Collaborative Research: CMG--Ensemble Data Assimilation for Nonlinear and Nondifferentiable Problems in Geosciences
合作研究:CMG——地球科学中非线性和不可微问题的集合数据同化
基本信息
- 批准号:0930265
- 负责人:
- 金额:$ 39.91万
- 依托单位:
- 依托单位国家:美国
- 项目类别:Standard Grant
- 财政年份:2009
- 资助国家:美国
- 起止时间:2009-09-01 至 2014-08-31
- 项目状态:已结题
- 来源:
- 关键词:
项目摘要
Data assimilation is an essential component of attempts to observe and predict the state of the atmosphere, defined as the values of temperature, pressure, humidity, wind speed, and other variables at specific locations. A data assimilation system typically has two components:1) a set of observations which are imperfect, unevenly distributed in space and time, and related to the state in complex ways (e.g. satellites sense radiation which is indirectly related to temperature and moisture, radar returns are indirectly related to precipitation); and 2) a complex and imperfect forecast model, which provides a "first guess" of the atmospheric state. The goal of data assimilation is to optimally combine the model first guess and the observations to produce the best possible representation of the state, accompanied by an estimate of the state uncertainty caused by the limitations of the observations and the forecast model. Ensemble data assimilation (EnsDA) is a data assimilation method in which an ensemble of forecasts is used in each assimilation cycle, so that differences among the forecast ensemble members provide a means of expressing the probabilistic nature of the model-generated first guess. For example, a single forecast will predict either rain or no rain at a given location, whereas an ensemble of forecasts can estimate the probability of rainfall. Due to the complexity of atmospheric variability and the indirect ways in which observations are related to the state, EnsDA methods usually require simplifying assumptions in order to be practically useful. Among the common simplifying assumptions are 1) that the observations can be related to the state through simple linear functions; and 2) that the atmosphere evolves smoothly, so that the atmospheric state can be treated as varying in space and time in a smooth, differentiable way. While convenient, these assumptions are not physically justifiable, and the research in this proposal is an attempt to find new EnsDA methods which do not rely on these assumptions. The work begins by quantifying the error in the estimated atmospheric state using a "cost function", which is minimized to produce the assimilated state. Nonlinearity and nondifferentiability in the evolution of the atmospheric state and in state-observation relationships leads to nonlinearity and nondifferentiability in the cost function. This research addresses the lack of smoothness in the cost function by 1) evaluating nondifferentiable cost function minimization methods suitable for EnsDA; 2) examining the value of hybrid ensemble data assimilation methods for nonlinear and nondifferentiable applications; and 3) developing and evaluating a nonlinear and nondifferentiable EnsDA method designed to quantify uncertainty in realistic high-dimensional geosciences applications. The research is intended to find better ways to use existing data and models to understand and predict the behavior of the atmosphere. These efforts will ultimately lead to better forecasts of severe weather which will benefit society. In addition, EnsDA techniques developed for the atmosphere will be applicable to the ocean and to coupled atmosphere-ocean models used to anticipate climate change. The grant will also contribute to the training of the next generation of scientists, by funding the education and training of a graduate student.
数据同化是观察和预测大气状态的重要组成部分,大气状态定义为特定位置的温度、压力、湿度、风速和其他变量的值。数据同化系统通常有两个组成部分:1)一组不完善的、在空间和时间上分布不均匀且与状态以复杂方式相关的观测(例如卫星感测辐射与温度和湿度间接相关,雷达回波与降水间接相关); 2)复杂且不完善的预测模型,提供了大气状态的“初步猜测”。数据同化的目标是最佳地结合模型首次猜测和观测结果,以产生状态的最佳可能表示,同时估计由观测结果和预测模型的局限性引起的状态不确定性。集合数据同化(EnsDA)是一种数据同化方法,其中在每个同化周期中使用预测集合,以便预测集合成员之间的差异提供了表达模型生成的第一猜测的概率性质的方法。例如,单个预报将预测给定位置下雨或不下雨,而一组预报可以估计降雨的概率。由于大气变化的复杂性以及观测与状态的间接关系,EnsDA 方法通常需要简化假设才能实用。常见的简化假设包括 1)观测值可以通过简单的线性函数与状态相关; 2)大气演化平稳,因此大气状态可以被视为在空间和时间上以平滑、可微的方式变化。虽然方便,但这些假设在物理上并不合理,本提案中的研究试图寻找不依赖于这些假设的新 EnsDA 方法。这项工作首先使用“成本函数”量化估计大气状态的误差,将其最小化以产生同化状态。大气状态演化和状态观测关系中的非线性和不可微性导致成本函数的非线性和不可微性。本研究通过以下方式解决了成本函数缺乏平滑性的问题:1)评估适用于 EnsDA 的不可微成本函数最小化方法; 2)研究混合集合数据同化方法对于非线性和不可微应用的价值; 3) 开发和评估非线性和不可微的 EnsDA 方法,旨在量化现实高维地球科学应用中的不确定性。该研究旨在找到更好的方法来使用现有的数据和模型来理解和预测大气的行为。这些努力最终将有助于更好地预报恶劣天气,从而造福社会。此外,为大气开发的 EnsDA 技术将适用于海洋以及用于预测气候变化的大气-海洋耦合模型。这笔赠款还将通过资助研究生的教育和培训来促进下一代科学家的培训。
项目成果
期刊论文数量(0)
专著数量(0)
科研奖励数量(0)
会议论文数量(0)
专利数量(0)
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Milija Zupanski其他文献
Assimilation of GCOM-W/AMSR2 brightness temperature using a strongly coupled atmosphere-land data assimilation system in snowy Siberia
利用强耦合大气-陆地数据同化系统同化西伯利亚雪地 GCOM-W/AMSR2 亮温
- DOI:
- 发表时间:
2017 - 期刊:
- 影响因子:0
- 作者:
Kazuyoshi Suzuki;Milija Zupanski;Dusanka Zupanski;Koji Terasaki;Takemasa Miyoshi - 通讯作者:
Takemasa Miyoshi
グリーンランド氷床ならびに周辺海域における領域再解析データの構築
格陵兰冰盖及周边海域区域再分析数据构建
- DOI:
- 发表时间:
2016 - 期刊:
- 影响因子:0
- 作者:
Kazuyoshi Suzuki;Milija Zupanski;Dusanka Zupanski;鈴木和良(海洋研究開発機構),松尾功二(国土地理院),山崎大(東京大学),市井和仁(千葉大 学),飯島慈裕(三重大学),檜山哲哉(名古屋大学);鈴木和良 - 通讯作者:
鈴木和良
環北極ツンドラと北極大河川流域の水循環変動 -2002年~2016年-
环北极苔原和北极大河流域水文循环变化-2002-2016-
- DOI:
- 发表时间:
2017 - 期刊:
- 影响因子:0
- 作者:
Kazuyoshi Suzuki;Milija Zupanski;Dusanka Zupanski;鈴木和良(海洋研究開発機構),松尾功二(国土地理院),山崎大(東京大学),市井和仁(千葉大 学),飯島慈裕(三重大学),檜山哲哉(名古屋大学) - 通讯作者:
鈴木和良(海洋研究開発機構),松尾功二(国土地理院),山崎大(東京大学),市井和仁(千葉大 学),飯島慈裕(三重大学),檜山哲哉(名古屋大学)
A mechanism of Alpine lee cyclogenesis as revealed by a quasigeostrophic variational filter
- DOI:
10.1007/bf01025610 - 发表时间:
1992-01-01 - 期刊:
- 影响因子:2.100
- 作者:
Yoshi K. Sasaki;Milija Zupanski - 通讯作者:
Milija Zupanski
Single observation実験に基づく大気陸面結合モデル内の予報誤差共分散の構造―積雪期のシベリア での解析―
基于单次观测实验的空地耦合模型预报误差协方差结构-西伯利亚雪季分析-
- DOI:
- 发表时间:
2017 - 期刊:
- 影响因子:0
- 作者:
Kazuyoshi Suzuki;Milija Zupanski;Dusanka Zupanski - 通讯作者:
Dusanka Zupanski
Milija Zupanski的其他文献
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{{ truncateString('Milija Zupanski', 18)}}的其他基金
Collaborative Research: CMG: Ensemble Data Assimilation Based on Control Theory
合作研究:CMG:基于控制理论的集合数据同化
- 批准号:
0327651 - 财政年份:2003
- 资助金额:
$ 39.91万 - 项目类别:
Standard Grant
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Cell Research
- 批准号:31224802
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- 批准号:30824808
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