Context-Aware Driver’s Behaviour Monitoring System in Vehicular Ad-Hoc Network
Journal: International Journal of Advanced Trends in Computer Science and Engineering (IJATCSE) (Vol.10, No. 2)Publication Date: 2021-04-09
Authors : Daramola O.A Adewale O.S Ayeni B.O;
Page : 701-709
Keywords : VANET; MANET; Ad-hoc networks; Intelligent transport system; Road transportation;
Abstract
The number of deaths resulting from road accidents and mishaps has increased at an alarming rate over the years. Road transportation is the most popularly used means of transportation in developing countries like Nigeria and most of these road accidents are associated with reckless driving habits. Context-aware systems provide intelligent recommendations allowing digital devices to make correct and timely recommendations when required. Furthermore, in a Vehicular Ad-hoc Network (VANET), communication links between vehicles and roadside units are improved thus enabling vehicle and road safety. Hence, a non-intrusive driver behaviour detection system that incorporates context-aware monitoring features in VANET is proposed in this study. By making use of a one-dimensional highway (1D) road with one-way traffic movement and incorporating GSM technology, irregular actions (high speed, alcohol while driving, and pressure) exhibited by drivers are monitored and alerts are sent to other nearby vehicles and roadside units to avoid accidents. The proposed system adopted a real-time VANET prototype with three entities involved in the context-aware driver's behaviour monitoring system namely, the driver, vehicle, and environment. The analytical tests with actual data set indicate that, when detected, the model measures the pace of the vehicle, the level of alcohol in the breath, and the driver's heart rate in-breath per minute (BPM). Therefore, it can be used as an appropriate model for the Context-aware driver's monitoring system in VANET.
Other Latest Articles
- Face Recognition Techniques: A Survey
- Enhanced Health-Care Protection Using Advanced Encryption Standard and Diffie Hellman Key Exchange Algorithm
- Wind power plant forecasting and power prediction methods using Machine Learning Algorithms
- Automatic Robotic Palletizing for Oil Carton
- AN IMPROVED METHOD WEAVING LOOM IN TEXTILE INDUSTRY
Last modified: 2021-04-10 17:33:12