Design and Implementation of an Internet-of-Things-Enabled Smart Meter and Smart Plug for Home-Energy-Management System

被引:7
作者
Ben Dhaou, Imed [1 ,2 ,3 ]
机构
[1] Dar Al Hekma Univ, Hekma Sch Engn Comp & Design, Dept Comp Sci, Jeddah 222464872, Saudi Arabia
[2] Univ Turku, Dept Comp, FI-20014 Turku, Finland
[3] Univ Monastir, Higher Inst Comp Sci & Math, Dept Technol, Monastir 5000, Tunisia
关键词
advanced metering infrastructure; demand-side management; embedded system; fog computing; internet of things; Raspberry Pi; smart plug; smart meter; TinyML; Zigbee; PROGRAMS;
D O I
10.3390/electronics12194041
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The demand response program is an important feature of the smart grid. It attempts to reduce peak demand, improve the smart grid efficiency, and ensure system reliability. Implementing demand-response programs in residential and commercial buildings requires the use of smart meters and smart plugs. In this paper, we propose an architecture for a home-energy-management system based on the fog-computing paradigm, an Internet-of-Things-enabled smart plug, and a smart meter. The smart plug measures in real-time the root mean square (RMS) value of the current, frequency, power factor, active power, and reactive power. These readings are subsequently transmitted to the smart meter through the Zigbee network. Tiny machine learning algorithms are used at the smart meter to identify appliances automatically. The smart meter and smart plug were prototyped by using Raspberry Pi and Arduino, respectively. The smart plug's accuracy was quantified by comparing it to laboratory measurements. To assess the speed and precision of the small machine learning algorithm, a publicly accessible dataset was utilized. The obtained results indicate that the accuracy of both the smart meter and the smart plug exceeds 97% and 99%, respectively. The execution of the trained decision tree and support vector machine algorithms was verified on the Raspberry Pi 3 Model B Rev 1.2, operating at a clock speed of 600 MHz. The measured latency for the decision tree classifier's inference was 1.59 microseconds. In a practical situation, the time-of-use-based demand-response program can reduce the power cost by about 30%.
引用
收藏
页数:20
相关论文
共 54 条
[1]   A Comprehensive Survey on TinyML [J].
Abadade, Youssef ;
Temouden, Anas ;
Bamoumen, Hatim ;
Benamar, Nabil ;
Chtouki, Yousra ;
Hafid, Abdelhakim Senhaji .
IEEE ACCESS, 2023, 11 :96892-96922
[2]   NILM applications: Literature review of learning approaches, recent developments and challenges [J].
Angelis, Georgios-Fotios ;
Timplalexis, Christos ;
Krinidis, Stelios ;
Ioannidis, Dimosthenis ;
Tzovaras, Dimitrios .
ENERGY AND BUILDINGS, 2022, 261
[3]  
[Anonymous], 2014, Computational Intelligence Applications in Smart Grid (CIASG), 2014 IEEE Symposium on
[4]  
[Anonymous], Smart Plug Datasheet
[5]  
[Anonymous], Tensforflow Lite: ML for Mobile and Edge Device
[6]  
[Anonymous], KAA - IoT Platform
[7]  
Ashok K, 2019, IEEE INT C SM E GR E, P53, DOI 10.1109/SEGE.2019.8859916
[8]   Development of a Smart Meter for Power Quality-Based Tariff Implementation in a Smart Grid [J].
Balwani, Mayurkumar Rajkumar ;
Thirumala, Karthik ;
Mohan, Vivek ;
Bu, Siqi ;
Thomas, Mini Shaji .
ENERGIES, 2021, 14 (19)
[9]   Optimization Models and Methods for Demand-Side Management of Residential Users: A Survey [J].
Barbato, Antimo ;
Capone, Antonio .
ENERGIES, 2014, 7 (09) :5787-5824
[10]  
Ben Dhaou Imed, 2017, International Journal of Embedded and Real-Time Communication Systems, V8, P40, DOI 10.4018/IJERTCS.2017070103