RAS Energy, Mechanics & ControlАвтоматика и телемеханика Automation and Remote Control

  • ISSN (Print) 0005-2310
  • ISSN (Online) 2413-9777

Extended Lanchester-Osipov Model for Accounting Combat Units with Single Burst Effect in Strategic Computer Games

PII
10.31857/S0005231024100103-1
DOI
10.31857/S0005231024100103
Publication type
Article
Status
Published
Authors
Volume/ Edition
Volume / Issue number 10
Pages
144-154
Abstract
Построена модель, описывающая противостояние двух армий, каждая из которых одновременно содержит боевые единицы двух типов: с непрерывным и дискретным огнем. Исследована структура оптимальной композиции армии, составленной как ответ на известную композицию армии противника. Для проверки теории проведены симуляции сражений в простой стратегической игре – автобаттлере.
Keywords
Date of publication
15.10.2024
Year of publication
2024
Number of purchasers
0
Views
10

References

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