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1.
针对基本布谷鸟算法(CS)求解精度有限、收敛速度慢,易陷入局部最优的不足,提出一种基于Cubic混沌模型的自适应布谷鸟优化算法.算法在迭代时,自动调整Lévy flights随机搜索的步长因子,提高算法的收敛速度;将Cubic混沌映射模型嵌入布谷鸟算法,产生混沌扰动信号,对鸟巢位置进行更新,扩大种群多样性,提高全局最优值的搜索能力.通过10个标准测试函数的实验及结果分析,表明算法在寻优精度和收敛速度两方面的改进是有效的.  相似文献   

2.
蝙蝠算法是一种新型的智能优化算法,本文针对基本蝙蝠算法易陷入局部最优、过早处于停滞阶段等不足之处,在蝙蝠速度更新公式中引入了惯性权重,并采用权值动态递减的方式变换权重,更好地平衡了算法的全局搜索能力和局部搜索能力.通过求解一系列经典整数规划问题,并与已有算法进行比较,结果表明:改进的蝙蝠算法在一般整数规划问题的求解中具有较高的计算效率和精度,以及较强的全局搜索能力.  相似文献   

3.
针对秃鹰搜索算法求解精度低、收敛速度较慢、容易陷入局部最优的问题,提出一种基于混沌优化和自适应反向学习的秃鹰搜索算法.首先,在选择搜索空间阶段引入正弦混沌映射更新秃鹰群位置,增加随机性,优化全局搜索能力;其次,在俯冲捕获猎物阶段加入指数自适应,平衡了全局搜索和局部搜索,同时加快收敛速度;最后,对更新后的最优秃鹰位置使用反向学习策略,提高跳出局部最优的可能性.选取12个测试函数对算法的性能进行了测试,结果表明本文改进的秃鹰搜索算法具有更优的求解精度和收敛速度.  相似文献   

4.
针对灰狼算法易陷入局部最优、收敛精度不高、收敛速度慢等缺点,提出一种改进的灰狼算法.引入莱维飞行,扩大搜索范围,增强全局搜索能力,避免陷入局部最优;引入贪婪原理,提升种群优良性以提高算法收敛精度;引入自适应收敛因子,加快收敛速度;引入动态权重策略,制约全局搜索与局部搜索的相互影响.将改进算法与其他四种算法作对比,实验表明,改进算法在收敛速度与收敛精度上都有更好的性能.最后,应用于图像多阈值分割中,采用GWO-Otsu法可以克服传统Otsu法在多阈值分割时计算量大,实时性差的特点,不但能够取得最优解,且明显缩减计算时间.  相似文献   

5.
针对标准灰狼算法种群多样性差、后期收敛速度慢、易陷入局部最优的缺陷,提出一种改进灰狼算法.利用改进Tent混沌映射初始化种群,增加种群多样性;引入螺旋函数,提高算法收敛速度;融合模拟退火思想,避免陷入局部最优;设置搜索阈值,平衡全局搜索与局部搜索;利用改进Tent混沌映射产生新个体,替换性能较差个体并进行高斯扰动,增加寻优精度;将当前解和新解进行算术杂交,以保留当前解优点并减小扰动差异.使用基准测试函数和共享单车停车点选址及期初配置模型测试算法性能.结果表明,改进灰狼算法较标准灰狼算法、遗传算法和粒子群算法,收敛速度更快,寻优精度更高,性能更优越,并将该算法应用到共享单车停车选址上,验证了算法的有效性.  相似文献   

6.
魏洁  王佳鑫 《运筹与管理》2019,28(11):85-90
本文对生鲜农产品多配送中心连续选址问题进行了研究,在建立考虑最小距离约束下连续选址模型的基础上,针对以往连续选址模型求解过程中采用随机方式生成初始解会造成算法搜索范围过大且易陷入局部最优的局限,创新性地提出了连续选址模型的模糊C均值聚类-改进模拟退火(FCM-ISA)算法,并以杭州市为例验证了所建模型及设计算法的有效性。计算结果表明,本文所建立的生鲜农产品多配送中心连续选址模型更符合实际选址情景,设计的FCM-ISA算法收敛速度快且全局寻优效果好,对科学地进行生鲜农产品多配送中心选址决策具有重要的指导意义。  相似文献   

7.
针对标准布谷鸟搜索(CS)算法存在全局搜索和局部搜索能力不平衡的缺点, 提出一种基于梯度的自适应快速布谷鸟搜索(GBAQCS)算法. 在改进的算法中, 针对偏好随机游动的步长, 在利用目标函数的梯度决定步长方向的基础上, 首先提出自适应搜索机制平衡了算法的全局搜索和局部搜索能力; 其次提出快速 搜索策略, 充分利用当前鸟巢信息进行精细化搜索, 从而提高算法的搜索精度和收敛速度. 实验结果表明, 相比其他算法, 所提出的改进策略使算法的全局搜索和局部搜索能力保持了相对的平衡, 并提高了算法的收敛性能.  相似文献   

8.
针对传统灰狼优化算法易早熟收敛陷入局部最优和收敛速度慢的缺陷,提出一种正余双弦自适应灰狼优化算法.首先,在灰狼捕食阶段引入正弦搜索,增强算法的全局勘探能力,减少算法的搜索盲点,提高算法的搜索精度.在引入正弦搜索的同时,引入余弦搜索,增强算法的局部开发能力,提高算法的收敛速度.其次,在搜索过程中加入自适应交叉变异机制,通过适应度值的大小自适应选取交叉变异概率,有效的提高了粒子跳出局部最优的概率.通过数值对比试验,验证了改进算法具有较强的收敛精度和收敛速度.  相似文献   

9.
针对人工鱼群算法由于固定视野导致寻优效率低、易陷入局部极值的弊端,引入视野递减反馈策略,提出一种改进人工鱼群算法.视野随着迭代次数和寻优反馈信息适时变化,旨在平衡算法的全局搜索和局部搜索能力.实验测试表明算法在保证收敛速度的基础上提高了计算精度,并且增加了算法陷入局部极值时快速跳出的可能性,最后将改进算法应用于求解国家AAAAA级风景区最短遍历路径问题.  相似文献   

10.
针对传统鲨鱼优化算法在求解高维目标函数时,易早熟收敛,陷入局部最优的缺陷.提出一种基于正弦控制因子的Lateral变异鲨鱼优化算法.通过正弦曲线的特性和自适应惯性权重,改善了传统鲨鱼优化算法中由于随机选取控制因子数值大小可能导致算法在迭代后期全局搜索能力降低的问题,提高了算法在迭代后期的全局收敛能力,并对最佳鲨鱼位置引入Lateral变异策略,加强了算法跳出局部最优的可能性.改进后的算法对多个shifted单峰,多峰以及固定维测试函数进行求解,实验结果表明,对比多种不同优化算法而言,本文所提LSSO算法具有更高的收敛精度和搜索速度.  相似文献   

11.
整数规划的布谷鸟算法   总被引:1,自引:0,他引:1  
布谷鸟搜索算法是一种新型的智能优化算法.本文采用截断取整的方法将基本布谷鸟搜索算法用于求解整数规划问题.通过对标准测试函数进行仿真实验并与粒子群算法进行比较,结果表明本文所提算法比粒子群算法拥有更好的性能和更强的全局寻优能力,可以作为一种实用方法用于求解整数规划问题.  相似文献   

12.
In the paper, we consider the bioprocess system optimal control problem. Generally speaking, it is very difficult to solve this problem analytically. To obtain the numerical solution, the problem is transformed into a parameter optimization problem with some variable bounds, which can be efficiently solved using any conventional optimization algorithms, e.g. the improved Broyden–Fletcher–Goldfarb–Shanno algorithm. However, in spite of the improved Broyden–Fletcher–Goldfarb–Shanno algorithm is very efficient for local search, the solution obtained is usually a local extremum for non-convex optimal control problems. In order to escape from the local extremum, we develop a novel stochastic search method. By performing a large amount of numerical experiments, we find that the novel stochastic search method is excellent in exploration, while bad in exploitation. In order to improve the exploitation, we propose a hybrid numerical optimization algorithm to solve the problem based on the novel stochastic search method and the improved Broyden–Fletcher–Goldfarb–Shanno algorithm. Convergence results indicate that any global optimal solution of the approximate problem is also a global optimal solution of the original problem. Finally, two bioprocess system optimal control problems illustrate that the hybrid numerical optimization algorithm proposed by us is low time-consuming and obtains a better cost function value than the existing approaches.  相似文献   

13.
《Optimization》2012,61(8):1283-1295
In this article we present the fundamental idea, concepts and theorems of a basic line search algorithm for solving linear programming problems which can be regarded as an extension of the simplex method. However, unlike the iteration of the simplex method from a basic point to an improved adjacent basic point via pivot operation, the basic line search algorithm, also by pivot operation, moves from a basic line which contains two basic feasible points to an improved basic line which also contains two basic feasible points whose objective values are no worse than that of the two basic feasible points on the previous basic line. The basic line search algorithm may skip some adjacent vertices so that it converges to an optimal solution faster than the simplex method. For example, for a 2-dimensional problem, the basic line search algorithm can find an optimal solution with only one iteration.  相似文献   

14.
In this article, we introduce a global optimization algorithm that integrates the basic idea of interval branch and bound, and new local sampling strategies along with an efficient data structure. Also included in the algorithm are procedures that handle constraints. The algorithm is shown to be able to find all the global optimal solutions under mild conditions. It can be used to solve various optimization problems. The local sampling (even if done stochastically) is used only to speed up the convergence and does not affect the fact that a complete search is done. Results on several examples of various dimensions ranging from 1 to 100 are also presented to illustrate numerical performance of the algorithm along with comparison with another interval method without the new local sampling and several noninterval methods. The new algorithm is seen as the best performer among those tested for solving multi-dimensional problems.  相似文献   

15.
Modified cuckoo search: A new gradient free optimisation algorithm   总被引:4,自引:0,他引:4  
A new robust optimisation algorithm, which can be regarded as a modification of the recently developed cuckoo search, is presented. The modification involves the addition of information exchange between the top eggs, or the best solutions. Standard optimisation benchmarking functions are used to test the effects of these modifications and it is demonstrated that, in most cases, the modified cuckoo search performs as well as, or better than, the standard cuckoo search, a particle swarm optimiser, and a differential evolution strategy. In particular the modified cuckoo search shows a high convergence rate to the true global minimum even at high numbers of dimensions.  相似文献   

16.
在现有文献研究的基础上,对传统实数遗传算法的进化策略又作了进一步研究,提出了一种改进的进化策略.进化策略克服了传统实数遗传算法中交叉得到的优秀个体有可能在变异过程中遭到破坏而不能生存的不足,并取消了交叉概率,使交叉产生的个体数增多,这样可增大产生更优秀个体的可能性,因而可使实数遗传算法的性能得到更好的改善.另外,给出了一种计算种群中个体适应度的计算公式和计算方法.该方法不但使得遗传算法具有较强的局部搜索能力,而且具有较强的广域搜索能力和较好的种群多样性,不易陷入局部最优解,从而可快速收敛到全局最优解.5个测试函数的计算结果表明,给出的实数遗传算法的改进进化策略比传统实数遗传算法进化策略的运算速度明显提高,迭代次数明显减少,从而验证了提出的实数遗传算法改进进化策略的有效性.  相似文献   

17.
Random search technique is the simplest one of the heuristic algorithms. It is stated in the literature that the probability of finding global minimum is equal to 1 by using the basic random search technique, but it takes too much time to reach the global minimum. Improving the basic random search technique may decrease the solution time. In this study, in order to obtain the global minimum fastly, a new random search algorithm is suggested. This algorithm is called as the Dynamic Random Search Technique (DRASET). DRASET consists of two phases, which are general search and local search based on general solution. Knowledge related to the best solution found in the process of general search is kept and then that knowledge is used as initial value of local search. DRASET’s performance was experimented with 15 test problems and satisfactory results were obtained.  相似文献   

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