Satellites to seafloor : toward fully autonomous ocean sampling

Thumbnail Image
Date
2017-06
Authors
Thompson, Andrew F.
Chao, Yi
Chien, Steve
Kinsey, James C.
Flexas, M. Mar
Erickson, Zachary K.
Farrara, John
Fratantoni, David M.
Branch, Andrew
Chu, Selina
Troesch, Martina
Claus, Brian
Kepper, James
Linked Authors
Alternative Title
Date Created
Location
DOI
10.5670/oceanog.2017.238
Related Materials
Replaces
Replaced By
Keywords
Abstract
Future ocean observing systems will rely heavily on autonomous vehicles to achieve the persistent and heterogeneous measurements needed to understand the ocean’s impact on the climate system. The day-to-day maintenance of these arrays will become increasingly challenging if significant human resources, such as manual piloting, are required. For this reason, techniques need to be developed that permit autonomous determination of sampling directives based on science goals and responses to in situ, remote-sensing, and model-derived information. Techniques that can accommodate large arrays of assets and permit sustained observations of rapidly evolving ocean properties are especially needed for capturing interactions between physical circulation and biogeochemical cycling. Here we document the first field program of the Satellites to Seafloor project, designed to enable a closed loop of numerical model prediction, vehicle path-planning, in situ path implementation, data collection, and data assimilation for future model predictions. We present results from the first of two field programs carried out in Monterey Bay, California, over a period of three months in 2016. While relatively modest in scope, this approach provides a step toward an observing array that makes use of multiple information streams to update and improve sampling strategies without human intervention.
Description
Author Posting. © The Oceanography Society, 2017. This article is posted here by permission of The Oceanography Society for personal use, not for redistribution. The definitive version was published in Oceanography 30, no. 2 (2017): 160–168, doi:10.5670/oceanog.2017.238.
Embargo Date
Citation
Oceanography 30, no. 2 (2017): 160–168
Cruises
Cruise ID
Cruise DOI
Vessel Name