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TOWARD A GPU-ACCELERATED IMMERSED BOUNDARY METHOD FOR WIND FORECASTING OVER COMPLEX TERRAIN

机译:在复杂地形上进行风速预报的GPU加速浸入边界方法

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A short-term wind power forecasting capability can be a valuable tool in the renewable energy industry to address load-balancing issues that arise from intermittent wind fields. Although numerical weather prediction models have been used to forecast winds, their applicability to micro-scale atmospheric boundary layer flows and ability to predict wind speeds at turbine hub height with a desired accuracy is not clear. To address this issue, we develop a multi-GPU parallel flow solver to forecast winds over complex terrain at the micro-scale, where computational domain size can range from meters to several kilometers. In the solver, we adopt the immersed boundary method and the Lagrangian dynamic large-eddy simulation model and extend them to atmospheric flows. The computations are accelerated on GPU clusters with a dual-level parallel implementation that interleaves MPI with CUDA. We evaluate the flow solver components against test problems and obtain preliminary results of flow over Bolund Hill, a coastal hill in Denmark.
机译:短期风能预测能力可能是可再生能源行业中解决间歇性风场引起的负荷平衡问题的重要工具。尽管已经使用数值天气预报模型来预测风,但是尚不清楚它们是否适用于微型大气边界层流以及是否能够以期望的精度预测涡轮轮毂高度处的风速。为了解决这个问题,我们开发了一种多GPU并行流求解器,可以在微尺度上预测复杂地形上的风,其中计算域的大小范围可以从几米到几千米。在求解器中,我们采用沉浸边界方法和拉格朗日动态大涡模拟模型,并将其扩展到大气流动。通过将MPI与CUDA交错的双级并行实现,可在GPU群集上加速计算。我们针对测试问题评估了流量求解器组件,并获得了丹麦沿海山丘Bolund Hill上的流量的初步结果。

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