A DEEP REINFORCEMENT LEARNING-ENABLED DYNAMIC REDEPLOYMENT SYSTEM FOR MOBILE AMBULANCES IN QATAR
Abstract
Efficient allocation of ambulances is crucial for Emergency Medical Services (EMS)
to respond promptly and deliver life-saving care on time. The challenge lies in the
ambulance redeployment problem, which aims to devise optimal deployment strategies
to minimize response times and maximize coverage in a given area.
Traditional approaches to ambulance allocation problem rely on heuristics and
predefined rules, often struggling to adapt to the dynamic nature of emergencies. In
response, this thesis proposes a dynamic ambulance redeployment system to reduce
ambulance response time, thus increasing the chances of saving lives.
When an ambulance becomes available, the system recognizes it and intelligently
reallocates it to the appropriate ambulance station, including ambulances that have come
via patient transfers. By doing this, ambulance stations become more equipped to handle
crises in the future. It is necessary to take into account several dynamic factors at each
station concurrently due to the complexity of this operation. It is almost hard to control
these elements with manual rules. We propose combining and prioritizing the dynamic
factors of each station into a single score by means of a DNN, which we term the
deep score network, in order to overcome this complexity. Through the utilization of
DNN, we propose a Deep Reinforcement Learning (DRL) framework that efficiently
trains the deep scoring network. Our dynamic ambulance redeployment algorithm is
presented here for real-world applications based on this learning. Similarly, we apply the proposed framework on dynamic Charlie vehicle redeployment. Experimental results
on real-world data from Qatar EMS show that our method clearly outperforms the stateof-
the-art baseline methods. For example, for dynamic ambulance redeployment, the
average response time of patients can be reduced by ⇠ 100 seconds (20%) with our
proposed method, and the percentage of patients picked up within 10 minutes can be
improved from 64.8% to 79.8%. As for the dynamic redeployment of Charlie vehicles,
the average response time of critical patients can be reduced by ⇠ 125 seconds (13.33%)
with our proposed method, and the percentage of critical patients treated within 10
minutes can be improved by approximately 11.08%.This improvement leads into more
effective rescue operations for people in danger.
DOI/handle
http://hdl.handle.net/10576/56498Collections
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