In order to alleviate the traffic congestion and reduce the complexity of traffic control and management, it is necessary to exploit traffic sub-areas division which should be effective in planing traffic. Some researchers applied the K-Means algorithm to divide traffic sub-areas on the taxi trajectories. However, the traditional K-Means algorithms faced difficulties in processing large-scale Global Position System(GPS) trajectories of taxicabs with the restrictions of memory, I/O, computing performance. This paper proposes a Parallel Traffic Sub-Areas Division(PTSD) method which consists of two stages, on the basis of the Parallel K-Means(PKM) algorithm. During the first stage, we develop a process to cluster traffic sub-areas based on the...
The implementation of the relevant management system makes the road-parking behavior standardized, w...
Taxi GPS trajectories can be mined and used to optimize urban traffic scheduling. The optimization o...
In this paper, we explore spatio-temporal clusters using massive floating car data from a complex ne...
Traffic subarea division is vital for traffic system management and traffic network analysis in inte...
With the increasing scope of traffic signal control, in order to improve the stability and flexibili...
A clustering algorithm for urban taxi carpooling based on data field energy and point spacing is pro...
In order to identify the scope of active traffic control regions and improve the effect of active tr...
In today’s world, the traffic volume on urban road networks is multiplying rapidly due to the heavy ...
In this research, we analyze taxi pickup data using k-means clustering to gain insights into the spa...
AbstractThis paper describes the development of a car driving cycle for the city of Tehran and its s...
In view of the variety and occlusion of vehicle target motion on the urban intersection, it is diffi...
Car sharing is a type of car rental service, by which consumers rent cars for short periods of time,...
Urban hotspot area detection is an important issue that needs to be explored for urban planning and ...
Taxi trajectories reflect human mobility over the urban roads’ network. Although taxi drivers cruise...
This paper proposes a novel supervised clustering algorithm to analyze large datasets. The proposed ...
The implementation of the relevant management system makes the road-parking behavior standardized, w...
Taxi GPS trajectories can be mined and used to optimize urban traffic scheduling. The optimization o...
In this paper, we explore spatio-temporal clusters using massive floating car data from a complex ne...
Traffic subarea division is vital for traffic system management and traffic network analysis in inte...
With the increasing scope of traffic signal control, in order to improve the stability and flexibili...
A clustering algorithm for urban taxi carpooling based on data field energy and point spacing is pro...
In order to identify the scope of active traffic control regions and improve the effect of active tr...
In today’s world, the traffic volume on urban road networks is multiplying rapidly due to the heavy ...
In this research, we analyze taxi pickup data using k-means clustering to gain insights into the spa...
AbstractThis paper describes the development of a car driving cycle for the city of Tehran and its s...
In view of the variety and occlusion of vehicle target motion on the urban intersection, it is diffi...
Car sharing is a type of car rental service, by which consumers rent cars for short periods of time,...
Urban hotspot area detection is an important issue that needs to be explored for urban planning and ...
Taxi trajectories reflect human mobility over the urban roads’ network. Although taxi drivers cruise...
This paper proposes a novel supervised clustering algorithm to analyze large datasets. The proposed ...
The implementation of the relevant management system makes the road-parking behavior standardized, w...
Taxi GPS trajectories can be mined and used to optimize urban traffic scheduling. The optimization o...
In this paper, we explore spatio-temporal clusters using massive floating car data from a complex ne...