Multi-target Threat Assessment Method Based on An Effective Reduction Method

Yang Gao, Na Lv
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Abstract

Multi-target threat assessment is an important prerequisite for jamming resource allocation and operational preparations. The more accurate the threat assessment is, the better the effect of decision support will be. In the face of complex battlefield environment and massive data, enough threat assessment attributes are conducive to improving the accuracy and credibility of the threat assessment. However, it also generates a huge amount of computation, which may cause huge challenge for both hardware and software to get the required results in a limited time. Thus, an effective attribute reduction method is proposed. Firstly, enough evaluation attributes are selected for specific threat targets. The attributes are reduced by analytic network process (AHP), the minimum variance method is used to optimize the attribute data, and then the rough set theory is applied to further optimize the threat evaluation attributes. Finally, the rationality and effectiveness are illustrated by an example of air target threat assessment
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基于有效约简方法的多目标威胁评估方法
多目标威胁评估是干扰资源分配和作战准备的重要前提。威胁评估越准确,决策支持效果越好。面对复杂的战场环境和海量数据,足够的威胁评估属性有利于提高威胁评估的准确性和可信度。但是,它也会产生大量的计算量,这可能会给硬件和软件在有限的时间内获得所需的结果带来巨大的挑战。从而提出了一种有效的属性约简方法。首先,针对特定的威胁目标选取足够的评价属性;通过AHP法对属性进行约简,利用最小方差法对属性数据进行优化,然后利用粗糙集理论对威胁评估属性进行进一步优化。最后,以空中目标威胁评估为例,说明了该方法的合理性和有效性
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