Influence of a pilot carbon trading policy on enterprises’ low-carbon innovation in China

中国 业务 碳纤维 自然资源经济学 产业组织 温室气体 经济 生态学 材料科学 复合数 政治学 法学 复合材料 生物
作者
Shaozhou Qi,Chaobo Zhou,Kai Li,Si-yan Tang
出处
期刊:Climate Policy [Taylor & Francis]
卷期号:21 (3): 318-336 被引量:140
标识
DOI:10.1080/14693062.2020.1864268
摘要

China’s pilot carbon trading policy is expected to be both efficient and flexible in reducing carbon emissions through incentivising low-carbon innovation. This paper analyses the effects of this pilot policy on low-carbon innovation using a difference-in-difference model, based on a sample of selected enterprises and carrying out a series of robustness tests to corroborate the results. The analysis shows that the pilot carbon trading policy is predicted to have a significantly positive effect on the low-carbon innovation of enterprises that fall under its scope, notably by alleviating obstacles to the financing of low-carbon innovation. Furthermore, a heterogeneity analysis of enterprises’ characteristics and carbon allowance allocation methods in different pilots indicates that the effect of the pilot carbon trading policy on enterprises’ low-carbon innovation will be reflected mainly in enterprises in China’s eastern provinces, and in state-owned enterprises. Compared with the grandfathering and historical intensity allocation methods, the findings of this study suggest that the extent of low-carbon innovation is significantly greater when the benchmarking method is used. The results of this paper offer some key insights into improving the policy design of a nationwide carbon trading market in China, as well as a reference point for other countries and regions, especially developing countries, in establishing a carbon trading market.Key policy insights China’s pilot carbon trading policy can promote low-carbon innovation.Easing the financing constraints of enterprises can promote low-carbon innovation.Compared with the grandfathering and historical intensity allocation methods, using the benchmarking method significantly improves the enterprises’ low-carbon innovation.
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