Learning-enhanced market-based task allocation for oversubscribed domains

E. Jones, M. Dias, A. Stentz
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引用次数: 53

Abstract

This paper presents a learning-enhanced market-based task allocation approach for oversubscribed domains. In oversubscribed domains all tasks cannot be completed within the required deadlines due to a lack of resources. We focus specifically on domains where tasks can be generated throughout the mission, tasks can have different levels of importance and urgency, and penalties are assessed for failed commitments. Therefore, agents must reason about potential future events before making task commitments. Within these constraints, existing market-based approaches to task allocation can handle task importance and urgency, but do a poor job of anticipating future tasks, and are hence assessed a high number of penalties. In this work, we enhance a baseline market-based task allocation approach using regression-based learning to reduce overall incurred penalties. We illustrate the effectiveness of our approach in a simulated disaster response scenario by comparing performance with a baseline market-approach.
学习增强的基于市场的超额订阅域任务分配
提出了一种基于学习增强的基于市场的超额订阅域任务分配方法。在超额订阅的域中,由于缺乏资源,所有任务都无法在规定的期限内完成。我们特别关注任务可以在整个任务中产生的领域,任务可以具有不同级别的重要性和紧迫性,并且对失败的承诺进行惩罚。因此,在做出任务承诺之前,智能体必须对潜在的未来事件进行推理。在这些限制条件下,现有的基于市场的任务分配方法可以处理任务的重要性和紧迫性,但在预测未来任务方面做得很差,因此被评估为大量的惩罚。在这项工作中,我们使用基于回归的学习来增强基于基准的基于市场的任务分配方法,以减少总体产生的惩罚。我们通过将性能与基准市场方法进行比较,在模拟灾难响应场景中说明了我们的方法的有效性。
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