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Implementation of Big Data and Machine Learning in Smart Grid with Correlated Safety Considerations: Review

机译:具有相关安全考虑的智能电网大数据和机器学习的实现:审查

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This report provides a systematic analysis of the implementation of massive information and machine learning in the electric energy grid, driven by the advent of the Smart Grid (SG), the succeeding energy generation infrastructure. Interconnection is established at the center of this modern grid network that the internet of things (IOT) offers. This connection and the frequent interaction needed in this framework also imposed a significant amount of information that requires methodology much preferable to traditional techniques for detailed evaluation and decision formation. The IOT-integrated SG framework can include cost-effective load prediction and information-gathering strategies. Large data processing and machine learning approaches are important to gain those advantages. Cybersecurity becomes a critical problem in SG’s complex connected system; IOT machines and their information transform into big victims of threats. This document contains certain security breaches and their approaches. Essential expertise gathered across the literature review is aggregated in the subsequent parts to offer a simple description and the results of this comprehensive analysis are described to deliver a succinct perspective of this area of study and encouraging potential sectors of scholarly and technological development, with inherent restrictions along with feasible alternatives and their efficiency.
机译:本报告提供了对电能电网中大规模信息和机器学习的实施的系统分析,由智能电网(SG)的出现,继承的能源生成基础设施的推动。互连在这个现代网格网络的中心建立,即物联网(物联网)提供。该框架中所需的这种连接和频繁的交互还施加了大量信息,需要对传统技术优于用于详细评估和决策形成的方法。物联网集成的SG框架可以包括经济有效的负载预测和信息收集策略。大型数据处理和机器学习方法对于获得这些优点非常重要。网络安全成为SG复杂连接系统中的一个关键问题;物联网及其信息转化为威胁的大受害者。本文档包含某些安全违规行为及其方法。在整个文献审查中聚集的基本专业知识在随后的零件中聚合,提供简单的描述,并描述了这种综合分析的结果,以实现这一学习领域的简洁视角,并鼓励学术和技术发展的潜在部门,具有固有的限制以及可行的替代品和效率。

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