广东工业大学学报 ›› 2021, Vol. 38 ›› Issue (05): 90-96.doi: 10.12052/gdutxb.200145
卢晓晴1, 方媛1, 梁泽奇2
Lu Xiao-qing1, Fang Yuan1, Liang Ze-qi2
摘要: 随着农村经济的不断发展, 农村能源消费正逐步由生物质能源向电力转变。因此, 从农村视角识别影响农村用电碳排放的潜在驱动因素, 是我国推进农村低碳发展、实现碳减排目标的重要前提。本文采用基于人口、富裕度和技术的随机影响回归模型(Stochastic Impacts by Regression on Population, Affluence and Technology, STIRPAT), 结合岭回归, 分析2005~2018年广东省农村用电碳排放的影响因素。结果表明, 城市化水平、农业经济发展水平、有效灌溉面积、农业机械化水平、农业固定资产投资、收入水平以及住房条件等因素都与广东省农村用电产生的碳排放呈正相关。其中, 农村居民人均可支配收入是影响广东省农村用电碳排放的最关键因素。此外, 农业经济发展与广东省农村用电碳排放也呈弱脱钩关系。最后, 针对如何减少广东省农村用电碳排放提出政策建议。
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