Data-driven robotic sampling for marine ecosystem monitoring

Author:

Das Jnaneshwar1,Py Frédéric2,Harvey Julio B.J.2,Ryan John P.2,Gellene Alyssa3,Graham Rishi2,Caron David A.3,Rajan Kanna2,Sukhatme Gaurav S.2

Affiliation:

1. Department of Computer Science, University of Southern California, USA

2. Monterey Bay Aquarium Research Institute, Moss Landing, USA

3. Department of Biological Sciences, University of Southern California, USA

Abstract

Robotic sampling is attractive in many field robotics applications that require persistent collection of physical samples for ex-situ analysis. Examples abound in the earth sciences in studies involving the collection of rock, soil, and water samples for laboratory analysis. In our test domain, marine ecosystem monitoring, detailed understanding of plankton ecology requires laboratory analysis of water samples, but predictions using physical and chemical properties measured in real-time by sensors aboard an autonomous underwater vehicle (AUV) can guide sample collection decisions. In this paper, we present a data-driven and opportunistic sampling strategy to minimize cumulative regret for batches of plankton samples acquired by an AUV over multiple surveys. Samples are labeled at the end of each survey, and used to update a probabilistic model that guides sampling during subsequent surveys. During a survey, the AUV makes irrevocable sample collection decisions online for a sequential stream of candidates, with no knowledge of the quality of future samples. In addition to extensive simulations using historical field data, we present results from a one-day field trial where beginning with a prior model learned from data collected and labeled in an earlier campaign, the AUV collected water samples with a high abundance of a pre-specified planktonic target. This is the first time such a field experiment has been carried out in its entirety in a data-driven fashion, in effect “closing the loop” on a significant and relevant ecosystem monitoring problem while allowing domain experts (marine ecologists) to specify the mission at a relatively high level.

Publisher

SAGE Publications

Subject

Applied Mathematics,Artificial Intelligence,Electrical and Electronic Engineering,Mechanical Engineering,Modelling and Simulation,Software

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1. Efficient 3D real-time adaptive AUV sampling of a river plume front;Frontiers in Marine Science;2024-01-17

2. Active fault tolerant control based on compound iterative learning observer for trajectory tracking of autonomous underwater vehicles;Ocean Engineering;2023-10

3. Adaptive Exploration-Exploitation Active Learning of Gaussian Processes;2023 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS);2023-10-01

4. Learned Parameter Selection for Robotic Information Gathering;2023 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS);2023-10-01

5. Adaptive Sampling of Algal Blooms Using an Autonomous Underwater Vehicle and Satellite Imagery;2023 IEEE Conference on Control Technology and Applications (CCTA);2023-08-16

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