Modelling and analysis of lifetime data using various failure rate distributions Name of the Researcher
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St. Thomas College - Autonomous, University of Calicut
Abstract
Lifetime data analysis plays a vital role in elds such as reliability engineering,
biostatistics, and quality control by focusing on the time to occurrence of speci c
events like system failure, death, or recovery. The key objective in modelling such
data is to uncover insights into the causes of failure or survival, enabling risk assess-
ment and informed decision-making. A central element of this analysis is selecting
appropriate failure rate distributions that capture the diverse patterns observed in
real-world systems-ranging from monotonic to non-monotonic failure rates.
This thesis, titled Modelling and Analysis of Lifetime Data Using Various
Failure Rate Distributions , is organized into ten chapters. Chapter 1 introduces
essential concepts of lifetime data and failure rate modelling. Chapter 2 develops
a new exible distribution using the DUS transformation and the Kumaraswamy
distribution, e ectively capturing a wide range of failure rate behaviors. The appli-
cability of the model is demonstrated using both simulation and real data studies.
Chapter 3 introduces another novel distribution derived via the DUS trans-
formation with the inverse Kumaraswamy distribution, o ering strong modelling
capabilities for non-monotonic hazard rates. Its utility is veri ed through charac-
terizations, reliability analysis, and real data applications. Chapter 4 presents a bi-
variate model based on the Farlie-Gumbel-Morgenstern copula with inverse Weibull
marginals, designed to capture weakly dependent lifetime data, and demonstrates
its applicability through a real-life medical dataset.
Chapters 5 to 7 focus on censoring mechanisms in life-testing experiments.
Chapter 5 analyzes progressive Type-II censoring, progressive Type-II hybrid cen-
soring, and adaptive progressive Type-II censoring schemes using the exponential
Power distribution, comparing parameter estimation via maximum likelihood and
Bayesian methods. Chapter 6 applies the joint adaptive progressive Type-II censor-
ing scheme to the generalized Lindley distribution, emphasizing e cient estimation
using Markov Chain Monte Carlo and bootstrap techniques. Chapter 7 proposes
a novel T1-T2 mixture censoring scheme based on the Weibull distribution, o er-
ing advantages in maximizing the number of failures within a given supplementary
time. All the above models are illustrated using real-world data to ensure practical relevance and applicability. Chapter 8 addresses long-term survivors through cure
fraction modelling using the exponentiated Weibull distribution under mixture and
non-mixture frameworks. Both frequentist and Bayesian approaches are employed,
and the models are validated using cancer survival data from Kerala, India.
Finally, Chapter 9 summarizes the key contributions of the thesis, highlighting
the development of new lifetime distributions, innovative censoring schemes, and
their practical applications.
These contributions provide valuable tools for real-
world lifetime data analysis and lay the foundation for future research in this field.
