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Title: Toward Digitalization of Fishing Vessels to Achieve Higher Environmental and Economic Sustainability
Authors: Uriondo, Zigor; Fernandes, Jose A.; Reite, Karl-Johan; Quincoces, Inaki; Pazouki, Kayvan
Citation: ACS ENVIRONMENTAL AU, 2024, 4, 142-151
Abstract: Fishing vessels need to adapt to and mitigate climate changes, but solution development requires better information about the environment and vessel operations. Even if ships generate large amounts of potentially useful data, there is a large variety of sources and formats. This lack of standardization makes identification and use of key data challenging and hinders its use in improving operational performance and vessel design. The work described in this paper aims to provide cost-effective tools for systematic data acquisition for fishing vessels, supporting digitalization of the fishing vessel operation and performance monitoring. This digitalization is needed to facilitate the reduction of emissions as a critical environmental problem and industry costs critical for industry sustainability. The resulting monitoring system interfaces onboard systems and sensors, processes the data, and makes it available in a shared onboard data space. From this data space, 209 signals are recorded at different frequencies and uploaded to onshore servers for postprocessing. The collected data describe both ship operation, onboard energy system, and the surrounding environment. Nine of the oceanographic variables have been preselected to be potentially useful for public scientific repositories, such as Copernicus and EMODnet. The data are also used for fuel prediction models, species distribution models, and route optimization models.
Keywords: Tuna fishery; fisheriesdigitalization; climatechange mitigation; environmental science; technologyresearch; data science; sustainable systems; CONTINUOUS PLANKTON RECORDER; ARTIFICIAL NEURAL-NETWORK; DECISION-SUPPORT-SYSTEM; FUEL CONSUMPTION; OPPORTUNITIES; MAINTENANCE; PERFORMANCE; TECHNOLOGY; PREDICTION; DIAGNOSIS
Issue Date: 2024
Publisher: AMER CHEMICAL SOC
Type: Article
Language: 
DOI: 10.1021/acsenvironau.3c00013
URI: http://dspace.azti.es/handle/24689/1891
E-ISSN: 2694-2518
Funder: Horizon 2020 Framework Programme [869342]
European Union
Appears in Publication types:Artículos científicos



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