A Multi-Robot Exploration Planner for Space Applications
Vivek Shankar Varadharajan, Giovanni Beltrame
- 发表年份
- 2025
- 引用次数
- 10
摘要
We propose a distributed multi-robot exploration planning method designed for complex, unconstrained environments featuring steep elevation changes. The method employs a two-tiered approach: a local exploration planner that constructs a grid graph to maximize exploration gain and a global planner that maintains a sparse navigational graph to track visited locations and frontier information. The global graphs are periodically synchronized among robots within communication range to maintain an updated representation of the environment. Our approach integrates localization loop closure estimates to correct global graph drift. In simulation and field tests, the proposed method achieves 50% lower computational runtime compared to state-of-the-art methods while demonstrating superior exploration coverage. We evaluate its performance in two simulated subterranean environments and in field experiments at a Mars-analog terrain.
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