Institute of Management Engineering, Qingdao University of Technology, Qingdao, 266525, China.
Institute of Management Engineering, Qingdao University of Technology, Qingdao, 266525, China; Northeast Institute of Geography and Agricultural Ecology, Chinese Academy of Sciences, Changchun, 130012, China.
Environ Res. 2022 Nov;214(Pt 4):114151. doi: 10.1016/j.envres.2022.114151. Epub 2022 Aug 28.
Comprehensive and accurate grasp of land-use carbon emissions (LCE) level and its driving mechanism is key to success in China's pursuit of low-carbon development, and it is also the scientific basis for the formulation and implementation of regional carbon emissions strategies. Based on fossil fuel carbon emissions raster data (published by the Open-Data Inventory for Anthropogenic Carbon dioxide (ODIAC) platform) and land use data, this manuscript selects the Yellow River Delta as the study area and uses an improved LCE measurement model, exploratory spatial data analysis, multiscale geographical weighting regression (MGWR), and other models to explore the spatiotemporal heterogeneity and driving mechanisms of LCE at the grid level. The results showed the following: ① The total amount of LCE in the study area continued to increase from 2000 to 2019, the growth rate decreased, but the peak of LCE had not yet been reached. ② The LCE of the study area showed a significant positive global autocorrelation. The H-H aggregation region showed a relatively stable spatial distribution range; the L-L aggregation region showed wide distribution characteristics that covered the entire study area; and the aggregation regions of H-L and L-H, which have not yet reached the scale. ③ At the global dimension, the mean correlation coefficients between LCE and driving factors (net primary productivity (NPP), nighttime light (NTL), and population density (PD)) from 2000 to 2019 were -0.11, 0.28, and 0.12; at the local dimension, the strength (from strong to weak) of the effect of each factor on LCE was PD, NTL, NPP (2000) and NTL, PD, NPP (2019). The research results provide a scientific basis and basic guarantee for the development, and implementation of regional carbon emission strategies.
全面准确地把握土地利用碳排放(LCE)水平及其驱动机制是中国追求低碳发展的关键,也是制定和实施区域碳排放战略的科学依据。本研究基于化石燃料碳排放栅格数据(由人为二氧化碳排放开放数据清单(ODIAC)平台发布)和土地利用数据,选择黄河三角洲作为研究区,利用改进的 LCE 测量模型、探索性空间数据分析、多尺度地理加权回归(MGWR)等模型,探讨了网格尺度 LCE 的时空异质性及其驱动机制。结果表明:① 研究区 LCE 总量持续增加,2000-2019 年增长速度降低,但尚未达到峰值;② 研究区 LCE 呈显著正全局自相关,H-H 集聚区表现出相对稳定的空间分布范围;L-L 集聚区表现出广泛分布的特征,覆盖整个研究区;H-L 和 L-H 集聚区尚未达到规模;③ 在全局尺度上,2000-2019 年 LCE 与驱动因素(净初级生产力(NPP)、夜间灯光(NTL)和人口密度(PD))的平均相关系数分别为-0.11、0.28 和 0.12;在局部尺度上,各因素对 LCE 的影响强度(由强到弱)分别为 PD、NTL、NPP(2000 年)和 NTL、PD、NPP(2019 年)。研究结果为区域碳排放战略的制定和实施提供了科学依据和基本保障。