药物过量救援无人机调度的动态优化

Xiaoquan Gao, N. Kong, P. Griffin
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引用次数: 0

摘要

阿片类药物过量抢救是很有时效性的。因此,无人机运送纳洛酮由于其易于部署和灵活的性质,有可能成为一项变革性的创新。我们建立了一个马尔可夫决策过程(MDP)模型,在过量请求到达后派遣适当的无人机,并在完成当前任务后将无人机重新安置到下一个等待位置。由于底层优化问题受维度诅咒的影响,我们使用ad-hoc状态聚合来解决它,并通过更高粒度的模拟来评估它。我们基于模拟的比较研究是基于印第安纳州的紧急医疗服务数据。我们将缩小的MDP模型得到的最优策略与作为基线的短视策略进行比较。我们考虑了无人机类型和服务区域类型对结果的影响,从而深入了解了MDP次优策略在不同设置下的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Optimization of Drone Dispatch for Substance Overdose Rescue
Opioid overdose rescue is very time-sensitive. Hence, drone-delivered naloxone has the potential to be a transformative innovation due to its easily deployable and flexible nature. We formulate a Markov Decision Process (MDP) model to dispatch the appropriate drone after an overdose request arrives and to relocate the drone to its next waiting location after having completed its current task. Since the underlying optimization problem is subject to the curse of dimensionality, we solve it using ad-hoc state aggregation and evaluate it through a simulation with higher granularity. Our simulation-based comparative study is based on emergency medical service data from the state of Indiana. We compare the optimal policy resulting from the scaled-down MDP model with a myopic policy as the baseline. We consider the impact of drone type and service area type on outcomes, which offers insights into the performance of the MDP suboptimal policy under various settings.
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