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This Project Report documents the accomplishments of an extraordinary group of students, faculty, and staff at the Arizona state University, who participated in a year-long, multidisciplinary, first-of-its-kind academic endeavor entitled “The Making of a COVID Lab.” The lab that is the focus of this project is the ASU Biodesign Clinical

This Project Report documents the accomplishments of an extraordinary group of students, faculty, and staff at the Arizona state University, who participated in a year-long, multidisciplinary, first-of-its-kind academic endeavor entitled “The Making of a COVID Lab.” The lab that is the focus of this project is the ASU Biodesign Clinical Testing Laboratory, known simply as the ABCTL.

ContributorsCompton, Carolyn C. (Project director) / Christianson, Serena L. (Project director) / Floyd, Christopher (Project director) / Schneller, Eugene S (Research team head) / Rigoni, Adam (Research team head) / Stanford, Michael (Research team head) / Cheong, Pauline (Research team head) / McCarville, Daniel R. (Research team head) / Dudley, Sean (Research team head) / Blum, Nita (Research team head) / Magee, Mitch (Research team head) / Agee, Claire (Research team member) / Cosgrove, Samuel (Research team member) / English, Corinne (Research team member) / Mattson, Kyle (Research team member) / Qian, Michael (Research team member) / Espinoza, Hale Anna (Research team member) / Filipek, Marina (Research team member) / Jenkins, Landon James (Research team member) / Ross, Nathaniel (Research team member) / Salvatierra, Madeline (Research team member) / Serrano, Osvin (Research team member) / Wakefield, Alex (Research team member) / Calo, Van Dexter (Research team member) / Nofi, Matthew (Research team member) / Raymond, Courtney (Research team member) / Barwey, Ishna (Research team member) / Bruner, Ashley (Research team member) / Hymer, William (Research team member) / Krell, Abby Elizabeth (Research team member) / Lewis, Gabriel (Research team member) / Myers, Jack (Research team member) / Ramesh, Frankincense (Research team member) / Reagan, Sage (Research team member) / Kandan, Mani (Research team member) / Knox, Garrett (Research team member) / Leung, Michael (Research team member) / Schmit, Jacob (Research team member) / Woo, Sabrina (Research team member) / Anderson, Laura (Research team member) / Breshears, Scott (Research team member) / Majhail, Kajol (Research team member) / Ruan, Ellen (Research team member) / Smetanick, Jennifer (Research team member) / Bardfeld, Sierra (Research team member) / Cura, Joriel (Research team member) / Dholaria, Nikhil (Research team member) / Foote, Hannah (Research team member) / Liu, Tara (Research team member) / Raymond, Julia (Research team member) / Varghese, Mahima (Research team member)
Created2021
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Description

Tikhonov regularization for projected solutions of large-scale ill-posed problems is considered. The Golub{Kahan iterative bidiagonalization is used to project the problem onto a subspace and regularization then applied to nd a subspace approximation to the full problem. Determination of the regularization, parameter for the projected problem by unbiased predictive risk

Tikhonov regularization for projected solutions of large-scale ill-posed problems is considered. The Golub{Kahan iterative bidiagonalization is used to project the problem onto a subspace and regularization then applied to nd a subspace approximation to the full problem. Determination of the regularization, parameter for the projected problem by unbiased predictive risk estimation, generalized cross validation, and discrepancy principle techniques is investigated. It is shown that the regularized parameter obtained by the unbiased predictive risk estimator can provide a good estimate which can be used for a full problem that is moderately to severely ill-posed. A similar analysis provides the weight parameter for the weighted generalized cross validation such that the approach is also useful in these cases, and also explains why the generalized cross validation without weighting is not always useful. All results are independent of whether systems are over- or underdetermined. Numerical simulations for standard one-dimensional test problems and two- dimensional data, for both image restoration and tomographic image reconstruction, support the analysis and validate the techniques. The size of the projected problem is found using an extension of a noise revealing function for the projected problem [I. Hn etynkov a, M. Ple singer, and Z. Strako s, BIT Numer. Math., 49 (2009), pp. 669{696]. Furthermore, an iteratively reweighted regularization approach for edge preserving regularization is extended for projected systems, providing stabilization of the solutions of the projected systems and reducing dependence on the determination of the size of the projected subspace.

ContributorsRenaut, Rosemary (Author)
Created2017-03-08