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A multilevel deep learning method for big data analysis and emergency management of power system

机译:电力系统大数据分析与应急管理的多层次深度学习方法

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The general focus of this study is to design a multilevel deep learning model that provides big data analytics and emergency management knowledge. A big data covariance analysis approach has been used to find multilevel representations of data based on prior knowledge from large scale power systems. For purpose of meeting requirements of incremental knowledge discovery, an adaptive regression algorithm is presented. Given the multilevel operating status and development trend of power system, the emergency management techniques are then proposed to produce intelligent decision making support. In this paper, a multilevel clustered hidden Markov model based global optimization approach is considered for power system emergency management problem, which is an extension of the conventional optimal power flow problem. The objective is defined to generate operation mode that minimizes multilevel cost while satisfying different constraints. To demonstrate the effectiveness of the presented approach, this paper carefully compared the discriminatory power of knowledge discovery models that utilize deep learning with dimensionality reduction based method and machine learning without dimensionality reduction based method. The experimental results showed that the proposed multilevel deep learning approach consistently outperformed the traditional machine learning method. The emergency management of large scale power system may also benefit from the modified hidden Markov model and global optimization.
机译:这项研究的总体重点是设计一种多层次的深度学习模型,该模型可提供大数据分析和应急管理知识。大数据协方差分析方法已被用来基于大型电力系统的先验知识来找到数据的多级表示。为了满足增量知识发现的需求,提出了一种自适应回归算法。针对电力系统的多层次运行状况和发展趋势,提出了应急管理技术,以提供智能的决策支持。本文针对电力系统应急管理问题,考虑了一种基于多层次聚类隐马尔可夫模型的全局优化方法,它是对传统最优潮流问题的扩展。定义目标是生成在满足不同约束的同时最小化多级成本的操作模式。为了证明所提出方法的有效性,本文仔细比较了利用深度学习和降维方法的机器学习和不使用降维方法的机器学习的知识发现模型的区分能力。实验结果表明,所提出的多层深度学习方法始终优于传统的机器学习方法。大型电力系统的应急管理也可以从改进的隐马尔可夫模型和全局优化中受益。

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