智慧城市边缘环境下的能源预测

Oluwatobi Oyinlola
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引用次数: 0

摘要

世界各地的人们都倾向于物联网(IoT)技术。每天都会安装大量的物联网设备,以提高智慧城市的复杂性和可持续性。此外,智慧城市还需要智能能源管理系统,包括智能电网、智能建筑。此外,智能能源分配系统对于减少能源和有效管理能源也很重要。物联网设备安装在城市的各种建筑物中,它们使用大量的能源,并产生能源使用信息。在现有的云系统中,很难快速分析和传输数据,同样也不可能立即收到分析结果。然而,边缘计算具有快速的数据分析和将分析结果提供给现场的优势。在这个过程中,数据在边缘环境中被处理,数据在边缘节点中被收集、分析和处理。在这项研究中,我们提出了一个基于边缘计算技术的能量预测模型。我们使用了一个数据集,其中考虑了各种环境和能源使用信息。此外,我们使用了五种不同的机器学习(ML)分类器对预测模型进行分类并评估预测性能。本研究提出了一种在边缘计算环境下使用各种机器学习分类器的能量预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy Prediction in Edge Environment for Smart Cities
People around the world are trending to the Internet of Things (IoT) technologies. A large number of IoT devices are installed every day to enhance the sophistication and sustainability of smart cities. Besides, a smart city needs a smart energy management system including a smart grid, smart building. Also, a smart energy distribution system is important to reduce energy and manage it efficiently. The IoT devices are installed in various buildings in the city, they use a lot of energy, and produce energy usage information. In the existing cloud system, it is difficult to analyze and transfer the data quickly, similarly impossible to receive the analysis result immediately. However, edge computing has the advantage of fast data analysis and supply analyzed results to the field. In this process, data is processed in the edge environment, where data has been collected, analyzed, and processed in the edge nodes. In this study, we presented an energy prediction model based on the edge computing technique. We used a dataset where various environmental and energy use information has been considered. Also, we have used five different Machine Learning (ML) classifiers to classify the prediction model and assess the prediction performance. This study presents an energy prediction model using various ML classifiers in an edge computing environment.
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