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随机资源分配问题建模和随机模拟遗传算法求解 被引量:3
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作者 陈均明 《重庆工商大学学报(自然科学版)》 2006年第5期430-434,共5页
为了最大限度地满足用户对紧缺随机资源的需求,对随机资源分配问题建立了相关机会多目标规划模型和相关机会目标规划模型,通过表示各个(级)目标事件的诱导约束,建立决策向量和机会函数之间的关系,并运用随机模拟遗传算法求解模型。
关键词 随机资源分配 相关机会(多)目标规划 诱导约束 随机模拟 遗传算法
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嵌套分区算法框架下基于序的优化方法研究 被引量:2
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作者 闫利军 李宗斌 卫军胡 《计算机集成制造系统》 EI CSCD 北大核心 2008年第1期50-55,共6页
为有效解决随机资源分配问题,提出了一种嵌套分区算法框架下基于序的优化方法。该方法将序优化与最优计算量分配技术融入嵌套分区算法框架,利用"序比较"思想进行算法的局部寻优,极大地降低了算法的计算负担,而最优计算量分配... 为有效解决随机资源分配问题,提出了一种嵌套分区算法框架下基于序的优化方法。该方法将序优化与最优计算量分配技术融入嵌套分区算法框架,利用"序比较"思想进行算法的局部寻优,极大地降低了算法的计算负担,而最优计算量分配技术则能够智能地对有限的计算量进行合理的分配,进一步提高序优化的收敛速度及结果的可靠性。嵌套分区方法保证了每一步均对全体可行域进行采样,从而保证了算法的全局收敛性。给出了算法实施的具体步骤并证明了收敛性。用该算法解决标准作业车间调度问题,并将仿真结果与其他算法进行比较,证明了本文算法的收敛速度与优化质量均优于其他算法。 展开更多
关键词 随机资源分配 嵌套分区 序优化 最优计算量分配 作业车间调度
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Scenario-Based Stochastic Resource Allocation with Uncertain Probability Parameters
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作者 FAN Guimei HUANG Haijun 《Journal of Systems Science & Complexity》 SCIE EI CSCD 2017年第2期357-377,共21页
The stochastic resource allocation(SRA) problem is an extensive class of combinatorial optimization problems widely existing in complex systems such as communication networks and unmanned systems. In SRA, the ability ... The stochastic resource allocation(SRA) problem is an extensive class of combinatorial optimization problems widely existing in complex systems such as communication networks and unmanned systems. In SRA, the ability of a resource to complete a task is described by certain probability,and the objective is to maximize the reward by appropriately assigning available resources to different tasks. This paper is aimed at an important branch of SRA, that is, stochastic SRA(SSRA) for which the probability for resources to complete tasks is also uncertain. Firstly, a general SSRA model with multiple independent uncertain parameters(GSSRA-MIUP) is built to formulate the problem. Then,a scenario-based reformulation which can address multi-source uncertainties is proposed to facilitate the problem-solving process. Secondly, in view of the superiority of the differential evolution algorithm in real-valued optimization, a discrete version of this algorithm was originally proposed and further combined with a specialized local search to create an efficient hybrid optimizer. The hybrid algorithm is compared with the discrete differential evolution algorithm, a pure random sampling method, as well as a restart local search method. Experimental results show that the proposed hybrid optimizer has obvious advantages in solving GSSRA-MIUP problems. 展开更多
关键词 分离微分进化 基于情形的重新阐述 随机资源分配
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