首页> 外文学位 >Modeling, simulation and visualization of stability and support operations using coevolution: Concepts and environment.
【24h】

Modeling, simulation and visualization of stability and support operations using coevolution: Concepts and environment.

机译:使用协同进化对稳定性和支持操作进行建模,仿真和可视化:概念和环境。

获取原文
获取原文并翻译 | 示例

摘要

Current military simulations focus on high resolution, conventional warfare models based on well-established military doctrine. These systems allow commanders and soldiers to investigate friendly and enemy courses-of-action (COAs) that have been created by military commanders and their analysts. One exception to these systems is FOX, which generates friendly COAs using a genetic algorithm that engage with several static enemy COAs in conventional warfare scenarios. This dissertation extends the use of genetic algorithms to coevolution, a multi-sided genetic algorithm, for non-conventional warfare operations, termed Stability and Support Operations (SASO), which constitute many of the current major military operations in the world. It presents the concepts for a system that generates, simulates, and visualizes COAs for non-conventional units as well as conventional units' force distributions in a SASO environment. The simulation includes such factors as political climate, multi-sided faction animosities, and the influence of information operations on local populations. To allow fast wargaming, many concepts such as terrain and incident types are abstracted, instead of requiring the time-consuming high-resolution models currently in use. It also proposes that the analysis of coevolution strategies benefits from examining changes in fitness function, instead of the fitness function directly, as is generally done for one-sided genetic algorithms.; As inputs, a military expert defines a scenario by specifying an environment of locales, factions and entities that belong to multiple sides. In the Sheherazade SASO Simulation, these entities occupy and move between locales, engage in combat, and work to calm or agitate the local populations. Each entity has a COA, which determines its planned moves and targets of attack. For conventional military units, the COAs represent their force distribution. A coevolution algorithm, or a multi-sided genetic algorithm, evolves these COAs based on the scores that result from the simulation. Visualization tools, including iconographs and other configural displays, allow the analysis and comparison of COAs over generations. The COAs that evolve represent strategies for each side to fulfill their competing goals, and can be used by an analyst as a decision support tool for training or planning.
机译:当前的军事模拟集中在基于完善军事理论的高分辨率常规战争模型上。这些系统使指挥官和士兵能够调查由军事指挥官及其分析人员创建的友好行动路线和敌方行动路线。这些系统的一个例外是FOX,它使用遗传算法生成友好的COA,该遗传算法在常规战争场景中会与多个静态敌方COA交战。本文将遗传算法的应用扩展到用于非常规战争行动的稳定和支持行动(SASO)的多面遗传算法协同进化,这构成了世界上许多当前的主要军事行动。它介绍了在SASO环境中为非常规部队以及常规部队的力分布生成,模拟和可视化COA的系统的概念。模拟包括政治气候,多方派敌意以及信息操作对当地人口的影响等因素。为了实现快速作战,许多概念(例如地形和事件类型)被抽象化,而不是需要当前使用的费时的高分辨率模型。它还提出,协同进化策略的分析受益于检查适应度函数的变化,而不是像单面遗传算法那样直接适应度函数。作为输入,军事专家通过指定属于多个方面的场所,派系和实体的环境来定义方案。在Sheherazade SASO模拟中,这些实体在各个地点之间占领和移动,进行战斗,并努力平息或激怒当地居民。每个实体都有一个COA,可确定其计划的移动和攻击目标。对于常规军事单位,COA代表其部队分布。协同进化算法或多面遗传算法会根据模拟得出的分数来发展这些COA。可视化工具,包括图标集和其他配置式显示,可以分析和比较各代COA。不断发展的COA代表了各方实现其竞争目标的策略,并且分析师可以将其用作培训或计划的决策支持工具。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号