Battery-Powered RSU Running Time Monitoring and Prediction Using ML Model Based on Received Signal Strength and Data Transmission Frequency in V2I Applications

被引:3
作者
Katambire, Vienna N. [1 ]
Musabe, Richard [2 ]
Uwitonze, Alfred [1 ]
Mukanyiligira, Didacienne [3 ]
机构
[1] Univ Rwanda, Coll Sci & Technol, African Ctr Excellence Internet Things ACEIoT, POB 3900, Kigali, Rwanda
[2] Rwanda Polytech, POB 164, Kigali, Rwanda
[3] Natl Council Sci & Technol, POB 2285, Kigali, Rwanda
关键词
current consumption; roadside units; machine learning; V2I communication; OF-HEALTH ESTIMATION; STATE; INTERNET; RSSI;
D O I
10.3390/s23073536
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
The application of the Internet of Things (IoT), vehicles to infrastructure (V2I) communication and intelligent roadside units (RSU) are promising paradigms to improve road traffic safety. However, for the RSUs to communicate with the vehicles and transmit the data to the remote location, RSUs require enough power and good network quality. Recent advances in technology have improved lithium-ion battery capabilities. However, other complementary methodologies including battery management systems (BMS) have to be developed to provide an early warning sign of the battery's state of health. In this paper, we have evaluated the impact of the received signal strength indication (RSSI) and the current consumption at different transmission frequencies on a static battery-based RSU that depends on the global system for mobile communications (GSM)/general packet radio services (GPRS). Machine learning (ML) models, for instance, Random Forest (RF) and Support Vector Machine (SVM), were employed and tested on the collected data and later compared using the coefficient of determination (R2). The models were used to predict the battery current consumption based on the RSSI of the location where the RSUs were imposed and the frequency at which the RSU transmits the data to the remote database. The RF was preferable to SVM for predicting current consumption with an R2 of 98% and 94%, respectively. It is essential to accurately forecast the battery health of RSUs to assess their dependability and running time. The primary duty of the BMS is to estimate the status of the battery and its dynamic operating limits. However, achieving an accurate and robust battery state of charge remains a significant challenge. Referring to that can help road managers make alternative decisions, such as replacing the battery before the RSU power source gets drained. The proposed method can be deployed in other remote WSN and IoT-based applications.
引用
收藏
页数:19
相关论文
共 49 条
[1]  
Antoine G., 2021, WORLD REV INTERMODAL, V10, P325, DOI [10.1504/WRITR.2021.119522, DOI 10.1504/WRITR.2021.119522]
[2]  
Bychkovsky V, 2006, MOBICOM 2006, P50
[3]   State of Charge and State of Health Estimation for Lithium Batteries Using Recurrent Neural Networks [J].
Chaoui, Hicham ;
Ibe-Ekeocha, Chinemerem Christopher .
IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2017, 66 (10) :8773-8783
[4]   Design and Development of a Battery State of Health Estimation Model for Efficient Battery Monitoring Systems [J].
Choi, Hyoung Sun ;
Choi, Jin Woo ;
Whangbo, Taeg Keun .
SENSORS, 2022, 22 (12)
[5]   An Intelligent IoT Based Traffic Light Management System: Deep Reinforcement Learning [J].
Damadam, Shima ;
Zourbakhsh, Mojtaba ;
Javidan, Reza ;
Faroughi, Azadeh .
SMART CITIES, 2022, 5 (04) :1293-1311
[6]   Wi-Fi Direct Performance Evaluation for V2P Communications [J].
de Almeida, Thales Teixeira ;
Ribeiro Junior, Jose Geraldo ;
Campista, Miguel Elias M. ;
Costa, Luis Henrique M. K. .
JOURNAL OF SENSOR AND ACTUATOR NETWORKS, 2020, 9 (02)
[7]   Traffic management systems: A classification, review, challenges, and future perspectives [J].
de Souza, Allan M. ;
Brennand, Celso A. R. L. ;
Yokoyama, Roberto S. ;
Donato, Erick A. ;
Madeira, Edmundo R. M. ;
Villas, Leandro A. .
INTERNATIONAL JOURNAL OF DISTRIBUTED SENSOR NETWORKS, 2017, 13 (04)
[8]   A Blockchain-SDN-Enabled Internet of Vehicles Environment for Fog Computing and 5G Networks [J].
Gao, Jianbin ;
Agyekum, Kwame Opuni-Boachie Obour ;
Sifah, Emmanuel Boateng ;
Acheampong, Kingsley Nketia ;
Xia, Qi ;
Du, Xiaojiang ;
Guizani, Mohsen ;
Xia, Hu .
IEEE INTERNET OF THINGS JOURNAL, 2020, 7 (05) :4278-4291
[9]   Impacts of Temperature and Humidity variations on RSSI in indoor Wireless Sensor Networks [J].
Guidara, Amir ;
Fersi, Ghofrane ;
Derbel, Faouzi ;
Ben Jemaa, Maher .
KNOWLEDGE-BASED AND INTELLIGENT INFORMATION & ENGINEERING SYSTEMS (KES-2018), 2018, 126 :1072-1081
[10]   LoRa Architecture for V2X Communication: An Experimental Evaluation with Vehicles on the Move [J].
Haque, Khandaker Foysal ;
Abdelgawad, Ahmed ;
Yanambaka, Venkata Prasanth ;
Yelamarthi, Kumar .
SENSORS, 2020, 20 (23) :1-26