An online decision-theoretic pipeline for responder dispatch

Ayan Mukhopadhyay, Geoffrey Pettet, Chinmaya Samal, A. Dubey, Yevgeniy Vorobeychik
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引用次数: 18

Abstract

The problem of dispatching emergency responders to service traffic accidents, fire, distress calls and crimes plagues urban areas across the globe. While such problems have been extensively looked at, most approaches are offline. Such methodologies fail to capture the dynamically changing environments under which critical emergency response occurs, and therefore, fail to be implemented in practice. Any holistic approach towards creating a pipeline for effective emergency response must also look at other challenges that it subsumes - predicting when and where incidents happen and understanding the changing environmental dynamics. We describe a system that collectively deals with all these problems in an online manner, meaning that the models get updated with streaming data sources. We highlight why such an approach is crucial to the effectiveness of emergency response, and present an algorithmic framework that can compute promising actions for a given decision-theoretic model for responder dispatch. We argue that carefully crafted heuristic measures can balance the trade-off between computational time and the quality of solutions achieved and highlight why such an approach is more scalable and tractable than traditional approaches. We also present an online mechanism for incident prediction, as well as an approach based on recurrent neural networks for learning and predicting environmental features that affect responder dispatch. We compare our methodology with prior state-of-the-art and existing dispatch strategies in the field, which show that our approach results in a reduction in response time of responders with a drastic reduction in computational time.
一种在线响应调度决策理论管道
派遣紧急救援人员处理交通事故、火灾、求救电话和犯罪的问题困扰着全球的城市地区。虽然这些问题已经得到了广泛的研究,但大多数方法都是离线的。这种方法无法捕捉到发生重大应急反应的动态变化的环境,因此无法在实践中实施。任何旨在建立有效应急响应管道的整体方法都必须考虑到它所包含的其他挑战——预测事件发生的时间和地点,以及了解不断变化的环境动态。我们描述了一个以在线方式共同处理所有这些问题的系统,这意味着模型可以通过流数据源进行更新。我们强调了为什么这种方法对应急响应的有效性至关重要,并提出了一个算法框架,可以为响应者调度的给定决策理论模型计算有希望的行动。我们认为,精心设计的启发式方法可以平衡计算时间和解决方案质量之间的权衡,并强调为什么这种方法比传统方法更具可扩展性和可处理性。我们还提出了一种事件预测的在线机制,以及一种基于递归神经网络的方法,用于学习和预测影响响应者调度的环境特征。我们将我们的方法与先前最先进的和现有的调度策略进行了比较,结果表明,我们的方法减少了响应者的响应时间,大大减少了计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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