Sustainability, emission trading system and carbon leakage: An approach based on neural networks and multicriteria analysis

Idiano D'Adamo , Massimo Gastaldi , Caroline Hachem-Vermette , Riccardo Olivieri
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Abstract

Two transitions, green and digital, are changing the operations and strategies of industrial systems. At the same time, businesses are challenged to be globally competitive. Europe has a very ambitious agenda as it aims to be the first climate-neutral continent in 2050. The european emissions trading scheme (EU ETS) has proven to have facilitated the reduction of significant amounts of greenhouse gas emissions, but the risk of carbon leakage is present. This work seeks to explore these issues and their relationships. Through the use of a long short-term memory (LSTM) neural network, a model is built to determine the price of european union allowance (EUA) as a function of different financial energy futures. The results show that the model is very robust and the EUA tends to vary between 78 and 91 €/tCO2. In addition, a multi-criteria decision analysis (MCDA) is applied to identify the best policy alternatives to enable businesses subject to the EU ETS to be competitive in global markets. The analysis is carried out with the help of academic and industrial experts and it emerges that the criteria considered most relevant are two: (i) public expenditure and its expected benefits and (ii) the industrial ecosystem. The policy implications identify that bonuses should be provided to businesses for innovative solutions that protect both the energy and raw material components. The framework of the 3E (Energy Efficiency, Renewable Energy, and Circular Economy) are critical to businesses' long-term strategies, flanked by digital development.

可持续性、排放交易体系和碳泄漏:基于神经网络和多标准分析的方法
绿色和数字化两种转型正在改变工业系统的运作和战略。与此同时,企业面临着全球竞争力的挑战。欧洲有一个非常雄心勃勃的议程,因为它的目标是在2050年成为第一个气候中立的大陆。事实证明,欧洲排放交易计划(EU ETS)促进了大量温室气体排放的减少,但碳泄漏的风险仍然存在。这项工作试图探索这些问题及其关系。通过使用长短期记忆(LSTM)神经网络,建立了一个模型来确定作为不同金融能源期货函数的欧盟津贴(EUA)价格。结果表明,该模型非常稳健,EUA往往在78至91€/tCO2之间变化。此外,还应用了多标准决策分析(MCDA)来确定最佳政策替代方案,以使受欧盟ETS约束的企业在全球市场上具有竞争力。该分析是在学术和工业专家的帮助下进行的,结果表明,被认为最相关的标准有两个:(i)公共支出及其预期效益;(ii)工业生态系统。政策影响确定,应为保护能源和原材料成分的创新解决方案的企业提供奖金。3E(能源效率、可再生能源和循环经济)框架对企业的长期战略至关重要,同时也是数字化发展的重要组成部分。
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CiteScore
18.20
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