Abstract

Autonomous underwater vehicles (AUVs) are cost- and time-effective platforms for mapping and monitoring of aquatic environments. Previous works have shown the benefits of using informative adaptive sampling approaches for field estimation over running standard surveys. We are interested in extending these works into decentralized multi-robot approaches. Simulation experiments with two AUVs, comparing no data sharing with timed surfacing for data sharing, show that the system performs better when data is shared. We further explore the trade-off between using high-bandwidth surface Wi-Fi communications, at the cost of surfacing, and low-bandwidth underwater acoustic communications (acomms). Our simulation results show that for multi-vehicle decentralized adaptive sampling, we can increase modeling performance by having vehicles share their measurements. Furthermore, zero loss acomms can perform better than data sharing through timed surfacing events. However, when acomms throughput is reduced, modeling uncertainty increases.

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