The damage level assessment of equipment function based on Bayesian networks and transfer learning
Mingchang Song,
Xuxu Lv,
Shihan Tan
et al.
Abstract:The damage level assessment of equipment function is an important part of equipment battle damage assessment. In practice, it is often difficult to obtain accurate damage level assessment results due to a lack of damage test data and insufficient modeling. Aiming at this problem, a functional damage assessment method based on Bayesian networks and transfer learning is proposed in the case of small sample test data. First, a Bayesian network model considering the correlation of component damage is constructed, … Show more
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