SMS-Coastal, a New Python Tool to Manage MOHID-Based Coastal Operational Models

Author:

Mendonça Fernando1ORCID,Martins Flávio12ORCID,Janeiro João13ORCID

Affiliation:

1. Centre for Marine and Environmental Research (CIMA), Campus de Gambelas, University of Algarve (UAlg), 8005-139 Faro, Portugal

2. Instituto Superior de Engenharia (ISE), Campus da Penha, University of Algarve (UAlg), 8005-139 Faro, Portugal

3. S2AQUA, Laboratório Colaborativo, Associação para uma Aquacultura Sustentável e Inteligente, 8700-194 Olhão, Portugal

Abstract

This paper presents the Simulation Management System for Operational Coastal Hydrodynamic Models, or SMS-Coastal, and its novel methodology designed to automate forecast simulations of coastal models. Its working principle features a generic framework that can be easily configured for other applications, and it was implemented with the Python programming language. The system consists of three main components: the Forcing Processor, Simulation Manager, and Data Converter, which perform operations such as the management of forecast runs and the download and conversion of external forcing data. The SMS-Coastal was tested on two model realisations using the MOHID System: SOMA, a model of the Algarve coast in Portugal, and BASIC, a model of the Cartagena Bay in Colombia. The tool proved to be generic enough to handle the different aspects of the models, being able to manage both forecast cycles.

Publisher

MDPI AG

Subject

Ocean Engineering,Water Science and Technology,Civil and Structural Engineering

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