Estimation Model and Spatio-Temporal Analysis of Carbon Emissions from Energy Consumption with NPP-VIIRS-like Nighttime Light Images: A Case Study in the Pearl River Delta Urban Agglomeration of China

IF 4.2 2区 地球科学 Q2 ENVIRONMENTAL SCIENCES Remote Sensing Pub Date : 2024-09-13 DOI:10.3390/rs16183407
Mengru Song, Yanjun Wang, Yongshun Han, Yiye Ji
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Abstract

Urbanization is growing at a rapid pace, and this is being reflected in the rising energy consumption from fossil fuels, which is contributing significantly to greenhouse gas impacts and carbon emissions (CE). Aiming at the problems of the time delay, inconsistency, uneven spatial coverage scale, and low precision of the current regional carbon emissions from energy consumption accounting statistics, this study builds a precise model for estimating the carbon emissions from regional energy consumption and analyzes the spatio-temporal characteristics. Firstly, in order to estimate the carbon emissions resulting from energy consumption, a fixed effects model was built using data on province energy consumption and NPP-VIIRS-like nighttime lighting data. Secondly, the PRD urban agglomeration was selected as the case study area to estimate the carbon emissions from 2012 to 2020 and predict the carbon emissions from 2021 to 2023. Then, their multi-scale spatial and temporal distribution characteristics were analyzed through trends and hotspots. Lastly, the influence factors of CE from 2012 to 2020 were examined with the OLS, GWR, GTWR, and MGWR models, as well as a ridge regression to enhance the MGWR model. The findings indicate that, from 2012 to 2020, the carbon emissions in the PRD urban agglomeration were characterized by the non-equilibrium feature of “high in the middle and low at both ends”; from 2021 to 2023, the central and eastern regions saw the majority of its high carbon emission areas, the east saw the region with the highest rate of growth, the east and the periphery of the high value area were home to the area of medium values, while the southern, central, and northern regions were home to the low value areas; carbon emissions were positively impacted by population, economics, land area, and energy, and they were negatively impacted by science, technology, and environmental factors. This study could provide technical support for the long-term time-series monitoring and remote sensing inversion of the carbon emissions from energy consumption in large-scale, complex urban agglomerations.
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利用类似 NPP-VIIRS 的夜间光照图像进行能源消耗碳排放的估算模型和时空分析:中国珠江三角洲城市群案例研究
城市化的快速发展反映在化石燃料能源消耗的不断增加上,而化石燃料能源消耗对温室气体的影响和碳排放(CE)有着重要作用。针对目前区域能源消费碳排放核算统计存在的时滞性、不一致性、空间覆盖尺度不均、精度不高等问题,本研究建立了一个估算区域能源消费碳排放的精确模型,并分析了其时空特征。首先,为了估算能源消耗产生的碳排放量,利用全省能源消耗数据和类似于NPP-VIIRS的夜间照明数据建立了固定效应模型。其次,选取珠三角城市群作为案例研究区域,估算 2012 年至 2020 年的碳排放量,并预测 2021 年至 2023 年的碳排放量。然后,通过趋势和热点分析其多尺度时空分布特征。最后,利用 OLS、GWR、GTWR 和 MGWR 模型对 2012-2020 年碳排放的影响因素进行了研究,并利用山脊回归对 MGWR 模型进行了改进。结果表明:2012-2020年,珠三角城市群碳排放呈现 "中间高、两头低 "的非均衡特征;2021-2023年,珠三角城市群碳排放呈现 "中间高、两头低 "的非均衡特征;2021-2023年,高碳排放区主要分布在中部和东部地区,东部地区是增长速度最快的地区,东部和高值区外围是中值区,南部、中部和北部地区是低值区;碳排放受人口、经济、土地面积、能源等因素的正向影响,受科技、环境等因素的负向影响。该研究可为大规模复杂城市群能源消耗碳排放的长期时序监测和遥感反演提供技术支持。
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来源期刊
Remote Sensing
Remote Sensing REMOTE SENSING-
CiteScore
8.30
自引率
24.00%
发文量
5435
审稿时长
20.66 days
期刊介绍: Remote Sensing (ISSN 2072-4292) publishes regular research papers, reviews, letters and communications covering all aspects of the remote sensing process, from instrument design and signal processing to the retrieval of geophysical parameters and their application in geosciences. Our aim is to encourage scientists to publish experimental, theoretical and computational results in as much detail as possible so that results can be easily reproduced. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced.
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