Assessing the carbon footprint in dairy cattle farms in the northern temperate region of Spain

Gregorio Salcedo Díaz , Pilar Merino Pereda , Daniel Salcedo-Rodríguez
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Abstract

The availability of models constitutes a key factor when selecting a decision support tool aimed at improving the production and environmental aspects of farms. There is a need for robust models that are user-friendly, facilitating the estimation of farm emissions and the analysis of their temporal fluctuations. The objectives of this study were i) to calculate both the partial (PCF) and total carbon (TCF) footprints of 212 dairy farms, distinguishing those with and without maize cultivation; ii) to identify critical variables related to feed, nutrition, productivity and environmental efficiency; and iii) to formulate and validate prediction equations based on available data from dairy farms. The database encompasses information from 212 dairy cattle farms situated in the temperate-humid zone of northern Spain, spanning the period from 2014 to 2018. Farm classification was based on the presence (CcMz) or absence (ScCMz) of maize cultivation for silage production, resulting in 96 farms in the CcMz category and 116 farms in the ScCMz category.

Among the variables considered, the variable herd N-use efficiency (NUECR) for (PCF) showed the lowest root mean square error of prediction at 0.39% and the correspondingly lowest root men. The root mean squared percentage error (RMSPE): standard deviation ratio (RSR) at 0.52. In the case of total carbon footprint (TCF), herd N-use efficiency (NUECR) again showed the lowest root mean square error of prediction at 0.52%. Regarding TCF, herd feed efficiency (EACR) was the variable with the lowest both RMSPE and RSR, with 0.65 and 0.64, respectively. Consequently, the estimation of the PCF and TCF of 1 ​kg of milk from the temperate-humid zone of northern Spain at the farm gate can be feasibly accomplished utilizing NUECR and EACR, respectively.

评估西班牙北温带地区奶牛养殖场的碳足迹
在选择旨在改善农场生产和环境方面的决策支持工具时,模型的可用性是一个关键因素。有必要建立对用户友好的可靠模型,以促进对农场排放的估计和对其时间波动的分析。本研究的目的是:(1)计算212个奶牛场的部分碳足迹(PCF)和总碳足迹(TCF),区分种植玉米和不种植玉米的奶牛场;Ii)确定与饲料、营养、生产力和环境效率有关的关键变量;iii)根据奶牛场的现有数据制定并验证预测方程。该数据库涵盖了2014年至2018年期间位于西班牙北部温带湿润地区的212个奶牛场的信息。农场分类是基于青贮生产玉米种植的存在(CcMz)或不存在(ScCMz),导致96个农场属于CcMz类别,116个农场属于ScCMz类别。在考虑的变量中,(PCF)的变量群氮利用效率(NUECR)的预测均方根误差最低,为0.39%,相应的根误差最低。均方根百分比误差(RMSPE):标准偏差比(RSR)为0.52。在总碳足迹(TCF)的情况下,畜群氮利用效率(NUECR)的预测均方根误差也最低,为0.52%。在TCF方面,兽群饲料效率(EACR)的RMSPE和RSR最低,分别为0.65和0.64。因此,分别利用NUECR和EACR估算西班牙北部温带湿润地区1 kg牛奶的PCF和TCF是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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