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Dynamic Bayesian network threat assessment for warship formation: a data analysis method

机译:用于舰艇编队的动态贝叶斯网络威胁评估:一种数据分析方法

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摘要

In the target threat assessment of maritime formation air defence, the observation data are easy to be missing, and existing data analysis methods are difficult to carry out dynamic assessment in time series. In order to solve these problems, a data analysis method about threat assessment is proposed, which is based on discrete dynamic Bayesian networks (DDBN) and the utility theory. Firstly, the data characteristics of the target threat assessment are analysed, and a two-stage dynamic Bayesian network structure evaluation system is constructed. Secondly, the continuous variable in the network structure is transformed into a discrete variable, which can avoid the repeated calculation caused by the continuous change of the node threat attribute value in a small range. Then, the prior probability of the credibility of the uncertainty node to make the Bayesian network parameters more realistic, and the utility theory is introduced to carry out the threat ranking. Finally, the simulation results show that the data analysis method is in good agreement with the artificial judgment. This proposed method has a certain practical significance, which realises the data processing of dynamic threat assessment.
机译:在海上编队防空目标威胁评估中,观测数据容易丢失,现有数据分析方法难以进行时间序列动态评估。为了解决这些问题,提出了一种基于离散动态贝叶斯网络(DDBN)和效用理论的威胁评估数据分析方法。首先,对目标威胁评估的数据特征进行分析,构建了两阶段动态贝叶斯网络结构评估系统。其次,将网络结构中的连续变量转换为离散变量,可以避免由于节点威胁属性值在较小范围内连续变化而引起的重复计算。然后,利用不确定性节点可信度的先验概率使贝叶斯网络参数更加逼真,并引入效用理论进行威胁排序。最后,仿真结果表明该数据分析方法与人工判断结果吻合良好。该方法具有一定的实际意义,可以实现动态威胁评估的数据处理。

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