dc.description.abstract |
Daily precipitation extremes play a critical role in the hydrological planning and design of major
water control structures and are expected to show a changing tendency over time due to climate change.
The magnitude and frequency of extreme precipitation can be assessed by studying the upper tail
behavior of probability distributions of daily precipitation datasets. These unexpected low-probability
events lie within the tail part and have unprecedented consequences, underscoring the importance of
their accurate estimation and prediction. The primary challenge with conventional distribution fitting
approaches arises from the limited availability of data pertaining to extreme events. Because of this
constraint, these methods struggle to effectively model the tails of daily precipitation data, often
categorizing extreme precipitation events as improbable outliers. Consequently, this leads to an
underestimation of their likelihood of occurrence. An appealing approach to overcome this impediment
is the assessment of the tail behavior using some modern-day techniques like advanced threshold-based
approaches, Quantitative or Scalar diagnostic tools, and Graphical approaches. The thesis concerns the
development of novel approaches that can assess the tail behavior of precipitation extremes, thereby
overcoming the limitations associated with old approaches. Characterizing the tail behavior of the daily
precipitation finds use in the design and risk assessment of water control structures, economic evaluation
of flood protection projects, flood insurance assessment, land use planning and management, and
operation of irrigation projects. In the context of climate change, a better understanding of the climate
extremes in terms of their frequency, magnitude, and spatial and temporal variation is necessary to
evaluate the implications for risk and resilience. Hence, this thesis presents the study carried out to
deliver a comprehensive assessment of extreme climatic conditions in India using some novel advanced
approaches.
The initial part of the thesis is devoted to the application of threshold-based approaches to
characterize the daily precipitation datasets over India. The investigation is carried out using the
approach proposed by Papalexiou et al. (2013), where a Probability ratio mean square error (PRMSE)
norm, is used to identify the best-fitting distribution to the tails of daily precipitation. Analysis related
to the spatial-temporal change in the tail behavior of daily precipitation over India from pre- to post
1970 time periods as per the global climatic shift is done. The results indicate that the heavy-tailed
distribution fits the tails of daily precipitation for the majority of the grids over India and an increase in
the heaviness of tails of daily precipitation data over India from pre- to post-1970 time periods is
observed.
In the second part, an empirical index known as the “Obesity index” (OB) that can provide a
quantitative comparison between two distributions by alleviating the shortcomings associated with the
threshold-based approaches is developed. The OB-based approach is applied to discern the probability
distribution of daily gridded precipitation data for historical (1951–2004) and future (2006–2099) periods over India into light- and heavy-tailed. Future projections of daily precipitation were obtained
by downscaling simulations of the Coordinated Regional Climate Downscaling Experiment.
Subsequently, a comparative analysis between the OB-based approach and threshold-based approaches
by Nerantzaki and Papalexiou and Papalexiou et al. was conducted. Finally, the application of the OB
based approach is extended to characterize daily precipitation in Indian Meteorological subdivisions.
Furthermore, we explored the dependence of the OB on the elevation of grids. Results indicated the
applicability of heavy-tailed distributions in the representation of daily precipitation over India and
suggested an OB-based approach as a good alternative diagnostic tool for assessing tail behavior.
The development of the Comprehensive Decision support system (DSS) was uptaken in the next
part of the work, where several advanced graphical methods like Concentration profile (CP) plot,
Concentration adjusted expected shortfall (CAES) plot, Zenga plot, Maximum-to-Sum plot, and
Discriminant Moment ratio plot were incorporated together. Incorporation of advanced tools alleviates
the limitations like lack of efficient segregation of the Lognormal distribution from the Regularly
varying and Subexponential distribution families, associated with the conventional DSS. The robustness
of the proposed DSS is established through a simulation experiment while the application was done to
characterize the tails of daily gridded precipitation data over India. It is observed that about 98% of grids
over India exhibit distributions from heavy-tailed families, which is of paramount concern as this shows
higher frequency and magnitude of extreme over the Country.
The final portion of the study is aimed at discussing a comprehensive framework for estimating
the risk associated with the tails of the daily precipitation datasets. Inferences from the novel approach
like Concentration Profile (CP) are combined with the standard results from utility theory to develop a
tool known as a Concentration Map (CM), that assesses the riskiness of datasets taking into account the
variability of the larger and most relevant events. Risk embedded into the tails was evaluated for gridded
precipitation datasets for the historical time period (1901–2019) from Indian Meteorological Department
(IMD), while the simulations from 16 General Circulation Models (GCMs) participating in the Coupled
Model Intercomparison Project phase 6 (CMIP6) under four Shared Socioeconomic Pathway (SSPs),
namely, SSP126, SSP245, SSP370 and SSP585 are considered for future (2020-2100). The potential
spatial and temporal variation of tail risk is done by comparing tail risk estimates from CMIP6
experiments (SSP126, SSP245, SSP370, SSP585) with historical datasets. Results highlight an overall
increase in tail risk, particularly in scenarios indicative of anthropogenic influences, Furthermore, the
analysis is extended to assess the variation in the embedded tail risk associated with daily precipitation
datasets across different meteorological subdivisions and climate zones based on a Köppen-Geiger (KG)
climate classification system, during different periods.
In a changing climate, understanding extreme precipitation events and their associated risks has
become increasingly crucial. This study has employed advanced techniques and tools to illuminate the
complexities of India's climate. The findings of this research can serve as a valuable guide for policymakers in preparing for a future marked by more frequent and severe weather events. Local
decision-makers can use the information provided in this thesis to effectively address the challenges
presented by shifting climate patterns and formulate appropriate adaptation strategies in their respective
regions. |
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