4.3 Article

Support vector machine based estimation of remaining useful life: current research status and future trends

Journal

JOURNAL OF MECHANICAL SCIENCE AND TECHNOLOGY
Volume 29, Issue 1, Pages 151-163

Publisher

KOREAN SOC MECHANICAL ENGINEERS
DOI: 10.1007/s12206-014-1222-z

Keywords

Degradation model; Prognostics; Remaining useful life; Support vector machine

Funding

  1. National Natural Science Foundation of China [11272082]
  2. Research Fund for the Doctoral Program of Higher Education of China [20120185110032]
  3. Open Research Fund of Key Laboratory of High Performance Complex Manufacturing, Central South University [HPCM-2013-05]

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Estimation of remaining useful life (RUL) is helpful to manage life cycles of machines and to reduce maintenance cost. Support vector machine (SVM) is a promising algorithm for estimation of RUL because it can easily process small training sets and multi-dimensional data. Many SVM based methods have been proposed to predict RUL of some key components. We did a literature review related to SVM based RUL estimation within a decade. The references reviewed are classified into two categories: improved SVM algorithms and their applications to RUL estimation. The latter category can be further divided into two types: one, to predict the condition state in the future and then build a relationship between state and RUL; two, to establish a direct relationship between current state and RUL. However, SVM is seldom used to track the degradation process and build an accurate relationship between the current health condition state and RUL. Based on the above review and summary, this paper points out that the ability to continually improve SVM, and obtain a novel idea for RUL prediction using SVM will be future works.

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