Accelerated subset simulation with neural networks for reliability analysis

@inproceedings{Papadopoulos2012AcceleratedSS,
  title={Accelerated subset simulation with neural networks for reliability analysis},
  author={Vissarion Papadopoulos and D. G. Giovanis and Nikos D. Lagaros and Manolis Papadrakakis},
  year={2012}
}
  • Vissarion Papadopoulos, D. G. Giovanis, +1 author Manolis Papadrakakis
  • Published 2012
  • Computer Science
  • Subset Simulation (SS) is a powerful tool, simple to implement and capable of solving a broad range of reliability analysis problems. In many cases however, SS leads to reliability predictions that exhibit a large variability due to the fact that the robustness of the SS prediction depends on the selection of an adequate width of the proposal distribution when applying the modified Metropolis algorithm. In this work a Neural Network-based SS (SS-NN) methodology is proposed in which NN are… CONTINUE READING

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