利用随机发电机减少全球风系统的存储

J. Jeong, S. Castruccio, P. Crippa, M. Genton
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引用次数: 31

摘要

风能有潜力对未来的能源资源做出重大贡献。然而,在全球范围内定位这种可再生能源的来源是极具挑战性的,因为现代计算机模型产生的非常大的数据集很难存储。我们提出了一个统计模型,旨在通过全球年风数据的随机生成器(SG)再现一系列运行的数据生成机制。我们引入了一种基于大尺度地理描述符(如海拔)的空间变化参数的演化谱方法,以更好地解释地球地形的不同制度。我们考虑了一种多步条件似然方法来估计参数,这些参数明确地说明了非平稳特征,同时也平衡了内存存储和分布式计算。我们将提出的模型应用于超过1800万个全球年风速点。即使对模拟输出应用了有效的有损数据压缩算法,与从气候模型中创建额外的风场相比,所提出的SG所需的存储空间要少几个数量级。
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Reducing Storage of Global Wind Ensembles with Stochastic Generators
Wind has the potential to make a significant contribution to future energy resources. Locating the sources of this renewable energy on a global scale is however extremely challenging, given the difficulty to store very large data sets generated by modern computer models. We propose a statistical model that aims at reproducing the data-generating mechanism of an ensemble of runs via a Stochastic Generator (SG) of global annual wind data. We introduce an evolutionary spectrum approach with spatially varying parameters based on large-scale geographical descriptors such as altitude to better account for different regimes across the Earth's orography. We consider a multi-step conditional likelihood approach to estimate the parameters that explicitly accounts for nonstationary features while also balancing memory storage and distributed computation. We apply the proposed model to more than 18 million points of yearly global wind speed. The proposed SG requires orders of magnitude less storage for generating surrogate ensemble members from wind than does creating additional wind fields from the climate model, even if an effective lossy data compression algorithm is applied to the simulation output.
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