Journal article Open Access
Jianbin Xiong; Chunlin Li; Jian Cen; Qiong Liang; Yongda Cai
Evidence reasoning (ER) combined with dimensionless index method can be used in rotating machinery fault diagnosis. In ER algorithm, reliability is mainly obtained in two ways: distance-based method and correlation measure by set theory. In practice, the distance-basedmethod cannot generate high-discrimination reliability in high-coincidence data like dimensionless index data.
Therefore, correlationmeasure by set theory method is used in fault diagnosis more frequently. Because correlationmeasure by set theory only considers upper bound and lower bound of fault data, we add a regularization term to calculate the relationship between the inner data. Experience result shows that fault diagnosis accuracy had improved, which illustrates that the new reliability can describe data relationship better.