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An Efficient Resource Allocation Approach in Real-Time Stochastic Environment

机译:实时随机环境中的一种有效资源分配方法

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摘要

We are interested in contributing to solving effectively a particular type of real-time stochastic resource allocation problem. Firstly, one distinction is that certain tasks may create other tasks. Then, positive and negative interactions among the resources are considered, in achieving the tasks, in order to obtain and maintain an efficient coordination. A standard Multiagent Markov Decision Process (MMDP) approach is too prohibitive to solve this type of problem in real-time. To address this complex resource management problem, the merging of an approach which considers the complexity associated to a high number of different resource types (i.e. Multiagent Task Associated Markov Decision Processes (MTAMDP)), with an approach which considers the complexity associated to the creation of task by other tasks (i.e. Acyclic Decomposition) is proposed. The combination of these two approaches produces a near-optimal solution in much less time than a standard MMDP approach.
机译:我们有兴趣为有效解决特定类型的实时随机资源分配问题做出贡献。首先,一个区别是某些任务可能创建其他任务。然后,在完成任务时要考虑资源之间的正向和负向交互,以便获得并保持有效的协调。标准的多主体马尔可夫决策过程(MMDP)方法太过严格,无法实时解决此类问题。为了解决这个复杂的资源管理问题,将一种考虑了与大量不同资源类型相关联的复杂性的方法(即与多代理任务相关的马尔可夫决策过程(MTAMDP))合并在一起,并考虑了与创建相关的复杂性。提出了通过其他任务(即非循环分解)来完成任务分配。与标准MMDP方法相比,这两种方法的组合可在更短的时间内产生接近最佳的解决方案。

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