

FORM/SORM and gfunctions How Reliable are First Order and Second Order Reliability Methods? (answer: scary) Engineers who would never consider using an untested physical hypothesis (that’s why we do so much hardware testing) are sometimes guilty of using statistical methods without testing their implicit assumptions (like independence or Normality, or even randomness). Assuming statistical independence to make the number crunching easier isn’t the only example of statistical misuse that has found its way into the contemporary probabilistic engineering literature. Among the more common statistical oversights are assuming normal behavior without verification, and using the correlation coefficient in lieu of physics. This is most often done by oversight, yet is at the heart of the limitstate function (gfunction) methodology. Statistical nuance can make the difference between an answer that's right, and one that's dangerously wrong. But it is the ubiquitous gfunction that illustrates that, with FORM/SORM, GIGO (Garbage In, Garbage Out and often, Goodness In, Garbage OUT. I created the predecessor to this page several years ago. Recently I had the good fortune to analyze some historically famous laboratory data that illustrates that the central tenet of the FORM/SORM method  the socalled "Most Probable Point"  is a fantasy.
