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1.
车间作业调度问题是个典型的NP-hard问题,为了更有效的解决车间作业调度问题,提出了一种改进的混合算法(IGASA).算法设计了一种基于当前最优解的免疫算子,算子对当前最优个体中选取运行时间最少的一台机器上的工件顺序当作疫苗,并用车间调度问题的图论模型解释了此算子的合理性.最后通过大量实验证明改进的混合算法的性能的优越性,从而证明设计的免疫算子是有意义的.  相似文献   

2.
遗传算法对车间作业调度的研究   总被引:5,自引:0,他引:5  
应用遗传算法对车间作业调度问题进行研究,针对JSSP的具体特性,文中提出变异函数和二次编码的思想,获得较好的仿真结果。  相似文献   

3.
随着绿色制造的到来,在调度问题中考虑能源消耗相关的目标变得至关重要,这已经成为了当下热点研究领域。因此,本文建立以最小化最大完工时间、机器总负荷和总能量消耗为目标的柔性作业车间调度数学模型。就回溯搜索算法的缺点提出改进,该算法通过结合改变个体搜索幅度因子对变异操作进行动态控制,防止种群迭代过程中陷入局部最优,然后通过结合个体引导与随机数扰乱提出一种新的交叉算子,提高后期寻优能力,防止了算法过早收敛。最后,运用基准算例对该算法的求解性进行了验证,并与文献中其他算法从求解精度、求解多样性、求解最优值等方面进行对比,结果表明该改进算法具有优越的求解性能。最后为该问题后续研究提供了三个可行方向:考虑更多约束条件、增加局部搜索算子和考虑实例分析。  相似文献   

4.
工序顺序柔性的作业车间调度问题的改进遗传算法求解   总被引:4,自引:0,他引:4  
针对在工艺设计中提供工序顺序柔性的作业车间调度问题,总结了该问题中柔性工序顺序的类型和特点,并提出了一种求解该问题的改进遗传算法.以尽可能缩短制造周期为目标,结合问题特点,改进了染色体的编码方式,在常用的基于工序顺序的编码方法上融入了基于柔性工序顺序的编码方法,并据此设计了相应的交叉、变异等操作,防止遗传过程中不可行解的产生,避免染色体修复,提高求解效率.最后以MATLAB为工具用某轴承公司的实际生产数据对该算法进行了仿真.通过与不考虑工序顺序柔性的作业车间调度问题遗传算法求解结果进行对比,证明了该算法可行性和有效性.  相似文献   

5.
DBR理论求解柔性作业车间调度问题   总被引:2,自引:0,他引:2       下载免费PDF全文
针对柔性作业车间调度完工时间最小问题,提出一种结合DBR(鼓-缓冲器-绳子)理论和改进遗传算法的方法。在问题初始化时,建立瓶颈机器识别机制改善初始化方法,提高初始解的质量;在运算过程中依据关键路径建立瓶颈机器的识别机制和调度策略。为了更好保留每代中的优良解,采用外部精英库对优良解进行解保留。运用提出的算法求解基准测试问题,实验结果验证了算法的可行性和有效性。  相似文献   

6.
吕海利  孙佳祺  吴姝 《运筹与管理》2021,30(12):220-225
针对传统作业车间调度,在保证交货期的前提下,以机器能耗最小为目标研究带有关机/重启策略的绿色车间调度问题。首先建立数学规划模型,然后在遗传算法的框架下,根据问题特点提出了一种局部调整的解码方式,在排产时进行工序的移动并确定其开始加工时刻。最后进行小规模算例运算,验证数学规划模型的有效性,再利用算例对基于局部调整解码和顺序解码的遗传算法进行对比测试,结果表明提出的局部调整解码可以在降低机器能耗的同时提高求解效率。  相似文献   

7.
针对柔性作业车间生产中机器和工序柔性与多能工的存在建立模型,并提出一种整数编码方案和设一种基于Pareto解集的离散回溯搜索算法进行求解。首先,采用精英化历史种群的方法提升历史种群引导当前种群进化的能力;其次,在交叉变异步骤用遗传交叉算子替代回溯搜索算法原有结构;再次,为保留更多较优解到当前种群,结合快速非支配排序方法更新当前种群;最后,求解数值实例,与多种智能算法进行对比,验证算法的可行性和有效性。  相似文献   

8.
针对柔性作业车间调度在机器故障扰动情况下的动态性,采用基于事件与周期混合驱动的滚动窗口再调度策略进行动态调度.对于工件交货期模糊的情况采用梯形交货期窗口表示,并运用字典序多目标规划的方法,以平均流经时间最小、能耗最小、客户满意度最大为目标,建立多目标柔性作业车间动态调度模型,并设计了改进的自适应免疫遗传算法,在对种群进行初始化时,将初始化机器、初始化工序及随机初始化结合在一起,并对模型进行求解.将算例仿真结果与遗传算法所得的结果进行对比,验证算法的有效性.  相似文献   

9.
陈斌  马良  刘勇 《运筹与管理》2021,30(11):84-91
电磁场优化算法是目前一种比较新颖的群智能优化算法,其利用不同极性电磁场所产生的引斥力,使电磁粒子朝最优解移动。针对标准电磁场优化算法在求解作业车间调度问题时容易陷入局部极值点、收敛精度差等问题,提出了一种多策略引导的电磁场优化算法。算法中粒子受到三种不同来源的引斥力,在迭代过程中通过计算每种移动策略的临代电差、累计电差和综合电差来决定粒子的引导方式,并通过概率变异算法来避免陷入局部最优解。通过作业车间调度问题FT、LA系列测试实例仿真实验,对新算法与其他算法的测试结果进行比较分析,研究表明该算法具有更高的求解精度和更快的计算速度。  相似文献   

10.
针对柔性作业车间调度问题,提出一种新型两阶段动态混合群智能优化算法.算法初始阶段采用动态邻域的协同粒子群进行粗搜索,第二阶段提出了基于混沌算子的蜂群进行细搜索,既增强了种群多样性,又提高了算法搜索精度,实现了全局搜索与局部搜索能力的有效平衡.针对柔性作业车间调度问题特点,采用独特的编码方式和位置更新策略来避免不合法解的产生.最后将此算法在不同规模的实例上进行了仿真测试,并与最近提出的其他几种具有代表性的算法进行了比较,验证了算法的有效性和优越性.  相似文献   

11.
The Distributed and Flexible Job-shop Scheduling problem (DFJS) considers the scheduling of distributed manufacturing environments, where jobs are processed by a system of several Flexible Manufacturing Units (FMUs). Distributed scheduling problems deal with the assignment of jobs to FMUs and with determining the scheduling of each FMU, in terms of assignment of each job operation to one of the machines able to work it (job-routing flexibility) and sequence of operations on each machine. The objective is to minimize the global makespan over all the FMUs. This paper proposes an Improved Genetic Algorithm to solve the Distributed and Flexible Job-shop Scheduling problem. With respect to the solution representation for non-distributed job-shop scheduling, gene encoding is extended to include information on job-to-FMU assignment, and a greedy decoding procedure exploits flexibility and determines the job routings. Besides traditional crossover and mutation operators, a new local search based operator is used to improve available solutions by refining the most promising individuals of each generation. The proposed approach has been compared with other algorithms for distributed scheduling and evaluated with satisfactory results on a large set of distributed-and-flexible scheduling problems derived from classical job-shop scheduling benchmarks.  相似文献   

12.
Management and measurement of risk is an important issue in almost all areas that require decisions to be made under uncertain information. Chance Constrained Programming (CCP) have been used for modelling and analysis of risks in a number of application domains. However, the resulting mathematical problems are non-trivial to represent using algebraic modelling languages and pose significant computational challenges due to their non-linear, non-convex, and the stochastic nature. We develop and implement C++ classes to represent such CCP problems. We propose a framework consisting of Genetic Algorithm and Monte Carlo Simulation in order to process the problems. The non-linear and non-convex nature of the CCP problems are processed using Genetic Algorithm, whereas the stochastic nature is addressed through Simulation. The computational investigations have shown that the framework can efficiently represent and obtain good solutions for seven test problems.  相似文献   

13.
单机排序问题的数学规划表示   总被引:10,自引:0,他引:10  
本文把单机排序问题1||∑wjCj表述成一个二次规划,并把不带权的问题1||∑Cj进一步转化成指派问题,从而用指派问题的匈牙利算法证明SPT序是问题1||∑Cj的最优解,这个结论似乎很平凡,但对于用数学规划来研究排序问题是一个很有意义的进展,这为我们用二次规划和半定规划来研究NP困难的排序问题的近似算法打下基础。  相似文献   

14.
《Optimization》2012,61(2):241-249
We show that the convex hull of the set of feasible solutions of single-item capacitated lot-sizing problem (CLSP) is a base polyhedron of a polymatroid. We present a greedy algorithm to solve CLSP with linear objective function. The proposed algorithm is an effective implementation of the classical Edmonds' algorithm for maximizing linear function over a polymatroid. We consider some special cases of CLSP with nonlinear objective function that can be solved by the proposed greedy algorithm in O ( n ) time.  相似文献   

15.
改进的多目标规划遗传算法   总被引:3,自引:0,他引:3  
本讨论了[1]中多目标规划遗传算法存在的缺陷,并提出了相应改进策略.这些策略包括:引进精粹策略,杂交限制,终止条件,个体表示改进等方面,利用这些策略使算法能克服终止准则和小生境聚集的缺陷,使得算法能更快的收敛到Pareto最优解集同时又有好有分布的Pareto最优解集.  相似文献   

16.
单台机器多链时间约束问题的若干新结果   总被引:1,自引:0,他引:1  
在本文中,我们针对Wikum等人在文[4]中提出的单台机器多链时间 约束问题的若干个公开问题给出了一些新的结果.我们证明了带有延迟时间上界的 k-2-链形结构的排序问题是NP-困难的,并分别对带有延迟时间上界/下界的 k-(2,1,…,1)-链形结构问题给出了一个拟多项式时间算法.  相似文献   

17.
构造一个求解椭圆型边值问题的多子域D—N交替算法,导出对应的容度方程和等价的迭代法,证明算法的收敛性。  相似文献   

18.
Genetic Algorithm (GA) is a popular heuristic method for dealing complex problems with very large search space. Among various phases of GA, the initial phase of population seeding plays an important role in deciding the span of GA to achieve the best fit w.r.t. the time. In other words, the quality of individual solutions generated in the initial population phase plays a critical role in determining the quality of final optimal solution. The traditional GA with random population seeding technique is quite simple and of course efficient to some extent; however, the population may contain poor quality individuals which take long time to converge with optimal solution. On the other hand, the hybrid population seeding techniques which have the benefit of good quality individuals and fast convergence lacks in terms of randomness, individual diversity and ability to converge with global optimal solution. This motivates to design a population seeding technique with multifaceted features of randomness, individual diversity and good quality. In this paper, an efficient Ordered Distance Vector (ODV) based population seeding technique has been proposed for permutation-coded GA using an elitist service transfer approach. One of the famous combinatorial hard problems of Traveling Salesman Problem (TSP) is being chosen as the testbed and the experiments are performed on different sized benchmark TSP instances obtained from standard TSPLIB [54]. The experimental results advocate that the proposed technique outperforms the existing popular initialization methods in terms of convergence rate, error rate and convergence time.  相似文献   

19.
An Ant Colony Optimization Algorithm for Shop Scheduling Problems   总被引:3,自引:0,他引:3  
We deal with the application of ant colony optimization to group shop scheduling, which is a general shop scheduling problem that includes, among others, the open shop scheduling problem and the job shop scheduling problem as special cases. The contributions of this paper are twofold. First, we propose a neighborhood structure for this problem by extending the well-known neighborhood structure derived by Nowicki and Smutnicki for the job shop scheduling problem. Then, we develop an ant colony optimization approach, which uses a strong non-delay guidance for constructing solutions and which employs black-box local search procedures to improve the constructed solutions. We compare this algorithm to an adaptation of the tabu search by Nowicki and Smutnicki to group shop scheduling. Despite its general nature, our algorithm works particularly well when applied to open shop scheduling instances, where it improves the best known solutions for 15 of the 28 tested instances. Moreover, our algorithm is the first competitive ant colony optimization approach for job shop scheduling instances.  相似文献   

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