- The first is that no “Infant Mortality” (i.e. quality failures) are included in this metric.
- The second is that no wear-out ( i.e. end of life) failures are included in this metric.
- The third is failures during use life occur randomly. So in any given moment during use life a failure is just as likely to occur as at any other moment. For a product with a ten year life this means that a random failure is just as likely to occur at three months of age as it is at seven years of age.
- We do not include children who die (<13 years of age). These are infant mortality. In the production world we consider these to be quality defect and not a characteristic of the design’s reliability.
- We don’t include retirees. In production these are items that are to be removed from service (retired). The manufacturer has predicted that wear out failure modes are going to become dominant at some point and that the promised use reliability will no longer be up held.
- We are not repairing systems
- Units that fail are being immediately replaced with new units that are past the infant mortality stage so the population is a consistent number.
J.L.K. says
Bit confused here. Your problem doesn’t seem to be with the MTBF, but with the use of the exponential distribution as a lifetime distribution.
Michal says
Nice and funny article. From which statistic did you get the value 800/2000?
Jacques says
“Death is just a technical problem ” human have a good MTBF. This article could have been put as a note in Y.Harari “Homo Deus” book.