4.7 Article

OpenDrift v1.0: a generic framework for trajectory modelling

期刊

GEOSCIENTIFIC MODEL DEVELOPMENT
卷 11, 期 4, 页码 1405-1420

出版社

COPERNICUS GESELLSCHAFT MBH
DOI: 10.5194/gmd-11-1405-2018

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资金

  1. Joint Rescue Coordination Centres through the project OpenLeeway
  2. Research Council of Norway through the CIRFA project [237906]
  3. Research Council of Norway through the RETROSPECT project [244262]

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OpenDrift is an open-source Python-based framework for Lagrangian particle modelling under development at the Norwegian Meteorological Institute with contributions from the wider scientific community. The framework is highly generic and modular, and is designed to be used for any type of drift calculations in the ocean or atmosphere. A specific module within the OpenDrift framework corresponds to a Lagrangian particle model in the traditional sense. A number of modules have already been developed, including an oil drift module, a stochastic search-and-rescue module, a pelagic egg module, and a basic module for atmospheric drift. The framework allows for the ingestion of an unspecified number of forcing fields (scalar and vectorial) from various sources, including Eulerian ocean, atmosphere and wave models, but also measurements or a priori values for the same variables. A basic backtracking mechanism is inherent, using sign reversal of the total displacement vector and negative time stepping. OpenDrift is fast and simple to set up and use on Linux, Mac and Windows environments, and can be used with minimal or no Python experience. It is designed for flexibility, and researchers may easily adapt or write modules for their specific purpose. OpenDrift is also designed for performance, and simulations with millions of particles may be performed on a laptop. Further, OpenDrift is designed for robustness and is in daily operational use for emergency preparedness modelling (oil drift, search and rescue, and drifting ships) at the Norwegian Meteorological Institute.

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