricultural areas, and in 2020, there is a continuous transfer of vegetation or
fallow land to the agricultural land and also to settlement. In 2050, the transfer of vegetated
area to other classes has reduced, while transfer of fallow to agriculture and fallow and
agriculture to settlement is more. Three soil erosion models are used to estimate the soil erosion
status of the study area and have been compared. RUSLE model outputs are closer to the
observed data. MMF and USLE models have estimated 39.45% and 9.60% extra load, while
RUSLE has calculated 4.80% of less sediment load than the observed data. Stock of SOC
estimation is observed to be more (average 12.77gm/kg) in less slope region while SOC is less
(average 5.77gm/kg) in the highest degree of slopes. Natural vegetated areas and agricultural
areas are showing more stock of SOC (average 15.60 and 12.24gm/kg). SOC in clay soil is
highest (average 12.68gm/kg) and sandy loam is least (average 8.5gm/kg) with respect to the
clay loam and sandy clay loam. The effect of climate (precipitation) change has strongly
indicated increased rate of soil erosion and SOC loss in future as observed by using the
generated projected precipitation by the LS-SVM and SDSM models. In contrast, the landuse
change has indicated decreased erosion rate and SOC loss in future in 2050. The overall results
indicate the increasing rate of soil erosion and SOC loss in the basin area due to climate and
landuse change.
However, there is always uncertainty as the interaction of soil, climate and landuse is complex,
and it is not possible to reach any agreement without difficulty. Soil carbon is an essential
factor to be considered in the assessment of soil erosion potential. The residues and vegetative
covers add nutrients to the soil, reducing the impact of raindrops on bare ground causing less
erosion. Therefore, if proper plans are executed such that the top soil remain covered,
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particularly during monsoon time or when there is a high intensity of rainfall, then it may help
in reducing erosion. This study has highlighted the importance of climate analysis at the local
and broader level, along with the impact of human intervention that may be considered in the
decision making process. |
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