FlowPilot: Shoreside Autonomy for Profiling Floats

Zoltan Szuts,Trevor Harrison, Tom Curtin, Beth Kirby,Barry Ma

OCEANS 2023 - MTS/IEEE U.S. Gulf Coast(2023)

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摘要
Over the last twenty years, profiling floats have revolutionized ocean observations with globally distributed Lagrangian arrays performing fixed vertical sampling cycles. Here we investigate adaptive sampling with an array of inter-dependent floats guided by a software package called FlowPilot, which uses all available float measurements to select park depths that provide favorable drifts based on sampling goals. Drift predictions are performed with multiple prediction methods, including methods that use float data (drift velocity, geostrophic velocity calculations) or from external sources like numerical ocean forecast models. A skill-based weight is assigned to each method based on how accurately it predicts recent drifts. With this generalized approach to prediction, disparate methods can be combined numerically to permit multi-method optimization. The emergent skill of FlowPilot is tested and quantified by numerical simulations that minimize dispersion by keeping a grid of floats close to the center of the deployment box.
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关键词
buoyancy-control,floats,oceanography,navigation,drift,velocity,observations
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