RUS  ENG
Full version
JOURNALS // Zhurnal Vychislitel'noi Matematiki i Matematicheskoi Fiziki // Archive

Zh. Vychisl. Mat. Mat. Fiz., 2023 Volume 63, Number 12, Page 2156 (Mi zvmmf11679)

Optimal control

Density function-based trust region algorithm for approximating Pareto front of black-box multiobjective optimization problems

K. H. Ju, Y. B. O, K. Rim

Department of Mathematics, Kim Il Sung University CITY, Democratic People’s Republic of Korea

Abstract: In this paper, we consider a black-box multiobjective optimization problem, whose objective functions are computationally expensive. We propose a density function-based trust region algorithm for approximating the Pareto front of this problem. At every iteration, we determine a trust region and then in this trust region, select several sample points, at which are evaluated objective function values. In order to obtain non-dominated solutions in the trust region, we convert given objective functions into one function: scalarization. Then, we construct quadratic models of this function and the objective functions. In current trust region, we find optimal solutions of all single-objective optimization problems with these models as objectives. After that, we remove dominated points from the set of obtained solutions. In order to estimate the distribution of non-dominated solutions, we introduce a density function. By using this density function, we obtain the most “isolated” point among the non-dominated points. Then, we construct a new trust region around this point and repeat the algorithm. We prove convergence of proposed algorithm under the several assumptions. Numerical results show that even in case of tri-objective optimization problems, the points generated by proposed algorithm are uniformly distributed over the Pareto front.

Key words: multiobjective optimization, trust region method, density function, black-box function, the most isolated point.

UDC: 619.852

Received: 28.04.2023
Revised: 28.04.2023
Accepted: 22.08.2023

Language: English

DOI: 10.31857/S0044466923120189


 English version:
Computational Mathematics and Mathematical Physics, 2023, 63:12, 2492–2512

Bibliographic databases:


© Steklov Math. Inst. of RAS, 2024