ROMASYJul 21, 2021

Multi-Agent Belief Sharing through Autonomous Hierarchical Multi-Level Clustering

arXiv:2107.09973v1
Originality Incremental advance
AI Analysis

This addresses coordination challenges for agile robots in dynamic environments, but it is incremental as it builds on existing clustering and communication methods.

The paper tackles coordination in multi-agent systems like UAVs by proposing autonomous hierarchical multi-level clustering (MLC) to achieve stable clustering and enable belief sharing, with simulations showing applicability in wildfire monitoring scenarios.

Coordination in multi-agent systems is challenging for agile robots such as unmanned aerial vehicles (UAVs), where relative agent positions frequently change due to unconstrained movement. The problem is exacerbated through the individual take-off and landing of agents for battery recharging leading to a varying number of active agents throughout the whole mission. This work proposes autonomous hierarchical multi-level clustering (MLC), which forms a clustering hierarchy utilizing decentralized methods. Through periodic cluster maintenance executed by cluster-heads, stable multi-level clustering is achieved. The resulting hierarchy is used as a backbone to solve the communication problem for locally-interactive applications such as UAV tracking problems. Using observation aggregation, compression, and dissemination, agents share local observations throughout the hierarchy, giving every agent a total system belief with spatially dependent resolution and freshness. Extensive simulations show that MLC yields a stable cluster hierarchy under different motion patterns and that the proposed belief sharing is highly applicable in wildfire front monitoring scenarios.

Foundations

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