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Provincial carbon intensity abatement potential estimation in China: A PSO-GA-optimized multi-factor environmental learning curve method

机译:中国省级碳强度减排潜力估算:PSO-GA优化的多因素环境学习曲线方法

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This study aims to estimate carbon intensity abatement potential in China at the regional level by proposing a particle swarm optimization-genetic algorithm (PSO-GA) multivariate environmental learning curve estimation method. The model uses two independent variables, namely, per capita gross domestic product (GDP) and the proportion of the tertiary industry in GDP, to construct carbon intensity learning curves (CILCs), i.e., CO_2 emissions per unit of GDP, of 30 provinces in China. Instead of the traditional ordinary least squares (OLS) method, a PSO-GA intelligent optimization algorithm is used to optimize the coefficients of a learning curve. The carbon intensity abatement potentials of the 30 Chinese provinces are estimated via PSO-GA under the business-as-usual scenario. The estimation reveals the following results. (1) For most provinces, the abatement potentials from improving a unit of the proportion of the tertiary industry in GDP are higher than the potentials from raising a unit of per capita GDP. (2) The average potential of the 30 provinces in 2020 will be 37.6% based on the emission's level of 2005. The potentials of Jiangsu, Tianjin, Shandong, Beijing, and Heilongjiang are over 60%. Ningxia is the only province without intensity abatement potential. (3) The total carbon intensity in China weighted by the GDP shares of the 30 provinces will decline by 39.4% in 2020 compared with that in 2005. This intensity cannot achieve the 40%-45% carbon intensity reduction target set by the Chinese government Additional mitigation policies should be developed to uncover the potentials of Ningxia and Inner Mongolia. In addition, the simulation accuracy of the CILCs optimized by PSO-GA is higher than that of the CILCs optimized by the traditional OLS method.
机译:本研究旨在通过提出一种粒子群优化遗传算法(PSO-GA)多元环境学习曲线估算方法来估算中国在区域层面的碳强度减排潜力。该模型使用两个独立变量,即人均国内生产总值(GDP)和第三产业在GDP中所占的比例,来构建碳强度学习曲线(CILC),即30个省的GDP单位的CO_2排放量。中国。代替传统的普通最小二乘(OLS)方法,使用PSO-GA智能优化算法来优化学习曲线的系数。在常规情况下,通过PSO-GA估算了中国30个省的碳强度减排潜力。该估计揭示了以下结果。 (1)对于大多数省来说,提高第三产业在国内生产总值中所占比例的减排潜力高于提高人均国内生产总值中所占的潜力。 (2)根据2005年的排放水平,到2020年,这30个省的平均潜力为37.6%。江苏,天津,山东,北京和黑龙江的潜力超过60%。宁夏是唯一没有强度减排潜力的省份。 (3)2020年,以30个省的GDP份额加权的中国总碳强度将比2005年下降39.4%。该强度无法实现中国政府设定的40%-45%的碳强度减排目标应制定其他缓解政策,以挖掘宁夏和内蒙古的潜力。此外,通过PSO-GA优化的CILC的仿真精度高于通过传统OLS方法优化的CILC的仿真精度。

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