Title :
Standard deviation as an alternative to fuzziness in fault tree models
Author :
Page, Lavon B. ; Perry, Jo Ellen
Author_Institution :
Dept. of Math., North Carolina State Univ., Raleigh, NC, USA
fDate :
9/1/1994 12:00:00 AM
Abstract :
Construction of fault-tree models almost always involves some engineering judgment or estimation when it comes to assignment of probabilities for the primary events in the fault tree. The top event probability in a fault tree is, of course, a function of the probabilities of occurrence of the primary events. A clearly desirable goal is to characterize fluctuations in the top-event probability that might be caused by variations or uncertainty in the probabilities of the primary events. This paper shows that useful probabilistic information can be obtained by bounding the standard deviation of the top-event probability. This approach provides probabilistic information not inherent in fuzzy methods. A corresponding caveat, of course, is that this approach requires specific knowledge of the standard deviation of the probabilities of occurrence of the primary events, and this knowledge is not assumed in the fuzzy approaches which instead assume known possibility functions for the primary events. Even if precise probability distributions for all primary events are known, computational difficulties thwart any effort to determine the exact probability distribution of the top event. Feasible extensions of existing algorithms can be used to bound the standard deviation, with little increase in computational complexity
Keywords :
failure analysis; probability; reliability theory; statistical analysis; computational complexity; fault tree models; fuzziness; probabilistic information; standard deviation; top event probability; Analysis of variance; Fault trees; Fluctuations; Fuzzy logic; Fuzzy sets; Probability distribution; Random variables; Reliability engineering; State estimation; Uncertainty;
Journal_Title :
Reliability, IEEE Transactions on