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On Modeling Multiagent Task Scheduling as a Distributed Constraint Optimization Problem

机译:在模拟多层任务调度作为分布式约束优化问题的情况下

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This paper investigates how to represent and solve multiagent task scheduling as a Distributed Constraint Optimization Problem (DCOP). Recently multiagent researchers have adopted the C_TAEMS language as a standard for multiagent task scheduling. We contribute an automated mapping that transforms C_TAEMS into a DCOP. Further, we propose a set of representational compromises for C_TAEMS that allow existing distributed algorithms for DCOP to be immediately brought to bear on C_TAEMS problems. Next, we demonstrate a key advantage of a constraint based representation is the ability to leverage the representation to do efficient solving. We contribute a set of pre-processing algorithms that leverage existing constraint propagation techniques to do variable domain pruning on the DCOP. We show that these algorithms can result in 96% reduction in state space size for a given set of C_TAEMS problems. Finally, we demonstrate up to a 60% increase in the ability to optimally solve C_TAEMS problems in a reasonable amount of time and in a distributed manner as a result of applying our mapping and domain pruning algorithms.
机译:本文调查了如何表示和解决多层任务调度作为分布式约束优化问题(DCOP)。最近多读研究人员通过C_TAEMS语言作为多算法任务调度的标准。我们有助于将C_TAEMS转换为DCOP的自动映射。此外,我们为C_TAEM提出了一组代表性妥协,该C_TAEMS允许将现有的DCOP分布式算法紧接收到C_TAEMS问题。接下来,我们演示了基于约束的表示的关键优势是利用表示来执行高效求解的能力。我们为一组预处理算法提供了一组预处理算法,它利用现有的约束传播技术在DCOP上进行可变域修剪。我们表明,对于给定的C_TAEMS问题,这些算法可能导致状态空间大小的96%降低。最后,我们展示了在合理的时间内最佳地解决C_TAEMS问题的能力增加了60%,并且以分布式方式应用于应用我们的映射和域修剪算法。

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