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IWSHM-2010
Probabilistic Proper Orthogonal Decomposition
Probabilistic Proper Orthogonal Decomposition [1298]
Автор(ы): J. Hensman, M. Gherlone, C. Surace, M. Di Sciuva
Издательство: DEStech Publication, Inc, 439 North Duke Street, 17602, Lancaster Pensylvania, U.S.A.
Количество страниц: 6
Год: 2010
Аннотация[350 КБ] 
Код: 10679
Описание
Proper Orthogonal Decomposition (POD) is a method with much potential for identifying, locating and quantifying damage in structures [1-3]. POD can be interpreted as the maximum-likelihood solution to a probabilistic model called Probabilistic Principal Component Analysis (PPCA) [4]. Previous work in the Machine Learning community, especially [5], has shown that PPCA (and therefore also POD) is a member of a larger family of algorithms, linear Gaussian models. The primary objective of the work is to demonstrate that POD is the solution to a probabilistic model; the benefits of viewing POD in this way are discussed as the basis for future research.
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