The reliability of mechanical structures is crucial for their safe operation
to address the problem of low accuracy and low efficiency in reliability analysis of complex mechanical structures
a new active learning surrogate model based reliability analysis method was proposed.The spatial location characteristics of excellent fitting samples were studied and three constraints
such as surface constraint
distance constraint
and domain constraint
were proposed accordingly.Correspondingly
three control functions were established to achieve the three constraints.Then
three control functions were organically collaborated
and an effective new learning function
collaboration-mean point constrained learning(CPCL)function was proposed.Combined with the augmented radial basis function(ARBF)
a collaboration-mean point constrained active learning surrogate model(ARBF+CPCL)reliability analysis method was established.Finally
three cases were employed to verify the high computational accuracy and computational efficiency of ARBF+CPCL reliability analysis method
and the application ability of ARBF+CPCL method in practical engineering cases was proved through the reliability analysis example of the turbine disk.