基于遗传算法的被动浮标阵优化布放技术研究
doi: 10.3724/SP.J.1146.2007.00546
Analysis of Passive Sonobuoy Array Optimal Placement Based on Genetic Algorithm
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摘要: 在航空反潜战中,合理有效地布放被动浮标阵是提高探测概率的关键。该文将遗传算法应用于优化被动浮标布阵,合理设计了交叉算子,变异算子和适应度函数等。仿真分析了按经验布放的传统浮标阵和GA优化阵形的探测效能,结果表明该算法在复杂水声环境条件下,能有效提高被动浮标阵的探测概率。Abstract: How to deploy efficiently sonobuoys is important in air ASW. The Genetic Algorithm(GA) is applied to sonobuoys deployment with reasonable crossover, mutation and the fitness function. A simulation is present to compare detection probability of sonobuoys array between produced by GA and standard method, and the results indicates that the GA can achieve a significant improvement in detection probability.
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