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首页> 外文期刊>International journal of wireless and mobile computing >Modelling and realisation of multi-sensors mission planning problem based on fuzzy chance-constrained bi-level programming in anti-TBM combat
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Modelling and realisation of multi-sensors mission planning problem based on fuzzy chance-constrained bi-level programming in anti-TBM combat

机译:反TBM作战中基于模糊机会约束双层规划的多传感器任务计划问题建模与实现

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摘要

The Multi-Sensors Mission Planning (MSMP) optimisation model based on Fuzzy Chance-Constrained Bi-Level Programming (FCCBLP) is presented on the basis of analysing the deficiency of the existing MSMP model in anti-TBM combat. Firstly, employing the mission reliability and detecting advantage as the upper and the lower objective function of the model based on taking the model constraints in complex battlefield environment into consideration, respectively. Secondly, particle coding scheme with hierarchical structure for multi-constrained bi-level MSMP problem is constructed. On this basis, an Improved Fuzzy Particle Swarm Optimisation (IFPSO) algorithm is proposed with fuzzy simulation technique and cloud self-adaptive mutation operator. Finally, the simulation results show that the proposed algorithm has a strong global searching ability and fast convergence speed which meet the high requirements about the timeliness of the large-scale MSMP problem.
机译:在分析现有MSMP模型在反TBM作战中的不足的基础上,提出了基于模糊机会约束双层规划(FCCBLP)的多传感器任务计划(MSMP)优化模型。首先,基于复杂战场环境中的模型约束,分别以任务可靠性和优势检测作为模型的上,下目标函数。其次,构造了具有层次结构的多约束双层MSMP问题的粒子编码方案。在此基础上,提出了一种基于模糊仿真技术和云自适应变异算子的改进的模糊粒子群算法。仿真结果表明,该算法具有较强的全局搜索能力和收敛速度,可以满足大规模MSMP问题及时性的高要求。

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