2023
DOI: 10.3389/fmars.2023.1308981
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Maritime greenhouse gas emission estimation and forecasting through AIS data analytics: a case study of Tianjin port in the context of sustainable development

Wenxin Xie,
Yong Li,
Yang Yang
et al.

Abstract: The escalating greenhouse gas (GHG) emissions from maritime trade present a serious environmental and biological threat. With increasing emission reduction initiatives, such as the European Union’s incorporation of the maritime sector into the emissions trading system, both challenges and opportunities emerge for maritime transport and associated industries. To address these concerns, this study presents a model specifically designed for estimating and projecting the spatiotemporal GHG emission inventory of sh… Show more

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Cited by 4 publications
(1 citation statement)
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“…Li X et al (2023) introduced the temporal fusion transformer (TFT), a forecasting model based on attention mechanisms, taking the Tianjin Port maritime area as a case study to achieve multi-period, multi-feature forecasts of pollutant emissions, providing data references for management decisions of relevant departments. Xie et al (2023) utilized the TFT, a deep learning model for time series forecasting based on attention mechanisms, to predict the spatiotemporal characteristics of ship emissions over multiple periods, achieving fine-grained traceability of ship emissions.…”
Section: Overview Of Related Work On Ship Behavior Miningmentioning
confidence: 99%
“…Li X et al (2023) introduced the temporal fusion transformer (TFT), a forecasting model based on attention mechanisms, taking the Tianjin Port maritime area as a case study to achieve multi-period, multi-feature forecasts of pollutant emissions, providing data references for management decisions of relevant departments. Xie et al (2023) utilized the TFT, a deep learning model for time series forecasting based on attention mechanisms, to predict the spatiotemporal characteristics of ship emissions over multiple periods, achieving fine-grained traceability of ship emissions.…”
Section: Overview Of Related Work On Ship Behavior Miningmentioning
confidence: 99%