Optimization-Augmented Machine Learning for Vehicle Operations in Emergency Medical Services
Journal:
arXiv
Published Date:
Mar 14, 2025
Abstract
Minimizing response times to meet legal requirements and serve patients in a
timely manner is crucial for Emergency Medical Service (EMS) systems. Achieving
this goal necessitates optimizing operational decision-making to efficiently
manage ambulances. Against this background, we study a centrally controlled EMS
system for which we learn an online ambulance dispatching and redeployment
policy that aims at minimizing the mean response time of ambulances within the
system by dispatching an ambulance upon receiving an emergency call and
redeploying it to a waiting location upon the completion of its service. We
propose a novel combinatorial optimization-augmented machine learning pipeline
that allows to learn efficient policies for ambulance dispatching and
redeployment. In this context, we further show how to solve the underlying
full-information problem to generate training data and propose an augmentation
scheme that improves our pipeline's generalization performance by mitigating a
possible distribution mismatch with respect to the considered state space.
Compared to existing methods that rely on augmentation during training, our
approach offers substantial runtime savings of up to 87.9% while yielding
competitive performance. To evaluate the performance of our pipeline against
current industry practices, we conduct a numerical case study on the example of
San Francisco's 911 call data. Results show that the learned policies
outperform the online benchmarks across various resource and demand scenarios,
yielding a reduction in mean response time of up to 30%.