通过CBR学习进行自我优化

I. Pereira, A. Madureira
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引用次数: 5

摘要

在本文中,我们预见了在制造系统中使用多智能体系统来支持动态和分布式调度。我们还设想使用自主属性,以减少管理系统和人为干扰的复杂性。结合多智能体系统、自主计算和自然启发技术,提出了一种具有基于案例推理学习能力的动态调度问题解决方法。目标是允许系统能够自动采用/选择考虑调度特征的元启发式和相应的参数化。从所得结果与以往结果的比较中,我们得出了使用它的好处。
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Self-optimizing through CBR learning
In this paper, we foresee the use of Multi-Agent Systems for supporting dynamic and distributed scheduling in Manufacturing Systems. We also envisage the use of Autonomic properties in order to reduce the complexity of managing systems and human interference. By combining Multi-Agent Systems, Autonomic Computing, and Nature Inspired Techniques we propose an approach for the resolution of dynamic scheduling problem, with Case-based Reasoning Learning capabilities. The objective is to permit a system to be able to automatically adopt/select a Meta-heuristic and respective parameterization considering scheduling characteristics. From the comparison of the obtained results with previous results, we conclude about the benefits of its use.
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