Lightweight Digit Recognition in Smart Metering System Using Narrowband Internet of Things and Federated Learning

被引:1
作者
Nikic, Vladimir [1 ]
Bortnik, Dusan [1 ]
Lukic, Milan [1 ]
Vukobratovic, Dejan [1 ]
Mezei, Ivan [1 ]
机构
[1] Univ Novi Sad, Fac Tech Sci, Novi Sad 21000, Serbia
关键词
NB-IoT; machine learning; smart metering; lightweight digit recognition; federated learning; RETROFIT;
D O I
10.3390/fi16110402
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Replacing mechanical utility meters with digital ones is crucial due to the numerous benefits they offer, including increased time resolution in measuring consumption, remote monitoring capabilities for operational efficiency, real-time data for informed decision-making, support for time-of-use billing, and integration with smart grids, leading to enhanced customer service, reduced energy waste, and progress towards environmental sustainability goals. However, the cost associated with replacing mechanical meters with their digital counterparts is a key factor contributing to the relatively slow roll-out of such devices. In this paper, we present a low-cost and power-efficient solution for retrofitting the existing metering infrastructure, based on state-of-the-art communication and artificial intelligence technologies. The edge device we developed contains a camera for capturing images of a dial meter, a 32-bit microcontroller capable of running the digit recognition algorithm, and an NB-IoT module with (E)GPRS fallback, which enables nearly ubiquitous connectivity even in difficult radio conditions. Our digit recognition methodology, based on the on-device training and inference, augmented with federated learning, achieves a high level of accuracy (97.01%) while minimizing the energy consumption and associated communication overhead (87 mu Wh per day on average).
引用
收藏
页数:24
相关论文
共 50 条
[1]   Smart meter-based energy consumption forecasting for smart cities using adaptive federated learning [J].
Abdulla, Nawaf ;
Demirci, Mehmet ;
Ozdemir, Suat .
SUSTAINABLE ENERGY GRIDS & NETWORKS, 2024, 38
[2]   Wireless Middleware Solutions for Smart Water Metering [J].
Alvisi, Stefano ;
Casellato, Francesco ;
Franchini, Marco ;
Govoni, Marco ;
Luciani, Chiara ;
Poltronieri, Filippo ;
Riberto, Giulio ;
Stefanelli, Cesare ;
Tortonesi, Mauro .
SENSORS, 2019, 19 (08)
[3]   Advanced Strategies for Monitoring Water Consumption Patterns in Households Based on IoT and Machine Learning [J].
Arsene, Diana ;
Predescu, Alexandru ;
Pahontu, Bogdan ;
Chiru, Costin Gabriel ;
Apostol, Elena-Simona ;
Truica, Ciprian-Octavian .
WATER, 2022, 14 (14)
[4]   IoT-Enabled Water Monitoring in Smart Cities With Retrofit and Solar-Based Energy Harvesting [J].
Bawankar, Nilesh ;
Kriti, Ankit ;
Chouhan, Shailesh Singh ;
Chaudhari, Sachin .
IEEE ACCESS, 2024, 12 :58222-58238
[5]   Optimizing Convolutional Neural Networks for Image Classification on Resource-Constrained Microcontroller Units [J].
Brockmann, Susanne ;
Schlippe, Tim .
COMPUTERS, 2024, 13 (07)
[6]  
Chen YQ, 2021, Arxiv, DOI arXiv:2106.01009
[7]   Resource optimizing federated learning for use with IoT: A systematic review [J].
da Silva, Leylane Graziele Ferreira ;
Sadok, Djamel F. H. ;
Endo, Patricia Takako .
JOURNAL OF PARALLEL AND DISTRIBUTED COMPUTING, 2023, 175 :92-108
[8]  
David R., 2021, Proceedings of Machine Learning and Systems, V3, P800, DOI DOI 10.48550/ARXIV.2010.08678
[9]  
Duttagupta A., 2023, IEEE INT C COMM CONT, P1, DOI DOI 10.1109/SMARTGRIDCOMM57358.2023.10333889
[10]  
El-Ouazzane R., 2023, A Tsunami of TinyML Devices Is Coming