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基于模糊聚类的工程保障力量编组方法

Grouping Method of Engineering Support Force Based on Fuzzy Clustering
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摘要 针对当前工程保障指挥中兵力编组主要依赖指挥员的经验和主观决策的问题,提出基于模糊聚类的工程保障力量编组方法。分析工程保障力量与任务需求的关联特征,通过构筑急造军路任务示例验证工程保障力量编组方法。结果表明:该方法能够按照任务需求划分所属工程保障力量,为快速制定工程保障行动方案提供支撑。 In view of the problem that the current engineering support force grouping mainly depends on the experience and subjective decision-making of the commander,a method of engineering support force grouping based on fuzzy clustering is proposed.The correlation characteristics between engineering support force and mission requirements are analyzed,and the method of engineering support force grouping is verified by constructing an urgent military road mission example.The results show that the method can divide the engineering support forces according to the task requirements,and provide support for the rapid formulation of engineering support action plan.
作者 王东 陈虹 徐勇 任利平 Wang Dong;Chen Hong;Xu Yong;Ren Liping(Technology Center,Southwest Computer Co.,Ltd.,Chongqing 400060,China)
出处 《兵工自动化》 2023年第8期37-39,44,共4页 Ordnance Industry Automation
关键词 工程保障 模糊聚类分析 兵力编组 engineering support fuzzy clustering analysis force grouping
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