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基于区块链模型的边缘计算的智能家居监测系统,具有能耗预测功能。

Blockchain-Modeled Edge-Computing-Based Smart Home Monitoring System with Energy Usage Prediction.

机构信息

Department of Computer Science, University of Engineering & Technology (UET), Lahore 54890, Pakistan.

Research Group on Foods, Universidad Europea del Atlántico, Isabel Torres 21, 39011 Santander, Spain.

出版信息

Sensors (Basel). 2023 Jun 1;23(11):5263. doi: 10.3390/s23115263.

Abstract

Internet of Things (IoT) has made significant strides in energy management systems recently. Due to the continually increasing cost of energy, supply-demand disparities, and rising carbon footprints, the need for smart homes for monitoring, managing, and conserving energy has increased. In IoT-based systems, device data are delivered to the network edge before being stored in the fog or cloud for further transactions. This raises worries about the data's security, privacy, and veracity. It is vital to monitor who accesses and updates this information to protect IoT end-users linked to IoT devices. Smart meters are installed in smart homes and are susceptible to numerous cyber attacks. Access to IoT devices and related data must be secured to prevent misuse and protect IoT users' privacy. The purpose of this research was to design a blockchain-based edge computing method for securing the smart home system, in conjunction with machine learning techniques, in order to construct a secure smart home system with energy usage prediction and user profiling. The research proposes a blockchain-based smart home system that can continuously monitor IoT-enabled smart home appliances such as smart microwaves, dishwashers, furnaces, and refrigerators, among others. An approach based on machine learning was utilized to train the auto-regressive integrated moving average (ARIMA) model for energy usage prediction, which is provided in the user's wallet, to estimate energy consumption and maintain user profiles. The model was tested using the moving average statistical model, the ARIMA model, and the deep-learning-based long short-term memory (LSTM) model on a dataset of smart-home-based energy usage under changing weather conditions. The findings of the analysis reveal that the LSTM model accurately forecasts the energy usage of smart homes.

摘要

物联网(IoT)在能源管理系统方面最近取得了重大进展。由于能源成本持续上升、供需差距以及碳足迹增加,对用于监控、管理和节约能源的智能家居的需求也在增加。在基于物联网的系统中,设备数据在存储在雾或云中进行进一步处理之前先传送到网络边缘。这引发了对数据安全性、隐私性和真实性的担忧。监控谁访问和更新这些信息对于保护与物联网设备相关联的物联网终端用户至关重要。智能电表安装在智能家居中,容易受到多种网络攻击。必须保护物联网设备和相关数据的访问权限,以防止滥用并保护物联网用户的隐私。本研究旨在设计一种基于区块链的边缘计算方法来保护智能家居系统,同时结合机器学习技术,构建具有能源使用预测和用户档案功能的安全智能家居系统。本研究提出了一种基于区块链的智能家居系统,可以持续监控智能家居设备,如智能微波炉、洗碗机、炉灶和冰箱等。利用机器学习方法训练自回归综合移动平均(ARIMA)模型进行能源使用预测,并将预测结果提供给用户钱包,以估计能源消耗并维护用户档案。该模型在天气条件变化下的智能家居能源使用数据集上使用移动平均统计模型、ARIMA 模型和基于深度学习的长短时记忆(LSTM)模型进行了测试。分析结果表明,LSTM 模型可以准确预测智能家居的能源使用情况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7c69/10256092/2b2d616c5737/sensors-23-05263-g001.jpg

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