LGAO-PHJan 10, 2023

An Efficient Drifters Deployment Strategy to Evaluate Water Current Velocity Fields

arXiv:2301.04216v110 citationsh-index: 28
Originality Incremental advance
AI Analysis

This work addresses a specific deployment optimization problem for oceanographic data collection, representing an incremental advance in the field.

The paper tackles the problem of efficiently deploying Lagrangian floaters to measure water current velocity fields by proposing a clustering-based strategy that selects initial deployment locations to ensure coverage of inhomogeneities, demonstrating a considerable improvement over random uniform deployment.

Water current prediction is essential for understanding ecosystems, and to shed light on the role of the ocean in the global climate context. Solutions vary from physical modeling, and long-term observations, to short-term measurements. In this paper, we consider a common approach for water current prediction that uses Lagrangian floaters for water current prediction by interpolating the trajectory of the elements to reflect the velocity field. Here, an important aspect that has not been addressed before is where to initially deploy the drifting elements such that the acquired velocity field would efficiently represent the water current. To that end, we use a clustering approach that relies on a physical model of the velocity field. Our method segments the modeled map and determines the deployment locations as those that will lead the floaters to 'visit' the center of the different segments. This way, we validate that the area covered by the floaters will capture the in-homogeneously in the velocity field. Exploration over a dataset of velocity field maps that span over a year demonstrates the applicability of our approach, and shows a considerable improvement over the common approach of uniformly randomly choosing the initial deployment sites. Finally, our implementation code can be found in [1].

Code Implementations1 repo
Foundations

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