Exploring the Generalizability of Geomagnetic Navigation: A Deep Reinforcement Learning approach with Policy Distillation
Wenqi Bai, Shiliang Zhang, Xiaohui Zhang, Xuehui Ma, Songnan Yang,, Yushuai Li, Tingwen Huang

TL;DR
This paper presents a deep reinforcement learning approach with policy distillation to improve the generalizability of geomagnetic navigation strategies for autonomous vehicles across different environments.
Contribution
It introduces a multi-teacher policy distillation framework with reward shaping to enhance cross-domain geomagnetic navigation performance.
Findings
Effective transfer of learned strategies to new navigation areas
Superior performance over evolutionary-based methods in key metrics
Enhanced exploration efficiency through reward shaping
Abstract
The advancement in autonomous vehicles has empowered navigation and exploration in unknown environments. Geomagnetic navigation for autonomous vehicles has drawn increasing attention with its independence from GPS or inertial navigation devices. While geomagnetic navigation approaches have been extensively investigated, the generalizability of learned geomagnetic navigation strategies remains unexplored. The performance of a learned strategy can degrade outside of its source domain where the strategy is learned, due to a lack of knowledge about the geomagnetic characteristics in newly entered areas. This paper explores the generalization of learned geomagnetic navigation strategies via deep reinforcement learning (DRL). Particularly, we employ DRL agents to learn multiple teacher models from distributed domains that represent dispersed navigation strategies, and amalgamate the teacher…
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Taxonomy
TopicsReinforcement Learning in Robotics · Transportation and Mobility Innovations · Transportation Planning and Optimization
