AbstractThis paper presents a methodological approach to traffic condition recognition, based on driving segment clustering. Traffic condition recognition has many applications to various areas, such as intelligent transportation, adaptive cruise control, pollutant emissions dispersion, safety, and intelligent control strategies in hybrid electric vehicles. This study focuses on the application of driving condition recognition to the intelligent control of hybrid electric vehicles. For this purpose, driving features are identified and used for driving segment clustering, using the k-means clustering algorithm. Many combinations of driving features and different numbers of clusters are evaluated, in order to achieve the best traffic conditio...
As a new kind of vehicles with low fuel cost and low emission, hybrid electric vehicle (HEV) has bee...
The vehicle driving cycles affect the performance of a hybrid vehicle control strategy, as a result,...
Data analysis methods are important to analyze the ever-growing enormous quantity of the high dimens...
AbstractThis paper presents a methodological approach to traffic condition recognition, based on dri...
Abstract: This article presents driving features analysis in order to determine superior driving fea...
As an important part of intelligent transportation systems, traffic state classification plays a vit...
The representation and discrimination of various traffic states play an essential role in solving tr...
Driving behavior is considered as a unique driving habit of each driver and has a significant impact...
The implementation of information technology in transportation system is becoming a leading trend no...
Modern life is strongly associated with the use of cars, but the increase in acceleration speeds and...
AbstractThis paper describes the development of a car driving cycle for the city of Tehran and its s...
Connected autonomous vehicles can leverage communication and artificial intelligence technologies to...
In the last decade, cooperative vehicular network has been one of the most studied areas for develop...
Driving behavior is considered as a unique driving habit of each driver and has a significant impact...
Nowadays, the analysis of vehicular ad hoc networks for the evaluation of traffic conditions is a ho...
As a new kind of vehicles with low fuel cost and low emission, hybrid electric vehicle (HEV) has bee...
The vehicle driving cycles affect the performance of a hybrid vehicle control strategy, as a result,...
Data analysis methods are important to analyze the ever-growing enormous quantity of the high dimens...
AbstractThis paper presents a methodological approach to traffic condition recognition, based on dri...
Abstract: This article presents driving features analysis in order to determine superior driving fea...
As an important part of intelligent transportation systems, traffic state classification plays a vit...
The representation and discrimination of various traffic states play an essential role in solving tr...
Driving behavior is considered as a unique driving habit of each driver and has a significant impact...
The implementation of information technology in transportation system is becoming a leading trend no...
Modern life is strongly associated with the use of cars, but the increase in acceleration speeds and...
AbstractThis paper describes the development of a car driving cycle for the city of Tehran and its s...
Connected autonomous vehicles can leverage communication and artificial intelligence technologies to...
In the last decade, cooperative vehicular network has been one of the most studied areas for develop...
Driving behavior is considered as a unique driving habit of each driver and has a significant impact...
Nowadays, the analysis of vehicular ad hoc networks for the evaluation of traffic conditions is a ho...
As a new kind of vehicles with low fuel cost and low emission, hybrid electric vehicle (HEV) has bee...
The vehicle driving cycles affect the performance of a hybrid vehicle control strategy, as a result,...
Data analysis methods are important to analyze the ever-growing enormous quantity of the high dimens...