Using Importance Sampling for Reliability Elements

For risk analyses, it is frequently necessary to evaluate the consequences of low-probability, high-consequence failures (i.e., failures that occur with a very low frequency, but have a significant impact on the system). Because the models for such systems are often complex (and hence need significant computer time to simulate), it can be difficult to use the conventional Monte Carlo approach to evaluate these low-probability, high-consequence failures, as this may require excessive numbers of realizations.

To facilitate these type of analyses, GoldSim allows you to utilize an importance sampling An algorithm that biases sampling of probability distributions in order to better resolve the tails of the distributions. algorithm to modify the conventional Monte Carlo approach so that high-consequence, low-probability failures are sampled with an enhanced frequency. That is, importance sampling serves to increase the rate of occurrence of the failure. During the analysis of the results that are generated, the biasing effects of the importance sampling are reversed. The result is high-resolution development of the high-consequence, low-probability "tails" of the consequences (resulting from low-probability failures), without paying a high computational price.

Importance sampling for Reliability elements is specified by selecting the checkbox for Use Importance Sampling for this element. The algorithm that is used is discussed in detail in Appendix B of the GoldSim User's Guide.

Four points regarding importance sampling of failures for Reliability elements should be noted: