1Department of Agroecology,Aarhus University,Blichers Allé 20,P.O. Box 50,Tjele 8830,Denmark.
2Department of Animal and Aquacultural Sciences, Faculty of Veterinary Medicine and Biosciences,Norwegian University of Life Sciences (NMBU),PO Box 5003,Ås 1430,Norway.
Animal. 2018 Oct;12(10):2171-2180. doi: 10.1017/S175173111700338X. Epub 2018 Jan 9.
The European Union Effort Sharing Regulation (ESR) will require a 30% reduction in greenhouse gas (GHG) emissions by 2030 compared with 2005 from the sectors not included in the European Emissions Trading Scheme, including agriculture. This will require the estimation of current and future emissions from agriculture, including dairy cattle production systems. Using a farm-scale model as part of a Tier 3 method for farm to national scales provides a more holistic and informative approach than IPCC (2006) Tier 2 but requires independent quality control. Comparing the results of using models to simulate a range of scenarios that explore an appropriate range of biophysical and management situations can support this process by providing a framework for placing model results in context. To assess the variation between models and the process of understanding differences, estimates of GHG emissions from four farm-scale models (DairyWise, FarmAC, HolosNor and SFARMMOD) were calculated for eight dairy farming scenarios within a factorial design consisting of two climates (cool/dry and warm/wet)×two soil types (sandy and clayey)×two feeding systems (grass only and grass/maize). The milk yield per cow, follower:cow ratio, manure management system, nitrogen (N) fertilisation and land area were standardised for all scenarios in order to associate the differences in the results with the model structure and function. Potential yield and application of available N in fertiliser and manure were specified separately for grass and maize. Significant differences between models were found in GHG emissions at the farm-scale and for most contributory sources, although there was no difference in the ranking of source magnitudes. The farm-scale GHG emissions, averaged over the four models, was 10.6 t carbon dioxide equivalents (CO2e)/ha per year, with a range of 1.9 t CO2e/ha per year. Even though key production characteristics were specified in the scenarios, there were still significant differences between models in the annual milk production per ha and the amounts of N fertiliser and concentrate feed imported. This was because the models differed in their description of biophysical responses and feedback mechanisms, and in the extent to which management functions were internalised. We conclude that comparing the results of different farm-scale models when applied to a range of scenarios would build confidence in their use in achieving ESR targets, justifying further investment in the development of a wider range of scenarios and software tools.
欧盟排放交易体系(ETS)规定,2030 年与 2005 年相比,未纳入 ETS 的部门(包括农业)温室气体(GHG)排放量需减少 30%。这将需要估算农业,包括奶牛养殖系统的当前和未来排放量。使用农场规模模型作为 Tier 3 方法的一部分,从农场到国家规模,提供了比 IPCC(2006 年)Tier 2 更全面和信息丰富的方法,但需要独立的质量控制。通过提供一个框架来将模型结果置于上下文中,可以比较用于模拟探索适当的生物物理和管理情况范围的各种情景的模型结果,从而支持这一过程。为了评估模型之间的差异和理解差异的过程,我们为八种奶牛养殖情景计算了四个农场规模模型(DairyWise、FarmAC、HolosNor 和 SFARMMOD)的温室气体排放估算值,这些情景是由两种气候(凉爽/干燥和温暖/湿润)×两种土壤类型(沙质和粘质)×两种饲养系统(仅牧草和牧草/玉米)组成的析因设计。为了将结果的差异与模型结构和功能联系起来,所有情景下的奶牛单产、牛群跟随者:奶牛比例、粪便管理系统、氮(N)施肥和土地面积都进行了标准化。牧草和玉米分别指定了潜在产量和可用 N 在肥料和粪便中的应用。尽管在源量级的排序上没有差异,但在农场规模和大多数贡献源的温室气体排放方面,模型之间存在显著差异。四个模型平均的农场规模温室气体排放量为每年 10.6 吨二氧化碳当量(CO2e)/公顷,范围为每年 1.9 吨 CO2e/公顷。尽管在情景中指定了关键生产特征,但模型之间的每公顷牛奶年产量以及 N 肥料和浓缩饲料的进口量仍存在显著差异。这是因为模型在生物物理响应和反馈机制的描述以及管理功能的内化程度上存在差异。我们得出结论,比较应用于一系列情景的不同农场规模模型的结果,将有助于建立对其实现 ESR 目标的信心,从而证明在开发更广泛的情景和软件工具方面进行进一步投资是合理的。