Published April 12, 2022 | Version v2.0.3
Software Open

NOC-MSM/Belize_workshop: Belize workshop (regional NEMO ocean in Docker container)

  • 1. National Oceanography Centre
  • 2. Universidad Politecnica de Yucatan

Description

Instructions and code examples to build and run a regional NEMO (https://www.nemo-ocean.eu/) ocean model and apply some post simulation analysis. The workflow uses Docker containers and are designed to be run on consumer laptops. We cover the following topics:

Introduction to Docker Download and setup Docker. Download and setup (or build) NEMO and XIOS server in a Docker container. Running NEMO Download and setup Miniconda (Python) in a Docker container. Plotting and animating surface fields with Python. Analysis of NEMO outputs with PARCELS. This work has been supported by a number of projects:

Addressing Challenges of Coastal Communities through Ocean Research for Developing Economies ACCORD. NERC NE/R000123/1 - providing international partners in eight developing economy countries scientific evidence and capability to ensure sustainable growth of their blue economies.

The Commonwealth Marine Economies Programme "Enabling safe and sustainable marine economies across Commonwealth Small Island Developing States", and in particular the project: "Determining Seagrasses Value to the Belizean Blue Economy (SALINE)". The Commonwealth Marine Economies (CME) Programme was announced by the British Prime Minister in 2015 to help Commonwealth Small Island Developing States (SIDS) make the most of their natural maritime advantages, to enable sustainable economic growth and alleviate poverty.

Marine World Modelling Systems for Yucatan Economic Development: A British Council funded workshop (25-29 November 2019, Merida, Yucatan, Mexico) enabled through the Higher Education Alliances program. This facilitated the creation of the workshop material.

Files

Belize_workshop_Aug20.pdf

Files (179.3 MB)

Name Size Download all
md5:4b9bed82352e5ccc9e2f0bda2fcec6f0
215.5 kB Preview Download
md5:ff5dde0f7d17ab81fb23ebf559409c67
178.9 MB Preview Download
md5:96c12e066279d4c336ff7ac810849bd1
183.8 kB Preview Download

Additional details