A Review of Artificial Intelligence and Machine Learning for Incident Detectors in Road Transport Systems
Abstract
:1. Introduction
- To better understand the various applications of artificial intelligence and machine learning as related to the incident detectors in the road system.
- Despite various research concerns with incident detectors by researchers, various challenges and concerns about road transport systems still need to be investigated.
- The need to study the impacts of 5G and emerging 6G technologies on road transport systems is of the utmost importance.
- A wide range of wireless communication with the internet of vehicles (IOV) and different underlying networks, such as real-time vehicle tracking, traffic management, and other networks, needs to be investigated in order to be properly deployed for effective road management.
- The study contributed by extensively reviewing the literature to search for the effect of ML and AI on the incident detector in road transport systems.
- The study investigates the key areas of the usability of artificial intelligence and machine learning in road transport systems, such as the internet of vehicles, the ad hoc vehicle network, and wireless communication with the internet of vehicles, 5th generation and 6th generation.
- The study examines real-time vehicle tracking, which is vital in incident detector systems in road systems. This paper further summarizes the challenges facing the application of artificial intelligence in road transport systems.
2. Overview of Artificial Intelligence and Machine Learning in Road Transport Systems
2.1. Incident Detectors with Artificial Intelligence and Machine Learning
2.2. Road Management Using Artificial Intelligence/Machine Learning
2.3. Artificial Intelligence and Machine Learning and Deep Leaning Approaches in Automated Incident Detection
2.4. Road Safety Modeling
2.5. Advance Approaches for Incident Detectors of Road Traffic Accidents Using AI and ML
2.5.1. Incident Detectors through In-Vehicle Equipment
2.5.2. Incident Detector through Image Processing at Intersections
2.5.3. Incident Detector through Deep Spatio-Temporal Representation and Stacked Autoencoder
2.5.4. Incident Detector through the Internet of Vehicles
2.5.5. Incident Detector through Vehicle Ad Hoc Networks
2.5.6. Incident Detector through Wireless Communications with the Internet of Vehicles
2.6. Detection of Road Accidents Using Wireless Technology
2.6.1. Detecting Incidents with 5G in Road Transport
2.6.2. 6G in Road Transport
3. Incident Detector Using Big Data Analytics and Neural Networks
3.1. Other Approaches for Road Accident Detectors
3.1.1. Detecting Road Accidents Using Predictive Fleet Maintenance
3.1.2. Action Recognition for Accident Detection in Real-Time Vehicle Tracking
3.1.3. Detecting Road Accidents Using Traffic Management
3.2. Challenges Facing the Detection of Road Accident Using AI/ML
4. Recent Trends, Research Directions, and Lessons Learned
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
AI | Artificial Intelligence |
ML | Machine Learning |
IOV | Internet of Vehicles |
UAV | Unmanned aerial vehicle |
DL | Deep learning |
NN | Neural network |
ITS | Intelligent transportation system |
VRP | Vehicle routing problem |
V2I | Vehicle to an infrastructure |
V2V | Vehicle to vehicle |
VANET | Vehicular Ad Hoc Network |
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Ref. | Study Focus | Limitations | Contributions |
---|---|---|---|
[21] | The authors examine, compare, contrast, and assess deep learning and machine learning techniques for predicting traffic flow for autonomous vehicles and how to carry out traffic flow planning using these methods. | Who dealt with the issue that would develop when the prediction timescales widened? The current approaches are still inadequate as simulating stochastic traffic flow aspects is challenging. | This study will highlight the numerous applications for structure optimization, machine learning, and artificial intelligence. This study proves the efficacy of the journey time prediction model-specific gradient-boosting decision tree (GBDT). |
[22] | The article discusses how the internet of things (IoT) is being utilized to produce SMART vehicles; it advances transportation technology and reduces the frequency of road incidents caused by microsleep that result in serious accidents. | In order to correct this and make it better, research must be integrated with IoT due to the distinctive properties of internet protocol that IoT employs, such as recognition, control, and data transfer to people and databases. | Additionally, this study uses ground truth as its classification model and may use a driver monitoring system (DMS) to determine an automobile’s manufacturing capacity. |
[23] | Creates accurate intrusion detection system models using artificial intelligence techniques. | The task can be expanded by considering the classifiers for multiclass classification and solely considering the crucial qualities for intrusion detection. | In F1 score and accuracy, the results show that the random forest classifier outperforms other classifiers for the parameters and dataset under consideration. The NSL-KDD dataset is used to test algorithms. |
[24] | The author comprehensively analyzes cutting-edge technology for constructing a three-tier solution classification in machine learning to study the planning and distribution based on real-time traffic density. | The ITS applications were limited. The future research is not addressed in depth. | The first tier has numerous technologies and techniques for gathering traffic statistics. The second tier concerns how accurate the machine learning algorithms are as they form. In the third tier, numerous traffic planning strategies are explored. |
[25] | In this study, traffic behavior is analyzed, and any vehicles that travel differently from the flow of traffic are considered for potential accidents. | Due to roadway layout, intersections, speed restrictions, and vehicle size, there is a limited mobility pattern. | The results demonstrated that accident detection using clustering techniques is successful. Accident detection will help prevent additional collisions and assist the authorities in reopening a road segment to traffic. |
[26] | The internet of vehicles (IoV) is a method for intervehicle communication used in intelligent transportation. It enhances traffic management programs and services to ensure road safety. | When building applications and services, it is important to consider cost, performance, implementation complexity, and timing. A major difficulty is the raising of QoS standards for IoV services. | The control and development of smart cities will benefit from the current study. According to the findings of this research, performance is evaluated by services and applications 34% of the time. Safety and data correctness is evaluated 13% of the time, and security is evaluated 13% of the time in the selected papers. |
[27] | This article explores a shared vision among participants along the value chain regarding the use of radio location and sensing for traffic safety in the 5G ecosystem. | Experimentation and extensive measurements are required to validate the radio location and sensing used for traffic safety in the 5G ecosystem. | This study presents a comprehensive analysis of the performance requirements, enabling technologies in 5G and beyond and the critical architectural characteristics that make it possible for the sensing and location data to be collected, processed, and efficiently shared in the network. In 5G, either the network or the UE can position itself (with network assistance) (network-based). Without the help of the network, the UE can localize itself in RAT-independent positioning (such as GNSS/RTK-GNSS) (standalone). |
[28] | In order to extract similar traffic patterns over time for accurate and successful short-term traffic flow prediction in massive IoT, this work provides a large data-driven study of the non-parametric model supported by 6G. The model’s main foundation is time-aware LSH (Locality-Sensitive Hashing). | Because only a tiny percentage of the sampled data is used to anticipate traffic flow, the outcome is not sufficiently accurate. | These sensors will gather all the real-time traffic data, which will then be transmitted to the cloud for the processing and utilizing of the cutting-edge 6G technology to guarantee the efficiency, stability, and integrity of the massively distributed data transfer. The implementation of the 6G-enabled short-term traffic flow forecasting is a viable technique to give traffic managers strategies to detect flow breakdowns in the future, according to the combined data collected from all the sensors. |
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Olugbade, S.; Ojo, S.; Imoize, A.L.; Isabona, J.; Alaba, M.O. A Review of Artificial Intelligence and Machine Learning for Incident Detectors in Road Transport Systems. Math. Comput. Appl. 2022, 27, 77. https://doi.org/10.3390/mca27050077
Olugbade S, Ojo S, Imoize AL, Isabona J, Alaba MO. A Review of Artificial Intelligence and Machine Learning for Incident Detectors in Road Transport Systems. Mathematical and Computational Applications. 2022; 27(5):77. https://doi.org/10.3390/mca27050077
Chicago/Turabian StyleOlugbade, Samuel, Stephen Ojo, Agbotiname Lucky Imoize, Joseph Isabona, and Mathew O. Alaba. 2022. "A Review of Artificial Intelligence and Machine Learning for Incident Detectors in Road Transport Systems" Mathematical and Computational Applications 27, no. 5: 77. https://doi.org/10.3390/mca27050077
APA StyleOlugbade, S., Ojo, S., Imoize, A. L., Isabona, J., & Alaba, M. O. (2022). A Review of Artificial Intelligence and Machine Learning for Incident Detectors in Road Transport Systems. Mathematical and Computational Applications, 27(5), 77. https://doi.org/10.3390/mca27050077