减少闭环天气监测的计算时间:一种基于复杂事件处理和机器学习的方法

H. M. C. Chandrathilake, H. T. S. Hewawitharana, R. Jayawardana, A. D. D. Viduranga, H. D. Dilum Bandara, S. Marru, S. Perera
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引用次数: 3

摘要

现代天气预报模型的开发是为了通过运行具有大量数据的计算密集型算法来最大限度地提高预报的准确性。因此,算法需要很长时间才能执行,这可能会对预测的时效性产生不利影响。这个问题的一个解决方案是,只对潜在的危险事件运行复杂的天气预报模型,这些事件是由轻量级数据过滤算法预先识别的。我们提出了一个基于复杂事件处理(CEP)和机器学习(ML)的天气监测框架,该框架使用开源资源,可以根据用户的需求进行扩展和定制。CEP引擎不断过滤输入的天气数据流,以识别潜在的危险天气事件,然后生成一个粗略的边界,将所有数据点包含在兴趣区域(AOI)内。然后将过滤的数据点馈送给机器学习器,通过将其聚类到一组aoi中,粗略的边界得到进一步细化。然后,WRF模式的复杂天气算法同时处理每个集群。这减少了约75%的计算时间,因为资源重天气算法只使用对应于具有潜在危险天气的区域的一小部分数据来执行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reducing computational time of closed-loop weather monitoring: A Complex Event Processing and Machine Learning based approach
Modern weather forecasting models are developed to maximize the accuracy of forecasts by running computationally intensive algorithms with vast volumes of data. Consequently, algorithms take a long time to execute, and it may adversely affect the timeliness of forecast. One solution to this problem is to run the complex weather forecasting models only on the potentially hazardous events, which are pre-identified by a lightweight data filtering algorithm. We propose a Complex Event Processing (CEP) and Machine Learning (ML) based weather monitoring framework using open source resources that can be extended and customized according to the users' requirements. The CEP engine continuously filters out the input weather data stream to identify potentially hazardous weather events, and then generates a rough boundary enclosing all the data points within the Areas of Interest (AOI). Filtered data points are then fed to the machine learner, where the rough boundary gets more refined by clustering it into a set of AOIs. Each cluster is then concurrently processed by complex weather algorithms of the WRF model. This reduces the computational time by ~75%, as resource heavy weather algorithms are executed using a small subset of data that corresponds to only the areas with potentially hazardous weather.
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