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Online distributed learning in wind power forecasting

机译:在线分布式学习风电预测

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摘要

Forecasting wind power generation up to a few hours ahead is of the utmost importance for the efficient operation of power systems and for participation in electricity markets. Recent statistical learning approaches exploit spatiotemporal dependence patterns among neighbouring sites, but their requirement of sharing confidential data with third parties may limit their use in practice. This explains the recent interest in distributed, privacy preserving algorithms for high-dimensional statistical learning, e.g. with autoregressive models. The few approaches that have been proposed are based on batch learning. However, these approaches are potentially computationally expensive and do not allow for the accommodation of nonstationary characteristics of stochastic processes like wind power generation. This paper closes the gap between online and distributed optimisation by presenting two novel approaches that recursively update model parameters while limiting information exchange between wind farm operators and other potential data providers. A simulation study compared the convergence and tracking ability of both approaches. In addition, a case study using a large dataset from 311 wind farms in Denmark confirmed that online distributed approaches generally outperform existing batch approaches while preserving privacy such that agents do not have to actively share their private data. (C) 2020 International Institute of Forecasters. Published by Elsevier B.V. All rights reserved.
机译:预测电力发电,未来几个小时是电力系统有效运行和参与电力市场的最重要的重要性。最近的统计学习方法在邻近地点之间利用时空依赖模式,但他们与第三方共享机密数据的要求可能会限制其在实践中的使用。这解释了最近对高维统计学习的分布式,隐私保存算法的兴趣,例如,与自回归模型。已经提出的几种方法是基于批量学习。然而,这些方法可能是计算昂贵的并且不允许在风力发电等随机过程的非营养特性的容纳。本文通过呈现两种新颖的方法,在线和分布式优化之间的差距递归更新模型参数,同时限制风电场运营商和其他潜在数据提供商之间的信息交换。模拟研究比较了两种方法的收敛性和跟踪能力。此外,使用来自丹麦的311个风电场的大型数据集的案例研究证实,在线分布式方法通常优于现有的批处理方法,同时保留隐私,使得代理商不必积极分享其私人数据。 (c)2020国际预测研究所。由elsevier b.v出版。保留所有权利。

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