...
首页> 外文期刊>Scientific reports. >High temporal resolution of leaf area data improves empirical estimation of grain yield
【24h】

High temporal resolution of leaf area data improves empirical estimation of grain yield

机译:叶面积数据的高时间分辨率提高了粮食产量的实证估计

获取原文

摘要

Empirical yield estimation from satellite data has long lacked suitable combinations of spatial and temporal resolutions. Consequently, the selection of metrics, i.e., temporal descriptors that predict grain yield, has likely been driven by practicality and data availability rather than by systematic targetting of critically sensitive periods as suggested by knowledge of crop physiology. The current trend towards hyper-temporal data raises two questions: How does temporality affect the accuracy of empirical models? Which metrics achieve optimal performance? We followed an in silico approach based on crop modelling which can generate any observation frequency, explore a range of growing conditions and reduce the cost of measuring yields in situ. We simulated wheat crops across Australia and regressed six types of metrics derived from the resulting time series of Leaf Area Index (LAI) against wheat yields. Empirical models using advanced LAI metrics achieved national relevance and, contrary to simple metrics, did not benefit from the addition of weather information. This suggests that they already integrate most climatic effects on yield. Simple metrics remained the best choice when LAI?data are sparse. As we progress into a data-rich era, our results support a shift towards metrics that truly harness the temporal dimension of LAI data.
机译:卫星数据的经验产量估计长期缺乏适当的空间和时间分辨率组合。因此,指标的选择,即预测谷物产量的时间描述符,可能是通过实用性和数据可用性驱动的,而不是通过作物生理学知识所提出的提出的批判性敏感时期的系统靶向驱动。目前对超时数据的趋势提出了两个问题:时间性如何影响经验模型的准确性?哪些指标实现了最佳性能?我们跟踪了基于裁剪建模的硅方法,该方法可以产生任何观察频率,探索一系列生长条件,并降低原位测量产量的成本。我们在澳大利亚模拟小麦作物,并回归六种类型的叶子区域指数(LAI)的六种类型的指标对小麦产量。使用先进的LAI指标的经验模型实现了国家相关性,与简单的指标相反,没有从添加天气信息中受益。这表明他们已经整合了最多的气候影响。简单的指标仍然是LAI?数据稀疏的最佳选择。随着我们进入富有的数据丰富的时代,我们的结果支持转向真正利用LAI数据的时间维度的度量。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号