Addressing Uncertainty in Efficient Mitigation of Agricultural Greenhouse Gas Emissions
研究了农业温室气体减排成本效益分析中的不确定性,通过蒙特卡洛方法量化苏格兰农业减排潜力的统计不确定性,发现变异系数在9.6%到107.3%之间,主要不确定性来源是采用率和减排率。
Abstract The agricultural sector, as an important source of greenhouse gas ( GHG ) emissions, is under pressure to reduce its contribution to climate change. Decisions on financing and regulating agricultural GHG mitigation are often informed by cost‐effectiveness analysis of the potential GHG reduction in the sector. A commonly used tool for such analysis is the bottom‐up marginal abatement cost curve ( MACC ) which assesses mitigation options and calculates their cumulative cost‐effective mitigation potential. MACC s are largely deterministic, typically not reflecting uncertainties in underlying input variables. We analyse the uncertainty of GHG mitigation estimates in a bottom‐up MACC for agriculture, for those uncertainties capable of quantitative assessment. Our analysis identifies the sources and types of uncertainties in the cost‐effectiveness analysis and estimates the statistical uncertainty of the results by propagating uncertainty through the MACC via Monte Carlo analysis. For the case of Scottish agriculture, the uncertainty of the cost‐effective abatement potential from agricultural land, as expressed by the coefficient of variation, was between 9.6% and 107.3% across scenarios. This means that the probability of the actual abatement being less than half of the estimated abatement ranged from <1% (in the scenario with lowest uncertainty) to 32% (in the scenario with highest uncertainty). The main contributors to uncertainty are the adoption rate and abatement rate. While most mitigation options appear to be ‘win–win’ under some scenarios, many have a high probability of switching between being cost‐ineffective and cost‐effective.