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Benchmarking nutrient use efficiency of dairy farms: The effect of episternic uncertainty

机译:乳制品农场的基准营养利用效率:超重要性的效果

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The nutrient use efficiency (NUE) of a system, generally computed as the amount of nutrients in valuable outputs over the amount of nutrients in all inputs, is commonly used to benchmark the environmental performance of dairy farms. Benchmarking the NUE of farms, however, may lead to biased conclusions because of differences in major decisive characteristics between farms, such as soil type and production intensity, and because of epistemic uncertainty of input parameters caused by errors in measurement devices or observations. This study aimed to benchmark the nitrogen use efficiency (NUEN; calculated as N output per unit of N input) of farm clusters with similar characteristics while including epistemic uncertainty, using Monte Carlo simulation. Subsequently, the uncertainty of the parameters explaining most of the output variance was reduced to examine if this would improve benchmarking results. Farms in cluster 1 (n = 15) were located on sandy soils and farms in cluster 2 (n = 17) on loamy soils. Cluster 1 farms were more intensive in terms of milk production per hectare and per cow, had less grazing hours, and fed more concentrates compared to farms in cluster 2. The mean NUEN of farm in cluster 1 was 43%, while in cluster 2 it was 26%. Input parameters that explained most of the output variance differed between clusters. For cluster 1, input of feed, and output of roughage were most important, whereas for cluster 2, the input of mineral fertilizer (or fixation) was most important. For both clusters, the output of milk was relatively important. Including the epistemic uncertainty of input parameters showed that only 37% of the farms in cluster 1 (out of 105 mutual comparisons) differed significantly in terms of their NUEN, whereas in cluster 2 this was 82% (out of 120 comparisons). Therefore, benchmarking NUEN of farms in cluster 1 was no longer possible, whereas farms in cluster 2 could still be ranked when uncertainty was included. After reducing the uncertainties of the most important parameters, 72% of the farms in cluster 1 differed significantly in terms of their NUEN, and in cluster 2 this was 87%. Results indicate that reducing epistemic uncertainty of input parameters can significantly improve benchmarking results. The method presented in this study, therefore, can be used to draw more reliable conclusions regarding benchmarking the NUE of farms, and to identify the parameters that require more precision to do so.
机译:系统的营养利用效率(NUE)通常计算为所有投入中营养素量的有价值输出中的营养素的量,通常用于基准乳制品农场的环境性能。然而,基准测试NUE,可能导致偏见的结论,因为农场之间的主要决定性,如土壤类型和生产强度,以及由于测量装置或观察中的错误引起的输入参数的认知不确定性。该研究旨在基准氮利用效率(NUEN;计算为每单位N个输入的N个输出)的农场簇具有相似的特征,同时包括Monte Carlo仿真在内的认识状态。随后,减少了解释大部分输出方差的参数的不确定性以检查是否这将改善基准测试结果。群体1(n = 15)的农场位于植物土壤中的砂土和群体2(n = 17)的农场上。在每公顷的牛奶产量和每头牛的牛奶产量方面都比牛奶产量更加密集,并且每牛的饲养时间较少,与集群中的农场相比,喂养更多的浓缩物。集群中的农场的平均nuen是43%,而在集群2中则为43%是26%。输入参数解释了大多数输出​​方差不同的簇。对于簇1,饲料的输入和粗饲料的输出最为重要,而对于群集2,矿物肥料(或固定)的输入最为重要。对于两个簇,牛奶的产量相对重要。包括输入参数的认知不确定性显示,在努恩的群体中只有37%的群体(105个相互比较)的农场有显着不同,而在群中则为82%(超过120比较)。因此,群体1中的农场的Nuen是不再可能的,而在包括不确定性的情况下仍然可以排名。在减少最重要参数的不确定性之后,群体1的72%的农场在其Nuen方面有显着不同,并且在群中,这是87%。结果表明,降低输入参数的认知不确定性可以显着提高基准测试结果。因此,本研究中呈现的方法可用于绘制关于基准测试的更可靠的结论,并识别需要更精确的参数。

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