In order to adapt to the changing battlefield situation and improve the combat effectiveness of air combat,the problem of air battle allocation based on Bayesian optimization algorithm(BOA)is studied.First,we discuss ...In order to adapt to the changing battlefield situation and improve the combat effectiveness of air combat,the problem of air battle allocation based on Bayesian optimization algorithm(BOA)is studied.First,we discuss the number of fighters on both sides,and apply cluster analysis to divide our fighter into the same number of groups as the enemy.On this basis,we sort each of our fighters'different advantages to the enemy fighters,and obtain a series of target allocation schemes for enemy attacks by first in first serviced criteria.Finally,the maximum advantage function is used as the target,and the BOA is used to optimize the model.The simulation results show that the established model has certain decision-making ability,and the BOA can converge to the global optimal solution at a faster speed,which can effectively solve the air combat task assignment problem.展开更多
This paper presents a Butterfly Optimization Algorithm(BOA)with a wind-driven mechanism for avoiding natural enemies known as WDBOA.To further balance the basic BOA algorithm's exploration and exploitation capabil...This paper presents a Butterfly Optimization Algorithm(BOA)with a wind-driven mechanism for avoiding natural enemies known as WDBOA.To further balance the basic BOA algorithm's exploration and exploitation capabilities,the butterfly actions were divided into downwind and upwind states.The algorithm of exploration ability was improved with the wind,while the algorithm of exploitation ability was improved against the wind.Also,a mechanism of avoiding natural enemies based on Lévy flight was introduced for the purpose of enhancing its global searching ability.Aiming at improving the explorative performance at the initial stages and later stages,the fragrance generation method was modified.To evaluate the effectiveness of the suggested algorithm,a comparative study was done with six classical metaheuristic algorithms and three BOA variant optimization techniques on 18 benchmark functions.Further,the performance of the suggested technique in addressing some complicated problems in various dimensions was evaluated using CEC 2017 and CEC 2020.Finally,the WDBOA algorithm is used proportional-integral-derivative(PID)controller parameter optimization.Experimental results demonstrate that the WDBOA based PID controller has better control performance in comparison with other PID controllers tuned by the Genetic Algorithm(GA),Flower Pollination Algorithm(FPA),Cuckoo Search(CS)and BOA.展开更多
在局部遮荫下,针对传统最大功率跟踪MPPT(maximum power point tracking)算法不能跳出局部最优找到全局最大功率,及传统蝴蝶优化算法BOA(butterfly optimization algorithm)存在搜索震荡大和收敛慢等问题,提出一种新型的MPPT控制算法。...在局部遮荫下,针对传统最大功率跟踪MPPT(maximum power point tracking)算法不能跳出局部最优找到全局最大功率,及传统蝴蝶优化算法BOA(butterfly optimization algorithm)存在搜索震荡大和收敛慢等问题,提出一种新型的MPPT控制算法。该算法在传统蝴蝶算法上加入收敛因子,来加快全局搜索速度;引入自适应权重系数,来提高蝴蝶优化算法在局部搜索的搜索速度及追踪精度等性能。通过仿真,对比混合算法(INBOA)与BOA、粒子群优化PSO(particle swarm optimization)算法、灰狼优化算法GWO(gray wolf optimization)的函数收敛曲线,验证所提算法具有收敛速度快、搜索精度高的优点;对比INBOA、BOA、PSO、GWO的MPPT算法在静态与动态环境下的性能指标可知,INBOA的MPPT算法具有更高追踪效率、更快收敛速度以及更小的搜索震荡。从而进一步验证混合算法的优越性。展开更多
基金the National Natural Science Foundation of China(No.61074090)。
文摘In order to adapt to the changing battlefield situation and improve the combat effectiveness of air combat,the problem of air battle allocation based on Bayesian optimization algorithm(BOA)is studied.First,we discuss the number of fighters on both sides,and apply cluster analysis to divide our fighter into the same number of groups as the enemy.On this basis,we sort each of our fighters'different advantages to the enemy fighters,and obtain a series of target allocation schemes for enemy attacks by first in first serviced criteria.Finally,the maximum advantage function is used as the target,and the BOA is used to optimize the model.The simulation results show that the established model has certain decision-making ability,and the BOA can converge to the global optimal solution at a faster speed,which can effectively solve the air combat task assignment problem.
基金This work was supported by National Natural Science Foundation of China under Grant U21A20464,62066005Project of the Guangxi Science and Technology under Grant No.ZL23014016.
文摘This paper presents a Butterfly Optimization Algorithm(BOA)with a wind-driven mechanism for avoiding natural enemies known as WDBOA.To further balance the basic BOA algorithm's exploration and exploitation capabilities,the butterfly actions were divided into downwind and upwind states.The algorithm of exploration ability was improved with the wind,while the algorithm of exploitation ability was improved against the wind.Also,a mechanism of avoiding natural enemies based on Lévy flight was introduced for the purpose of enhancing its global searching ability.Aiming at improving the explorative performance at the initial stages and later stages,the fragrance generation method was modified.To evaluate the effectiveness of the suggested algorithm,a comparative study was done with six classical metaheuristic algorithms and three BOA variant optimization techniques on 18 benchmark functions.Further,the performance of the suggested technique in addressing some complicated problems in various dimensions was evaluated using CEC 2017 and CEC 2020.Finally,the WDBOA algorithm is used proportional-integral-derivative(PID)controller parameter optimization.Experimental results demonstrate that the WDBOA based PID controller has better control performance in comparison with other PID controllers tuned by the Genetic Algorithm(GA),Flower Pollination Algorithm(FPA),Cuckoo Search(CS)and BOA.
文摘在局部遮荫下,针对传统最大功率跟踪MPPT(maximum power point tracking)算法不能跳出局部最优找到全局最大功率,及传统蝴蝶优化算法BOA(butterfly optimization algorithm)存在搜索震荡大和收敛慢等问题,提出一种新型的MPPT控制算法。该算法在传统蝴蝶算法上加入收敛因子,来加快全局搜索速度;引入自适应权重系数,来提高蝴蝶优化算法在局部搜索的搜索速度及追踪精度等性能。通过仿真,对比混合算法(INBOA)与BOA、粒子群优化PSO(particle swarm optimization)算法、灰狼优化算法GWO(gray wolf optimization)的函数收敛曲线,验证所提算法具有收敛速度快、搜索精度高的优点;对比INBOA、BOA、PSO、GWO的MPPT算法在静态与动态环境下的性能指标可知,INBOA的MPPT算法具有更高追踪效率、更快收敛速度以及更小的搜索震荡。从而进一步验证混合算法的优越性。