Artificial intelligence for parking forecasting: an extensive survey of machine learning techniques
To address the parking challenges, this survey delves into the significant impact of machine learning (ML) on parking availability (PA) predictions. With swelling urban populations, efficient parking management has become paramount. PA prediction offers accurate, context-sensitive solutions for dyna...
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sg-ntu-dr.10356-1826812025-02-17T04:44:40Z Artificial intelligence for parking forecasting: an extensive survey of machine learning techniques Cao, Rong Choudhury, Farhana Winter, Stephan Wang, David Zhi Wei School of Civil and Environmental Engineering Engineering Parking availability Parking prediction To address the parking challenges, this survey delves into the significant impact of machine learning (ML) on parking availability (PA) predictions. With swelling urban populations, efficient parking management has become paramount. PA prediction offers accurate, context-sensitive solutions for dynamic on-street and off-road parking scenarios, thereby promoting urban mobility and parking efficiency. However, traditional ML models, while contributory, struggled to capture complex contextual nuances and dependencies for effective predictions. The rapid advancements of deep learning offer promising avenues for sophisticated prediction models. This survey covers a wide spectrum, from PA definitions and relevant datasets to ML modules, features considered, and evaluation metrics. Additionally, the current limitations and future directions are also explored. This comprehensive review underscores the present contributions of ML in parking predictions and paves the way for refining and devising future developments to tackle the persistent parking issues. Ministry of Education (MOE) This paper is partly supported by the Singapore Ministry of Education (MOE) Academic Research Fund (AcRF) Tier 1 project RT22/22. 2025-02-17T04:44:40Z 2025-02-17T04:44:40Z 2024 Journal Article Cao, R., Choudhury, F., Winter, S. & Wang, D. Z. W. (2024). Artificial intelligence for parking forecasting: an extensive survey of machine learning techniques. Transportmetrica A: Transport Science, 2409229-. https://dx.doi.org/10.1080/23249935.2024.2409229 2324-9935 https://hdl.handle.net/10356/182681 10.1080/23249935.2024.2409229 2-s2.0-85206946001 2409229 en RT22/22 Transportmetrica A: Transport Science © 2024 Hong Kong Society for Transportation Studies Limited. All rights reserved. |
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Engineering Parking availability Parking prediction Cao, Rong Choudhury, Farhana Winter, Stephan Wang, David Zhi Wei Artificial intelligence for parking forecasting: an extensive survey of machine learning techniques |
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To address the parking challenges, this survey delves into the significant impact of machine learning (ML) on parking availability (PA) predictions. With swelling urban populations, efficient parking management has become paramount. PA prediction offers accurate, context-sensitive solutions for dynamic on-street and off-road parking scenarios, thereby promoting urban mobility and parking efficiency. However, traditional ML models, while contributory, struggled to capture complex contextual nuances and dependencies for effective predictions. The rapid advancements of deep learning offer promising avenues for sophisticated prediction models. This survey covers a wide spectrum, from PA definitions and relevant datasets to ML modules, features considered, and evaluation metrics. Additionally, the current limitations and future directions are also explored. This comprehensive review underscores the present contributions of ML in parking predictions and paves the way for refining and devising future developments to tackle the persistent parking issues. |
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School of Civil and Environmental Engineering |
author_facet |
School of Civil and Environmental Engineering Cao, Rong Choudhury, Farhana Winter, Stephan Wang, David Zhi Wei |
format |
Article |
author |
Cao, Rong Choudhury, Farhana Winter, Stephan Wang, David Zhi Wei |
author_sort |
Cao, Rong |
title |
Artificial intelligence for parking forecasting: an extensive survey of machine learning techniques |
title_short |
Artificial intelligence for parking forecasting: an extensive survey of machine learning techniques |
title_full |
Artificial intelligence for parking forecasting: an extensive survey of machine learning techniques |
title_fullStr |
Artificial intelligence for parking forecasting: an extensive survey of machine learning techniques |
title_full_unstemmed |
Artificial intelligence for parking forecasting: an extensive survey of machine learning techniques |
title_sort |
artificial intelligence for parking forecasting: an extensive survey of machine learning techniques |
publishDate |
2025 |
url |
https://hdl.handle.net/10356/182681 |
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1825619705215320064 |