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一种用于低碳交通系统分析的混合方法:整合CRITIC-DEMATEL与深度学习特征

A hybrid approach for low-carbon transportation system analysis: integrating CRITIC-DEMATEL and deep learning features.

作者信息

Zhan C, Zhang X, Yuan J, Chen X, Zhang X, Fathollahi-Fard A M, Wang C, Wu J, Tian G

机构信息

Transportation College, Northeast Forestry University, Harbin, 150040 China.

Department of Deputy Vice Chancellor (Research and Innovation), Universiti Teknologi Malaysia, 81310 Skudai, Malaysia.

出版信息

Int J Environ Sci Technol (Tehran). 2023 Jun 9:1-14. doi: 10.1007/s13762-023-04995-6.

Abstract

As supply chains, logistics, and transportation activities continue to play a significant role in China's economic and social developments, concerns around energy consumption and carbon emissions are becoming increasingly prevalent. In light of sustainable development goals and the trend toward sustainable or green transportation, there is a need to minimize the environmental impact of these activities. To address this need, the government of China has made efforts to promote low-carbon transportation systems. This study aims to assess the development of low-carbon transportation systems in a case study in China using a hybrid approach based on the Criteria Importance Through Intercriteria Correlation (CRITIC), Decision-Making Trial and Evaluation Laboratory (DEMATEL) and deep learning features. The proposed method provides an accurate quantitative assessment of low-carbon transportation development levels, identifies the key influencing factors, and sorts out the inner connection among the factors. The CRITIC weight matrix is used to obtain the weight ratio, reducing the subjective color of the DEMATEL method. The weighting results are then corrected using an artificial neural network to make the weighting more accurate and objective. To validate our hybrid method, a numerical example in China is applied, and sensitivity analysis is conducted to show the impact of our main parameters and analyze the efficiency of our hybrid method. Overall, the proposed approach offers a novel method for assessing low-carbon transportation development and identifying key factors in China. The results of this study can be used to inform policy and decision-making to promote sustainable transportation systems in China and beyond.

摘要

随着供应链、物流和运输活动在中国经济和社会发展中持续发挥重要作用,围绕能源消耗和碳排放的担忧日益普遍。鉴于可持续发展目标以及可持续或绿色交通的趋势,有必要尽量减少这些活动对环境的影响。为满足这一需求,中国政府已努力推动低碳交通系统的发展。本研究旨在通过一种基于准则重要性通过准则间相关性(CRITIC)、决策试验与评价实验室(DEMATEL)和深度学习特征的混合方法,对中国一个案例中的低碳交通系统发展进行评估。所提出的方法提供了对低碳交通发展水平的准确量化评估,识别关键影响因素,并梳理出各因素之间的内在联系。CRITIC权重矩阵用于获得权重比,减少了DEMATEL方法的主观色彩。然后使用人工神经网络对加权结果进行校正,以使加权更加准确和客观。为验证我们的混合方法,应用了中国的一个数值示例,并进行了敏感性分析,以展示主要参数的影响并分析我们混合方法的效率。总体而言,所提出的方法为评估中国低碳交通发展和识别关键因素提供了一种新颖的方法。本研究结果可用于为政策制定和决策提供信息,以促进中国及其他地区的可持续交通系统。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5a47/10250180/4c8f59f83f8e/13762_2023_4995_Fig1_HTML.jpg

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