首页> 外文期刊>Geoscientific Model Development Discussions >The Land surface Data Toolkit (LDT v7.2) – a data fusion environment for land data assimilation systems
【24h】

The Land surface Data Toolkit (LDT v7.2) – a data fusion environment for land data assimilation systems

机译:陆地数据工具包(LDT v7.2) - 土地数据同化系统的数据融合环境

获取原文
           

摘要

The effective applications of land surface models (LSMs) and hydrologic models pose a varied set of data input and processing needs, ranging from ensuring consistency checks to more derived data processing and analytics. This article describes the development of the Land surface Data Toolkit (LDT), which is an integrated framework designed specifically for processing input data to execute LSMs and hydrological models. LDT not only serves as a preprocessor to the NASA Land Information System (LIS), which is an integrated framework designed for multi-model LSM simulations and data assimilation (DA) integrations, but also as a land-surface-based observation and DA input processor. It offers a variety of user options and inputs to processing datasets for use within LIS and stand-alone models. The LDT design facilitates the use of common data formats and conventions. LDT is also capable of processing LSM initial conditions and meteorological boundary conditions and ensuring data quality for inputs to LSMs and DA routines. The machine learning layer in LDT facilitates the use of modern data science algorithms for developing data-driven predictive models. Through the use of an object-oriented framework design, LDT provides extensible features for the continued development of support for different types of observational datasets and data analytics algorithms to aid land surface modeling and data assimilation.
机译:陆地表面模型(LSM)和水文模型的有效应用构成了多样的数据输入和处理需求,从确保一致性检查到更多派生数据处理和分析。本文介绍了陆地数据工具包(LDT)的开发,它是专门用于处理输入数据以执行LSM和水文模型的集成框架。 LDT不仅用作NASA土地信息系统(LIS)的预处理器,它是一个集成框架,专为多型LSM模拟和数据同化(DA)集成而设计,但也是基于土地表面的观察和DA输入处理器。它提供了各种用户选项和输入到处理数据集,以便在LIS和独立模型中使用。 LDT设计有助于使用常见的数据格式和约定。 LDT还能够处理LSM初始条件和气象边界条件,并确保输入到LSM和DA例程的数据质量。 LDT中的机器学习层有助于使用现代数据科学算法开发数据驱动的预测模型。通过使用面向对象的框架设计,LDT提供可扩展的功能,可继续开发对不同类型的观察数据集和数据分析算法的支持,以帮助陆地面料建模和数据同化。
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