RUS  ENG
Full version
JOURNALS // Problemy Upravleniya // Archive

Probl. Upr., 2024 Issue 1, Pages 23–34 (Mi pu1340)

Mathematical problems in management

Combined hierarchical crossover in a genetic algorithm for last-mile delivery: efficiency analysis

V. A. Sosedov

Trapeznikov Institute of Control Sciences, Russian Academy of Sciences, Moscow, Russia

Abstract: This paper considers routing for a group of unmanned aerial vehicles within a promising last-mile delivery system. The routing problem is reduced to the bi-criteria single-depot multiple traveling salesman problem and formalized using a directed graph. Being NP-hard, this problem cannot be efficiently solved by standard exact optimization methods. Therefore, heuristic algorithms should be applied to obtain good approximate solutions in a short time. The problem is solved using NSGA-II, the widespread elitist non-dominated sorting genetic algorithm that demonstrates good results in multicriteria optimization. Some chromosome representation and crossing and mutation operators are implemented in the algorithm. A simulation software tool is presented to investigate the influence of the crossing operators used on the convergence speed of the algorithm. Finally, several genetic crossing operators (Partially-Mapped Crossover, Order Crossover, Cycle Crossover, and Combined Hierarchical Crossover) are compared in terms of efficiency.

Keywords: last-mile delivery, multiple traveling salesman problem, multicriteria optimization, genetic algorithm, crossover.

UDC: 519.854.2

Received: 15.05.2023
Revised: 12.11.2023
Accepted: 29.11.2023

DOI: 10.25728/pu.2024.1.3


 English version:
Control Sciences, 2024:1, 18–27


© Steklov Math. Inst. of RAS, 2025