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美国的二氧化碳排放:基于人工神经网络方法的新见解。

CO emissions in the USA: new insights based on ANN approach.

机构信息

Zeppelin University in Friedrichshafen, Am Seemooser Horn 20, 88045, Friedrichshafen, Germany.

Faculty of Economics and Business Administration, West University of Timisoara, 16, J. H. Pestalozzi St., 300115, Timisoara, Romania.

出版信息

Environ Sci Pollut Res Int. 2022 Sep;29(45):68332-68356. doi: 10.1007/s11356-022-20615-1. Epub 2022 May 10.

Abstract

The paper's main aim is to forecast the carbon dioxide (CO) emissions in the USA and its related components, analysing the contributions of each of those components to CO total volume. The empirical ground is a mix of non-linear tools, combining the artificial neural network (ANN) parametric method with a vector autoregressive (VAR) estimator. ANN includes 1 layer and 20 neurons, forecasting being based on the economic growth and net trade effects doubled by different types of renewable energy consumption. The accuracy of estimations for 14 targeted categories of CO emissions is ensured by 4360 observations, with 10 types of inputs over 1984M01-2020M04. ANN seems to offer superior forecasting accuracy compared with the widely used autoregressive methods, such as VAR model, but seems to be weak in capturing the output 'spike' forms. The main findings show that, although economic growth and net trade have an important contribution to the targeted outputs, the more prominent ones are wind, solar and total biomass energy consumption. Therefore, the CO emissions can be better controlled through non-polluting capacities, in parallel with the use of wind, solar and total biomass energies. The tool excellently predicts the CO emissions during pandemic crises being a good instrument in policy decisions. Modest contributions to CO prediction seem to have energy consumption generated by waste, hydroelectric power and renewable geothermal systems. This underlines an unclear current status given their collateral effects in environmental damages and high investment costs. The paper contributes to the literature in several ways. It is one of the first works focused on CO emissions forecasting in the USA based on a mixed approach by ANN and VAR types, considering an extended pallet of inputs to predict the volume of total CO emissions but also its components. As a novelty, the inputs combine both economic and environmental determinants. Not at least, the estimations are performed based on a large span, with monthly frequency.

摘要

本文的主要目的是预测美国的二氧化碳(CO)排放及其相关组成部分,分析每个组成部分对 CO 总量的贡献。实证基础是一系列非线性工具,将人工神经网络(ANN)参数方法与向量自回归(VAR)估计器相结合。ANN 包含 1 个层和 20 个神经元,预测基于经济增长和净贸易效应,这些效应由不同类型的可再生能源消耗倍增。通过 4360 次观测,使用 1984M01-2020M04 期间的 10 种输入对 14 种目标 CO 排放类别进行了估计,从而确保了估计的准确性。ANN 似乎比广泛使用的自回归方法(如 VAR 模型)提供了更高的预测精度,但似乎在捕捉输出“峰值”形式方面较弱。主要发现表明,尽管经济增长和净贸易对目标产出有重要贡献,但更突出的是风能、太阳能和总生物质能的消耗。因此,可以通过利用风能、太阳能和总生物质能来更好地控制 CO 排放。该工具在大流行危机期间出色地预测了 CO 排放,是政策决策的良好工具。能源消耗产生的废物、水电和可再生地热能系统对 CO 预测的贡献似乎不大。这突显了它们在环境破坏和高投资成本方面的附带影响下,当前状况尚不清楚。本文在几个方面对文献做出了贡献。它是首批基于 ANN 和 VAR 类型混合方法的美国 CO 排放预测工作之一,考虑了扩展的输入清单来预测总 CO 排放量及其组成部分的体积。作为一个新颖之处,输入结合了经济和环境决定因素。不仅如此,估计是基于大跨度和月度频率进行的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b36f/9088728/ecfe8ada336f/11356_2022_20615_Fig1_HTML.jpg

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