Engineering design under imprecise probabilities: computational complexity
-
Vladik Kreinovich
vladik@utep.edu
Downloads
DOI:
https://doi.org/10.4067/S0719-06462011000100007Abstract
In engineering design problems, we want to make sure that a certain quantity c of the designed system lies within given bounds – or at least that the probability of this quantity to be outside these bounds does not exceed a given threshold. We may have several such requirements – thus the requirement can be formulated as bounds [Fc (x), Fc(x)] on the cumulative distribution function Fc(x) of the quantity c; such bounds are known as a p-box.
The value of the desired quantity c depends on the design parameters a and the parameters b characterizing the environment: c = f(a, b). To achieve the design goal, we need to find the design parameters a for which the distribution Fc(x) for c = f(a, b) is within the given bounds for all possible values of the environmental variables b. The problem of computing such a is called backcalculation. For b, we also have ranges with different probabilities – i.e., also a p-box. Thus, we have backcalculation problem for p-boxes.
For p-boxes, there exist efficient algorithms for finding a design a that satisfies the given constraints. The next natural question is to find a design that satisfies additional constraints: on the cost, on the efficiency, etc. In this paper, we prove that that in general, the problem of finding such a design is computationally difficult (NP-hard). We show that this problem is NP-hard already in the simplest possible linearized case, when the dependence c = f(a, b) is linear. We also provide an example when an efficient algorithm is possible.
Keywords
Similar Articles
- Ioannis K. Argyros, An improved convergence and complexity analysis for the interpolatory Newton method , CUBO, A Mathematical Journal: Vol. 12 No. 1 (2010): CUBO, A Mathematical Journal
- Fred Brackx, Hennie De Schepper, Frank Sommen, Liesbet Van de Voorde, Discrete Clifford analysis: an overview , CUBO, A Mathematical Journal: Vol. 11 No. 1 (2009): CUBO, A Mathematical Journal
- Vladimir V'yugin, Victor Maslov, Algorithmic complexity and statistical mechanics , CUBO, A Mathematical Journal: Vol. 9 No. 2 (2007): CUBO, A Mathematical Journal
- Ferenc Szidarovszky, Jijun Zhao, The Dynamic Evolution of Industrial Clusters , CUBO, A Mathematical Journal: Vol. 11 No. 2 (2009): CUBO, A Mathematical Journal
- René Schott, G. Stacey Staples, Operator homology and cohomology in Clifford algebras , CUBO, A Mathematical Journal: Vol. 12 No. 2 (2010): CUBO, A Mathematical Journal
- F. Brackx, H. De Schepper, V. Soucek, Differential forms versus multi-vector functions in Hermitean Clifford analysis , CUBO, A Mathematical Journal: Vol. 13 No. 2 (2011): CUBO, A Mathematical Journal
- S. S. Dragomir, M. V. Boldea, M. Megan, Inequalities for Chebyshev functional in Banach algebras , CUBO, A Mathematical Journal: Vol. 19 No. 1 (2017): CUBO, A Mathematical Journal
- S.S. Dragomir, Refinements of the generalized trapezoid inequality in terms of the cumulative variation and applications , CUBO, A Mathematical Journal: Vol. 17 No. 2 (2015): CUBO, A Mathematical Journal
- Miklos N. Szilagyi, N-Person Prisoners' Dilemmas , CUBO, A Mathematical Journal: Vol. 5 No. 3 (2003): CUBO, Matemática Educacional
- Claus Bauer, A new solution algorithm for skip-free processes to the left , CUBO, A Mathematical Journal: Vol. 12 No. 2 (2010): CUBO, A Mathematical Journal
You may also start an advanced similarity search for this article.