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Porting a process-based crop model to a high-performance computing environment for plant simulation

机译:将基于过程的作物模型移植到用于植物模拟的高性能计算环境

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Increasing concerns about food security have stimulated integrated assessment of the sustainability of agricultural systems at regional, national and global scales with high-resolution. Traditionally, the process-based agricultural models are designed for field scale studies that obtain inputs, run the simulations and provide outputs through the graphic interface. The graphic interface based model dose not suit for modelling practices requiring a large number of simulations. Here, we developed a high performance approach which concurrently executed the Agricultural Production Systems sIMulator (APSIM) simulations using parallel programming techniques. In this approach, an APSIM simulation template with replaceable parameters was firstly designed, and new simulations based on the template was then constructed by dynamically replacing parameters of climate, soil and management options. We parallelized the batched running method in a shared-memory multiprocessor system using Python's Multiprocessing module. We tested the approach with a case study that simulated the productivity of continuous wheat cropping system during 20 years period along the Australian cereal-growing regions under management practices of 5 levels nitrogen application and 3 stubble management practices. More than 170 K runs were finished in 43h by using 64 workers, achieved a speedup ratio of 60. The parallelized method proposed in this study makes large-scale and high-resolution agricultural systems assessment possible.
机译:对粮食安全的日益关注促使人们对高分辨率的区域,国家和全球规模的农业系统可持续性进行综合评估。传统上,基于过程的农业模型设计用于实地规模研究,以获取输入,运行模拟并通过图形界面提供输出。基于图形界面的模型不适用于需要大量仿真的建模实践。在这里,我们开发了一种高性能方法,该方法使用并行编程技术同时执行农业生产系统仿真器(APSIM)仿真。在这种方法中,首先设计了具有可替换参数的APSIM模拟模板,然后通过动态替换气候,土壤和管理选项的参数来构造基于该模板的新模拟。我们使用Python的Multiprocessing模块在共享内存多处理器系统中并行化了批处理运行方法。我们通过案例研究对这种方法进行了测试,该案例在5种氮肥施用和3种茬茬管理实践下模拟了澳大利亚谷物种植地区20年内的连续小麦种植系统的生产力。在43小时内,使用64名工人完成了170 K多次运行,加速比达到60。本研究中提出的并行方法使大规模,高分辨率的农业系统评估成为可能。

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