MACHINE LEARNING AND IOT FOR SMART GRID

M. Fouad, R. Mali, A. Lmouatassime, M. Bousmah
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引用次数: 4

Abstract

Abstract. The current electricity grid is no longer an efficient solution due to increasing user demand for electricity, old infrastructure and reliability issues requires a transformation to a better grid which is called Smart Grid (SG). Also, sensor networks and Internet of Things (IoT) have facilitated the evolution of traditional electric power distribution networks to new SG, these networks are a modern electricity grid infrastructure with increased efficiency and reliability with automated control, high power converters, modern communication infrastructure, sensing and measurement technologies and modern energy management techniques based on optimization of demand, energy and availability network. With all these elements, harnessing the science of Artificial Intelligence (AI) and Machine Learning (ML) methods become better used than before for prediction of energy consumption. In this work we present the SG with their architecture, the IoT with the component architecture and the Smart Meters (SM) which play a relevant role for the collection of information of electrical energy in real time, then we treat the most widely used ML methods for predicting electrical energy in buildings. Then we clarify the relationship and interaction between the different SG, IoT and ML elements through the design of a simple to understand model, composed of layers that are grouped into entities interacting with links. In this article we calculate a case of prediction of the electrical energy consumption of a real Dataset with the two methods Recurrent Neural Network (RNN) and Long Short-Term Memory (LSTM), given their precision performances.
智能电网的机器学习和物联网
摘要由于用户对电力的需求不断增加,现有的电网不再是一个有效的解决方案,旧的基础设施和可靠性问题需要向一个更好的电网转型,即智能电网(SG)。此外,传感器网络和物联网(IoT)促进了传统配电网络向新型SG的发展,这些网络是现代电网基础设施,具有更高的效率和可靠性,具有自动化控制,高功率转换器,现代通信基础设施,传感和测量技术以及基于需求,能源和可用性网络优化的现代能源管理技术。有了所有这些元素,利用人工智能(AI)和机器学习(ML)方法的科学比以前更好地用于预测能源消耗。在这项工作中,我们介绍了SG及其架构,具有组件架构的物联网和智能电表(SM),它们在实时收集电能信息方面发挥着相关作用,然后我们讨论了最广泛使用的机器学习方法来预测建筑物中的电能。然后,我们通过设计一个简单易懂的模型来澄清不同的SG, IoT和ML元素之间的关系和交互,该模型由层组成,这些层被分组为与链接交互的实体。在本文中,我们计算了一个使用递归神经网络(RNN)和长短期记忆(LSTM)两种方法预测真实数据集电能消耗的案例,并给出了它们的精度性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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