ROSPSYAPFeb 20, 2018

Cooperative Robot Localization Using Event-triggered Estimation

arXiv:1802.07346v121 citations
Originality Incremental advance
AI Analysis

This addresses communication efficiency in multi-robot systems, offering an incremental improvement over existing cooperative localization techniques.

The paper tackles cooperative localization for mobile robots by introducing an event-triggered estimation algorithm that reduces communication costs while maintaining near-optimal performance, achieving this with only a fraction of the communication required by conventional methods.

This paper describes a novel communication-spare cooperative localization algorithm for a team of mobile unmanned robotic vehicles. Exploiting an event-based estimation paradigm, robots only send measurements to neighbors when the expected innovation for state estimation is high. Since agents know the event-triggering condition for measurements to be sent, the lack of a measurement is thus also informative and fused into state estimates. The robots use a Covariance Intersection (CI) mechanism to occasionally synchronize their local estimates of the full network state. In addition, heuristic balancing dynamics on the robots' CI-triggering thresholds ensure that, in large diameter networks, the local error covariances remains below desired bounds across the network. Simulations on both linear and nonlinear dynamics/measurement models show that the event-triggering approach achieves nearly optimal state estimation performance in a wide range of operating conditions, even when using only a fraction of the communication cost required by conventional full data sharing. The robustness of the proposed approach to lossy communications, as well as the relationship between network topology and CI-based synchronization requirements, are also examined.

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