AI Algorithms for Autonomous Vehicle Decision-Making in Complex Traffic Scenarios
Keywords:
Autonomous vehicles (AVs), sensorsAbstract
The performance of the trained models was evaluated in unknown environments, in this case a faculty connected to the testing site with a communitarian road. In a known environment, the system was capable of executing navigation passing through critical situations. Performance evaluation was relational to a set of indexes regarding requirements, for example, collision avoidance, detection of persons, and detection of static and dynamic obstacles or limitations. The two manned vehicles for validating the baseline data were the driverless vehicle communicating with the call center of the faculty and the validation of the navigation route using the GPS codes of this system. All these new would like to respond to the following question: What are the probable problems, methods, solutions, and impacts regarding the extensive use of driverless vehicles in urban traffic and some rural and highway situations? Major attention was paid to the different types of driverless vehicles that were used in real traffic that showed that there is a mismatch between the recent efforts of the research team and the real-world experiences of commuters (on the drivers’ and partners’ side) that moped, motorcycles, push scooter, or electric bike riders have been affected by fear and unease.
Downloads
References
H. Cao, W. Zou, Y. Wang, T. Song et al., "Emerging Threats in Deep Learning-Based Autonomous Driving: A Comprehensive Survey," 2022. [PDF]
X. Di and R. Shi, "A Survey on Autonomous Vehicle Control in the Era of Mixed-Autonomy: From Physics-Based to AI-Guided Driving Policy Learning," 2020. [PDF]
S. Paiva, M. Abdul Ahad, G. Tripathi, N. Feroz et al., "Enabling Technologies for Urban Smart Mobility: Recent Trends, Opportunities and Challenges," 2021. ncbi.nlm.nih.gov
S. Pruekprasert, J. Dubut, X. Zhang, C. Huang et al., "A Game-Theoretic Approach to Decision Making for Multiple Vehicles at Roundabout," 2019. [PDF]
D. Garikapati and S. Sudhir Shetiya, "Autonomous Vehicles: Evolution of Artificial Intelligence and Learning Algorithms," 2024. [PDF]
A. Biswas and H. C. Wang, "Autonomous Vehicles Enabled by the Integration of IoT, Edge Intelligence, 5G, and Blockchain," 2023. ncbi.nlm.nih.gov
C. Englund, E. Erdal Aksoy, F. Alonso-Fernandez, M. Daniel Cooney et al., "AI perspectives in Smart Cities and Communities to enable road vehicle automation and smart traffic control," 2021. [PDF]
Tatineni, Sumanth. "INTEGRATING AI, BLOCKCHAIN AND CLOUD TECHNOLOGIES FOR DATA MANAGEMENT IN HEALTHCARE." Journal of Computer Engineering and Technology (JCET) 5.01 (2022).
Vemori, Vamsi. "Evolutionary Landscape of Battery Technology and its Impact on Smart Traffic Management Systems for Electric Vehicles in Urban Environments: A Critical Analysis." Advances in Deep Learning Techniques 1.1 (2021): 23-57.
Shaik, Mahammad, and Ashok Kumar Reddy Sadhu. "Unveiling the Synergistic Potential: Integrating Biometric Authentication with Blockchain Technology for Secure Identity and Access Management Systems." Journal of Artificial Intelligence Research and Applications 2.1 (2022): 11-34.
P. Hang, C. Huang, Z. Hu, and C. Lv, "Driving Conflict Resolution of Autonomous Vehicles at Unsignalized Intersections: A Differential Game Approach," 2022. [PDF]
C. Martínez and F. Jiménez, "Implementation of a Potential Field-Based Decision-Making Algorithm on Autonomous Vehicles for Driving in Complex Environments," 2019. ncbi.nlm.nih.gov
S. Liu, J. Tang, Z. Zhang, and J. L. Gaudiot, "CAAD: Computer Architecture for Autonomous Driving," 2017. [PDF]
M. Pinto, I. Dutra, and J. Fonseca, "Data and Knowledge for Overtaking Scenarios in Autonomous Driving," 2023. [PDF]
F. Feng, C. Wei, B. Zhao, Y. Lv et al., "Research on Lane-Changing Decision Making and Planning of Autonomous Vehicles Based on GCN and Multi-Segment Polynomial Curve Optimization," 2024. ncbi.nlm.nih.gov
S. Arbabi, D. Tavernini, S. Fallah, and R. Bowden, "Decision Making for Autonomous Driving in Interactive Merge Scenarios via Learning-based Prediction," 2023. [PDF]
S. Arbabi, S. Dixit, Z. Zheng, D. Oxtoby et al., "Lane-Change Initiation and Planning Approach for Highly Automated Driving on Freeways," 2020. [PDF]
M. Wäschle, F. Thaler, A. Berres, F. Pölzlbauer et al., "A review on AI Safety in highly automated driving," 2022. ncbi.nlm.nih.gov
Y. Zhu, M. Wang, X. Yin, J. Zhang et al., "Deep Learning in Diverse Intelligent Sensor Based Systems," 2022. ncbi.nlm.nih.gov
D. Wang, L. Gao, Z. Lan, W. Li et al., "An Intelligent Self-Driving Truck System for Highway Transportation," 2022. ncbi.nlm.nih.gov
Y. Hu, A. Nakhaei, M. Tomizuka, and K. Fujimura, "Interaction-aware Decision Making with Adaptive Strategies under Merging Scenarios," 2019. [PDF]
X. Li, Y. Bai, P. Cai, L. Wen et al., "Towards Knowledge-driven Autonomous Driving," 2023. [PDF]
D. Qu, K. Zhang, H. Song, T. Wang et al., "Analysis of Lane-Changing Decision-Making Behavior of Autonomous Vehicles Based on Molecular Dynamics," 2022. ncbi.nlm.nih.gov
S. Malik, M. Ahmed Khan, H. El-Sayed, J. Khan et al., "How Do Autonomous Vehicles Decide?," 2022. ncbi.nlm.nih.gov
D. Zhu, Q. Bu, Z. Zhu, Y. Zhang et al., "Advancing autonomy through lifelong learning: a survey of autonomous intelligent systems," 2024. ncbi.nlm.nih.gov
H. Si Min Lim and A. Taeihagh, "Algorithmic decision-making in AVs: Understanding ethical and technical concerns for smart cities," 2019. [PDF]
A. Hozouri, A. Mirzaei, S. RazaghZadeh, and D. Yousefi, "An overview of VANET vehicular networks," 2023. [PDF]
M. Aminul Islam and S. Alqahtani, "Autonomous Vehicles an overview on system, cyber security, risks, issues, and a way forward," 2023. [PDF]
A. Kriebitz, R. Max, and C. Lütge, "The German Act on Autonomous Driving: Why Ethics Still Matters," 2022. ncbi.nlm.nih.gov
L. Luxmi Dhirani, N. Mukhtiar, B. Shankar Chowdhry, and T. Newe, "Ethical Dilemmas and Privacy Issues in Emerging Technologies: A Review," 2023. ncbi.nlm.nih.gov
J. Wang, X. Guo, and X. Yang, "Efficient and Safe Strategies for Intersection Management: A Review," 2021. ncbi.nlm.nih.gov
L. Wei, Z. Li, J. Gong, C. Gong et al., "Autonomous Driving Strategies at Intersections: Scenarios, State-of-the-Art, and Future Outlooks," 2021. [PDF]
N. R. Kapania, V. Govindarajan, F. Borrelli, and J. Christian Gerdes, "A Hybrid Control Design for Autonomous Vehicles at Uncontrolled Intersections," 2019. [PDF]