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基于多传感器的空情信息融合技术
Air-Information Fusion Technology Based on Multi-Sensor

DOI: 10.12677/jsta.2024.123049, PP. 456-462

Keywords: 空情信息融合,融合模型,融合算法,融合评估
Air-Information Fusion
, Fusion Model, Fusion Algorithm, Fusion Evaluation

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Abstract:

随着军事变革和武器装备的快速发展,多武器装备整体作战逐渐替代单个武器装备作战,因此作为整体作战决策环节的指控系统是十分重要的。如何从各个武器装备的传感器系统中提取有效信息并快速制定出作战方案是指控系统的核心功能,信息融合技术为其提供了有力支撑。本文总结了空情信息融合模型的发展历程、不同融合算法的优点和局限性,对融合模型和算法的选择和研究具有一定的参考价值。本文根据指标的规定要求将指标归纳为三类并分别给出了相应的评估方法,形成较为完整的信息融合评价体系,对融合软件的论证、验收以及融合算法的改进具有一定的指导意义。
With the rapid advancement of military revolution and weaponry, the integration of multiple weapon equipment in combat gradually supersedes individual weapon equipment. The command and control system, as a crucial component of the overall operational decision-making process, holds significant importance. The core function of the control system lies in extracting valuable information from the sensor systems of each weapon equipment, and swiftly formulating combat plans. Information fusion technology plays a crucial role in providing robust support for this purpose. This paper summarizes the development of air-information fusion model and the advantages and limitations of different fusion algorithms, which has certain reference value for the selection and research of fusion model and algorithm. According to the requirements of the indicators, this paper summarizes the indicators into three categories and gives corresponding evaluation methods respectively, forming a relatively complete information fusion evaluation system, which has certain guiding significance for the demonstration and acceptance of fusion software and the improvement of fusion algorithm.

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