Forecasting the potential of global marine shipping carbon emission under artificial intelligence based on a novel multivariate discrete grey model

Author:

Zeng Zirui,Xu Junwen,Zhou Shiwei,Zhao Yufeng,Shi Yansong

Abstract

PurposeTo achieve sustainable development in shipping, accurately identifying the impact of artificial intelligence on shipping carbon emissions and predicting these emissions is of utmost importance.Design/methodology/approachA multivariable discrete grey prediction model (WFTDGM) based on weakening buffering operator is established. Furthermore, the optimal nonlinear parameters are determined by Grey Wolf optimization algorithm to improve the prediction performance, enhancing the model’s predictive performance. Subsequently, global data on artificial intelligence and shipping carbon emissions are employed to validate the effectiveness of our new model and chosen algorithm.FindingsTo demonstrate the applicability and robustness of the new model in predicting marine shipping carbon emissions, the new model is used to forecast global marine shipping carbon emissions. Additionally, a comparative analysis is conducted with five other models. The empirical findings indicate that the WFTDGM (1, N) model outperforms other comparative models in overall efficacy, with MAPE for both the training and test sets being less than 4%, specifically at 0.299% and 3.489% respectively. Furthermore, the out-of-sample forecasting results suggest an upward trajectory in global shipping carbon emissions over the subsequent four years. Currently, the application of artificial intelligence in mitigating shipping-related carbon emissions has not achieved the desired inhibitory impact.Practical implicationsThis research not only deepens understanding of the mechanisms through which artificial intelligence influences shipping carbon emissions but also provides a scientific basis for developing effective emission reduction strategies in the shipping industry, thereby contributing significantly to green shipping and global carbon reduction efforts.Originality/valueThe multi-variable discrete grey prediction model developed in this paper effectively mitigates abnormal fluctuations in time series, serving as a valuable reference for promoting global green and low-carbon transitions and sustainable economic development. Furthermore, based on the findings of this paper, a grey prediction model with even higher predictive performance can be constructed by integrating it with other algorithms.

Publisher

Emerald

Reference54 articles.

1. Automation and new tasks: how technology displaces and reinstates labor;Journal of Economic Perspectives,2019

2. Robots and jobs: evidence from US labor markets;Journal of Political Economy,2020

3. Notes from the AI Frontier: modeling the impact of AI on the world economy,2018

4. The impact of an EU maritime emissions trading system on oil trades;Transportation Research Part D: Transport and Environment,2021

5. Design and evaluation of an Integrated SCR and exhaust Muffler from marine diesels;Journal of Marine Science and Technology,2015

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