An Approach to Robust Decision Making under Severe Uncertainty in Life-Cycle Design
Information-Gap Decision Theory
(IGDT), an approach to robust decision making under severe uncertainty, is
newly considered in the context of a simple life cycle engineering example. IGDT offers a path to a decision in the class
of problems where a nominal estimate of an uncertain life cycle parameter is
available, but the amount of the deviation of that estimate from the actual
value, as well as the implications of that deviation on performance, are not
known. The decision rule inherent in IGDT
entails relaxing one’s demand for optimal performance and choosing designs with
maximum immunity, or info-gap robustness,
to the effects of deviation from the known estimate. This tradeoff is analyzed graphically using plots of
robustness versus performance demand. In
this paper, an automotive oil filter design example affected by severe
uncertainty is formulated and solved using an IDGT approach. The types of life
cycle engineering design problems that the approach could be effective towards are
discussed, as are potential limitations that could be encountered when solving
more complex problems.