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陆军分队LVC战术训练虚实实体配置研究 被引量:3

Study on Virtual and Real Entity Configuration of Army Units LVC Tactical Training
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摘要 针对LVC系统中"实兵"无法观察"虚兵",无法完全满足陆军战术训练需求问题,开展虚实实体交互受限条件下配置问题研究。各装备作为节点,装备间符合作战客观事实的交互作为边,构建虚实节点交互的无向图描述示例;无向图中所有完全子图,即为虚实实体所有配置模式,该模式下虚实装备可进行任意交互,给出基于无向图完全子图搜索算法的求解示例;结合训练需求,将求解结果归纳为自主式对抗、控制式指挥、管理式演习3类配置模式。配置方案可为我军实战化、体系化训练理论与技术水平提升提供支撑。 Aiming at the problem that "real soldiers" in the LVC system cannot observe "virtual soldiers" and cannot completely meet the army’s tactical training needs, the research on the configuration under the condition of limited interaction between virtual and real entities is carried out. Taking equipment is as the node, taking the interaction between the equipment that conforms to the objective facts of combat as the edge. An undirected graph description example of a virtual-real node interaction is build. All the complete subgraphs in the undirected graph are all the configuration modes of virtual and real entities, under which any interaction can be carried out. A solution example of search algorithm based on complete subgraphs of undirected graph is given. Combined with the training requirements, the solution results are summarized into three configuration modes, autonomous confrontation, control command and management exercise. The configuration scheme can provide support for the improvement of theoretical and technical level of actual combat and systematic training of our army.
作者 高昂 董志明 郭齐胜 张国辉 Gao Ang;Dong Zhiming;Guo Qisheng;Zhang Guohui(Army Armored Force Academy Drill,Training Center,Beijing 100072,China)
出处 《系统仿真学报》 CAS CSCD 北大核心 2021年第4期982-994,共13页 Journal of System Simulation
基金 军内计划课题。
关键词 陆军分队 虚实结合 战术对抗 训练模式 无向图 完全子图 army tactical unit vitality and reality combining tactical confrontation military training mode complex network complete subgraph
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