地球物理仿真中的递归神经网络结构搜索

R. Maulik, Romain Egele, Bethany Lusch, Prasanna Balaprakash
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引用次数: 35

摘要

由于数值模拟方法需要大量的计算成本,因此从数据中开发替代地球物理模型是大气和海洋模拟的一个关键研究课题。研究人员已经开始应用广泛的机器学习模型,特别是神经网络,来预测地球物理数据,而不受这些限制。然而,构建用于预测此类数据的神经网络并非易事,而且往往需要反复试验。为了解决这些限制,我们专注于开发基于适当正交分解的长短期记忆网络(PODLSTMs)。我们开发了一种可扩展的神经结构搜索,用于生成堆叠lstm来预测NOAA最优插值海面温度数据集的温度。我们的方法确定了pod - lstm优于手动设计的变量和基线时间序列预测方法。我们还在阿贡领导计算设施的Theta超级计算机的多达512个英特尔骑士登陆节点上评估了不同架构搜索策略的可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recurrent Neural Network Architecture Search for Geophysical Emulation
Developing surrogate geophysical models from data is a key research topic in atmospheric and oceanic modeling because of the large computational costs associated with numerical simulation methods. Researchers have started applying a wide range of machine learning models, in particular neural networks, to geophysical data for forecasting without these constraints. Constructing neural networks for forecasting such data is nontrivial, however, and often requires trial and error. To address these limitations, we focus on developing proper-orthogonal-decomposition-based long short-term memory networks (PODLSTMs). We develop a scalable neural architecture search for generating stacked LSTMs to forecast temperature in the NOAA Optimum Interpolation Sea-Surface Temperature data set. Our approach identifies POD-LSTMs that are superior to manually designed variants and baseline time-series prediction methods. We also assess the scalability of different architecture search strategies on up to 512 Intel Knights Landing nodes of the Theta supercomputer at the Argonne Leadership Computing Facility.
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