Machine learning applications for carbon emission estimation

IF 5.4 Q1 ENVIRONMENTAL SCIENCES
Hala Salem Al Nuaimi , Adolf Acquaye , Ahmad Mayyas
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引用次数: 0

Abstract

In the context of escalating global climate change concerns, accurately estimating carbon emissions is crucial. This paper conducts a systematic literature review (SLR) on the application of machine learning (ML) techniques for estimating current and future carbon emissions. The study aims to evaluate the effectiveness of various ML algorithms across different sectors, identify sector-specific opportunities, and propose enhancements for ML-based carbon emission estimation.
The review highlights significant progress in the transportation sector, with notable research focusing on vehicle emissions. However, it identifies untapped potential in the energy and industrial sectors, where data accessibility and complexity pose challenges. The paper discusses the applicability of commonly used ML algorithms, including Artificial Neural Networks, Ensemble Methods, Support Vector Machines, and Extreme Learning Machines, emphasizing their strengths and limitations in different contexts. Key methodologies for improving ML performance in carbon emission estimation include hybrid modeling techniques, optimization algorithms, influential factor analysis, and data estimation methods. Despite advancements, challenges such as computational complexity, data quality, and model interpretability persist. The paper recommends enhancing optimization techniques, advancing predictor analysis, improving data collection practices, and focusing on sector-specific applications to address these issues.
By synthesizing existing knowledge and identifying critical research gaps, this study provides actionable insights to advance future research in ML-based carbon emission estimation. The main contribution of this work lies in its focus on practical aspects, rather than theoretical limitations of models, as emphasized in many existing studies. It highlights model performance in real-world scenarios, identifies key factors that restrict the efficient implementation of certain ML models in practice. Furthermore, the study presents a comprehensive guidance framework to provide an overview of the field and practical direction for application of machine learning in carbon emission estimation, paving the way for more effective real-world applications.
机器学习在碳排放估算中的应用
在全球气候变化问题日益严重的背景下,准确估算碳排放量至关重要。本文对机器学习(ML)技术在估计当前和未来碳排放中的应用进行了系统的文献综述(SLR)。该研究旨在评估不同行业的各种机器学习算法的有效性,确定特定行业的机会,并提出基于机器学习的碳排放估计的改进方案。该报告强调了交通运输领域的重大进展,重点关注汽车排放的研究。然而,它发现了能源和工业领域尚未开发的潜力,这些领域的数据可访问性和复杂性构成了挑战。本文讨论了常用的机器学习算法的适用性,包括人工神经网络、集成方法、支持向量机和极限学习机,强调了它们在不同环境下的优势和局限性。提高机器学习在碳排放估计中的性能的关键方法包括混合建模技术、优化算法、影响因素分析和数据估计方法。尽管取得了进步,但诸如计算复杂性、数据质量和模型可解释性等挑战仍然存在。本文建议加强优化技术,推进预测分析,改进数据收集实践,并专注于特定行业的应用来解决这些问题。通过综合现有知识和识别关键研究空白,本研究为推进基于ml的碳排放估算的未来研究提供了可操作的见解。这项工作的主要贡献在于它关注实际方面,而不是像许多现有研究那样强调模型的理论局限性。它突出了模型在现实场景中的性能,确定了在实践中限制某些ML模型有效实现的关键因素。此外,本研究提出了一个全面的指导框架,为机器学习在碳排放估算中的应用提供了一个领域概述和实践方向,为更有效的现实应用铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Resources, conservation & recycling advances
Resources, conservation & recycling advances Environmental Science (General)
CiteScore
11.70
自引率
0.00%
发文量
0
审稿时长
76 days
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