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Reprint of “Quantifying yield gaps in rainfed cropping systems: A case study of wheat in Australia”

机译:重印“量化雨养作物系统中的产量差距:以澳大利亚小麦为例”

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摘要

To feed a growing world population in the coming decades, agriculture must strive to reduce the gap between the yields that are currently achieved by farmers (Ya) and those potentially attainable in rainfed farming systems (Yw). The first step towardsreducing yield gaps (Yg) is to obtain realistic estimates of their magnitude and their spatial and temporal variability. In this paper we describe a new yield gap assessment framework. The framework uses statistical yield and cropping area data, remotely sensed data, cropping system simulation and GIS mapping to calculate wheat yield gaps at scales from 1.1 km cells to regional. The framework includes ad hoc on-ground testing of the calculated yield gaps. This framework was applied to wheat in the Wimmera region of Victoria, Australia. Estimated Yg over the whole Wimmera region varied annually from 0.63 to 4.12 Mg ha~(-1) with an average of 2.00 Mg ha~(-1). Expressed as a relative yield (Y%) the range was 26.3-77.9% with an average of 52.7%. Similarlylarge spatial variability was described in a Wimmera yield gap map. Such maps can be used to show where efforts to bridge the yield gap are likely to have the biggest impacts. Bridging the exploitable yield gap in the Wimmera region by increasing average Y% to 80% would increase average annual wheat production from 1.09 M tonnes to 1.65 M tonnes. Model estimates of Yw and Yg were compared with data from crop yield contests, experimental variety trials, and on-farm water use and yields. These alternative approaches agreed well with the modelling results, indicating that the proposed framework provided a robust and widely applicable method of determining yield gaps. Its successful implementation requires that: (1) Ya as well as the area and geospatial distribution of wheat cropping are well defined; (2) there is a crop model with proven performance in the local agro-ecological zone; (3) daily weather and soil data (such as PAWC) required by crop models are available throughout the area; and (4) local agronomic best practice is well defined.
机译:为了在未来几十年中养活不断增长的世界人口,农业必须努力缩小农民当前的单产(Ya)与雨育农业系统的单价(Yw)之间的差距。缩小产量差距(Yg)的第一步是获得其幅度及其时空变化的现实估计。在本文中,我们描述了一种新的产量差距评估框架。该框架使用统计的产量和作物面积数据,遥感数据,作物系统模拟和GIS映射来计算从1.1 km单元到区域范围内的小麦产量差距。该框架包括对计算出的产量差距的临时性地面测试。该框架已应用于澳大利亚维多利亚州Wimmera地区的小麦。整个Wimmera地区估计的Yg每年从0.63到4.12 Mg ha〜(-1)变化,平均为2.00 Mg ha〜(-1)。以相对产率(Y%)表示,范围为26.3-77.9%,平均为52.7%。同样在Wimmera产量差距图中描述了较大的空间变异性。这样的地图可以用来显示在哪些地方弥合产量差距可能会产生最大的影响。通过将Wimmera地区的可利用单产差距提高到平均Y%至80%,将使小麦年平均产量从109万吨增加到165万吨。将Yw和Yg的模型估计值与作物产量竞赛,试验性品种试验以及农场用水和产量的数据进行了比较。这些替代方法与建模结果非常吻合,表明所提出的框架提供了一种确定产量差距的可靠且广泛适用的方法。它的成功实施需要:(1)明确确定Ya以及小麦作物的面积和地理空间分布; (2)在当地的农业生态区中有一个表现良好的作物模型; (3)整个地区都有作物模型所需的每日天气和土壤数据(例如PAWC); (4)明确了当地的农学最佳实践。

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