量化农民社会网络对农业气候变化减缓政策有效性的影响

Quantifying the impact of farmers' social networks on the effectiveness of climate change mitigation policies in agriculture

Journal of Agricultural Economics · 2023
被引 25 · 同刊同年前 8%
人大 A-ABS 3

中文导读

通过基于主体的模型模拟瑞士奶牛和肉牛农场数据,发现农民社会网络中的知识交流可使每吨温室气体减排支付的效果提升45%,并降低边际减排成本。

Abstract

Abstract To reduce agricultural greenhouse gas (GHG) emissions, farmers need to change current farming practices. However, farmers' climate change mitigation behaviour and particularly the role of social and individual characteristics remains poorly understood. Using an agent‐based modelling approach, we investigate how knowledge exchange within farmers' social networks affects the adoption of mitigation measures and the effectiveness of a payment per ton of GHG emissions abated. Our simulations are based on census, survey and interview data for 49 Swiss dairy and cattle farms to simulate the effect of social networks on overall GHG reduction and marginal abatement costs. We find that considering social networks increases overall reduction of GHG emissions by 45% at a given payment of 120 Swiss Francs (CHF) per ton of reduced GHG emissions. The per ton payment would have to increase by 380 CHF (i.e., 500 CHF/tCO 2 eq) to reach the same overall GHG reduction level without any social network effects. Moreover, marginal abatement costs for emissions are lower when farmers exchange relevant knowledge through social networks. The effectiveness of policy incentives aiming at agricultural climate change mitigation can hence be improved by simultaneously supporting knowledge exchange and opportunities of social learning in farming communities.

农民社会网络气候变化减缓农业温室气体减排知识交换