Unconstrained Quadratic Programming Problem with Uncertain Parameters

Autor: Fong Peng Lim, Harley Ooi, Sie Long Kek
Rok vydání: 2021
Předmět:
Zdroj: Global Journal of Researches in Engineering. :1-7
ISSN: 2249-4596
0975-5861
DOI: 10.34257/gjreivol21is1pg1
Popis: In this paper, an unconstrained quadratic programming problem with uncertain parameters is discussed. For this purpose, the basic idea of optimizing the unconstrained quadratic programming problem is introduced. The solution method of solving linear equations could be applied to obtain the optimal solution for this kind of problem. Later, the theoretical work on the optimization of the unconstrained quadratic programming problem is presented. By this, the model parameters, which are unknown values, are considered. In this uncertain situation, it is assumed that these parameters are normally distributed; then, the simulation on these uncertain parameters are performed, so the quadratic programming problem without constraints could be solved iteratively by using the gradient-based optimization approach. For illustration, an example of this problem is studied. The computation procedure is expressed, and the result obtained shows the optimal solution in the uncertain environment. In conclusion, the unconstrained quadratic programming problem, which has uncertain parameters, could be solved successfully.
Databáze: OpenAIRE