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基于 STIRPAT 和 ARIMA 模型的中国 CO 减排关键缓解区域和策略。

Key mitigation regions and strategies for CO emission reduction in China based on STIRPAT and ARIMA models.

机构信息

College of the Environment & Ecology, Xiamen University, Xiang'an South Road Xiang'an District, Xiamen, 361102, China.

Putian Municipal Bureau of Natural Resources, Putian, 351106, China.

出版信息

Environ Sci Pollut Res Int. 2022 Jul;29(34):51537-51553. doi: 10.1007/s11356-022-19126-w. Epub 2022 Mar 4.

DOI:10.1007/s11356-022-19126-w
PMID:35244853
Abstract

China is facing increasing pressure to reduce CO emissions from energy consumption. Given this issue, understanding the characteristics, influencing factors, and trends can provide adequate information for decision-makers to solve the CO emission problem. This study analyzes the characteristics of CO emissions from energy consumption in 30 regions of China from 2005 to 2018 and applies the STIRPAT model to identify the impact of the influencing factors. Combined with the CO emission trend in 2030 as predicted by the ARIMA model, the key mitigation regions and strategies reduction have been determined. Results indicate that CO emissions have been increasing from 2005 to 2018 in China, thus showing the characteristic of the east being larger than the west spatially. Under the baseline scenario, these emissions will continue to rise in 2030. Carbon emissions intensity is declining, and the gap between provinces with the highest and lowest per capita CO emissions is widening. Although per capita GDP is significantly positively correlated with provinces, population is the key factor influencing more provinces, followed by the proportion of the secondary industry and urbanization rate. To achieve low-carbon sustainable development, Shandong, Shanxi, Inner Mongolia, Guangdong, Shaanxi, Xinjiang, and Ningxia are considered the key regions of concern for emission reduction. The heterogeneity of CO emission characteristics and influencing factors among regions provides a direction for the development of targeted and differentiated regional emission reduction strategies.

摘要

中国面临着减少能源消费二氧化碳排放的巨大压力。考虑到这个问题,了解其特征、影响因素和趋势,可以为决策者提供充足的信息来解决二氧化碳排放问题。本研究分析了 2005 年至 2018 年中国 30 个地区能源消费二氧化碳排放的特征,并应用 STIRPAT 模型来确定影响因素的影响。结合 ARIMA 模型预测的 2030 年二氧化碳排放趋势,确定了关键减排区域和减排策略。结果表明,中国的二氧化碳排放量从 2005 年到 2018 年一直在增加,因此在空间上表现出东部大于西部的特征。在基线情景下,这些排放量将在 2030 年继续上升。碳排放强度呈下降趋势,人均二氧化碳排放量最高和最低的省份之间的差距正在扩大。尽管人均国内生产总值与各省呈显著正相关,但人口是影响更多省份的关键因素,其次是第二产业的比例和城市化率。为了实现低碳可持续发展,山东、山西、内蒙古、广东、陕西、新疆和宁夏被认为是减排的重点关注地区。各地区二氧化碳排放特征和影响因素的异质性为制定有针对性和差异化的区域减排策略提供了方向。

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