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一种可用于鱼雷导引的高冲突数据融合处理方法 被引量:1

Highly Conflicting Data Fusion Processing Method in Torpedo Guidance
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摘要 目标释放诱饵等对抗装备对鱼雷武器实施干扰、诱骗等可增加其逃生的机会,精确制导及智能识别技术仍将是鱼雷制导技术发展的方向之一。鱼雷的精确制导及智能识别技术需要以传感器获取目标不同的特征数据或同性周期数据为判断,并将这些数据融合。论文针对处理多信息源数据高度冲突时的问题,提出了一种改进的数据合成方法。该方法可应用于鱼雷目标识别时数据高冲突的处理,减小识别结果的不确定性。 In order to escape from torpedo attack ,the target uses decoys to interfere and bamboozle torpedo. The tech‐nology of Precision Guide and Intelligent Recognition of the torpedo will be improved in the future. The data will be got from sensor which is different from characteristic or cycle. Those information should be synthesized and offered to the Precision Guide and Intelligent Recognition system. The text provides an improved method to deal with the highly conflicting data when the conclusion is opposite with reality. The method can be applied in the target discrimination to torpedo. The conclu‐sion of discrimination will be more credible.
机构地区 海军装备研究院
出处 《舰船电子工程》 2014年第12期186-188,共3页 Ship Electronic Engineering
关键词 鱼雷目标识别 冲突数据 信息融合 不确定度 target discrimination to torpedo conflicting data information fusion uncertainty degree
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