Dynamic Deployment of Mobile Charging Trucks During Natural Disaster Evacuation: An Offline-to-Online Framework
Rui Ma, Zilin Bian, Kaan Ozbay

TL;DR
This paper introduces an adaptive framework for deploying mobile charging trucks during evacuations to reduce risk exposure and manage EV charging demand efficiently.
Contribution
It develops an offline-to-online adaptive framework using multi-agent reinforcement learning and real-time routing to optimize mobile charging deployment during evacuations.
Findings
ARMD reduces risk exposure by up to 71.1% in demand perturbation scenarios.
It outperforms offline optimization and heuristic methods in simulated hurricane evacuations.
The framework is robust under infrastructure failures and increasing disruption severity.
Abstract
During large-scale evacuations, concentrated electric vehicle (EV) charging demand can overload fixed charging stations (FCSs), leading to prolonged waiting time and increased risk exposure. To address this challenge, this study proposes dynamically deploying mobile charging trucks (MCTs) to complement FCSs, and develops an Adaptive Risk-aware MCT Deployment (ARMD) framework for real-time operation. It divides the MCT deployment into two problems: risk-aware allocation of MCTs among FCSs and dynamic routing of MCTs to the assigned FCSs, and solves them under an offline-to-online paradigm. The resource allocation problem is formulated as a decentralized partially observable Markov decision process, and a multi-agent proximal policy optimization (MAPPO)-based policy is developed to coordinate multiple MCTs under decentralized observations. The policy is pre-trained offline in an…
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