Deployment Optimization for Shared e-Mobility Systems with Multi-agent Deep Neural Search
Man Luo, Bowen Du, Konstantin Klemmer, Hongming Zhu, Hongkai Wen

TL;DR
This paper introduces a multi-agent deep neural search method for optimizing the deployment of shared e-mobility infrastructure, leveraging a high-fidelity simulation and reinforcement learning to improve service coverage and profitability.
Contribution
It presents a novel hierarchical multi-agent neural search approach combined with multi-simulation for effective deployment optimization in shared e-mobility systems.
Findings
Outperforms baseline methods in service coverage.
Achieves higher net revenue in simulations.
Demonstrates effectiveness of reinforcement learning in deployment planning.
Abstract
Shared e-mobility services have been widely tested and piloted in cities across the globe, and already woven into the fabric of modern urban planning. This paper studies a practical yet important problem in those systems: how to deploy and manage their infrastructure across space and time, so that the services are ubiquitous to the users while sustainable in profitability. However, in real-world systems evaluating the performance of different deployment strategies and then finding the optimal plan is prohibitively expensive, as it is often infeasible to conduct many iterations of trial-and-error. We tackle this by designing a high-fidelity simulation environment, which abstracts the key operation details of the shared e-mobility systems at fine-granularity, and is calibrated using data collected from the real-world. This allows us to try out arbitrary deployment plans to learn the…
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Taxonomy
TopicsTransportation and Mobility Innovations · Transportation Planning and Optimization · Human Mobility and Location-Based Analysis
Methodstravel james
