A hierarchical decision-making framework for the assessment of the prediction capability of prognostic methods
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DOI: 10.1177/1748006X16683321
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Keywords
Prognostic and health management; remaining useful life; prediction capability; analytical hierarchical process; fuzzy similarity; feed-forward neural network; hidden semi-Markov model;All these keywords.
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