论文标题

智能电网:对建筑要素,机器学习和深度学习应用程序和未来方向的调查

Smart Grid: A Survey of Architectural Elements, Machine Learning and Deep Learning Applications and Future Directions

论文作者

Thilakarathne, Navod Neranjan, Kagita, Mohan Krishna, Lanka, Surekha, Ahmad, Hussain

论文摘要

智能电网(SG)(通常称为下一代电网)在21世纪被替代了不合适的电力系统。它具有先进的通信和计算能力,因此可以通过最小的效果提高能量分布的可靠性和效率。借助它拥有的大量基础架构和系统中的基础通信网络,它引入了大量数据,需要各种技术以进行适当的分析和决策。在分析大量数据和有价值的见解时,大数据分析,机器学习(ML)和深度学习(DL)(DL)起着关键作用。本文在智能电网的背景下探讨和调查智能网格体系结构元素,机器学习以及基于深度学习的应用程序和方法。除了基于机器学习的数据和分析学方面,本文还强调了当前研究的局限性,并强调了未来的方向。

The Smart grid (SG), generally known as the next-generation power grid emerged as a replacement for ill-suited power systems in the 21st century. It is in-tegrated with advanced communication and computing capabilities, thus it is ex-pected to enhance the reliability and the efficiency of energy distribution with minimum effects. With the massive infrastructure it holds and the underlying communication network in the system, it introduced a large volume of data that demands various techniques for proper analysis and decision making. Big data analytics, machine learning (ML), and deep learning (DL) plays a key role when it comes to the analysis of this massive amount of data and generation of valuable insights. This paper explores and surveys the Smart grid architectural elements, machine learning, and deep learning-based applications and approaches in the context of the Smart grid. In addition in terms of machine learning-based data an-alytics, this paper highlights the limitations of the current research and highlights future directions as well.

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