关于全球温室气体预测的机器学习、深度学习和纵向回归方法的研究

IF 3 4区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
S. D. Yazd, N. Gharib, J. F. Derakhshandeh
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引用次数: 0

摘要

应对气候变化是当今社会面临的重要议题和关切之一。从几十年前开始,温室气体的排放量逐渐开始增加。因此,研究人员试图找到应对这一挑战的永久性解决方案。本文应用了机器学习和深度学习模型的不同方法,以评估它们在预测温室气体排放方面的有效性和准确性。为了提高评估的准确性,本文考虑了世界银行官方来源的 101 个国家 31 年(1991-2021 年)的数据。因此,本研究分析了一系列矩阵,包括每个模型的均方误差、均方根误差、均方绝对误差、P 值和相关系数。结果表明,在支持向量回归多项式模型中,机器学习模型通常超过深度学习模型。此外,纵向回归分析的统计结果显示,增加谷物产量和永久耕地面积,温室气体排放量会显著增加(p 值 = 0.000)和(p 值 = 0.06);而增加可再生能源消耗和森林面积,温室气体排放量会分别减少(p 值 = 0.000)和(p 值 = 0.07)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Investigations on machine learning, deep learning, and longitudinal regression methods for global greenhouse gases predictions

Investigations on machine learning, deep learning, and longitudinal regression methods for global greenhouse gases predictions

Combating climate change is one of the key topics and concerns that our community is currently facing these days. Since a few decades ago, greenhouse gases emissions gradually started to increase. Thus, the researchers attempted to find a permanent solution for this challenge. In this paper, different methods of machine learning and deep learning models are applied to evaluate their effectiveness and accuracy in predicting greenhouse gases emissions. To increase the accuracy of the assessment, the data of 101 countries over a period of 31 years (1991–2021) from the official World Bank sources are considered. In this study, therefore, a range of matrices are analyzed including Mean Squared Error, Root Mean Squared Error, Mean Absolute Error, p value, and correlation coefficient for each model. The results demonstrate that machine learning models typically overtake the deep learning models with the support vector regression polynomial model. Besides, the statistical findings of longitudinal regression analysis reveal that by increasing cereal yield, and permanent cropland areas the greenhouse gas emissions are significantly increase (p value = 0.000) and (p value = 0.06) respectively; however, increasing in renewable energy consumption and forest areas will lead to decreasing in greenhouse gas emissions (p value = 0.000) and (p value = 0.07) respectively.

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来源期刊
CiteScore
5.60
自引率
6.50%
发文量
806
审稿时长
10.8 months
期刊介绍: International Journal of Environmental Science and Technology (IJEST) is an international scholarly refereed research journal which aims to promote the theory and practice of environmental science and technology, innovation, engineering and management. A broad outline of the journal''s scope includes: peer reviewed original research articles, case and technical reports, reviews and analyses papers, short communications and notes to the editor, in interdisciplinary information on the practice and status of research in environmental science and technology, both natural and man made. The main aspects of research areas include, but are not exclusive to; environmental chemistry and biology, environments pollution control and abatement technology, transport and fate of pollutants in the environment, concentrations and dispersion of wastes in air, water, and soil, point and non-point sources pollution, heavy metals and organic compounds in the environment, atmospheric pollutants and trace gases, solid and hazardous waste management; soil biodegradation and bioremediation of contaminated sites; environmental impact assessment, industrial ecology, ecological and human risk assessment; improved energy management and auditing efficiency and environmental standards and criteria.
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