针对传统家电的集中式智能能源监控系统

Q2 Energy Energy Informatics Pub Date : 2024-04-22 DOI:10.1186/s42162-024-00334-2
Shahed S. Ahmad, Fadi Almasalha, Mahmoud H. Qutqut, Mohammad Hijjawi
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引用次数: 0

摘要

全球人口的不断增长和日常生活对电气设备的依赖导致能源消耗急剧上升。这也导致了家庭电费的增加。因此,人们对能够准确估算能源使用量以帮助节电的能源监控系统的需求日益增长,尤其是那些难以更新监控传感器或更新费用昂贵的老式家用电器。然而,目前的能源监测系统存在一些缺点,如无法检测不同类型的电器和部署复杂。此外,这些系统成本过高,无法在老旧的电力基础设施中使用。为解决这一问题,我们提出了一种专为传统家用电器设计的集中式智能能源监测系统,旨在通过避免昂贵的基础设施升级来计算传统家用电器的耗电量,从而解决当前能源监测系统的局限性。拟议的系统采用双层架构,包括硬件(Emontx 设备、模数转换器 (ADC) 和电流互感器 (CT) 传感器)和软件层,软件层包括使用预定义规则集和 KNN 算法的人工智能 (AI) 预测器。我们在真实的家用电器上进行了三次实验,以评估所提出的工作。在对设备中的几个参数进行多次修改和调整后,特别是针对约旦发电厂,拟议系统的准确性显示出了积极的成果。
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Centralized smart energy monitoring system for legacy home appliances

The increasing global population and reliance on electrical devices for daily life resulted in sharply rising energy consumption. Also, this leads to higher household electricity bills. As a result, there is a growing demand for energy monitoring systems that can accurately estimate energy usage to help save power, especially for older home appliances that are difficult or expensive to update with monitoring sensors. However, current energy monitoring systems have some drawbacks, such as the inability to detect different types of appliances and the deployment complexity. Moreover, such systems are too costly to use in older power infrastructures. To address this issue, we proposed a centralized smart energy monitoring system designed for legacy home appliances, aiming to address the limitations of current energy monitoring systems by avoiding costly infrastructure upgrades to calculate the power consumption of legacy home appliances. The proposed system employs a two-layered architecture comprising hardware (Emontx device, Analog-to-Digital Converters (ADC), and Current Transformer (CT) sensors) and a software layer that includes Artificial Intelligence (AI) predictors using a pre-defined set of rules and K Nearest Neighbours (KNN) algorithms. We conducted three experiments on real home appliances to evaluate the proposed work. The accuracy of the proposed system showed positive results after several modifications and hard tuning of several parameters in devices, specifically for Jordanian power plants.

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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
期刊最新文献
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