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Operational mesoscale atmospheric dispersion prediction using a parallel computing cluster

机译:使用并行计算集群的中尺度大气大气色散预测

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An operational atmospheric dispersion prediction system is implemented on a cluster supercomputer for Online Emergency Response at the Kalpakkam nuclear site. This numerical system constitutes a parallel version of a nested grid meso-scale meteorological model MM5 coupled to a random walk particle dispersion model FLEXPART. The system provides 48-hour forecast of the local weather and radioactive plume dispersion due to hypothetical airborne releases in a range of 100 km around the site. The parallel code was implemented on different cluster configurations like distributed and shared memory systems. A 16-node dual Xeon distributed memory gigabit ether-net cluster has been found sufficient for operational applications. The runtime of a triple nested domain MM5 is about 4 h for a 24 h forecast. The system had been operated continuously for a few months and results were ported on the IMSc home page. Initial and periodic boundary condition data for MM5 are provided by NCMRWF, New Delhi. An alternative source is found to be NCEP, USA. These two sources provide the input data to the operational models at different spatial and temporal resolutions using different assimilation methods. A comparative study on the results of forecast is presented using these two data sources for present operational use. Improvement is noticed in rainfall forecasts that used NCEP data, probably because of its high spatial and temporal resolution.
机译:在卡尔帕卡姆核电站的集群超级计算机上实现了可操作的大气弥散预测系统,用于在线紧急响应。该数值系统构成了与随机游动粒子弥散模型FLEXPART耦合的嵌套网格中尺度气象模型MM5的并行版本。该系统可提供48小时的天气预报,其原因是假想的空气传播是在场地周围100公里范围内,是当地天气和放射性羽流扩散的结果。并行代码是在不同的群集配置(如分布式和共享内存系统)上实现的。已经发现一个16节点的双Xeon分布式内存千兆位以太网群集足以满足运行应用程序的需求。对于24小时的预测,三层嵌套域MM5的运行时间约为4小时。该系统已连续运行了几个月,结果已移植到IMSc主页上。 MM5的初始和周期性边界条件数据由新德里NCMRWF提供。发现替代来源是美国NCEP。这两个源使用不同的同化方法以不同的空间和时间分辨率向操作模型提供输入数据。使用这两个数据源对当前的运行情况进行了对预测结果的比较研究。在使用NCEP数据的降雨预报中注意到了改进,这可能是因为其时空分辨率高。

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