Mechanical Engineering in Uncertainties From Classical Approaches to Some Recent Developments. Группа авторов
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СКАЧАТЬ epistemic uncertainty will have to be accepted. The question then arises as to the most appropriate approach to model these epistemic uncertainties.

      1.3.3. Probabilistic approach for modeling epistemic uncertainties

      There are many situations where epistemic uncertainties can be represented strictly within the same probabilistic framework as described in the previous sections.

      To illustrate such situations, let us take an example addressed earlier. Consider the limit stress at failure of a wing spar. Let us assume that the variability characterization provided by the raw material supplier allows us to model the variability on the limit stress at failure of the spars of all the aircraft that will be produced by a given probability distribution ℙX. Now we assume that we are interested in a specific aircraft among those that have already been produced. The failure limit stress of the spar of this aircraft has a “true” value that is fixed, but which we do not know. The associated uncertainty is therefore epistemic in nature. How can we model this epistemic uncertainty?

      The spar in question represents one realization among all the realizations (that is, all the spars that will be produced); the failure limit stress of this spar thus represents a realization of the random variable X characterized by the distribution ℙX. It is then absolutely reasonable to consider at first that the epistemic uncertainty that we want to represent can be modeled by a random variable of the same distribution ℙX. Since this uncertainty is epistemic, it is however possible to reduce it, for example, by carrying out characterization tests, which could provide a new probability distribution for this epistemic uncertainty, a distribution which will typically be “narrower” than ℙX. In any case, the epistemic uncertainty on the failure limit stress of a specific aircraft spar is modeled here all along within a probabilistic framework, a framework that seems to be well suited to this problem.

      On the other hand, there are other situations where retaining this probabilistic framework to represent epistemic uncertainties may be more problematic. These are typically cases where the amount of data is limited. This happens quite frequently, since having large sample sizes (experimental or by simulation) is often expensive or simply not feasible in practice. What can be said, for example, about the inherent variability of systems that have been manufactured only a few times, such as the space shuttle, which has been manufactured only five times?

      In such cases, the key questions to ask before adopting a probabilistic modeling for these epistemic uncertainties are as follows:

       – do we have sufficient information to consider a particular type of probability distribution (normal, uniform, etc.) for this uncertainty?

       – if a certain type of probability distribution is assumed even in the absence of sufficient information to justify it, will it always lead to reasonable results for the analysis?

      In the following, we present three examples of situations where the probabilistic modeling of epistemic uncertainties can be problematic or lead to counterintuitive results.

      Problems can arise when epistemic uncertainties are represented by uniform probability distributions, which are supposed to account for a lack of knowledge about what happens between the upper and lower bounds of the uniform distribution. In the event, an expert can only provide two bounds to characterize the uncertainty on a quantity of interest and the principle of indifference could lead us to believe that modeling this uncertainty using a uniform distribution between these two bounds is a reasonable choice.

      However, this can be problematic, as a uniform distribution has relatively strong specific implications in probability theory. In particular, making the assumption of a uniform distribution between two bounds is a much stronger assumption than the assumption that the quantity can be indifferently (that is, without preferential concentration) located anywhere between the two bounds. As a matter of fact, a uniform distribution implies a particular uncertainty structure between the two bounds, which is not without consequence. To illustrate this, consider the following example.

      Let us consider a bar with a square cross-section subjected to a specific tensile force. In order to calculate the stress in the bar, we need the cross-sectional area of the bar. However, the dimensions of the bar are not precisely known. They thus comprise an epistemic uncertainty. Assume that the only thing that is known is that the value of the side of the square is between a and b. How should we model these uncertainties? The principle of indifference could lead us to model the side X of the square using a uniform distribution between a and b. However, the same principle of indifference could lead us to model these epistemic uncertainties by considering that it is the area of section X2 that is uniformly distributed between a2 and b2, since ultimately it is the section that we need for the calculation of the stress. Which of these two models should we choose?

      Let us now consider that there is a large epistemic uncertainty on the values of the frequencies at which the structure in service will be excited and that only the bounds a and b on these frequencies are known. In the absence of additional information, the principle of indifference is applied and a uniform distribution in [a,b] is initially considered for the excitation frequencies (see Figure 1.4).

] (see Figure 1.4) to account for the higher epistemic СКАЧАТЬ