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Combining field experiments and predictive models to assess potential for increased plant diversity to climate‐proof intensive agriculture

机译:结合田间试验和预测模型评估对耐气候集约化农业增加植物多样性的潜力

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摘要

Agricultural production systems face increasing threats from more frequent and extreme weather fluctuations associated with global climate change. While there is mounting evidence that increased plant community diversity can reduce the variability of ecosystem functions (such as primary productivity) in the face of environmental fluctuation, there has been little work testing whether this is true for intensively managed agricultural systems. Using statistical modeling techniques to fit environment–productivity relationships offers an efficient means of leveraging hard‐won experimental data to compare the potential variability of different mixtures across a wide range of environmental contexts. We used data from two multiyear field experiments to fit climate–soil–productivity models for two pasture mixtures under intensive grazing—one composed of two drought‐sensitive species (standard), and an eight‐species mixture including several drought‐resistant species (complex). We then used these models to undertake a scoping study estimating the mean and coefficient of variation (CV) of annual productivity for long‐term climate data covering all New Zealand on soils with low, medium, or high water‐holding capacity. Our results suggest that the complex mixture is likely to have consistently lower CV in productivity, irrespective of soil type or climate regime. Predicted differences in mean annual productivity between mixtures were strongly influenced by soil type and were closely linked to mean annual soil water availability across all soil types. Differences in the CV of productivity were only strongly related to interannual variance in water availability for the lowest water‐holding capacity soil. Our results show that there is considerable scope for mixtures including drought‐tolerant species to enhance certainty in intensive pastoral systems. This provides justification for investing resources in a large‐scale distributed experiment involving many sites under different environmental contexts to confirm these findings.
机译:农业生产系统面临着与全球气候变化有关的更加频繁和极端的气候波动带来的日益严峻的威胁。尽管越来越多的证据表明,面对环境波动,增加的植物群落多样性可以减少生态系统功能的变化(例如初级生产力),但很少有工作可以测试集约化农业系统是否成立。使用统计建模技术来拟合环境与生产力的关系提供了一种有效的手段,可以利用来之不易的实验数据来比较各种混合物在各种环境中的潜在可变性。我们使用了来自两个多年期野外实验的数据,以拟合集约化放牧下的两种牧场混合物的气候-土壤-生产力模型,其中一种由两种对干旱敏感的物种(标准)组成,而八种混合物包括几种抗旱的物种(复杂物种) )。然后,我们使用这些模型进行范围界定研究,以估算涵盖低,中或高保水能力的整个新西兰的长期气候数据的年生产力平均值和变异系数(CV)。我们的研究结果表明,无论土壤类型或气候条件如何,复杂的混合物的CV都可能持续降低。混合物之间的平均年生产力的预测差异受土壤类型的强烈影响,并且与所有土壤类型的年平均土壤水利用率密切相关。对于最低持水量的土壤,生产力的CV差异仅与水可利用量的年际变化密切相关。我们的结果表明,包括耐旱物种在内的多种混合物在加强集约化牧草系统中的确定性方面有很大的空间。这为在涉及不同环境背景下的许多站点的大规模分布式实验中投资资源提供了依据,以证实这些发现。

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