Air combat maneuver decision-making based on improved symbiotic organisms search algorithm
-
摘要:
针对现代空战机动决策问题,提出了一种基于改进共生生物搜索(SOS)算法的空战机动决策方法。首先,分析了传统基本机动动作库存在的不足,对其进行了改进和扩充,设计了11种常用的基本机动动作;然后,综合考虑角度、距离、速度、高度和战机性能优势,构造了战机机动决策优势函数;最后,针对传统共生生物搜索算法在收敛速度、收敛精度以及局部最优上存在的缺陷,将轮盘赌选择方法、动态变异率和梯度思想引入到传统算法当中,对算法有效性和算法性能进行了仿真分析。仿真结果表明,改进的共生生物搜索算法在收敛速度、收敛精度以及跳出局部最优上更具优势,能够满足空战机动决策需求。
Abstract:Aimed at the problem of modern air combat maneuver decision-making, an air combat maneuver decision-making method based on improved symbiotic organisms search (SOS) algorithm is proposed. Firstly, the shortcomings of the traditional basic maneuver inventory are analyzed, improved and expanded, and 11 kinds of common basic maneuver are designed. Secondly, considering the angle, distance, speed, altitude and the performance advantages of fighter planes, the decision-making advantage function of fighter planes is constructed. Finally, aimed at the shortcomings of the traditional SOS algorithm in convergence speed, convergence accuracy and local optimality, the roulette wheel selection method, dynamic variation rate and gradient idea are introduced into the traditional algorithm, and the effectiveness and performance of the algorithm are simulated and analyzed. The simulation results show that the improved SOS algorithm has more advantages in convergence speed, convergence accuracy and jump out of local optimum, and can meet the air combat maneuver decision-making requirements.
-
-
[1] 张涛, 于雷, 周中良, 等.基于变权重伪并行遗传算法的空战机动决策[J].飞行力学, 2012, 30(5):470-474.ZHANG T, YU L, ZHOU Z L, et al.Decision-making for air combat maneuvering based on variable weight pseudo-parallel genetical gorithm[J].Flight Dynamics, 2012, 30(5):470-474(in Chinese). [2] 孟光磊, 罗元强, 梁宵, 等.基于动态贝叶斯网络的空战决策方法[J].指挥控制与仿真, 2017, 39(3):49-54. doi: 10.3969/j.issn.1673-3819.2017.03.011MENG G L, LUO Y Q, LIANG X, et al.Air combat decision-making method based on dynamic Bayesian network[J].Command Control and Simulation, 2017, 39(3):49-54(in Chinese). doi: 10.3969/j.issn.1673-3819.2017.03.011 [3] 周思羽, 吴文海, 孔繁峨, 等.基于随机决策准则的改进多级影响图机动决策方法[J].北京理工大学学报, 2013, 33(3):296-301. doi: 10.3969/j.issn.1001-0645.2013.03.017ZHOU S Y, WU W H, KONG F E, et al.Improved multistage influence diagram maneuvering decision method based on stochastic decision criterions[J].Transactions of Beijing Institute of Technology, 2013, 33(3):296-301(in Chinese). doi: 10.3969/j.issn.1001-0645.2013.03.017 [4] PARK H, LEE B Y, TAHK M J, et al.Differential game based air combat maneuver generation using scoring function matrix[J].International Journal of Aeronautical and Space Sciences, 2016, 17(2):204-213. doi: 10.5139/IJASS.2016.17.2.204 [5] 赖少发, 刘华军.机动目标跟踪支持向量回归学习新方法[J].南京理工大学学报, 2017, 41(2):264-268.LAI S F, LIU H J.Novel approach in maneuvering target tracking based on support vector regression[J].Journal of Nanjing University of Science and Technology, 2017, 41(2):264-268(in Chinese). [6] 张涛, 于雷, 周中良, 等.基于混合算法的空战机动决策[J].系统工程与电子技术, 2013, 35(7):1445-1450.ZHANG T, YU L, ZHOU Z L, et al.Decision-making for aircombat maneuvering based on hybrid algorithm[J].Systems Engineering and Electronics, 2013, 35(7):1445-1450(in Chinese). [7] CHENG M Y, PRAYOGO D.Symbiotic organisms search:A new metaheuristic optimization algorithm[J].Computers & Structures, 2014, 139:98-112. [8] 王艳娇, 马壮.基于子种群拉伸操作的精英共生生物搜索算法[J].控制与决策, 2018, 18(4):1-11.WANG Y J, MA Z.Elite symbiotic organisms search algorithm based on subpopulation stretching operation[J].Control and Decision, 2018, 18(4):1-11(in Chinese). [9] 王艳娇, 陶欢欢.基于旋转学习策略的共生生物搜索算法[J].计算机应用研究, 2017, 34(9):2614-2617. doi: 10.3969/j.issn.1001-3695.2017.09.011WANG Y J, TAO H H.Symbiotic organisms search algorithm based on rotating learning strategy[J].Computer Application Research, 2017, 34(9):2614-2617(in Chinese). doi: 10.3969/j.issn.1001-3695.2017.09.011 [10] 周虎, 赵辉, 周欢, 等.自适应精英反向学习共生生物搜索算法[J].计算机工程与应用, 2016, 52(19):161-166. doi: 10.3778/j.issn.1002-8331.1604-0110ZHOU H, ZHAO H, ZHOU H, et al.Symbiotic organisms search algorithm using adaptive elite opposition based learning[J].Computer Engineering and Applications, 2016, 52(19):161-166(in Chinese). doi: 10.3778/j.issn.1002-8331.1604-0110 [11] VIRTANEN K, RAIVIO T, HAMALAINEN R P.Decision theoretical approach to pilot simulation[J].Journal of Aircraft, 1999, 36(4):632-641. doi: 10.2514/2.2505 [12] AUSTIN F.Automated maneuvering decisions for air-to-air combat: AIAA-87-2393[R].Reston: AIAA, 1987. [13] 卢惠民, 杨蔷薇.飞行仿真数学建模与实践[M].北京:航空工业出版社, 2007.LU H M, YANG Q W.Flight simulation mathematic modeling and practice[M].Beijing:Aviation Industry Press, 2007(in Chinese). [14] 何旭, 景小宁, 冯超.基于蒙特卡洛树搜索方法的空战机动决策[J].空军工程大学学报(自然科学版), 2017, 18(5):36-41. doi: 10.3969/j.issn.1009-3516.2017.05.007HE X, JING X N, FENG C.Air combat maneuver decision based on MCTS method[J].Journal of Airforce Engineering University (Natural Science Edition), 2017, 18(5):36-41(in Chinese). doi: 10.3969/j.issn.1009-3516.2017.05.007 [15] 国海峰, 侯满义, 张庆杰, 等.基于统计学原理的无人作战飞机鲁棒机动决策[J].兵工学报, 2017, 38(1):160-167. doi: 10.3969/j.issn.1000-1093.2017.01.021GUO H F, HOU M Y, ZHANG Q J, et al.UCAV robust maneuver decision based on statistics principle[J].Acta Armamentarii, 2017, 38(1):160-167(in Chinese). doi: 10.3969/j.issn.1000-1093.2017.01.021 期刊类型引用(13)
1. 李立欣,蔡延光. 共生生物搜索算法研究综述. 自动化与信息工程. 2025(01): 1-13 . 百度学术
2. 王福仪,孟秀云,张海阔. 基于ε-level蝙蝠算法的无人机三维航迹规划. 北京航空航天大学学报. 2024(05): 1593-1603 . 本站查看
3. 杨书恒,张栋,熊威,任智,唐硕. 基于可解释性强化学习的空战机动决策方法. 航空学报. 2024(18): 257-274 . 百度学术
4. 王明明,张宝勇,吴冲,平原,齐俊桐. 基于虚拟自博弈多智能体近端优化策略的无人机对抗决策(英文). Transactions of Nanjing University of Aeronautics and Astronautics. 2023(06): 627-640 . 百度学术
5. 陈浩,黄健,刘权,周思航,张中杰. 自主空战机动决策技术研究进展与展望. 控制理论与应用. 2023(12): 2104-2129 . 百度学术
6. LI Bo,LIANG Shiyang,CHEN Daqing,LI Xitong. A Decision-Making Method for Air Combat Maneuver Based on Hybrid Deep Learning Network. Chinese Journal of Electronics. 2022(01): 107-115 . 必应学术
7. 陈艺,江芝蒙,张渝. 云环境下改进SOS的多目标任务调度算法. 计算机工程与设计. 2022(05): 1214-1223 . 百度学术
8. 孟光磊,刘德见,周铭哲,朴海音,陈耀飞. 近距空战训练中的智能虚拟对手决策与导引方法. 北京航空航天大学学报. 2022(06): 937-949 . 本站查看
9. 丁维,王渊,丁达理,谢磊,周欢,谭目来,吕丞辉. 基于LSTM-PPO算法的无人作战飞机近距空战机动决策. 空军工程大学学报(自然科学版). 2022(03): 19-25 . 百度学术
10. 周新民,吴佳晖,贾圣德,王文林. 无人机空战决策技术研究进展. 国防科技. 2021(03): 33-41 . 百度学术
11. 方伟,王玉佳,徐涛,林冲. 航空兵智能决策模型的评估方法. 兵器装备工程学报. 2021(08): 126-132 . 百度学术
12. 嵇慧明,余敏建,乔新航,杨海燕,张帅文. 改进BAS-TIMS算法在空战机动决策中的应用. 国防科技大学学报. 2020(04): 123-133 . 百度学术
13. 孟光磊,张慧敏,朴海音,梁宵,周铭哲. 自动化飞行训练评估中的战机机动动作识别. 北京航空航天大学学报. 2020(07): 1267-1274 . 本站查看
其他类型引用(13)
-