Advancements in Degradation Modeling, Uncertainty Quantification and Spatial Variable Selection

This dissertation focuses on three research projects: 1) construction of simultaneous prediction intervals/bounds for at least k out of m future observations; 2) semi-parametric degradation model for accelerated destructive degradation test (ADDT) data; and 3) spatial variable selection and applicat...

Full description

Bibliographic Details
Main Author: Xie, Yimeng
Other Authors: Statistics
Format: Others
Published: Virginia Tech 2016
Subjects:
Online Access:http://hdl.handle.net/10919/71687
id ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-71687
record_format oai_dc
spelling ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-716872020-09-29T05:33:16Z Advancements in Degradation Modeling, Uncertainty Quantification and Spatial Variable Selection Xie, Yimeng Statistics Hong, Yili Kim, Inyoung Deng, Xinwei Woodall, William H. ADDT Degradation Model Spatial Variable Selection SPI/SPB This dissertation focuses on three research projects: 1) construction of simultaneous prediction intervals/bounds for at least k out of m future observations; 2) semi-parametric degradation model for accelerated destructive degradation test (ADDT) data; and 3) spatial variable selection and application to Lyme disease data in Virginia. Followed by the general introduction in Chapter 1, the rest of the dissertation consists of three main chapters. Chapter 2 presents the construction of two-sided simultaneous prediction intervals (SPIs) or one-sided simultaneous prediction bounds (SPBs) to contain at least k out of m future observations, based on complete or right censored data from (log)-location-scale family of distributions. SPI/SPB calculated by the proposed procedure has exact coverage probability for complete and Type II censored data. In Type I censoring case, it has asymptotically correct coverage probability and reasonably good results for small samples. The proposed procedures can be extended to multiply-censored data or randomly censored data. Chapter 3 focuses on the analysis of ADDT data. We use a general degradation path model with correlated covariance structure to describe ADDT data. Monotone B-splines are used to modeling the underlying degradation process. A likelihood based iterative procedure for parameter estimation is developed. The confidence intervals of parameters are calculated using the nonparametric bootstrap procedure. Both simulated data and real datasets are used to compare the semi-parametric model with the existing parametric models. Chapter 4 studies the Lyme disease emergence in Virginia. The objective is to find important environmental and demographical covariates that are associated with Lyme disease emergence. To address the high-dimentional integral problem in the loglikelihood function, we consider the penalized quasi loglikelihood and the approximated loglikelihood based on Laplace approximation. We impose the adaptive elastic net penalty to obtain sparse estimation of parameters and thus to achieve variable selection of important variables. The proposed methods are investigated in simulation studies. We also apply the proposed methods to Lyme disease data in Virginia. Finally, Chapter 5 contains general conclusions and discussions for future work. Ph. D. 2016-07-01T08:01:30Z 2016-07-01T08:01:30Z 2016-06-30 Dissertation vt_gsexam:7513 http://hdl.handle.net/10919/71687 In Copyright http://rightsstatements.org/vocab/InC/1.0/ ETD application/pdf Virginia Tech
collection NDLTD
format Others
sources NDLTD
topic ADDT
Degradation Model
Spatial Variable Selection
SPI/SPB
spellingShingle ADDT
Degradation Model
Spatial Variable Selection
SPI/SPB
Xie, Yimeng
Advancements in Degradation Modeling, Uncertainty Quantification and Spatial Variable Selection
description This dissertation focuses on three research projects: 1) construction of simultaneous prediction intervals/bounds for at least k out of m future observations; 2) semi-parametric degradation model for accelerated destructive degradation test (ADDT) data; and 3) spatial variable selection and application to Lyme disease data in Virginia. Followed by the general introduction in Chapter 1, the rest of the dissertation consists of three main chapters. Chapter 2 presents the construction of two-sided simultaneous prediction intervals (SPIs) or one-sided simultaneous prediction bounds (SPBs) to contain at least k out of m future observations, based on complete or right censored data from (log)-location-scale family of distributions. SPI/SPB calculated by the proposed procedure has exact coverage probability for complete and Type II censored data. In Type I censoring case, it has asymptotically correct coverage probability and reasonably good results for small samples. The proposed procedures can be extended to multiply-censored data or randomly censored data. Chapter 3 focuses on the analysis of ADDT data. We use a general degradation path model with correlated covariance structure to describe ADDT data. Monotone B-splines are used to modeling the underlying degradation process. A likelihood based iterative procedure for parameter estimation is developed. The confidence intervals of parameters are calculated using the nonparametric bootstrap procedure. Both simulated data and real datasets are used to compare the semi-parametric model with the existing parametric models. Chapter 4 studies the Lyme disease emergence in Virginia. The objective is to find important environmental and demographical covariates that are associated with Lyme disease emergence. To address the high-dimentional integral problem in the loglikelihood function, we consider the penalized quasi loglikelihood and the approximated loglikelihood based on Laplace approximation. We impose the adaptive elastic net penalty to obtain sparse estimation of parameters and thus to achieve variable selection of important variables. The proposed methods are investigated in simulation studies. We also apply the proposed methods to Lyme disease data in Virginia. Finally, Chapter 5 contains general conclusions and discussions for future work. === Ph. D.
author2 Statistics
author_facet Statistics
Xie, Yimeng
author Xie, Yimeng
author_sort Xie, Yimeng
title Advancements in Degradation Modeling, Uncertainty Quantification and Spatial Variable Selection
title_short Advancements in Degradation Modeling, Uncertainty Quantification and Spatial Variable Selection
title_full Advancements in Degradation Modeling, Uncertainty Quantification and Spatial Variable Selection
title_fullStr Advancements in Degradation Modeling, Uncertainty Quantification and Spatial Variable Selection
title_full_unstemmed Advancements in Degradation Modeling, Uncertainty Quantification and Spatial Variable Selection
title_sort advancements in degradation modeling, uncertainty quantification and spatial variable selection
publisher Virginia Tech
publishDate 2016
url http://hdl.handle.net/10919/71687
work_keys_str_mv AT xieyimeng advancementsindegradationmodelinguncertaintyquantificationandspatialvariableselection
_version_ 1719343436033687552