CFP last date
20 December 2024
Reseach Article

A Framework for Smart City Model Enabled by Internet of Things (IoT)

by Ihama E.I., Akazue M.I., Omede Edith, Ojie Deborah
International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
Volume 185 - Number 6
Year of Publication: 2023
Authors: Ihama E.I., Akazue M.I., Omede Edith, Ojie Deborah
10.5120/ijca2023922685

Ihama E.I., Akazue M.I., Omede Edith, Ojie Deborah . A Framework for Smart City Model Enabled by Internet of Things (IoT). International Journal of Computer Applications. 185, 6 ( May 2023), 6-11. DOI=10.5120/ijca2023922685

@article{ 10.5120/ijca2023922685,
author = { Ihama E.I., Akazue M.I., Omede Edith, Ojie Deborah },
title = { A Framework for Smart City Model Enabled by Internet of Things (IoT) },
journal = { International Journal of Computer Applications },
issue_date = { May 2023 },
volume = { 185 },
number = { 6 },
month = { May },
year = { 2023 },
issn = { 0975-8887 },
pages = { 6-11 },
numpages = {9},
url = { https://ijcaonline.org/archives/volume185/number6/32703-2023922685/ },
doi = { 10.5120/ijca2023922685 },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Journal Article
%1 2024-02-07T01:25:21.987892+05:30
%A Ihama E.I.
%A Akazue M.I.
%A Omede Edith
%A Ojie Deborah
%T A Framework for Smart City Model Enabled by Internet of Things (IoT)
%J International Journal of Computer Applications
%@ 0975-8887
%V 185
%N 6
%P 6-11
%D 2023
%I Foundation of Computer Science (FCS), NY, USA
Abstract

The advancement in wireless telecommunication network has increase the accessibility of more users to wireless connectivity. With the advent of the fifth-generation (5G) wireless network, a seamless connectivity is available for internet users globally. A smart city is a metropolis that utilizes information and communication technologies (ICT) to grow its functionality effectively to disseminate information among the public and to develop the quality of government facilities and the welfare of the citizen. The Internet of Things (IoT) refer to the interconnection of several systems, devices or physical objects/things which are driven by sensors, software, and other equipment in order to interconnect and interchange data with other devices and systems through the internet. The Internet of things (IoT), is a revolutionary method that allows a diverse number of applications to be interconnected in order to create a single communication architecture. Urbanization has resulted in the increase in population, hence there is need to develop a smart traffic light system to help in managing the problem of urbanization; traffic congestion. The Internet of Things (IoT) a key features necessary for employing a large-scale in IoTS are low-cost sensors, high-speed and error-tolerant data communications, smart computations, and numerous applications which helps in solving these challenges associated with traffic congestion. It enables a smart environment, smart energy, smart transportation system. In this paper, we shall discuss IoT technology, review some literatures on application area of Internet of Things (IoT), and challenges of IoT. And also discuss the applications of IoT, in smart city development, and traffic congestion management in smart city design, and how it proffers solution to urbanization problem.

References
  1. Al-Turjman, F.; Lemayian, J.P. (2020), Intelligence, security, and vehicular sensor networks in the internet of things (IoT)-enabled smart-cities: An overview. Comput. Electr. Eng., vol.87.
  2. Barbara McCann, Caragliu, A. Bo, C. D. Kourtit K. and Nijkamp, P. (2013), Performance of the Smart Cities in the North Sea basin. http://www.smartcities.info/files/13\%20-\%20Peter\%20Nijkamp\ %20-\%20Performance\%20of\%20Smart\%20Cities.pdf
  3. Bhardwaj, K.K.; Khanna, A.; Sharma, D.K.; Chhabra, A. (2019), Designing energy-efficient IoT-based intelligent transport system: Need, architecture, characteristics, challenges, and applications. In Energy Conservation for IoT Devices; Springer: Singapore, pp. 209–233.
  4. Bugeja, M.; Dingli, A.; Attard, M.; Seychell, D. (2020), Comparison of Vehicle Detection Techniques applied to IP Camera Video Feeds for use in Intelligent Transport Systems. Transp. Res. Procedia, vol. 45, pp.971–978.
  5. Carignani, M.; Ferrini, S.; Petracca, M.; Falcitelli, M.; Pagano, P. (2015), A prototype bridge between automotive and the IoT. In Proceedings of the 2015 IEEE 2nd World Forum on Internet of Things (WF-IoT), Milan, Italy, pp.14–16.
  6. Caragliu, A. Bo, C. D. Kourtit K. and Nijkamp, P.(2013), Performance of the Smart Cities in the North sea basin, http://www.smartcities.info/files/13\%20-\%20Peter\%20Nijkamp\%20\%20Performance\%20of\%20Smart\%20Cities.pdf
  7. Chong, Hon Fong, and Danny Wee Kiat Ng. (2016), "Development of IoT device for the traffic management system." 2016 IEEE Student Conference on Research and Development (SCOReD). IEEE.
  8. Choy, J.L.C.; Wu, J.; Long, C.; Lin, Y.-B. (2020), Ubiquitous and Low Power Vehicles Speed Monitoring for Intelligent Transport Systems. IEEE Sens. J. vol.20, pp.5656–5665.
  9. Csorba, Kristóf, Lilla Barancsuk, and László Blázovics. (2016), "Visual Traffic Load Sensor for Emission Estimation." Procedia Engineering vol. (16)8 pp. 47-50.
  10. Costa, E. and Seixas, J. (2014), Contribution of electric cars to the mitigation of CO2 emissions in the city of São Paulo. In: Proceedings of the 2014 IEEE Vehicle Power and Propulsion Conference (VPPC), Coimbra, Portugal, pp. 27–30.
  11. Dass, P.; Misra, S.; Roy, C. (2020), T-safe: Trustworthy service provisioning for IoT-based intelligent transport systems. IEEE Trans. Veh. Technol. vol. 69, pp.9509–9517.
  12. Dong, Honghui. (2018), "Improved robust vehicle detection and identification based on a single magnetic sensor." Ieee Access vol.6 pp.5247-5255.
  13. Deng, Z.; Huang, D.; Liu, J.; Mi, B.; Liu, Y. (2020), An Assessment Method for Traffic State Vulnerability Based on a Cloud Model for Urban Road Network Traffic Systems. IEEE Trans. Intell. Transp. Syst. Vol.22, pp.7155–7168.
  14. Deng, S., Huang, L., Xu, G., Wu, X., Wu, Z. (2016), On deep learning for trust-aware recommendations in social networks. IEEE Transactions on Neural Networks Learning Systems, vol. 28(5), p. 1164-1177. https://doi.org/10.1109/TNNLS.2016.2514368
  15. Ding, Wenxiu, (2019), "A survey on data fusion in the internet of things: Towards secure and privacy-preserving fusion." Information Fusion. vol. 51 pp. 129-144.
  16. Eswaraprasad, R.; Raja, L. (2017), Improved intelligent transport system for reliable traffic control management by adopting internet of things. In Proceedings of the 2017 International Conference on Infocom Technologies and Unmanned Systems (Trends and Future Directions) (ICTUS), Dubai, United Arab Emirates. https://nptel.ac.in/course.html
  17. Fusco, G., Colombaroni, C., Comelli, L., Isaenko, N. (2015), Short-term traffic predictions on large urban traffic networks: applications of network-based machine learning models and dynamic traffic assignment models. International Conference on Models and Technologies for Intelligent Transportation Systems MT-ITS. pp. 93-101. https://doi.org/10.1109/MTITS.2015.7223242
  18. Google Developers (2015), “Google Maps Android API | Google Developers,” Google Developers. Available https://developers.google.com/maps/documentation/an droid-api/.
  19. Jain, Neeraj Kumar, R. K. Saini, and Preeti Mittal. (2019), "A Review on Traffic Monitoring System Techniques." Soft Computing: Theories and Applications. Springer, Singapore. pp. 569-577.
  20. Jason Kurniawan (2018), CCTV Monitoring Images using Convolutional Neural Network." Procedia computer science. Vol.14(4), pp. 291-297.
  21. Javed, M.A.; Zeadally, S.; Ben Hamida, E. (2019), Data analytics for Cooperative Intelligent Transport Systems. Veh. Commun., vol.15, pp.63–72.
  22. Jelínek, J.; ˇCejka, J.; Šedivý, J. (2021), Importance of the Static Infrastructure for Dissemination of Information within Intelligent Transportation Systems. Commun.–Sci. Lett. Univ. Zilina, vol.24, pp.63–73
  23. Jung Hoon Lee, Marguerite Gong Hancock, Mei-Chih Hu, (2013), Towards an effective framework for building smart cities: Lessons from Seoul and San Francisco, Technological Forecasting & Social Change, 2013.
  24. Jyothi, B. Naga. (2016), "Smart traffic control system using ATMEGA328 micro controller and Arduino software." 2016 International Conference on Signal Processing, Communication, Power and Embedded System (SCOPES). IEEE.
  25. Kebbeh, P.S.; Jain, M.; Gueye, B. SenseNet, (2020), IoT temperature measurement in railway networks for intelligent transport. In Proceedings of the 2020 IEEE International Conf on Natural and Engineering Sciences for Sahel’s Sustainable Development–Impact of Big Data Application on Society and Environment (IBASE-BF), Ouagadougou, Burkina Faso, pp. 4–6.
  26. Khan, Mohammad Ahmar, and Sarfraz Fayaz Khan. (2018), "IoT based framework for Vehicle Over-speed detection." 1st International Conference on Computer Applications & Information Security (ICCAIS). IEEE.
  27. Levina, A.I.; Dubgorn, A.S.; Iliashenko, O.Y. (2017), Internet of Things within the Service Architecture of Intelligent Transport Systems. In Proceedings of the 2017 European Conference on Electrical Engineering and Computer Science (EECS), Bern, Switzerland. pp. 351–355.
  28. Lee, J. H., Hancock, M. G., & Hu, M.-Ch. (2014). Towards an effective framework for building smart cities: Lessons from Seoul and San Francisco. Technological Forecasting & Social Change, 89, 80-99. DOI: 10.1016/j.techfore.2013.08.033
  29. Li, Jin,(2019), "Research on Multiple Sensors Vehicle Detection with EMD-Based Denoising." IEEE Internet of Things Journal.
  30. Manjoro, W.S.; Dhakar, M.; Chaurasia, B.K. (2016), Traffic congestion detection using data mining in VANET. In Proceedings of the 2016 IEEE Students’ Conference on Electrical, Electronics and Computer Science (SCEECS), Bhopal, India, pp. 1–6.
  31. Meneguette, R. Filho, G. P. R. Bittencourt L. F. and Krishnamachari, B. (2015), “Enhancing Intelligence in Inter-Vehicle Communications to Detect and Reduce Congestion in Urban Centers”, 20th IEEE Symposium on Computers and Communication (ISCC), pp. 662-667.
  32. Mogi, R.; Nakayama, T.; Asaka, T. (2018), Load-balancing method for IoT sensor system using multi-access edge computing, In Proceedings of the 2018 Sixth International Symposium on Computing and Networking Workshops (CANDARW), Takayama, Japan, pp.27–30
  33. Mukhtar, Amir, Likun Xia, and Tong Boon Tang. (2015), "Vehicle detection techniques for collision avoidance systems: A review." IEEE Transactions on Intelligent Transportation Systems vol.16. (5) pp. 2318-2338.
  34. Nam, T. Pardo, T.A. (2011), Conceptualizing Smart City with Dimensions of Technology, People, and Institutions, Proceedings of the 12th Annual Digital Government Research The conference, pp. 282-291
  35. Olayode, I.O.; Severino, A.; Campisi, T.; Tartibu, L.K. Prediction of Vehicular Traffic Flow using Levenberg-Marquardt Artificial Neural Network Model: Italy Road Transportation System. Commun.-Sci. Lett. Univ. Zilina, vol.24, pp74–86
  36. Pasku, Valter, (2017), "Magnetic field-based positioning systems." IEEE Communications Surveys & Tutorials vol. 19. (3).
  37. Patole S M, Torlak M, Wang D. (2017), "Automotive radars: A review of signal processing techniques." IEEE Signal Processing Magazine 34.2 (2017): pp. 22-35.
  38. Peng, Zhengyu, (2016), "A portable FMCW interferometry radar with programmable low-IF architecture for localization, ISAR imaging, and vital sign tracking." IEEE transactions on microwave theory and techniques vol.65 (4) pp.1334-1344
  39. Pedraza, Cesar, Felix Vega, and Gabriel Manana, (2018), "PCIV, an RFID-based a platform for intelligent vehicle monitoring." IEEE Intelligent Transportation Systems Magazine vol.10(2) pp.28-35.
  40. Rakhonde, Mahesh A., S. A. Khoje, and R. D. Komati. (2018), "Vehicle Collision Detection and Avoidance with Pollution Monitoring System Using IoT." 2018 IEEE Global Conference on Wireless Computing and Networking (GCWCN). IEEE, 2018.Kurniawan, Jason, Sensa GS Syahra, and Chandra K. Dewa. "Traffic Congestion Detection.
  41. Sodhro, A.H. (2019), Quality of service optimization in an IoT-driven intelligent transportation system. IEEEWirel. Commun. Pp.26, 10–1
  42. Tian, Y.; Du, Y.; Zhang, Q.; Cheng, J.; Yang, Z. (2020), Depth estimation for advancing intelligent transport systems based on self-improving pyramid stereo network. IET Intell. Transp. Syst. Vol.14, pp.338–345.
  43. Wang, Yifan (2018), "In-road microwave sensor for electronic vehicle identification and tracking: Link budget analysis and antenna prototype." IEEE Transactions on Intelligent Transportation Systems vol.19(1), pp.123-128
  44. Wynita M. Griggs. (2018), "Localizing missing entities using parked vehicles: An RFID-based system." IEEE Internet of Things Journal vol. 5(.5). pp. 4018-4030.
  45. Yang, H.-J., Hu, X. (2016), Wavelet neural network with improved genetic algorithm for traffic flow time series prediction. Optik. Vol. 127(19), pp. 8103-8110. https://doi.org/10.1016/j. ijleo.2016.06.017
  46. Yuan, Xue, Shuai Su, and Houjin Chen. (2017), "A graph-based vehicle proposal location and detection algorithm." IEEE Transactions on Intelligent Transportation Systems vol. 18(12), pp. 3282-3289.
  47. Yin, Y., Aihua, S., Min, G., Yueshen, X., Shuoping, W. QoS (2016), prediction for Web service recommendation with network location-aware neighbor selection. International Journal of Software Engineering Knowledge Engineering. vol. 26(4), pp. 611-632. https://doi.org/10.1142/S0218194016400040
  48. Zambada, J.; Quintero, R.; Isijara, R.; Galeana, R.; Santillan, L. (2015), An IoT based scholar bus monitoring system. In Proceedings of the 2015 IEEE First International Smart Cities Conference (ISC2), Guadalajara, Mexico.
  49. Zanella, A., Bui, N., Castellani, A., Vangelista, L., & Zorzi, M. (2014). Internet of things for smart cities. IEEE Internet of Things Journal, 1(1), 22-32. DOI: 10.1109/ JIOT.2014.2306328
  50. Zhang, D.; Kabuka, M.R. (2018), Combining weather condition data to predict traffic flow: A GRU-based deep learning approach. Intell. Transp. Syst. vol.12, pp.578–585.
  51. Zhang, J., Ni, L., Yao, J., Wang, W., Tang, Z. (2011), Adaptive bare bones particle swarm inspired by cloud model. IEICE Transactions on Information Systems, vol. 94(8), pp. 1527-1538. Available from: https://doi.org/10.1587/transinf.E94.D.1527
Index Terms

Computer Science
Information Sciences

Keywords

Internet of Things Smart City Model