IoT: Based Smart City Parking Systems with Predictive Analytise

Authors

  • Krish Nayyar * Kalinga Institute of industrial technology, India.

Keywords:

IoT-based smart parking, Predictive analytics, Urban mobility optimization, Smart city infrastructure

Abstract

With the rapid growth of urban populations, managing city parking spaces has become a significant challenge. Traditional parking systems are inefficient, increasing traffic congestion, pollution, and wasted time. The Internet of Things (IoT) has emerged as a transformative technology in building smart cities, offering the potential to enhance urban living through automated, data-driven solutions. This paper explores IoT-based smart city parking systems integrated with predictive analytics. We discuss such systems' architecture, functionality, and benefits, including real-time data collection, predictive modeling, and resource optimization. Moreover, we examine case studies of smart city implementations, challenges faced, and future directions for improving smart parking systems through advanced machine learning algorithms, cloud computing, and IoT security enhancements.

References

Yun, C., Shun, M., Junta, U., & Browndi, I. (2022). Predictive analytics: A survey, trends, applications, opportunities’ and challenges for smart city planning. International journal of computer science and information technology, 23(56), 226–231. https://papers.ssrn.com/sol3/Delivery.cfm?abstractid=4119011

Fahim, A., Hasan, M., & Chowdhury, M. A. (2021). Smart parking systems: comprehensive review based on various aspects. Heliyon, 7(5). https://www.cell.com/heliyon/fulltext/S2405-8440(21)01153-1

Kanoun, O., & Trankler, H.-R. (2004). Sensor technology advances and future trends. IEEE transactions on instrumentation and measurement, 53(6), 1497–1501. https://doi.org/10.1109/TIM.2004.834613

Hitesh Mohapatra, A. K. R. (2021). An IoT based efficiant multi objective real time smart parking system. International journal of sensor networks, 37(4), 219–232. https://doi.org/10.1504/IJSNET.2021.119483

Piccialli, F., Giampaolo, F., Prezioso, E., Crisci, D., & Cuomo, S. (2021). Predictive analytics for smart parking: A deep learning approach in forecasting of iot data. ACM transactions on internet technology (toit), 21(3), 1–21. https://doi.org/10.1145/3412842

Curry, E., Hasan, S., Kouroupetroglou, C., Fabritius, W., ul Hassan, U., & Derguech, W. (2018). Internet of things enhanced user experience for smart water and energy management. IEEE internet computing, 22(1), 18–28. https://doi.org/10.1109/MIC.2018.011581514

Lanza, J., Sánchez, L., Gutiérrez, V., Galache, J. A., Santana, J. R., Sotres, P., & Muñoz, L. (2016). Smart city services over a future Internet platform based on Internet of Things and cloud: The smart parking case. Energies, 9(9), 719. https://doi.org/10.3390/en9090719

Zhao, R., Zhang, Y., Zhu, Y., Lan, R., & Hua, Z. (2023). Metaverse: Security and privacy concerns. Journal of metaverse, 3(2), 93–99. https://doi.org/10.57019/jmv.1286526

Pratap, A., Nayan, H., Panda, P., & Mohapatra, H. (2024). Emerging technologies and trends in the future of smart cities and IoT: a review. Journal of network security computer networks, 10(2), 28–38. https://matjournals.net/engineering/index.php/JONSCN/article/view/606

Published

2024-08-25

How to Cite

IoT: Based Smart City Parking Systems with Predictive Analytise. (2024). Supply Chain and Operations Decision Making, 1(1), 20-24. https://scodm.reapress.com/journal/article/view/21