...
首页> 外文期刊>Global change biology >Model-data synthesis in terrestrial carbon observation: methods, data requirements and data uncertainty specifications
【24h】

Model-data synthesis in terrestrial carbon observation: methods, data requirements and data uncertainty specifications

机译:陆地碳观测中的模型数据综合:方法,数据要求和数据不确定性规范

获取原文
获取原文并翻译 | 示例

摘要

Systematic, operational, long-term observations of the terrestrial carbon cycle (including its interactions with water, energy and nutrient cycles and ecosystem dynamics) are important for the prediction and management of climate, water resources, food resources, biodiversity and desertification. To contribute to these goals, a terrestrial carbon observing system requires the synthesis of several kinds of observation into terrestrial biosphere models encompassing the coupled cycles of carbon, water, energy and nutrients. Relevant observations include atmospheric composition (concentrations of CO2 and other gases); remote sensing; flux and process measurements from intensive study sites; in situ vegetation and soil monitoring; weather, climate and hydrological data; and contemporary and historical data on land use, land use change and disturbance (grazing, harvest, clearing, fire).A review of model-data synthesis tools for terrestrial carbon observation identifies 'nonsequential' and 'sequential' approaches as major categories, differing according to whether data are treated all at once or sequentially. The structure underlying both approaches is reviewed, highlighting several basic commonalities in formalism and data requirements.An essential commonality is that for all model-data synthesis problems, both nonsequential and sequential, data uncertainties are as important as data values themselves and have a comparable role in determining the outcome.Given the importance of data uncertainties, there is an urgent need for soundly based uncertainty characterizations for the main kinds of data used in terrestrial carbon observation. The first requirement is a specification of the main properties of the error covariance matrix.As a step towards this goal, semi-quantitative estimates are made of the main properties of the error covariance matrix for four kinds of data essential for terrestrial carbon observation: remote sensing of land surface properties, atmospheric composition measurements, direct flux measurements, and measurements of carbon stores.
机译:对陆地碳循环(包括其与水,能量和养分循环以及生态系统动态的相互作用)进行系统的,可操作的长期观测,对于预测和管理气候,水资源,粮食资源,生物多样性和荒漠化至关重要。为了实现这些目标,陆地碳观测系统需要将几种观测综合到陆地生物圈模型中,其中包括碳,水,能量和养分的耦合循环。有关的观测资料包括大气成分(二氧化碳和其他气体的浓度);遥感;来自密集研究场所的流量和过程测量;现场植被和土壤监测;天气,气候和水文数据;以及有关土地利用,土地利用变化和干扰(放牧,收割,清理,火灾)的当代和历史数据。对用于陆地碳观测的模型数据综合工具的回顾指出,“非顺序”和“顺序”方法是主要类别,不同根据是一次还是顺序处理数据。审查了这两种方法的结构,强调了形式主义和数据要求的几个基本共性。一个基本共性是,对于所有模型数据综合问题,无论是非顺序还是顺序问题,数据不确定性与数据值本身一样重要,并且具有可比的作用鉴于数据不确定性的重要性,迫切需要对地面碳观测中使用的主要数据进行可靠的不确定性表征。第一个要求是对误差协方差矩阵的主要属性的规范。为此,为实现这一目标,对地面碳观测所需的四种数据,对误差协方差矩阵的主要属性进行了半定量估计。感测土地表面特性,大气成分测量,直接通量测量和碳储量测量。

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