Keywords: transport problem, transport problem with fixed surcharges, genetic algorithm, chromosome, mutation, crossing over, heuristic algorithm, transportation plan, optimization
Development of a genetic algorithm for solving a one-stage transport problem with fixed surcharges
UDC 519.863:004.023
DOI: 10.26102/2310-6018/2024.46.3.011
Managing complex logistics processes of modern enterprises requires the development of adequate mathematical models that make it possible to calculate optimal transportation plans. One of these models is the transport problem with fixed surcharges, the feature of which is the nonlinearity of the goal function. This study is devoted to the development of a genetic algorithm for solving a transport problem with fixed surcharges. The basis of the study is the analysis of existing approaches to solving various modifications of transport problems. A feature of the proposed algorithm is the formation at each stage of chromosomes that satisfy the constraints of the problem, which allows reducing the solution time. The study presents in detail the steps of the algorithm for forming the initial population, crossing over and mutation, adapted to the conditions of the transport problem with fixed surcharges. The formation of the initial population is based on the approach of randomly selecting a “supplier-consumer” pair, which ensures its sufficient diversity. The crossing over operator is implemented by developing an algorithm based on dividing modulo two the sum of the genes of the parents and subsequent redistribution of the remainders from the division between the descendants. The chromosome mutation algorithm is based on changing the transportation plan for randomly selected rows and columns while maintaining the admissibility of the individual. To conduct a computational experiment, a software product was developed in Python, and a demonstration example of the calculation is given. The results of the calculations for a group of agricultural producers allowed us to draw conclusions about the practical significance of the proposed algorithm and identified the possibilities of its use for solving multi-stage transport problems that are relevant for large manufacturing and logistics companies.
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Keywords: transport problem, transport problem with fixed surcharges, genetic algorithm, chromosome, mutation, crossing over, heuristic algorithm, transportation plan, optimization
For citation: Bondarenko Y.V., Goroshko I.V., Penzenskiy A.A. Development of a genetic algorithm for solving a one-stage transport problem with fixed surcharges. Modeling, Optimization and Information Technology. 2024;12(3). URL: https://moitvivt.ru/ru/journal/pdf?id=1624 DOI: 10.26102/2310-6018/2024.46.3.011 (In Russ).
Received 09.07.2024
Revised 18.07.2024
Accepted 23.07.2024
Published 30.09.2024