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首页> 外文期刊>International journal of aerospace engineering >Multiobjective Cognitive Cooperative Jamming Decision-Making Method Based on Tabu Search-Artificial Bee Colony Algorithm
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Multiobjective Cognitive Cooperative Jamming Decision-Making Method Based on Tabu Search-Artificial Bee Colony Algorithm

机译:基于禁忌搜索-人工蜂群算法的多目标认知协作干扰决策方法

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摘要

For the future information confrontation, a single jamming mode is not effective due to the complex electromagnetic environment. Selecting the appropriate jamming decision to coordinately allocate the jamming resources is the development direction of the electronic countermeasures. Most of the existing studies about jamming decision only pay attention to the jamming benefits, while ignoring the jamming cost. In addition, the conventional artificial bee colony algorithm takes too many iterations, and the improved ant colony (IAC) algorithm is easy to fall into the local optimal solution. Against the issue, this paper introduces the concept of jamming cost in the cognitive collaborative jamming decision model and refines it as a multiobjective one. Furthermore, this paper proposes a tabu search-artificial bee colony (TSABC) algorithm to cognitive cooperative-jamming decision. It introduces the tabu list into the artificial bee colony (ABC) algorithm and stores the solution that has not been updated after a certain number of searches into the tabu list to avoid meeting them when generating a new solution, so that this algorithm reduces the unnecessary iterative process, and it is not easy to fall into a local optimum. Simulation results show that the search ability and probability of finding the optimal solution of the new algorithm are better than the other two. It has better robustness, which is better in the "one-to-many" jamming mode.
机译:对于未来的信息对抗,由于复杂的电磁环境,单一干扰模式无效。选择合适的干扰决策来协调干扰资源的分配是电子对策的发展方向。现有的大多数关于干扰决策的研究都只关注干扰的好处,而忽略了干扰成本。此外,传统的人工蜂群算法需要太多的迭代,而改进的蚁群算法很容易陷入局部最优解。针对这一问题,本文在认知协作干扰决策模型中引入了干扰成本的概念,并将其完善为多目标模型。此外,本文提出了一种禁忌搜索人工蜂群(TSABC)算法来进行认知合作干扰决策。它将禁忌列表引入人工蜂群(ABC)算法中,并在禁忌列表中进行一定次数的搜索后存储尚未更新的解决方案,以避免在生成新解决方案时遇到问题,因此该算法减少了不必要的工作迭代过程,不容易达到局部最优。仿真结果表明,该算法的搜索能力和寻找最优解的概率均优于其他两种算法。它具有更好的鲁棒性,在“一对多”干扰模式下更好。

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