气象研究与预报模式来源收集平台

Alper Tufek, A. Gurbuz, Omer Faruk Ekuklu, M. Aktaş
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引用次数: 12

摘要

气象事件造成的生命财产损失、交通和贸易中断等日益凸显快速准确的天气预报的重要性。由于这个原因,世界上有各种数值天气预报(NWP)模式,它们在本地或全球范围内运行。然而,NWP模型通常需要几个小时才能完成一个完整的运行,这取决于输入参数和预测域的大小。对于检测在模型执行过程中可能发生的意外事件,以及尽早采取必要的行动,来源信息是非常重要的。此外,在研究人员或科学家之间共享科学数据和结果的需要也突出了数据质量和可靠性的重要性。这只能通过在相关数据的整个生命周期中收集的来源信息来实现。天气研究与预报(WRF)模式是一个开源的数值天气预报模式。在本研究中,我们开发了一个框架,用于跟踪WRF模型以及生成、存储和分析种源数据。建议的系统通过提供来源图表,使数值天气预报工作流程易于管理和理解。通过分析这些图,可以追踪到WRF执行期间可能出现的潜在错误情况的根本原因。我们提出的系统已被评估,并已被证明即使在高频来源信息流中也表现良好。
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Provenance Collection Platform for the Weather Research and Forecasting Model
Loss of life and property, disruptions to transportation and trading operations, etc. caused by meteorological events increasingly highlight the importance of fast and accurate weather forecasting. For this reason, there are various Numerical Weather Prediction (NWP) models worldwide that are run on either a local or a global scale. NWP models typically take hours to finish a complete run, however, depending on the input parameters and the size of the forecast domain. Provenance information is of central importance for detecting unexpected events that may develop during the course of model execution, and also for taking necessary action as early as possible. In addition, the need to share scientific data and results between researchers or scientists also highlights the importance of data quality and reliability. This can only be achieved through provenance information collected during the entire lifecycle of the data of interest. The Weather Research and Forecasting (WRF) Model is a Numerical Weather Prediction model developed as open source. In this study, we develop a framework for tracking the WRF model and for generating, storing and analyzing provenance data. The proposed system enables easy management and understanding of numerical weather forecast workflows by providing provenance graphs. By analyzing these graphs, potential faulty situations that may occur during the execution of WRF can be traced to their root causes. Our proposed system has been evaluated and has been shown to perform well even in a high-frequency provenance information flow.
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